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Systematic Review

Machine Learning Augmented Interpretation of Chest X-rays: A Systematic Review

1
Annalise.ai, Sydney, NSW 2000, Australia
2
Department of Emergency Medicine, Royal North Shore Hospital, Sydney, NSW 2065, Australia
3
School of Medicine, University of Notre Dame Australia, Sydney, NSW 2007, Australia
4
Department of Neurosurgery, Monash Health, Melbourne, VIC 3168, Australia
5
Department of General Practice, University of Melbourne, Melbourne, VIC 3010, Australia
6
Westmead Applied Research Centre, University of Sydney, Sydney, NSW 2006, Australia
7
Department of Radiology, Alfred Health, Melbourne, VIC 3004, Australia
8
Faculty of Engineering and Information Technology, University of Technology Sydney, Sydney, NSW 2007, Australia
9
Department of Radiology, St Vincent’s Health Australia, Melbourne, VIC 3065, Australia
10
I-MED Radiology Network, Brisbane, QLD 4006, Australia
11
School of Public and Preventive Health, Monash University, Clayton, VIC 3800, Australia
12
Department of Clinical Imaging Science, University of Sydney, Sydney, NSW 2006, Australia
*
Author to whom correspondence should be addressed.
Diagnostics 2023, 13(4), 743; https://doi.org/10.3390/diagnostics13040743
Submission received: 19 January 2023 / Revised: 13 February 2023 / Accepted: 14 February 2023 / Published: 15 February 2023
(This article belongs to the Section Machine Learning and Artificial Intelligence in Diagnostics)

Abstract

:
Limitations of the chest X-ray (CXR) have resulted in attempts to create machine learning systems to assist clinicians and improve interpretation accuracy. An understanding of the capabilities and limitations of modern machine learning systems is necessary for clinicians as these tools begin to permeate practice. This systematic review aimed to provide an overview of machine learning applications designed to facilitate CXR interpretation. A systematic search strategy was executed to identify research into machine learning algorithms capable of detecting >2 radiographic findings on CXRs published between January 2020 and September 2022. Model details and study characteristics, including risk of bias and quality, were summarized. Initially, 2248 articles were retrieved, with 46 included in the final review. Published models demonstrated strong standalone performance and were typically as accurate, or more accurate, than radiologists or non-radiologist clinicians. Multiple studies demonstrated an improvement in the clinical finding classification performance of clinicians when models acted as a diagnostic assistance device. Device performance was compared with that of clinicians in 30% of studies, while effects on clinical perception and diagnosis were evaluated in 19%. Only one study was prospectively run. On average, 128,662 images were used to train and validate models. Most classified less than eight clinical findings, while the three most comprehensive models classified 54, 72, and 124 findings. This review suggests that machine learning devices designed to facilitate CXR interpretation perform strongly, improve the detection performance of clinicians, and improve the efficiency of radiology workflow. Several limitations were identified, and clinician involvement and expertise will be key to driving the safe implementation of quality CXR machine learning systems.

1. Introduction

Chest X-rays (CXRs) have been used as the baseline chest imaging modality for more than a century [1]. This relatively simple method of image acquisition has provided access to radiological investigation of chest pathology to almost every corner of the globe, encompassing the investigation of infection, cardiac pathology, chest trauma, and malignancy. The development of safe principles of ionizing radiation usage and advancements in the acquisition of digital images have led to reduced radiation exposure, improved image quality, and wider CXR availability. The CXR remains the most frequently performed medical imaging investigation worldwide [2].
There are, however, limitations to the diagnostic utility of the CXR. Soft tissue contrast assessment is limited by the projection of X-rays through multiple organs and the generation of a two-dimensional image with superimposed densities, which can lead to reduced sensitivity for subtle findings [3]. This makes CXR interpretation particularly challenging and, as a result, most cases of missed lung cancer appear to be due to errors in CXR interpretation [4]. Human error, reader inexperience, fatigue, and interruptions contribute to interpretation inaccuracy [3,5], and the availability of experienced thoracic radiologists is limited. Other imaging modalities are capable of providing high-sensitivity visualizations of the chest, including computed tomography (CT) and ultrasound. These modalities have been shown to have higher sensitivity for many findings, including pneumothorax [6], pneumonia [7], and lung nodules [8]. However, due to widespread availability, short scan time, low cost, and low radiation exposure, the CXR remains the first line of imaging modality for chest assessment [9]. For these reasons, there have been many attempts to create artificial intelligence (AI) systems to assist radiologists in the task of CXR interpretation [10,11].
Machine learning, a subdomain of AI that involves learning patterns in data to enable effective prediction and classification, is profoundly influencing care delivery across medical specialties from pathology to radiology [12,13,14,15,16]. Deep learning image processing algorithms are based on convolutional neural networks (CNNs) and have been trained to detect pneumothorax [17], pneumonia [18], COVID-19 [19,20,21,22,23,24], pneumoconiosis [25], tuberculosis [26], and lung cancer [27]. Models have been developed to automate lung segmentation and bone exclusion [28], identify the position of feeding tubes [29], and predict temporal changes in imaging findings [30]. While these studies have not assessed the usefulness of AI models across many findings simultaneously, they have shown that deep learning diagnostic tools can improve the classification performance of radiologists in the detection of pulmonary nodules [31], pneumoconiosis [25], pneumonia [18], emphysema [10], and pleural effusion [32]. Coupling AI models with clinicians can result in higher diagnostic accuracy performance than either AI or clinicians alone [33]. In addition to this, they appear to improve reporting efficiency by reducing interpretation time [18].
Most deep learning systems developed to date, however, have been limited in scope, often to a single or a few findings [10,34]. While demonstrating high performance within their narrow application domains, their lack of clinical breadth may limit their utility in practice. Concerns have also been raised regarding potential risks and biases that may accompany the use of deep learning systems for image interpretation assistance, such as poor generalizability across populations [35] and automation bias [36].
The application of machine learning on chest X-rays to assist in the diagnosis of COVID-19 was a real-world example that highlighted both the benefits and pitfalls of medical imaging AI. Multiple algorithms have been developed for this purpose in recent years and have demonstrated high levels of accuracy in standalone tests [19,20,21,22,23,24]. However, the performance of some COVID-19 machine learning models has been shown to suffer when applied to datasets more representative of real-world cohorts [37], attributed, in part at least, to the issue of hidden stratification and confounded training data. A broad understanding of the modern capabilities of AI systems applied to CXR interpretation, as well as potential limitations, will be necessary for clinicians as these and similar tools are introduced into their workflow in the coming years.
To that end, this literature review aimed to provide a contemporary and comprehensive overview of deep learning applications designed to facilitate CXR interpretation. Specifically, we sought to identify algorithm performance and scope, risks and benefits, and opportunities for future research and model development. Section 2 of this paper includes a description of our applied methods; Section 3, the results of our systematic review; and Section 4, a discussion of the implications of recent developments in this subdomain of applied machine learning in medicine.

2. Methods and Materials

The methods applied in this systematic review were guided by the standards of the Institute of Medicine [38] and the Preferred Reporting Items for Systematic Reviews and Meta-Analysis (PRISMA) guidelines [39]. The prospective protocol was developed and approved by senior study authors. Risk of bias (ROB) within selected studies was assessed using PROBAST [40] (prediction model risk of bias assessment tool).

2.1. Search Strategy

A comprehensive search strategy was developed and applied to the PubMed and ScienceDirect databases. To collate a contemporary sample of the literature within the rapidly developing field of deep learning technology, studies published between January 2020 and September 2022 were identified. The search strategy was based on combinations of domain specific and methodological search terms, both keywords and Medical Subject Headings (MeSH) terms (Table 1).

2.2. Eligibility Criteria

Publications were selected for full text review if they satisfied inclusion criteria: original research published in a peer review journal; published in English; involved the application of machine learning techniques to facilitate CXR interpretation and diagnosis; involved the use of CXR image data; addressed multiple radiological findings relevant to CXRs (>2 pathologies); and included data from adult patients. Studies were included if they evaluated model performance with one or more of the following performance metrics: accuracy, area under the receiver operating characteristics curve (AUC), sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), F1 score, and Matthews correlation coefficient (MCC). Articles were excluded if they were review articles, books, book chapters, or conference abstracts; did not involve the deployment of deep learning; did not involve the processing of CXR data; focused on a nonclinical application; or focused on data from a pediatric population.

2.3. Study Selection Process

Database searches were completed by one author, with all references imported and consolidated into a web-based bibliographic software package (Paperpile LLC, MA, USA). Citations and study details, including abstracts, were exported to a custom excel spreadsheet for data management. Keywords (e.g., “letter”, “proceedings”, “review”, “computed tomography” (also “CT”), “pediatric”), were used to identify articles for exclusion. Duplicates were removed. Multiple authors (M.R.M, Q.D.B, H.K.A, N.E, G.S, H.C) conducted manual screening to exclude titles and abstracts that did not meet predefined eligibility criteria. Two review authors (M.R.M, J.C) repeated this manual screening review on a 20% sample of the identified studies as a quality check. There was no disagreement between the main review process and the quality check. Studies passing the title and abstract screen underwent full text review and were appraised for inclusion. Disagreement or uncertainty regarding the inclusion of an article was resolved via discussion within the review team.

2.4. Data Extraction and Appraisal

For each included study, specific items for data extraction were collected and coded. These included study identifiers, study characteristics such as purpose, design, type, and setting, study outcomes and performance measurement, methods for model development and validation, machine learning algorithm characteristics, study results and findings, whether the article was a duplicate, whether the article was included or excluded, and the reason for exclusion. Included studies underwent an assessment of design and methodological quality using criteria defined in Table 3 and the PROBAST [40] tool.

2.5. Synthesis and Assessment

A PRISMA flow diagram [41] was produced to illustrate study screening, selection, and inclusion. Study and model details, including the number of clinical findings classified, design, dataset size, datasets used, validation techniques applied, performance metrics, and key findings were tabulated to facilitate analysis and benchmarking. Outcomes and key themes were summarized using descriptive statistics.

3. Results

3.1. Included Articles

The search resulted in the retrieval of 2248 records (Figure 1). We assessed 90 full text articles and included 46 in the final quantitative and qualitative analysis. Model and study details, along with ROB and quality, were summarized for each study.

3.2. Summary of Included Articles

The literature review identified 46 primary studies that met inclusion criteria. Most studies employed a retrospective data analysis approach to investigate device performance (97%). Only one was conducted as a prospective study in a real-world environment (Jones et al., 2021 [42]). Device performance was compared with that of physicians in 14 of the 46 included studies (30%). Of these 14 studies, device augmentation effects on clinical perception and diagnosis were evaluated in 9 out of 14 of these studies (19%). A summary of included studies, their aims, design, datasets, and number of findings identified are outlined in Table 2.

3.3. Quality Appraisal and Risk of Bias

Included studies underwent a quality appraisal. Results of the assessment of study quality, including appraisal criteria and scores for article quality, are presented in Table 3. The quality of studies varied across assessment domains, with some studies demonstrating a marked lack of methodological quality. A total of 29 studies were considered high quality, with an overall quality score of 70, while 15 studies were considered moderate quality, with a score of 50–60. Two studies were low quality, with an overall score of 30–40. The most common factor adversely affecting study quality was the lack of an appropriate comparator for device performance. All studies demonstrated an appropriate design, whereas only 67% involved the use of appropriate comparators. Some studies involved training a single model and did not compare its performance to other baseline models or to clinicians. Model training datasets were of sufficient size and quality in 78% of studies. Likewise, appropriate validation methods were applied in 78% of studies. Often, training dataset characteristics and validation methods were not reported; however, this was not considered a negative indicator of study quality because several studies investigated commercial or previously established devices, and these details were reported in previous studies. Appropriate sample size, performance metrics, and statistical analysis techniques were prevalent, evident in 97%, 100%, and 93% of studies, respectively.
The PROBAST [40] ROB tool assessed shortcomings in study design, conduct, and analysis that may have put the results of a study at risk of being flawed or biased. Of the 46 studies assessed, 39 were determined to be at low risk of bias, 6 at high risk, and 1 study was of unclear risk [89] (Table A1 in Appendix A). Assessment across the four PROBAST domains presented as percentages are displayed in Figure 2. The primary contributor to the high ROB in these studies was associated with patient selection methods.

3.4. Comprehensiveness and Algorithm Development

A clear theme that emerged from this systematic review was that machine learning models designed to facilitate CXR interpretation have become substantially more clinically comprehensive. Many models were only capable of classifying less than eight clinical findings. The mean number of clinical findings classified by models was 16, with a mode of 14. The frequency of models classifying 14 findings correlates to the recurring use of the Chest X-ray14 [47] dataset, which is labeled for 14 diseases. The top three most comprehensive CXR classification models, however, markedly exceeded these benchmarks. These models were Jadhav et al., 2020 [64] with 54 findings, Wu et al., 2020 [11] with 72 findings, and Seah et al., 2021 [83] Jones et al., 2021 [42] with 124 findings. A breakdown of findings evaluated per device is presented in Figure 3. Algorithm architectures applied included UNet [96], DenseNet [97], ResNet [98], EfficientNet [99], and the VGG neural networks [100].

3.5. Data, Model Training, and Ground Truth Labeling

The development of effective comprehensive CXR machine learning models relies on access to large datasets. Of the studies that reported their training and validation dataset size, on average, 128,662 images were used to train and validate models. The most comprehensive CXR models encompassing more than 10 clinical findings have been based on just four public datasets: MIMIC [65], PadChest [75], Chest X-ray14 [47], and CheXpert [52]. Figure 4 illustrates the commonly used datasets in the studies identified.
Model validation methods varied but generally adhered to the standard three-way dataset split paradigm (train–validation–test). Limited studies conducted external validation on a dataset from a different setting than the training dataset. No models were validated in a randomized controlled trial. Ground truth processes employed by researchers varied. Most studies employed a consensus of radiologists (usually two to five) who often had access to CXR reports and, in some cases, were able to correlate CXRs with CTs. A triple consensus of general (rather than subspecialist) radiologists was the most common ground truth labeling approach.

3.6. Performance and Safety

Identified studies used several different indicators to assess device performance, with the most common of these being the measurement of finding detection accuracy (Table 4). Comparators included other CXR models and clinician readers.

4. Discussion

Machine learning applied to the analysis and interpretation of CXRs carries with it significant potential for clinical quality and safety improvement. The field is developing quickly. This study was designed to comprehensively assess the performance and scope of modern algorithms and their associated risks, benefits, and development opportunities. The 46 studies included in this systematic review offer an insight into emerging themes within the contemporary landscape of deep learning models designed to interpret CXRs. There are clear trends towards increasing device comprehensiveness and improving model performance.
Published models generally demonstrated strong performance for detecting a range of clinical findings on the CXR. Some demonstrated moderate performance and likely require further development before attempts are made to apply them to clinical practice. In contrast, one comprehensive model demonstrated standout performance, with an average AUC of 0.96 across 124 findings [83]. The next most comprehensive model, which was capable of detecting 72 findings, demonstrated an average AUC of 0.77 [11]. When compared with physician detection accuracy, the identified devices were typically found to be as accurate, or more accurate, than radiologist or non-radiologist clinicians [11,43,59,63,71,74,81,82,83,88]. Taking this further, multiple studies demonstrated that use of well-trained and validated deep learning models can improve the clinical finding classification performance of clinicians when acting as a diagnostic assistance device [42,43,57,62,66,74,83,87]. This points to the potential utility and impact of machine learning systems applied to clinical practice. Transfer learning and open access to pretrained models and model architectures have underpinned the development of effective deep learning models in radiology. The continued development and optimization of these kinds of transferable models would be beneficial for facilitating further improvements in healthcare.
Another endpoint assessed by several studies was reporting and interpretation efficiency. Some included studies evaluated the performance of high-accuracy devices within the scope of developing triage or prioritization tools, which are designed to alert clinicians to cases suspected of containing time-sensitive findings. These devices have the potential to improve efficiency and patient safety by reducing the time between image acquisition and reporting by the physician. Simulation studies indicate that when these devices are used to triage studies, the report turnaround time (RTAT) of cases that include time-sensitive findings is significantly reduced [49,74]. In addition to RTAT, reporting time is another indicator used to measure efficiency. Several studies investigated the impact of AI-assisted interpretation on reading time, with some studies indicating that reporting time was reduced [43,74,87], while others found that reporting time was increased [42]. A demonstrable impact to patient outcomes may follow AI-enabled efficiency gains to radiology workflows; however, further research is necessary to establish the presence or extent of such benefits.
While the majority of studies were conducted on retrospective datasets, one study was conducted in a prospective real-world reporting environment and evaluated radiologist agreement and impact on clinical decision making due to device findings [42]. Results indicated that the radiologist and device were in complete agreement in 86.5% of cases, and device predictions led to significant report changes, changed patient management planning, and altered further imaging recommendations in 3.1%, 1.4%, and 1.0% of cases respectively. A similar retrospective study was conducted, producing comparable results [68]. In another study, a device was used to flag cases suspected of containing clinically significant findings that were initially labeled normal [62]. The device initially overlooked relevant abnormalities with a detection yield and a false referral rate of 2.4% and 14.0%, respectively.

4.1. Risk and Safety

Several recurring risks were highlighted by researchers including the potential for poor model generalizability, suboptimal case labeling, and the potential for data perturbation. The overfitting of CXR models has also been identified as a performance risk, leading to overestimation of performance or poor generalizability of machine learning models on external datasets [9]. External validation is an important issue in applied machine learning that has potential implications for patient safety. Some evidence suggested that high performing models may not generalize well [69]. In this review, only a limited number of included studies performed external validation of the evaluated device. Some studies reported significant drops in model performance when they were applied to external data [73,85]. These studies that reveal the so called ‘generalization gap’ underscore the need for vigilance by healthcare providers whenever efforts are made to translate machine learning models into clinical practice.
Limitations in availability of large, high quality, and accurately labeled CXR datasets can present a potential risk for developing and testing high performing and appropriately generalizable machine learning models [9]. More than half of included studies used training data from publicly available datasets originating solely from US patients (Chest X-ray14 [47], CheXpert [52], MIMIC [65]), while many others used curated private datasets with images from institutions limited to a single country or region [42,55,56,59,62,66,68,74,76,77,81,87,88]. A limited number of studies leveraged data from multiple countries [44,46,82,83,84,95]. Additional generalizability studies are required to test and verify the performance of deep learning models across different patient populations. The ethical public release of large de-identified datasets may facilitate the development of higher quality and more generalizable machine learning systems.
Natural language processing (NLP) can be problematic and noisy when used for the generation of training or ground truth labels [53]. At present, several common public datasets use NLP on the original radiologist reports to identify pathology contained in CXR images [47]. Reports are often incomplete representations of clinical findings present in the associated imaging. NLP is, therefore, prone to inaccurate image annotation, leading to negative downstream effects on model training. For example, it has been reported that the NLP-generated labels in the ChestX-ray14 [47] dataset, which was used in 17 studies, do not accurately reflect the visual content of the CXR images [101]. Investments in high-quality data labeling by expert clinicians may serve to address this issue, but these activities are resource intensive.
Testing datasets should ideally be representative of the target population (e.g., include diverse demographic groups) and the target disease, condition, or abnormality for which the model is intended. The use of datasets that include limited patient subgroups or are enriched for particular findings may not reflect the true prevalence of a disease or condition in the real world, potentially leading to spectrum bias. Spectrum bias present in the dataset can lead to model generalizability issues, resulting in reduced performance and limited clinical applicability. Several studies were identified that may have been affected. Examples include datasets that contained only one or two findings per image [57,87], only included CXRs with an associated follow-up CT scan [66], and datasets that were hand-picked rather than consecutively selected [81,82]. Further work testing and demonstrating the generalizability characteristics of published models is warranted and will serve to reinforce user confidence and patient safety.
Another consideration is the potential negative influence of AI systems on physician decision making. Automation bias, where overreliance on automated systems may lead to false positives being overlooked or a reluctance to question the suggestions made by the AI model, appears to be a particular risk for less experienced clinicians. While these issues were not assessed empirically in the included studies, the issue was highlighted and discussed. Models with a high false positive rate may require greater clinical expertise to separate true from false positives [61,62,67]. Conversely, evidence also suggests that less experienced clinicians may see the greatest benefit from AI diagnostic assistance [42]. To mitigate the risk of automation bias, manufacturers are expected to clearly report the performance details of their AI assist devices, and clinicians are expected to understand the performance characteristics and limitations of the systems they use. When developing algorithms for real-world use, vendors should be aware of evolving evidence pertaining to the mitigation of automation bias, including implementation principles and interface design choices [102].
The quality of the dataset labeling method is likely to be a cornerstone of safe deep learning model development for systems intended for clinical use. Open source datasets may be vulnerable to adversarial perturbation, which can induce model failure or falsely high performance in image classification tasks [103]. Image perturbations are often difficult to detect. They can be extremely small (a few pixels) and hence may not substantially affect data distributions. Attention to data security controls is necessary for systems intended for clinical application.
AI-assisted triage may lead to longer RTAT in the case of false negatives through down-prioritization of these cases and up-prioritization of cases with positive AI predictions. One study highlighted that there was a risk of false negatives leading to greatly increased RTAT for these studies, which would equate to a significant delay in patient treatment in the real world [49]. The performance characteristics and limitations of clinically applied models must be rigorously evaluated and clearly understood.

4.2. Benefits

The clinical benefits of AI models for medical image interpretation can be divided into two primary domains: improved accuracy in detecting pathology on the image, and improved reporting efficiency. Improved reporting accuracy was highlighted in numerous included studies [42,43,57,62,66,74,83,87]. This has the potential to reduce false positive and false negative rates and reduce unnecessary follow-up CT examinations and associated radiation exposure. This may lead to earlier finding detection and improved patient outcomes in screening, outpatient, emergency, and inpatient settings. While the majority of studies appeared to demonstrate improved physician performance with diagnostic device assistance, the device evaluated by Hwang and colleagues focused on detecting false negatives in CXRs originally interpreted as normal by radiologists [62]. CXRs with “normal” reports were assessed by the AI model. Researchers demonstrated a false referral rate of 0.97% and found that 1.2% contained salient clinical findings. Employing machine learning models to reduce false negative rates and improve the quality of reporting in this way will continue to be of interest to radiology providers as workload volume and complexity grow.
Several included studies demonstrated improved reporting efficiency, which coalesced into two primary categories. These were (1) reduced time to report studies that contain critical pathology [49,74] and (2) a reduction in reporting time per case [43,74,87]. An increase in reporting efficiency may impact patient outcomes by reducing the time to treatment for patients presenting with time-sensitive pathologies and increasing the rate at which physicians can report CXRs.
A further benefit identified was the ability for some AI models to provide consistent detection accuracy across variations in image quality. Some studies demonstrated that model performance was resilient to different image sources and suboptimal acquisition quality [57,60,82,88], demonstrating this kind of model resilience provides additional quality and safety assurance to the practicing clinician.
In addition to the benefits outlined above, a study conducted by Jabbour and colleagues highlighted the value of using an AI model capable of combining and evaluating patient information from multiple sources to further improve diagnostic accuracy [63]. In this study, a model designed to differentiate between causes of acute respiratory failure was trained using CXRs and clinical data from electronic health records, leading to a detection accuracy similar to, or better than, clinician readers. The application of multimodal AI systems is a developing trend in medicine [104]. A summary of the clinical benefits identified in the included studies is presented in Table 5.

4.3. Study Strengths and Limitations

The strengths of this systematic review include adherence to the PRISMA guidelines and standards of the Institute of Medicine and a critical assessment of risk of bias for the included studies using a robust assessment tool, PROBAST. Another was the comprehensive search strategy applied and the replicated screening review by multiple authors of a portion of identified studies as a quality control process. Limitations of this review include the use of a detailed although unvalidated tool for the assessment of study quality and a restriction of our screened studies to the English language. Recent evidence suggests that an English language search strategy restriction is unlikely to affect results [105].

5. Conclusions

Deep learning has been widely applied to successfully facilitate CXR interpretation. Models have been developed to classify a wide range of pathologies, and it is evident that models are becoming progressively more clinically comprehensive. It is also apparent that classification performance is improving over time.
This review focused on machine learning devices for classification of CXRs, revealing that many such software devices have been developed since January 2020. The benefits of the devices described fall under several categories, including improved pathology detection accuracy, improved triage to reduce time to treatment for critical findings, and a reduction in reporting time.
While the benefits of these devices were well reported, the potential risks associated with their adoption remained poorly characterized, with risks only superficially noted in some primary studies and not examined explicitly. The key risks associated with these devices include the potential for dataset spectrum bias, resulting from datasets not being reflective of the real-world environment, potentially limiting their clinical application. Additionally, external validation to test model generalizability was often not reported. Another risk, particularly for less experienced clinicians, is automation bias.
The world is currently experiencing a global shortage of radiologists and increased rates of clinician burnout [106]. In the United States, the number of radiologists as a percentage of the physician workforce is decreasing, and the geographic distribution of radiologists favors larger, more urban settings [107]. Even when trained radiologists are available, CXRs are often interpreted first and acted upon by non-radiologist clinicians such as intensivists and emergency physicians [108]. In developing countries, radiology services are scarce. As of 2015, only 11 radiologists served the 12 million people of Rwanda, while the entire country of Liberia, with a population of four million, had only two practicing radiologists [108]. In our experience, in some health systems, as few as one in ten CXRs are ever reviewed and reported by a radiologist. The accurate automated analysis of radiographs has the potential to improve radiologist workflow efficiency and extend life-changing clinical expertise to underserved regions [49]. In developing countries, solving the cost, complexity, skill requirement, and sustainability issues of radiology services has been a long-standing challenge [109,110]. The use of deep learning diagnostic adjuncts represents potential for increasing radiology capacity and providing better access to these services for patients.
The quality of clinical machine learning decision support systems is dependent upon the quality of the full product development lifecycle, from initial design to post-implementation monitoring [111,112]. Careful data curation and processing are required to ensure that data are broadly representative of clinical populations, to manage label fidelity and to ensure quality model training and validation [71]. Robust clinical evidence is required to demonstrate reliability, validity, safety, and beneficial clinical impact. Usability and interpretability for clinical end users are critical to adoption, and effective post-implementation performance and safety monitoring is key to quality management and ensuring patient care improvement [113].
The immediate future of applied machine learning in CXRs seems likely to follow the trends established in this systematic review. Broader comprehensiveness and continual improvements in model performance will approach and exceed that of human expert counterparts. In pursuit of these aspirations, we may see increasing use of novel development techniques such as generative adversarial networks (GANs) to augment training datasets and overcome the challenge of data limitations [114]. CXR data may be drawn upon by multimodal deep learning models and combined with other modalities such as ECGs to better predict specific disease states [115,116]. Early work has even shown that two-dimensional CXRs can be used to reconstruct three-dimensional CT images and improve pathology detection and classification efforts [117]. Interpretation automation may benefit patients in communities lacking radiologist expertise and where investigations presently go unreported.
Machine learning is driving the future of radiology. Developments will require shifts in clinical practice and careful risk mitigation. Radiologists need to be a part of the machine learning development process and drive the safe implementation of high-quality systems. Radiologists will play a key role in quality control and innovation as machine learning systems are applied to achieve better patient outcomes at scale.

Funding

This research and the APC was funded by Annalise.ai.

Data Availability Statement

The datasets used and/or analyzed during the current study are available from the corresponding author on request.

Conflicts of Interest

Employees of the funder (Annalise.ai) were involved in study design, data collection, data analysis, data interpretation, and writing of the report.

Appendix A. Assessment Criteria for Quality and Risk of Bias

Table A1. Risk of bias assessment of included studies. + Indicates low ROB, - indicates high ROB, and ? indicates unclear ROB.
Table A1. Risk of bias assessment of included studies. + Indicates low ROB, - indicates high ROB, and ? indicates unclear ROB.
PROBAST ROB Assessment
StudyParticipantsPredictorsOutcomeAnalysisOverall
Ahn et al., 2022 [43]+++++
Albahli et al., 2021 [44]+++++
Altaf et al., 2021 [46]+++++
Baltruschat et al., 2021 [49]+++++
Bharati et al., 2020 [50]+++++
Chakravarty et al., 2020 [51]+++++
Chen et al., 2020 [53]+++++
Cho, Kim et al., 2020 [55]+++++
Cho, Park et al., 2020 [56]+++++
Choi et al., 2021 [57]+++++
Fang et al., 2021 [58]+++++
Gipson et al., 2022 [59]+++++
Gündel et al., 2021 [60]+++++
Han et al., 2022 [61]+++++
Hwang et al., 2022 [62]+++++
Jabbour et al., 2022 [63]++-+-
Jadhav et al., 2020 [64]+++++
Jin et al., 2022 [66]+++++
Jones et al., 2021 [42]++-++
Kim et al., 2021 [67]+++++
Kim et al., 2022 [68]+++++
Kuo et al., 2021 [69]+++++
Lee et al., 2022 [70]+++++
Li et al., 2021 [71]+++++
Majkowska et al., 2020 [72]+++++
Mosquera et al., 2021 [73]+++++
Nam et al., 2021 [74]+++++
Niehues et al., 2021 [76]+++++
Park et al., 2020 [77]+++++
Paul et al., 2021 [78]+++++
Pham et al., 2021 [80]+++++
Rudolph et al., 2022 [81]-+++-
Rudolph et al., 2022 [82]-+++-
Seah et al., 2021 [83]+++++
Senan et al., 2021 [84]-+++-
Sharma et al., 2020 [85]+++--
Sung et al., 2021 [87]+++++
Van Beek et al., 2022 [88]+++++
Verma et al., 2020 [89]+++??
Wang et al., 2021 [90]-+++-
Wang et al., 2020 [91]+++++
Wang et al., 2021 [92]+++++
Wang et al., 2020 [93]+++++
Wu et al., 2020 [11]+++++
Xu et al., 2020 [94]+++++
Zhou et al., 2021 [95]+++++

References

  1. Mould, R.F. The Early History of X-ray Diagnosis with Emphasis on the Contributions of Physics 1895–1915. Phys. Med. Biol. 1995, 40, 1741–1787. [Google Scholar] [CrossRef] [PubMed]
  2. United Nations. Sources and Effects of Ionizing Radiation; United Nations: New York, NY, USA, 2011; ISBN 9789210544825. [Google Scholar]
  3. Lee, C.S.; Nagy, P.G.; Weaver, S.J.; Newman-Toker, D.E. Cognitive and System Factors Contributing to Diagnostic Errors in Radiology. AJR Am. J. Roentgenol. 2013, 201, 611–617. [Google Scholar] [CrossRef] [PubMed]
  4. Del Ciello, A.; Franchi, P.; Contegiacomo, A.; Cicchetti, G.; Bonomo, L.; Larici, A.R. Missed Lung Cancer: When, Where, and Why? Diagn. Interv. Radiol. 2017, 23, 118–126. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  5. Brady, A.P. Error and Discrepancy in Radiology: Inevitable or Avoidable? Insights Imaging 2017, 8, 171–182. [Google Scholar] [CrossRef] [Green Version]
  6. Nagarsheth, K.; Kurek, S. Ultrasound Detection of Pneumothorax Compared with Chest X-ray and Computed Tomography Scan. Am. Surg. 2011, 77, 480–484. [Google Scholar] [CrossRef] [PubMed]
  7. Hayden, G.E.; Wrenn, K.W. Chest Radiograph vs. Computed Tomography Scan in the Evaluation for Pneumonia. J. Emerg. Med. 2009, 36, 266–270. [Google Scholar] [CrossRef]
  8. Vikgren, J.; Zachrisson, S.; Svalkvist, A.; Johnsson, A.A.; Boijsen, M.; Flinck, A.; Kheddache, S.; Båth, M. Comparison of Chest Tomosynthesis and Chest Radiography for Detection of Pulmonary Nodules: Human Observer Study of Clinical Cases. Radiology 2008, 249, 1034–1041. [Google Scholar] [CrossRef]
  9. Jones, C.M.; Buchlak, Q.D.; Oakden-Rayner, L.; Milne, M.; Seah, J.; Esmaili, N.; Hachey, B. Chest Radiographs and Machine Learning—Past, Present and Future. J. Med. Imaging Radiat. Oncol. 2021, 65, 538–544. [Google Scholar] [CrossRef]
  10. Rajpurkar, P.; Irvin, J.; Zhu, K.; Yang, B.; Mehta, H.; Duan, T.; Ding, D.; Bagul, A.; Langlotz, C.; Shpanskaya, K.; et al. CheXNet: Radiologist-Level Pneumonia Detection on Chest X-rays with Deep Learning. arXiv 2017, arXiv:1711.05225. [Google Scholar]
  11. Wu, J.T.; Wong, K.C.L.; Gur, Y.; Ansari, N.; Karargyris, A.; Sharma, A.; Morris, M.; Saboury, B.; Ahmad, H.; Boyko, O.; et al. Comparison of Chest Radiograph Interpretations by Artificial Intelligence Algorithm vs Radiology Residents. JAMA Netw. Open 2020, 3, e2022779. [Google Scholar] [CrossRef]
  12. Buchlak, Q.D.; Esmaili, N.; Leveque, J.-C.; Farrokhi, F.; Bennett, C.; Piccardi, M.; Sethi, R.K. Machine Learning Applications to Clinical Decision Support in Neurosurgery: An Artificial Intelligence Augmented Systematic Review. Neurosurg. Rev. 2020, 43, 1235–1253. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  13. Buchlak, Q.D.; Esmaili, N.; Leveque, J.-C.; Bennett, C.; Farrokhi, F.; Piccardi, M. Machine Learning Applications to Neuroimaging for Glioma Detection and Classification: An Artificial Intelligence Augmented Systematic Review. J. Clin. Neurosci. 2021, 89, 177–198. [Google Scholar] [CrossRef] [PubMed]
  14. Ben-Israel, D.; Jacobs, W.B.; Casha, S.; Lang, S.; Ryu, W.H.A.; de Lotbiniere-Bassett, M.; Cadotte, D.W. The Impact of Machine Learning on Patient Care: A Systematic Review. Artif. Intell. Med. 2020, 103, 101785. [Google Scholar] [CrossRef] [PubMed]
  15. Tschandl, P.; Codella, N.; Akay, B.N.; Argenziano, G.; Braun, R.P.; Cabo, H.; Gutman, D.; Halpern, A.; Helba, B.; Hofmann-Wellenhof, R.; et al. Comparison of the Accuracy of Human Readers versus Machine-Learning Algorithms for Pigmented Skin Lesion Classification: An Open, Web-Based, International, Diagnostic Study. Lancet Oncol. 2019, 20, 938–947. [Google Scholar] [CrossRef]
  16. Buchlak, Q.D.; Milne, M.R.; Seah, J.; Johnson, A.; Samarasinghe, G.; Hachey, B.; Esmaili, N.; Tran, A.; Leveque, J.-C.; Farrokhi, F.; et al. Charting the Potential of Brain Computed Tomography Deep Learning Systems. J. Clin. Neurosci. 2022, 99, 217–223. [Google Scholar] [CrossRef]
  17. Hwang, E.J.; Hong, J.H.; Lee, K.H.; Kim, J.I.; Nam, J.G.; Kim, D.S.; Choi, H.; Yoo, S.J.; Goo, J.M.; Park, C.M. Deep Learning Algorithm for Surveillance of Pneumothorax after Lung Biopsy: A Multicenter Diagnostic Cohort Study. Eur. Radiol. 2020, 30, 3660–3671. [Google Scholar] [CrossRef]
  18. Kim, J.H.; Kim, J.Y.; Kim, G.H.; Kang, D.; Kim, I.J.; Seo, J.; Andrews, J.R.; Park, C.M. Clinical Validation of a Deep Learning Algorithm for Detection of Pneumonia on Chest Radiographs in Emergency Department Patients with Acute Febrile Respiratory Illness. J. Clin. Med. 2020, 9, 1981. [Google Scholar] [CrossRef]
  19. Khasawneh, N.; Fraiwan, M.; Fraiwan, L.; Khassawneh, B.; Ibnian, A. Detection of COVID-19 from Chest X-ray Images Using Deep Convolutional Neural Networks. Sensors 2021, 21, 5940. [Google Scholar] [CrossRef]
  20. Nasiri, H.; Hasani, S. Automated Detection of COVID-19 Cases from Chest X-ray Images Using Deep Neural Network and XGBoost. Radiography (London) 2022, 28, 732–738. [Google Scholar] [CrossRef]
  21. Khan, S.H.; Sohail, A.; Khan, A.; Lee, Y.-S. COVID-19 Detection in Chest X-ray Images Using a New Channel Boosted CNN. Diagnostics 2022, 12, 267. [Google Scholar] [CrossRef]
  22. Aboutalebi, H.; Pavlova, M.; Shafiee, M.J.; Sabri, A.; Alaref, A.; Wong, A. COVID-Net CXR-S: Deep Convolutional Neural Network for Severity Assessment of COVID-19 Cases from Chest X-ray Images. Res. Sq. 2021, 12, 25. [Google Scholar] [CrossRef] [PubMed]
  23. Ezzoddin, M.; Nasiri, H.; Dorrigiv, M. Diagnosis of COVID-19 Cases from Chest X-ray Images Using Deep Neural Network and LightGBM. arXiv 2022, arXiv:2203.14275. [Google Scholar]
  24. Nasiri, H.; Kheyroddin, G.; Dorrigiv, M.; Esmaeili, M.; Nafchi, A.R.; Ghorbani, M.H.; Zarkesh-Ha, P. Classification of COVID-19 in Chest X-ray Images Using Fusion of Deep Features and LightGBM. arXiv 2022, arXiv:2206.04548. [Google Scholar]
  25. Wang, X.; Yu, J.; Zhu, Q.; Li, S.; Zhao, Z.; Yang, B.; Pu, J. Potential of Deep Learning in Assessing Pneumoconiosis Depicted on Digital Chest Radiography. Occup. Environ. Med. 2020, 77, 597–602. [Google Scholar] [CrossRef]
  26. Qin, Z.Z.; Sander, M.S.; Rai, B.; Titahong, C.N.; Sudrungrot, S.; Laah, S.N.; Adhikari, L.M.; Carter, E.J.; Puri, L.; Codlin, A.J.; et al. Using Artificial Intelligence to Read Chest Radiographs for Tuberculosis Detection: A Multi-Site Evaluation of the Diagnostic Accuracy of Three Deep Learning Systems. Sci. Rep. 2019, 9, 15000. [Google Scholar] [CrossRef] [Green Version]
  27. Jang, S.; Song, H.; Shin, Y.J.; Kim, J.; Kim, J.; Lee, K.W.; Lee, S.S.; Lee, W.; Lee, S.; Lee, K.H. Deep Learning-Based Automatic Detection Algorithm for Reducing Overlooked Lung Cancers on Chest Radiographs. Radiology 2020, 296, 652–661. [Google Scholar] [CrossRef] [PubMed]
  28. Gordienko, Y.; Gang, P.; Hui, J.; Zeng, W.; Kochura, Y.; Alienin, O.; Rokovyi, O.; Stirenko, S. Deep Learning with Lung Segmentation and Bone Shadow Exclusion Techniques for Chest X-ray Analysis of Lung Cancer. In Advances in Intelligent Systems and Computing; Advances in intelligent systems and computing; Springer International Publishing: Cham, Switzerland, 2019; pp. 638–647. ISBN 9783319910079. [Google Scholar]
  29. Singh, V.; Danda, V.; Gorniak, R.; Flanders, A.; Lakhani, P. Assessment of Critical Feeding Tube Malpositions on Radiographs Using Deep Learning. J. Digit. Imaging 2019, 32, 651–655. [Google Scholar] [CrossRef] [Green Version]
  30. Singh, R.; Kalra, M.K.; Nitiwarangkul, C.; Patti, J.A.; Homayounieh, F.; Padole, A.; Rao, P.; Putha, P.; Muse, V.V.; Sharma, A.; et al. Deep Learning in Chest Radiography: Detection of Findings and Presence of Change. PLoS ONE 2018, 13, e0204155. [Google Scholar] [CrossRef] [Green Version]
  31. Nam, J.G.; Park, S.; Hwang, E.J.; Lee, J.H.; Jin, K.-N.; Lim, K.Y.; Vu, T.H.; Sohn, J.H.; Hwang, S.; Goo, J.M.; et al. Development and Validation of Deep Learning-Based Automatic Detection Algorithm for Malignant Pulmonary Nodules on Chest Radiographs. Radiology 2019, 290, 218–228. [Google Scholar] [CrossRef] [Green Version]
  32. Cicero, M.; Bilbily, A.; Colak, E.; Dowdell, T.; Gray, B.; Perampaladas, K.; Barfett, J. Training and Validating a Deep Convolutional Neural Network for Computer-Aided Detection and Classification of Abnormalities on Frontal Chest Radiographs. Investig. Radiol. 2017, 52, 281–287. [Google Scholar] [CrossRef]
  33. Tschandl, P.; Rinner, C.; Apalla, Z.; Argenziano, G.; Codella, N.; Halpern, A.; Janda, M.; Lallas, A.; Longo, C.; Malvehy, J.; et al. Human-Computer Collaboration for Skin Cancer Recognition. Nat. Med. 2020, 26, 1229–1234. [Google Scholar] [CrossRef] [PubMed]
  34. Wang, H.; Xia, Y. ChestNet: A Deep Neural Network for Classification of Thoracic Diseases on Chest Radiography. arXiv 2018, arXiv:1807.03058. [Google Scholar]
  35. Kelly, C.J.; Karthikesalingam, A.; Suleyman, M.; Corrado, G.; King, D. Key Challenges for Delivering Clinical Impact with Artificial Intelligence. BMC Med. 2019, 17, 195. [Google Scholar] [CrossRef] [Green Version]
  36. Geis, J.R.; Brady, A.P.; Wu, C.C.; Spencer, J.; Ranschaert, E.; Jaremko, J.L.; Langer, S.G.; Borondy Kitts, A.; Birch, J.; Shields, W.F.; et al. Ethics of Artificial Intelligence in Radiology: Summary of the Joint European and North American Multisociety Statement. Radiology 2019, 293, 436–440. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  37. DeGrave, A.J.; Janizek, J.D.; Lee, S.-I. AI for Radiographic COVID-19 Detection Selects Shortcuts over Signal. Nat. Mach. Intell. 2021, 3, 610–619. [Google Scholar] [CrossRef]
  38. Finding What Works in Health Care: Standards for Systematic Reviews; Eden, J.; Levit, L.; Berg, A.; Morton, S. (Eds.) National Academies Press: Washington, DC, USA, 2011; ISBN 9781283151757. [Google Scholar]
  39. Moher, D.; Liberati, A.; Tetzlaff, J.; Altman, D.G. PRISMA Group Preferred Reporting Items for Systematic Reviews and Meta-Analyses: The PRISMA Statement. Int. J. Surg. 2010, 8, 336–341. [Google Scholar] [CrossRef] [Green Version]
  40. Wolff, R.F.; Moons, K.G.M.; Riley, R.D.; Whiting, P.F.; Westwood, M.; Collins, G.S.; Reitsma, J.B.; Kleijnen, J.; Mallett, S. PROBAST: A Tool to Assess the Risk of Bias and Applicability of Prediction Model Studies. Ann. Intern. Med. 2019, 170, 51–58. [Google Scholar] [CrossRef] [Green Version]
  41. Page, M.J.; Moher, D.; Bossuyt, P.M.; Boutron, I.; Hoffmann, T.C.; Mulrow, C.D.; Shamseer, L.; Tetzlaff, J.M.; Akl, E.A.; Brennan, S.E.; et al. PRISMA 2020 Explanation and Elaboration: Updated Guidance and Exemplars for Reporting Systematic Reviews. BMJ 2021, 372, n160. [Google Scholar] [CrossRef]
  42. Jones, C.M.; Danaher, L.; Milne, M.R.; Tang, C.; Seah, J.; Oakden-Rayner, L.; Johnson, A.; Buchlak, Q.D.; Esmaili, N. Assessment of the Effect of a Comprehensive Chest Radiograph Deep Learning Model on Radiologist Reports and Patient Outcomes: A Real-World Observational Study. BMJ Open 2021, 11, e052902. [Google Scholar] [CrossRef]
  43. Ahn, J.S.; Ebrahimian, S.; McDermott, S.; Lee, S.; Naccarato, L.; Di Capua, J.F.; Wu, M.Y.; Zhang, E.W.; Muse, V.; Miller, B.; et al. Association of Artificial Intelligence-Aided Chest Radiograph Interpretation With Reader Performance and Efficiency. JAMA Netw. Open 2022, 5, e2229289. [Google Scholar] [CrossRef]
  44. Albahli, S.; Yar, G.N.A.H. Fast and Accurate Detection of COVID-19 along with 14 Other Chest Pathologies Using a Multi-Level Classification: Algorithm Development and Validation Study. J. Med. Internet Res. 2021, 23, e23693. [Google Scholar] [CrossRef] [PubMed]
  45. Cohen, J.P.; Morrison, P.; Dao, L.; Roth, K.; Duong, T.Q.; Ghassemi, M. COVID-19 Image Data Collection: Prospective Predictions Are the Future. arXiv 2020, arXiv:2006.11988. [Google Scholar]
  46. Altaf, F.; Islam, S.M.S.; Janjua, N.K. A Novel Augmented Deep Transfer Learning for Classification of COVID-19 and Other Thoracic Diseases from X-rays. Neural Comput. Appl. 2021, 33, 14037–14048. [Google Scholar] [CrossRef] [PubMed]
  47. Wang, X.; Peng, Y.; Lu, L.; Lu, Z.; Bagheri, M.; Summers, R.M. ChestX-ray8: Hospital-Scale Chest X-ray Database and Benchmarks on Weakly-Supervised Classification and Localization of Common Thorax Diseases. In Proceedings of the 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Honolulu, HI, USA, 21–26 July 2017. [Google Scholar]
  48. Cohen, J.P.; Morrison, P.; Dao, L. COVID-19 Image Data Collection. arXiv 2020, arXiv:2003.11597. [Google Scholar]
  49. Baltruschat, I.; Steinmeister, L.; Nickisch, H.; Saalbach, A.; Grass, M.; Adam, G.; Knopp, T.; Ittrich, H. Smart Chest X-ray Worklist Prioritization Using Artificial Intelligence: A Clinical Workflow Simulation. Eur. Radiol. 2021, 31, 3837–3845. [Google Scholar] [CrossRef] [PubMed]
  50. Bharati, S.; Podder, P.; Mondal, M.R.H. Hybrid Deep Learning for Detecting Lung Diseases from X-ray Images. Inform. Med. Unlocked 2020, 20, 100391. [Google Scholar] [CrossRef]
  51. Chakravarty, A.; Sarkar, T.; Ghosh, N.; Sethuraman, R.; Sheet, D. Learning Decision Ensemble Using a Graph Neural Network for Comorbidity Aware Chest Radiograph Screening. Annu. Int. Conf. IEEE Eng. Med. Biol. Soc. 2020, 2020, 1234–1237. [Google Scholar]
  52. Irvin, J.; Rajpurkar, P.; Ko, M.; Yu, Y.; Ciurea-Ilcus, S.; Chute, C.; Marklund, H.; Haghgoo, B.; Ball, R.; Shpanskaya, K.; et al. CheXpert: A Large Chest Radiograph Dataset with Uncertainty Labels and Expert Comparison. Proc. Conf. AAAI Artif. Intell. 2019, 33, 590–597. [Google Scholar] [CrossRef] [Green Version]
  53. Chen, H.; Miao, S.; Xu, D.; Hager, G.D.; Harrison, A.P. Deep Hiearchical Multi-Label Classification Applied to Chest X-ray Abnormality Taxonomies. Med. Image Anal. 2020, 66, 101811. [Google Scholar] [CrossRef]
  54. Gohagan, J.K.; Prorok, P.C.; Hayes, R.B.; Kramer, B.-S. The Prostate, Lung, Colorectal and Ovarian (PLCO) Cancer Screening Trial of the National Cancer Institute: History, Organization, and Status. Control. Clin. Trials 2000, 21, 251S–272S. [Google Scholar] [CrossRef]
  55. Cho, Y.; Kim, Y.-G.; Lee, S.M.; Seo, J.B.; Kim, N. Reproducibility of Abnormality Detection on Chest Radiographs Using Convolutional Neural Network in Paired Radiographs Obtained within a Short-Term Interval. Sci. Rep. 2020, 10, 17417. [Google Scholar] [CrossRef] [PubMed]
  56. Cho, Y.; Park, B.; Lee, S.M.; Lee, K.H.; Seo, J.B.; Kim, N. Optimal Number of Strong Labels for Curriculum Learning with Convolutional Neural Network to Classify Pulmonary Abnormalities in Chest Radiographs. Comput. Biol. Med. 2021, 136, 104750. [Google Scholar] [CrossRef] [PubMed]
  57. Choi, S.Y.; Park, S.; Kim, M.; Park, J.; Choi, Y.R.; Jin, K.N. Evaluation of a Deep Learning-Based Computer-Aided Detection Algorithm on Chest Radiographs: Case-Control Study. Medicine (Baltimore) 2021, 100, e25663. [Google Scholar] [CrossRef] [PubMed]
  58. Fang, J.; Xu, Y.; Zhao, Y.; Yan, Y.; Liu, J.; Liu, J. Weighing Features of Lung and Heart Regions for Thoracic Disease Classification. BMC Med. Imaging 2021, 21, 99. [Google Scholar] [CrossRef]
  59. Gipson, J.; Tang, V.; Seah, J.; Kavnoudias, H.; Zia, A.; Lee, R.; Mitra, B.; Clements, W. Diagnostic Accuracy of a Commercially Available Deep-Learning Algorithm in Supine Chest Radiographs Following Trauma. Br. J. Radiol. 2022, 95, 20210979. [Google Scholar] [CrossRef]
  60. Gündel, S.; Setio, A.A.A.; Ghesu, F.C.; Grbic, S.; Georgescu, B.; Maier, A.; Comaniciu, D. Robust Classification from Noisy Labels: Integrating Additional Knowledge for Chest Radiography Abnormality Assessment. Med. Image Anal. 2021, 72, 102087. [Google Scholar] [CrossRef]
  61. Han, Y.; Chen, C.; Tang, L.; Lin, M.; Jaiswal, A.; Wang, S.; Tewfik, A.; Shih, G.; Ding, Y.; Peng, Y. Using Radiomics as Prior Knowledge for Thorax Disease Classification and Localization in Chest X-rays. AMIA Annu. Symp. Proc. 2022, 2021, 546–555. [Google Scholar]
  62. Hwang, E.J.; Park, J.; Hong, W.; Lee, H.-J.; Choi, H.; Kim, H.; Nam, J.G.; Goo, J.M.; Yoon, S.H.; Lee, C.H.; et al. Artificial Intelligence System for Identification of False-Negative Interpretations in Chest Radiographs. Eur. Radiol. 2022, 32, 4468–4478. [Google Scholar] [CrossRef]
  63. Jabbour, S.; Fouhey, D.; Kazerooni, E.; Wiens, J.; Sjoding, M.W. Combining Chest X-rays and Electronic Health Record (EHR) Data Using Machine Learning to Diagnose Acute Respiratory Failure. J. Am. Med. Inform. Assoc. 2022, 29, 1060–1068. [Google Scholar] [CrossRef]
  64. Jadhav, A.; Wong, K.C.L.; Wu, J.T.; Moradi, M.; Syeda-Mahmood, T. Combining Deep Learning and Knowledge-Driven Reasoning for Chest X-ray Findings Detection. AMIA Annu. Symp. Proc. 2020, 2020, 593–601. [Google Scholar]
  65. Johnson, A.E.W.; Pollard, T.J.; Shen, L.; Lehman, L.-W.H.; Feng, M.; Ghassemi, M.; Moody, B.; Szolovits, P.; Celi, L.A.; Mark, R.G. MIMIC-III, a Freely Accessible Critical Care Database. Sci. Data 2016, 3, 160035. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  66. Jin, K.N.; Kim, E.Y.; Kim, Y.J.; Lee, G.P.; Kim, H.; Oh, S.; Kim, Y.S.; Han, J.H.; Cho, Y.J. Diagnostic Effect of Artificial Intelligence Solution for Referable Thoracic Abnormalities on Chest Radiography: A Multicenter Respiratory Outpatient Diagnostic Cohort Study. Eur. Radiol. 2022, 32, 3469–3479. [Google Scholar] [CrossRef] [PubMed]
  67. Kim, E.Y.; Kim, Y.J.; Choi, W.-J.; Lee, G.P.; Choi, Y.R.; Jin, K.N.; Cho, Y.J. Correction: Performance of a Deep-Learning Algorithm for Referable Thoracic Abnormalities on Chest Radiographs: A Multicenter Study of a Health Screening Cohort. PLoS ONE 2021, 16, e0251045. [Google Scholar] [CrossRef] [PubMed]
  68. Kim, E.Y.; Kim, Y.J.; Choi, W.-J.; Jeon, J.S.; Kim, M.Y.; Oh, D.H.; Jin, K.N.; Cho, Y.J. Concordance Rate of Radiologists and a Commercialized Deep-Learning Solution for Chest X-ray: Real-World Experience with a Multicenter Health Screening Cohort. PLoS ONE 2022, 17, e0264383. [Google Scholar] [CrossRef]
  69. Kuo, P.-C.; Tsai, C.C.; López, D.M.; Karargyris, A.; Pollard, T.J.; Johnson, A.E.W.; Celi, L.A. Recalibration of Deep Learning Models for Abnormality Detection in Smartphone-Captured Chest Radiograph. NPJ Digit. Med. 2021, 4, 25. [Google Scholar] [CrossRef]
  70. Lee, M.S.; Han, S.W. DuETNet: Dual Encoder Based Transfer Network for Thoracic Disease Classification. Pattern Recognit. Lett. 2022, 161, 143–153. [Google Scholar] [CrossRef]
  71. Li, F.; Shi, J.-X.; Yan, L.; Wang, Y.-G.; Zhang, X.-D.; Jiang, M.-S.; Wu, Z.-Z.; Zhou, K.-Q. Lesion-Aware Convolutional Neural Network for Chest Radiograph Classification. Clin. Radiol. 2021, 76, 155.e1–155.e14. [Google Scholar] [CrossRef]
  72. Majkowska, A.; Mittal, S.; Steiner, D.F.; Reicher, J.J.; McKinney, S.M.; Duggan, G.E.; Eswaran, K.; Cameron Chen, P.-H.; Liu, Y.; Kalidindi, S.R.; et al. Chest Radiograph Interpretation with Deep Learning Models: Assessment with Radiologist-Adjudicated Reference Standards and Population-Adjusted Evaluation. Radiology 2020, 294, 421–431. [Google Scholar] [CrossRef]
  73. Mosquera, C.; Diaz, F.N.; Binder, F.; Rabellino, J.M.; Benitez, S.E.; Beresñak, A.D.; Seehaus, A.; Ducrey, G.; Ocantos, J.A.; Luna, D.R. Chest X-ray Automated Triage: A Semiologic Approach Designed for Clinical Implementation, Exploiting Different Types of Labels through a Combination of Four Deep Learning Architectures. Comput. Methods Programs Biomed. 2021, 206, 106130. [Google Scholar] [CrossRef]
  74. Nam, J.G.; Kim, M.; Park, J.; Hwang, E.J.; Lee, J.H.; Hong, J.H.; Goo, J.M.; Park, C.M. Development and Validation of a Deep Learning Algorithm Detecting 10 Common Abnormalities on Chest Radiographs. Eur. Respir. J. 2021, 57, 2003061. [Google Scholar] [CrossRef]
  75. Bustos, A.; Pertusa, A.; Salinas, J.-M.; de la Iglesia-Vayá, M. PadChest: A Large Chest X-ray Image Dataset with Multi-Label Annotated Reports. Med. Image Anal. 2020, 66, 101797. [Google Scholar] [CrossRef]
  76. Niehues, S.M.; Adams, L.C.; Gaudin, R.A.; Erxleben, C.; Keller, S.; Makowski, M.R.; Vahldiek, J.L.; Bressem, K.K. Deep-Learning-Based Diagnosis of Bedside Chest X-ray in Intensive Care and Emergency Medicine. Investig. Radiol. 2021, 56, 525–534. [Google Scholar] [CrossRef]
  77. Park, S.; Lee, S.M.; Lee, K.H.; Jung, K.-H.; Bae, W.; Choe, J.; Seo, J.B. Deep Learning-Based Detection System for Multiclass Lesions on Chest Radiographs: Comparison with Observer Readings. Eur. Radiol. 2020, 30, 1359–1368. [Google Scholar] [CrossRef] [PubMed]
  78. Paul, A.; Tang, Y.-X.; Shen, T.C.; Summers, R.M. Discriminative Ensemble Learning for Few-Shot Chest X-ray Diagnosis. Med. Image Anal. 2021, 68, 101911. [Google Scholar] [CrossRef]
  79. Demner-Fushman, D.; Kohli, M.D.; Rosenman, M.B.; Shooshan, S.E.; Rodriguez, L.; Antani, S.; Thoma, G.R.; McDonald, C.J. Preparing a Collection of Radiology Examinations for Distribution and Retrieval. J. Am. Med. Inform. Assoc. 2016, 23, 304–310. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  80. Pham, H.H.; Le, T.T.; Tran, D.Q.; Ngo, D.T.; Nguyen, H.Q. Interpreting Chest X-rays via CNNs That Exploit Hierarchical Disease Dependencies and Uncertainty Labels. Neurocomputing 2021, 437, 186–194. [Google Scholar] [CrossRef]
  81. Rudolph, J.; Huemmer, C.; Ghesu, F.-C.; Mansoor, A.; Preuhs, A.; Fieselmann, A.; Fink, N.; Dinkel, J.; Koliogiannis, V.; Schwarze, V.; et al. Artificial Intelligence in Chest Radiography Reporting Accuracy: Added Clinical Value in the Emergency Unit Setting Without 24/7 Radiology Coverage. Investig. Radiol. 2022, 57, 90–98. [Google Scholar] [CrossRef]
  82. Rudolph, J.; Schachtner, B.; Fink, N.; Koliogiannis, V.; Schwarze, V.; Goller, S.; Trappmann, L.; Hoppe, B.F.; Mansour, N.; Fischer, M.; et al. Clinically Focused Multi-Cohort Benchmarking as a Tool for External Validation of Artificial Intelligence Algorithm Performance in Basic Chest Radiography Analysis. Sci. Rep. 2022, 12, 12764. [Google Scholar] [CrossRef]
  83. Seah, J.C.Y.; Tang, C.H.M.; Buchlak, Q.D.; Holt, X.G.; Wardman, J.B.; Aimoldin, A.; Esmaili, N.; Ahmad, H.; Pham, H.; Lambert, J.F.; et al. Effect of a Comprehensive Deep-Learning Model on the Accuracy of Chest X-ray Interpretation by Radiologists: A Retrospective, Multireader Multicase Study. Lancet Digit. Health 2021, 3, e496–e506. [Google Scholar] [CrossRef]
  84. Senan, E.M.; Alzahrani, A.; Alzahrani, M.Y.; Alsharif, N.; Aldhyani, T.H.H. Automated Diagnosis of Chest X-ray for Early Detection of COVID-19 Disease. Comput. Math. Methods Med. 2021, 2021, 6919483. [Google Scholar] [CrossRef]
  85. Sharma, A.; Rani, S.; Gupta, D. Artificial Intelligence-Based Classification of Chest X-ray Images into COVID-19 and Other Infectious Diseases. Int. J. Biomed. Imaging 2020, 2020, 8889023. [Google Scholar] [CrossRef] [PubMed]
  86. Jaeger, S.; Candemir, S.; Antani, S.; Wáng, Y.-X.J.; Lu, P.-X.; Thoma, G. Two Public Chest X-ray Datasets for Computer-Aided Screening of Pulmonary Diseases. Quant. Imaging Med. Surg. 2014, 4, 475–477. [Google Scholar] [PubMed]
  87. Sung, J.; Park, S.; Lee, S.M.; Bae, W.; Park, B.; Jung, E.; Seo, J.B.; Jung, K.-H. Added Value of Deep Learning-Based Detection System for Multiple Major Findings on Chest Radiographs: A Randomized Crossover Study. Radiology 2021, 299, 450–459. [Google Scholar] [CrossRef] [PubMed]
  88. van Beek, E.J.R.; Ahn, J.S.; Kim, M.J.; Murchison, J.T. Validation Study of Machine-Learning Chest Radiograph Software in Primary and Emergency Medicine. Clin. Radiol. 2022, 78, 1–7. [Google Scholar] [CrossRef]
  89. Verma, D.; Bose, C.; Tufchi, N.; Pant, K.; Tripathi, V.; Thapliyal, A. An Efficient Framework for Identification of Tuberculosis and Pneumonia in Chest X-ray Images Using Neural Network. Procedia Comput. Sci. 2020, 171, 217–224. [Google Scholar] [CrossRef]
  90. Wang, B.; Zhang, W. MARnet: Multi-Scale Adaptive Residual Neural Network for Chest X-ray Images Recognition of Lung Diseases. Math. Biosci. Eng. 2021, 19, 331–350. [Google Scholar] [CrossRef]
  91. Wang, H.; Jia, H.; Lu, L.; Xia, Y. Thorax-Net: An Attention Regularized Deep Neural Network for Classification of Thoracic Diseases on Chest Radiography. IEEE J. Biomed. Health Inform. 2020, 24, 475–485. [Google Scholar] [CrossRef]
  92. Wang, H.; Yang, Y.-Y.; Pan, Y.; Han, P.; Li, Z.-X.; Huang, H.-G.; Zhu, S.-Z. Detecting Thoracic Diseases via Representation Learning with Adaptive Sampling. Neurocomputing 2020, 406, 354–360. [Google Scholar] [CrossRef]
  93. Wang, H.; Wang, S.; Qin, Z.; Zhang, Y.; Li, R.; Xia, Y. Triple Attention Learning for Classification of 14 Thoracic Diseases Using Chest Radiography. Med. Image Anal. 2021, 67, 101846. [Google Scholar] [CrossRef]
  94. Xu, J.; Li, H.; Li, X. MS-ANet: Deep Learning for Automated Multi-Label Thoracic Disease Detection and Classification. PeerJ Comput. Sci. 2021, 7, e541. [Google Scholar] [CrossRef]
  95. Zhou, L.; Yin, X.; Zhang, T.; Feng, Y.; Zhao, Y.; Jin, M.; Peng, M.; Xing, C.; Li, F.; Wang, Z.; et al. Detection and Semiquantitative Analysis of Cardiomegaly, Pneumothorax, and Pleural Effusion on Chest Radiographs. Radiol. Artif. Intell. 2021, 3, e200172. [Google Scholar] [CrossRef] [PubMed]
  96. Zoph, B.; Vasudevan, V.; Shlens, J.; Le, Q.V. Learning Transferable Architectures for Scalable Image Recognition. In Proceedings of the 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition, Salt Lake City, UT, USA, 18–23 June 2018. [Google Scholar]
  97. Huang, G.; Liu, Z.; Van Der Maaten, L.; Weinberger, K.Q. Densely Connected Convolutional Networks. In Proceedings of the 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Honolulu, HI, USA, 21–26 July 2017. [Google Scholar]
  98. He, K.; Zhang, X.; Ren, S.; Sun, J. Deep Residual Learning for Image Recognition. In Proceedings of the 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Las Vegas, NV, USA, 27–30 June 2016. [Google Scholar]
  99. Tan, M.; Le, Q.V. EfficientNet: Rethinking Model Scaling for Convolutional Neural Networks. arXiv 2019, arXiv:1905.11946. [Google Scholar]
  100. Simonyan, K.; Zisserman, A. Very Deep Convolutional Networks for Large-Scale Image Recognition. arXiv 2014, arXiv:1409.1556. [Google Scholar]
  101. Oakden-Rayner, L. Exploring Large-Scale Public Medical Image Datasets. Acad. Radiol. 2020, 27, 106–112. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  102. Goddard, K.; Roudsari, A.; Wyatt, J.C. Automation Bias: A Systematic Review of Frequency, Effect Mediators, and Mitigators. J. Am. Med. Inform. Assoc. 2012, 19, 121–127. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  103. Crosby, J.; Rhines, T.; Li, F.; MacMahon, H.; Giger, M. Deep Convolutional Neural Networks in the Classification of Dual-Energy Thoracic Radiographic Views for Efficient Workflow: Analysis on over 6500 Clinical Radiographs. J. Med. Imaging (Bellingham) 2020, 7, 016501. [Google Scholar] [CrossRef]
  104. Huang, S.-C.; Pareek, A.; Zamanian, R.; Banerjee, I.; Lungren, M.P. Multimodal Fusion with Deep Neural Networks for Leveraging CT Imaging and Electronic Health Record: A Case-Study in Pulmonary Embolism Detection. Sci. Rep. 2020, 10, 22147. [Google Scholar] [CrossRef]
  105. Morrison, A.; Polisena, J.; Husereau, D.; Moulton, K.; Clark, M.; Fiander, M.; Mierzwinski-Urban, M.; Clifford, T.; Hutton, B.; Rabb, D. The Effect of English-Language Restriction on Systematic Review-Based Meta-Analyses: A Systematic Review of Empirical Studies. Int. J. Technol. Assess. Health Care 2012, 28, 138–144. [Google Scholar] [CrossRef]
  106. Parikh, J.R.; Wolfman, D.; Bender, C.E.; Arleo, E. Radiologist Burnout According to Surveyed Radiology Practice Leaders. J. Am. Coll. Radiol. 2020, 17, 78–81. [Google Scholar] [CrossRef]
  107. Rosenkrantz, A.B.; Hughes, D.R.; Duszak, R., Jr. The U.S. Radiologist Workforce: An Analysis of Temporal and Geographic Variation by Using Large National Datasets. Radiology 2016, 279, 175–184. [Google Scholar] [CrossRef]
  108. Johnson, A.E.W.; Pollard, T.J.; Berkowitz, S.J.; Greenbaum, N.R.; Lungren, M.P.; Deng, C.-Y.; Mark, R.G.; Horng, S. MIMIC-CXR, a de-Identified Publicly Available Database of Chest Radiographs with Free-Text Reports. Sci. Data 2019, 6, 317. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  109. Mollura, D.J.; Azene, E.M.; Starikovsky, A.; Thelwell, A.; Iosifescu, S.; Kimble, C.; Polin, A.; Garra, B.S.; DeStigter, K.K.; Short, B.; et al. White Paper Report of the RAD-AID Conference on International Radiology for Developing Countries: Identifying Challenges, Opportunities, and Strategies for Imaging Services in the Developing World. J. Am. Coll. Radiol. 2010, 7, 495–500. [Google Scholar] [CrossRef] [PubMed]
  110. Candemir, S.; Antani, S. A Review on Lung Boundary Detection in Chest X-rays. Int. J. Comput. Assist. Radiol. Surg. 2019, 14, 563–576. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  111. Buchlak, Q.D.; Esmaili, N.; Leveque, J.-C.; Bennett, C.; Piccardi, M.; Farrokhi, F. Ethical Thinking Machines in Surgery and the Requirement for Clinical Leadership. Am. J. Surg. 2020, 220, 1372–1374. [Google Scholar] [CrossRef]
  112. He, J.; Baxter, S.L.; Xu, J.; Xu, J.; Zhou, X.; Zhang, K. The Practical Implementation of Artificial Intelligence Technologies in Medicine. Nat. Med. 2019, 25, 30–36. [Google Scholar] [CrossRef]
  113. Strohm, L.; Hehakaya, C.; Ranschaert, E.R.; Boon, W.P.C.; Moors, E.H.M. Implementation of Artificial Intelligence (AI) Applications in Radiology: Hindering and Facilitating Factors. Eur. Radiol. 2020, 30, 5525–5532. [Google Scholar] [CrossRef]
  114. Moradi, M.; Madani, A.; Karargyris, A.; Syeda-Mahmood, T.F. Chest X-ray Generation and Data Augmentation for Cardiovascular Abnormality Classification. In Proceedings of the Medical Imaging 2018: Image Processing, Houston, TX, USA, 10–15 February 2018; Angelini, E.D., Landman, B.A., Eds.; SPIE: San Francisco, CA, USA, 2018. [Google Scholar]
  115. Liu, W.-T.; Lin, C.-S.; Tsao, T.-P.; Lee, C.-C.; Cheng, C.-C.; Chen, J.-T.; Tsai, C.-S.; Lin, W.-S.; Lin, C. A Deep-Learning Algorithm-Enhanced System Integrating Electrocardiograms and Chest X-rays for Diagnosing Aortic Dissection. Can. J. Cardiol. 2022, 38, 160–168. [Google Scholar] [CrossRef]
  116. Nishimori, M.; Kiuchi, K.; Nishimura, K.; Kusano, K.; Yoshida, A.; Adachi, K.; Hirayama, Y.; Miyazaki, Y.; Fujiwara, R.; Sommer, P.; et al. Accessory Pathway Analysis Using a Multimodal Deep Learning Model. Sci. Rep. 2021, 11, 8045. [Google Scholar] [CrossRef]
  117. Lewis, A.; Mahmoodi, E.; Zhou, Y.; Coffee, M.; Sizikova, E. Improving Tuberculosis (TB) Prediction Using Synthetically Generated Computed Tomography (CT) Images. arXiv 2021, arXiv:2109.11480. [Google Scholar]
Figure 1. PRISMA flow diagram indicating study identification, selection, and inclusion.
Figure 1. PRISMA flow diagram indicating study identification, selection, and inclusion.
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Figure 2. Proportion of studies with low, high, or unclear risk of bias as assessed across the four PROBAST domains.
Figure 2. Proportion of studies with low, high, or unclear risk of bias as assessed across the four PROBAST domains.
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Figure 3. Number of findings detected across included studies.
Figure 3. Number of findings detected across included studies.
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Figure 4. Dataset use prevalence amongst included articles.
Figure 4. Dataset use prevalence amongst included articles.
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Table 1. Search terms used in the search strategy. * Designates truncated search for variant spellings.
Table 1. Search terms used in the search strategy. * Designates truncated search for variant spellings.
Region Modality Methodology Task Performance
Keywordchest
thora *
cardiorespiratory
CXR
X-ray
radiograph
artificial intelligence
machine learning
neural net *
radiomics
supervised learning
random forest
naive bayes
CNN
convolution *
diagnosis
image interpretation
radiographic image interpretation
decision Support system
classif *
screen
detect *
interpret *
identifi *
diagnos *
prognos *
inferiority
validat *
superiority
predict *
reader *
decision *
clinical *
risk *
classif *
performance
bootstrapping
split sample
area under the curve
ROC
AUC
performance
sensitiv *
accura *
MeSH Terms machine learning
artificial intelligence
Neural Networks, Computer
diagnosis
roc curve
sensitivity and specificity
triage
Table 2. Summary of studies identified that evaluate comprehensive CXR deep learning models.
Table 2. Summary of studies identified that evaluate comprehensive CXR deep learning models.
Study Study Aim Study Design Datasets Used Dataset Size Number of Pathologies Investigated
Ahn et al., 2022 [43]Evaluate whether a deep-learning–based AI engine used concurrently can improve reader performance and efficiency in interpreting CXR abnormalitiesRetrospective reader studyTwo sources: MIMIC-CXR (public) and MGH (private)MIMIC-CXR: 247 images; MGH: 250 images4
Albahli et al., 2021 [44]To achieve a fast and more accurate diagnosis of COVID-19RetrospectiveCOVID Chest X-ray dataset [45]112,81215
Altaf et al., 2021 [46]Classify thoracic pathologiesRetrospectiveChest X-ray14 [47], COVID-19 CXRs [48]112,77714
Baltruschat et al., 2021 [49]Evaluate whether smart worklist prioritization by AI can optimize radiology workflow and reduce report turnaround times (RTATs) for critical findings in CXRsRetrospective workflow simulation studyChest X-ray14 (public) (112,120), Open-I dataset (public) (3125)112,120 + 3125 images8
Bharati et al., 2020 [50]Develop a new hybrid deep learning algorithm suitable for predicting lung disease from CXR imagesRetrospectiveChest X-ray14 [47] 112,12014
Chakravarty et al., 2020 [51]Develop a CXR pathology classifierRetrospectiveCheXpert [52]223,64813
Chen et al., 2020 [53]Present a deep hierarchical multi-label classification approach for CXRsRetrospectivePLCO dataset [54]198,00019
Cho et al., 2020 [55]Evaluate the reproducibility of CADs with a CNN on CXRs of abnormal pulmonary patterns in patientsRetrospective-97925
Cho et al., 2020 [56]Develop a convolutional neural network to differentiate normal and five types of pulmonary abnormalities in CXRsRetrospective-95345
Choi et al., 2021 [57]Evaluate the deep-learning-based CAD algorithm for detecting and localizing three major thoracic abnormalities on CXRs and compare the performance of physicians with and without the assistance of the algorithmReader study using retrospective data-2443
Fang et al., 2021 [58]Propose a deep learning framework to explore discriminative information from lung and heart regionsRetrospectiveChest X-ray14 [47]112,12014
Gipson et al., 2022 [59]Evaluate the performance of a commercially available deep CNN for detection of traumatic injuries on supine CXRsRetrospectiveInternal dataset (private)1404 patients/images7
Gündel et al., 2021 [60]Train high performing CXR abnormality classifiersRetrospectiveChest X-ray14 [47], PLCO [54]297,54117
Han et al., 2022 [61]Develop ChexRadiNet to utilize radiomics features to improve abnormality classification performanceRetrospective Chest X-ray14112,120 images14
Hwang et al., 2022 [62]Investigate the efficacy of utilizing AI for the identification and correction of false-negative interpretations in consecutive CXRs that were initially read as normal by radiologistsRetrospective feasibility studyDataset from Seoul National University Hospital (private)4208 images3
Jabbour et al., 2022 [63]Validate a model to act as a diagnostic aid in the evaluation of patients with acute respiratory failure combining CXR and EHR dataRetrospectiveCheXpert and MIMIC-CXR-DICOM (public)1618 patients 3
Jadhav et al., 2020 [64]Predict a large set of CXR findings using a deep neural network classifier and improve prediction outcomes using a knowledge-driven reasoning algorithmRetrospectiveMIMIC [65]339,55854
Jin et al., 2022 [66]Evaluate a commercial AI solution on a multicenter cohort of CXRs and compare physicians’ ability to detect and localize referable thoracic abnormalities with and without AI assistanceRetrospective reader study Dataset from respiratory outpatient clinics (private)6006 patients/images3
Jones et al., 2021 [42]Evaluate the real-world usefulness of the model as a diagnostic assistance device for radiologistsReal-world prospective reader studyInternal dataset (private)2972 cases 124
Kim et al., 2021 [67]Test the performance of a commercial algorithmRetrospective generalizability study-58873
Kim et al., 2022 [68]Evaluate the concordance rate of radiologists and a commercially available AI for thoracic abnormalities in a multicenter health screening cohortRetrospective reader studyHealth screening dataset (private) 3113 patients/images3
Kuo et al., 2021 [69]Explore combining deep learning and smartphones for CXR-finding detectionRetrospective generalizability studyCheXpert [52], MIMIC [65]64536
Lee et al., 2022 [70]Create a model that counters the effects of memory inefficiency caused by input size and treats high class imbalanceRetrospective ChestX-ray14 and MIMIC-CXR (public)Training—77,871 images,
Testing—25,596 + 227,827 images
14
Li et al., 2021 [71]Investigate the performance of a deep learning approach termed lesion-aware CNN to identify 14 different thoracic diseases on CXRsRetrospectiveChest X-ray14 [47]10,73814
Majkowska et al., 2020 [72]Develop and evaluate deep learning models for CXR interpretation by using radiologist-adjudicated reference standardsRetrospectiveChest X-ray14 [47]871,7314
Mosquera et al., 2021 [73]Present a deep learning method based on the fusion of different convolutional architectures that allows training with heterogeneous data with a simple implementation and evaluates its performance on independent test dataRetrospectiveChest X-ray14 [47] 54404
Nam et al., 2021 [74]Develop a deep learning algorithm detecting 10 common abnormalities on CXRs and evaluate its impact on diagnostic accuracy, timeliness of reporting, and workflow efficacyReader study using retrospective dataPadChest [75]146,71710
Niehues et al., 2021 [76]Develop and evaluate deep learning models for the identification of clinically relevant abnormalities in bedside CXRsRetrospective- 18,3618
Park et al., 2020 [77]Investigate the feasibility of a deep-learning–based detection system for multiclass lesions on CXRs, in comparison with observers Reader study using retrospective data-15,8094
Paul et al., 2021 [78]Propose a method for few-shot diagnosis of diseases and conditions from CXRs using discriminative ensemble learningRetrospectiveChest X-ray14 [47], Openi [79]>112,00014
Pham et al., 2021 [80]Present a supervised multi-label classification framework based on CNNs for predicting the presence of 14 common thoracic diseases RetrospectiveCheXpert [52]224,31613
Rudolph et al., 2022 [81]Develop an AI system that aims to mimic board-certified radiologists’ performance and support non–radiology residents in clinical settings lacking 24/7 radiology coverageRetrospective reader studyEU CXR dataset (private)563 images4
Rudolph et al., 2022 [82]Investigate multiple clinically relevant aspects that might influence algorithm performance, considering patient positioning, reference standards, and comparison to medical expert performanceRetrospective reader study3 cohorts (private)3 cohorts: 563 images, 6258 images, and 166 patients, respectively7
Seah et al., 2021 [83]Assess the accuracy of radiologists with and without the assistance of a deep learning modelReader study using retrospective dataMIMIC [65], PadChest [75],
Chest X-ray14 [47],
CheXpert [52]
821,681124
Senan et al., 2021 [84]Introduce two deep learning models, ResNet-50 and AlexNet, to diagnose X-ray datasets collected from many sourcesRetrospective Chest X-ray dataset comprising images from several public sources21,165 images4
Sharma et al., 2020 [85]Create efficient deep learning models, trained with CXR images, for rapid screening of COVID-19 patientsRetrospectiveMontgomery County X-ray Set [86]3524
Sung et al., 2021 [87]Evaluate effects of a deep learning system on radiologist pathology detectionReader study using retrospective data-228 5
Van Beek et al., 2022 [88]Evaluate the performance of a machine-learning-based algorithm tool for CXRs, applied to a consecutive cohort of historical clinical cases, in comparison to expert radiologistsRetrospective reader studyInternal training dataset (private) from primary care and ED settings Training—168,056 images,
Testing—1960 images
10
Verma et al., 2020 [89]Implementation of computer-aided image analysis for identifying and discriminating tuberculosis, bacterial pneumonia, and viral pneumoniaRetrospectiveShenzhen chest X-ray set [86]58943
Wang et al., 2021 [90]Construct a multi-scale adaptive residual neural network (MARnet) to identify CXR images of lung diseases and compare MARnet with classical neural networksRetrospectiveChest X-ray14 13,382 images4
Wang et al., 2020 [91]Propose a novel deep convolutional neural network called Thorax-Net to diagnose 14 thorax diseases using CXRsRetrospectiveChest X-ray14 [47]112,12014
Wang et al., 2021 [92]Propose the triple-attention learning (A 3 Net) model RetrospectiveChest X-ray14 [47] 112,12014
Wang et al., 2020 [93]Use deep learning techniques to develop a multi-class CXR classifierRetrospectiveChest X-ray14 [47]112,12014
Wu et al., 2020 [11]Assess the performance of AI algorithms in realistic radiology workflows by performing an objective comparative evaluation of the preliminary reads of AP CXRs performed by an AI algorithm and radiology residentsReader study using retrospective dataCheXpert [52], MIMIC [65]342,12672
Xu et al., 2020 [94]Explore a multi-label classification algorithm for medical images to help doctors identify lesionsRetrospectiveChest X-ray14 [47]112,12014
Zhou et al., 2021 [95]Develop and evaluate deep learning models for the detection and semiquantitative analysis of cardiomegaly, pneumothorax, and pleural effusion on chest radiographsRetrospectiveMontgomery County Department of Health and
Human Services, Shenzhen No. 3 People’s Hospital [86]
28383
Table 3. Quality appraisal of included studies. NA, not applicable (article not disqualified if the model training or validation methods were not relevant for reporting due to the study design, e.g., MRMC studies examining CXR reader performance). For cumulative study quality score, Yes and NA = 10, No = 0.
Table 3. Quality appraisal of included studies. NA, not applicable (article not disqualified if the model training or validation methods were not relevant for reporting due to the study design, e.g., MRMC studies examining CXR reader performance). For cumulative study quality score, Yes and NA = 10, No = 0.
Study Appropriate Study Design Appropriate Comparators Appropriate Training Dataset Appropriate Validation Methods Appropriate Sample Size Appropriate Metric Used to Measure Performance Appropriate Statistics Methods Used to Measure Performance Study Quality Score
Ahn et al., 2022 [43]YesYesYesNAYesYesYes70
Albahli et al., 2021 [44]YesNo YesYes Yes Yes Yes60
Altaf et al., 2021 [46]YesNo YesYes Yes Yes Yes60
Baltruschat et al., 2021 [49]YesYesYesYesYesYesYes70
Bharati et al., 2020 [50]YesNo YesYes Yes Yes Yes60
Chakravarty et al., 2020 [51]YesYes YesYes Yes Yes Yes70
Chen et al., 2020 [53]YesNo YesYes Yes Yes Yes60
Cho et al., 2020 [55]YesYes NAYes Yes Yes Yes70
Cho et al., 2020 [56]YesNo YesYes Yes Yes Yes60
Choi et al., 2021 [57]YesYes NAYes Yes Yes Yes70
Fang et al., 2021 [58]YesYes YesYes Yes Yes Yes70
Gipson et al., 2022 [59]YesYesYesNAYesYesYes70
Gündel et al., 2021 [60]YesYes YesYes Yes Yes Yes70
Han et al., 2022 [61]YesYesYesNAYesYesYes70
Hwang et al., 2022 [62]YesYesNANAYesYesYes70
Jabbour et al., 2022 [63]NoNoNoNAYesYesNo30
Jadhav et al., 2020 [64]YesNo YesYes Yes Yes Yes60
Jin et al., 2022 [66]YesYesYesYesYesYesYes70
Jones et al., 2021 [42]YesYesYesNAYesYesYes70
Kim et al., 2021 [67]YesNo NANA Yes Yes Yes60
Kim et al., 2022 [68]YesYesYesNAYesYesYes70
Kuo et al., 2021 [69]YesYes NAYes Yes Yes Yes70
Lee et al., 2022 [70]YesYesYesYesYesYesNo60
Li et al., 2021 [71]YesYes YesYes Yes Yes Yes70
Majkowska et al., 2020 [72]YesYes YesYes Yes Yes Yes70
Mosquera et al., 2021 [73]YesYes YesYes Yes Yes Yes70
Nam et al., 2021 [74]YesYes YesYes Yes Yes Yes70
Niehues et al., 2021 [76]YesYes YesYes Yes Yes Yes70
Park et al., 2020 [77]YesYes YesYes Yes Yes Yes70
Paul et al., 2021 [78]YesNo YesYes Yes Yes Yes60
Pham et al., 2021 [80]YesYes YesYes Yes Yes Yes70
Rudolph et al., 2022 [81]YesYesNoYesYesYesYes60
Rudolph et al., 2022 [82]YesNoNoYesNoYesYes40
Seah et al., 2021 [83]YesYes YesYes Yes Yes Yes70
Senan et al., 2021 [84]YesNoYesNAYesYesYes60
Sharma et al., 2020 [85]YesNo No Yes Yes Yes Yes50
Sung et al., 2021 [87]YesYes NANAYes Yes Yes70
Van Beek et al., 2022 [88]YesYesYesYesYesYesYes70
Verma et al., 2020 [89]YesNo YesYes Yes Yes Yes60
Wang et al., 2021 [90]YesNoYesYesYesYesNo50
Wang et al., 2020 [91]YesYes YesYes Yes Yes Yes70
Wang et al., 2021 [92]YesNo YesYes Yes Yes Yes60
Wang et al., 2020 [93]YesYes YesYes Yes Yes Yes70
Wu et al., 2020 [11]YesYes YesYes Yes Yes Yes70
Xu et al., 2020 [94]YesYes YesYes Yes Yes Yes70
Zhou et al., 2021 [95]YesYes YesYes Yes Yes Yes70
Table 4. Summary of the published performance statistics of CXR deep learning models.
Table 4. Summary of the published performance statistics of CXR deep learning models.
Deep Learning Model Model Architecture Model Validation Process Model Performance and Study Results
Ahn et al., 2022 [43]Not specifiedNot specified—commercialAI was associated with higher sensitivity for all findings compared with readers (nodule, 0.816 vs. 0.567; pneumonia, 0.887 vs. 0.673; pleural effusion, 0.872 vs. 0.889; pneumothorax, 0.988 vs. 0.792)
Albahli et al., 2021 [44]Unet, NasNetLarge, Xception, Inception-V3, Inception-ResNetV2, ResNet50Train, testTest accuracy: 0.66 and 0.62
Altaf et al., 2021 [46]DenseNet-201, ResNet50, Inception-V3, VGG-16Train, test with cross-validationSpecificity 0.95, sensitivity 0.65, F1 0.53, accuracy 0.91
Baltruschat et al., 2021 [49]ResNet-505-fold resampling scheme—7:1:2 (training, validation, testing)Average RTAT for all critical findings was significantly reduced in all prioritization simulations compared to the first-in-first-out simulation, while the maximum RTAT for most findings increased. Pneumothorax (Min/Max) 80.1/890 vs. 35.6/1178, congestion 80.5/916 vs. 45.3/2018, pleural effusion 80.5/932 vs. 54.6/2144, infiltrate 80.3/916 vs. 59.1/2144, atelectasis 80.4/906 vs. 61.7/1958, cardiomegaly 80.5/932 vs. 62.5/1698, mass 81.0/902 vs. 64.3/1556, foreign object 80.4/930 vs. 80.6/2093, normal 80.2/940 vs. 113.9/2093
Bharati et al., 2020 [50]VDSNetTrain, testAccuracy 0.73
Chakravarty et al., 2020 [51]DenseNet-121Train, testAverage AUC 0.82
Chen et al., 2020 [53]DenseNet-121 Train, testAverage AUC 0.89
Cho et al., 2020 [55]eDenseYOLOTrain, tune, test (7:1:2) Percent positive agreement: 83.39%, 74.14%, 95.12%, 96.84%, and 84.58%
Cho et al., 2020 [56]ResNet-50Train, tune, test (7:1:2)Accuracy: 0.90, 0.90, 0.91, 0.92, and 0.93
Choi et al., 2021 [57]Insight CXR, Lunit-Average AUC 0.99, sensitivity 0.97, specificity 0.93, and accuracy of 0.96. The model outperformed board-certified radiologists, non-radiology physicians, and general practitioners. Average AUC of physicians was 0.87 without model assistance and 0.91 with model assistance
Fang et al., 2021 [58]CXR-IRNetTrain, test, validationAverage AUC 0.83
Gipson et al., 2022 [59]EfficientNet architecture, segmentation CNN based on U-Net/EfficientNet backboneNot specifiedAI superior to radiologists for pneumothorax (AI AUC = 0.926, sens. = 39.2%, spec. = 99.8%, FP n = 2, p = 0.007) and lobar/segmental collapse (AI AUC = 0.917, sens. = 36.1%, spec. = 98.5%, FP n = 21, p = 0.012). AI inferior for clavicle (AI AUC = 0.831, sens. = 55.7%, spec. = 97.2%, FP n = 37, p = 0.002), humerus (AI AUC = 0.836, sens. = 32.3%, spec. = 99.4%, FP n = 8, p < 0.001), and scapular fracture (AI AUC = 0.855, sens. = 34.6%, spec. = 95.2%, FP n = 64, p = 0.014). No sig. diff. for rib fracture (AI AUC = 0.749, sens. = 41.1%, spec. = 92.9%, FP n = 75, k = 0.39) and pneumomediastinum (AUC = 0.872, sens. = 11.1%, spec. = 100%, FP n = 0, k = 0.19)
Gündel et al., 2021 [60]DenseNet architectureTrain, test, validationAverage AUC 0.88
Han et al., 2022 [61]ChexRadiNetNot specifiedThe model achieved AUC scores of 0.831, 0.934, 0.817, 0.906, 0.892, 0.925, 0.798, 0.882, 0.734, 0.846, 0.748, 0.867, 0.737, and 0.889, respectively, for the pathologies (atelectasis, cardiomegaly, consolidation, edema, effusion, emphysema, fibrosis, hernia, infiltration, mass, nodule, pleural thickening, pneumonia, and pneumothorax)
Hwang et al., 2022 [62]Not specifiedNot specified—commercial16.5% of scans initially labeled normal classified abnormal by model. 103/591 were clinically relevant (488 false positives). 13.3% of detected abnormalities accepted by radiologist. Situation (a) AI as the advisor: detection yield = 1.2%, FRR = 0.97%, PPV = 55.4%. Situation (b) AI as the final consultant: detection yield = 2.4%, FRR = 14%, PPV = 14.8%. Higher net benefit of AI as an advisor
Jabbour et al., 2022 [63]CNN with DenseNet-121 architectureExternal validationPneumonia: (k = 0.47) (AUC: combined int. = 0.71, ext. = 0.65) (Combined sens. = 81%, spec. = 60%), heart failure: (k = 0.48) (AUC: combined int. = 0.82, ext. = 0.82) (Combined sens. = 62%, spec. = 83%), COPD: (k = 0.56) (AUC: combined int. = 0.76, ext. = 0.86) (Combined sens. = 68%, spec. = 94%). Combined model sensitivity higher than both other models, lower specificity than both other models. Combined model AUROC higher than physician for heart failure (0.79 vs. 0.77) and COPD (0.89 vs. 0.78), lower for pneumonia (0.74 vs. 0.75)
Jadhav et al., 2020 [64]VGGNet (16 layers), ResNet (50 layers)Train, validation, test (7:1:2)Precision 0.85, recall 0.83, F1 0.84
Jin et al., 2022 [66]Not specifiedNot specified—commercialStandalone model performance average sensitivity, specificity, and AUC of 0.885, 0.723, and 0.867, respectively. For readers, average AUC and AUAFROC significantly increased with AI assistance (from 0.861 to 0.886; p = 0.003 and from 0.797 to 0.822; p = 0.003, respectively)
Jones et al., 2021 [42]EfficientNet architecture, segmentation CNN based on U-Net/EfficientNet backboneNot specified90% of radiologists reported increased reporting accuracy with model by radiologists w/ (a) 5> yrs. experience, (b) 6–10 yrs. exp., (c) 10+ yrs. Exp., (a) 5% (b) 1.3% (c) 1.6% rate of sig. report change with model, (a) 2.4% (b) 0.4% (c) 0.9% patient management change, and (a) 1.5% (b) 0.5% (c) 0.6% increase in recommendations for further imaging. No sig. impact of radiologist experience on these rates
Kim et al., 2021 [67]Insight CXR, Lunit-Sensitivity 0.83, specificity 0.79
Kim et al., 2022 [68]ResNet-34 based architectureNot specified—commercialThoracic abnormalities were found in 343 cases (11.0%) based on the CXR radiology reports and 621 (20.1%) based on the Lunit results. The concordance rate was 86.8% (accept: 85.3%, edit: 0.9%, and add: 0.6%), and the discordance rate was 13.2%. The median reading time increased after the clinical integration of Lunit (median, 19 s vs. 14 s, p < 0.001)
Kuo et al., 2021 [69]-Train, test, validation and external validationAverage AUC 0.75
Lee et al., 2022 [70]DuETNet: DenseNet backbone, dual encoderTrain, validation, testModel superior to all other models. AUC: atelectasis = 0.7711, cardiomegaly = 0.914, effusion = 0.8197, infiltration = 0.7096, mass = 0.8582, nodule = 0.8223, pneumonia = 0.8928, pneumothorax = 0.8805, consolidation = 0.7976, edema = 0.8892, emphysema = 0.9331, fibrosis = 0.93, PT = 0.8493, hernia = 0.997, average AUC = 0.8617
Li et al., 2021 [71]ResNet-38Train, test, validation with 10-fold cross-validationThe model generated statistically significant higher AUC performance compared with radiologists on atelectasis, mass, and nodule, with AUC values of 0.83, 0.96, and 0.93, respectively. For the other 11 pathologies, there were no statistically significant differences
Majkowska et al., 2020 [72]-Train, validation, testAUCs 0.94, 0.91, 0.94, and 0.81
Mosquera et al., 2021 [73]RetinaNet, Inception-ResnetV2, AlbuNet-34Train, test, external validationAUCs 0.75 and 0.87, sensitivity 0.86, specificity 0.88
Nam et al., 2021 [74]ResNet34-Model AUCs 0.90–1.00 (CT-confirmed dataset) and 0.91–1.00 (PadChest dataset). The model correctly classified significantly more critical abnormalities (95%) than radiologists (84%). Radiologists detected significantly more critical (71% vs. 29%) and urgent (83% vs. 78%) abnormalities when aided by the model
Niehues et al., 2021 [76]-Train, testAUCs 0.90, 0.95, 0.85, 0.92, 0.99, 0.99, 0.98, and 0.99
Park et al., 2020 [77]-Train, validation, test AUC 0.99 vs. 0.96
Paul et al., 2021 [78]DenseNet Train, test, external validationAUCs 0.55–0.79
Pham et al., 2021 [80]-Train, validation, test Average AUC 0.94 (validation set), 0.93 (test set)
Rudolph et al., 2022 [81]Not specifiedExternal validationAUC of 0.940 (pneumothorax), 0.953 (pleural effusion), 0.883 (lung lesions), and 0.847 (consolidation). The AI system matched radiology residents’ performance, and significantly outperformed non-radiology residents’ diagnostic accuracy for pneumothorax, pleural effusion, and lung lesions
Rudolph et al., 2022 [82]CheXNetExternal validationCheXNet was similar to radiology resident (RR) detection of suspicious lung nodules (cohort, AUC AI/RR: 0.851/0.839, p = 0.793), basal pneumonia (cohort, AUC AI/reader consensus: 0.825/0.782, p = 0.390), and basal pleural effusion (cohort, AUC AI/reader consensus: 0.762/0.710, p = 0.336)
Seah et al., 2021 [83]EfficientNetTrain, testAverage AUC of the model 0.96. Average AUC of unassisted radiologists 0.72. Average AUC when radiologists used the model 0.81. Model use significantly improved accuracy for 102 (80%) clinical findings
Senan et al., 2021 [84]ResNet-50 and AlexNetNot specifiedThe ResNet-50 network reached average accuracy, sensitivity, specificity, and AUC of 95%, 94.5%, 98%, and 97.10%, respectively
Sharma et al., 2020 [85]Not reportedTrain, test, external validationAccuracies 1.00, 1.00, 0.95, 0.00, 0.94, and 0.00
Sung et al., 2021 [87]Med-Chest X-ray-AUC of radiologists using the model (from 0.93 to 0.98), sensitivity (from 0.83 to 0.89), and specificity (from 0.89 to 0.97)
Van Beek et al., 2022 [88]ResNet34 basis, AutoAugment + Attend and Compare modules, binary cross-entropy loss functionNot specified—commercialAtelectasis (AUC = 0.914, 0.891, sens. = 0.816, 0.55, spec. = 0.887, 0.961), calcification (AUC = 0.92, 0.922, sens. = 0.765, 0.692, spec. = 0.887, 0.919), cardiomegaly (AUC = 0.943, 0.97, sens. = 0.88, 0.85, spec. = 0.884, 0.962), consolidation (AUC = 0.903, 0.881, sens. = 0.886, 0.922, spec. = 0.792, 0.674), fibrosis (AUC = 0.948, 0.92, sens. = 0.933, 0.714, spec. = 0.895, 0.924), mediastinal widening (AUC = 0.909, 0.998, sens. = 0.8, 1, spec. = 0.97, 0.993), nodule (AUC = 0.881, 0.905, sens. = 0.794, 0.833, spec. = 0.848, 0.886), pleural effusion (AUC = 0.954, 0.988, sens. = 0.784, 0.837, spec. = 0.942, 0.986), pneumoperitoneum (AUC = 0.999, insuff. case no., sens. = 1, --, spec. = 0.975, 0.996), pneumothorax (AUC = 0.954, insuff. case no., sens. = 0.833, 1, spec. = 0.978, 0.992). Non-significant difference of performance in acute and non-acute sources; model outperformed radiologists for all findings
Verma et al., 2020 [89]Not reportedTrain, testAccuracy 0.99
Wang et al., 2021 [90]MARnet5-fold cross-validationAUC: nodule 0.90, atelectasis 0.93, normal 0.99, infection 1.00. MARnet outperformed all other CNNs
Wang et al., 2020 [91]Thorax-NetTrain, test, validationAverage AUC 0.79 and 0.90
Wang et al., 2021 [92]DenseNet-121Train, test, validationAverage AUC 0.83
Wang et al., 2020 [93]DenseNet-121Train, validationAverage AUC 0.82
Wu et al., 2020 [11]ResNet50, HVGG16 STrain, validation, testAverage AUC: model 0.77, residents 0.72. PPV: model 0.73, residents 0.68. Specificity: model 0.98, residents 0.97
Xu et al., 2020 [94]MS-ANetTrain, test, validationAverage AUCs 0.85 and 0.82
Zhou et al., 2021 [95]-Training, test (9:1) Accuracy for cardiomegaly 0.98, pneumothorax 0.71, and pleural effusion 0.78
Table 5. Summary of the clinical benefits of CXR machine learning systems identified in the literature.
Table 5. Summary of the clinical benefits of CXR machine learning systems identified in the literature.
Identified Benefit Clinical Setting Associated Clinical Outcomes Reference
Improved radiologist accuracy in detecting pathology on the medical imageAll clinical settingsReduced unnecessary and increased appropriate follow-up CT examinations or earlier detection of findings, leading to improved patient outcomes. Reduction in false positivesChoi et al., 2021 [57]
Nam et al., 2021 [74]
Seah et al., 2021 [83]
Sung et al., 2021 [87]
Jin et al., 2022 [66]
Jones et al., 2021 [42]
Hwang et al., 2022 [62]
Ahn et al., 2022 [43]
Reduced time to report studies that contain critical pathologyAll clinical settingsReduction in report turnaround time for sensitive findings such as pneumothorax and rib fracture allowing correct patient management and earlier treatmentNam et al., 2021 [74]
Baltruschat et al., 2021 [49]
Reduced per-study reporting timeInpatient or outpatient or screeningIncreased reporting efficiencyNam et al., 2021 [74]
Sung et al., 2021 [87]
Ahn et al., 2022 [43]
Consistent detection accuracy across variations in image qualityInpatient or outpatient or screening or emergencyAccurate detection of pathology on CXRs regardless of imaging source or quality of the acquisitionChoi et al., 2021 [57]
Gündel et al., 2021 [60]
Rudolph et al., 2022 [82]
van Beek et al., 2022 [88]
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Ahmad, H.K.; Milne, M.R.; Buchlak, Q.D.; Ektas, N.; Sanderson, G.; Chamtie, H.; Karunasena, S.; Chiang, J.; Holt, X.; Tang, C.H.M.; et al. Machine Learning Augmented Interpretation of Chest X-rays: A Systematic Review. Diagnostics 2023, 13, 743. https://doi.org/10.3390/diagnostics13040743

AMA Style

Ahmad HK, Milne MR, Buchlak QD, Ektas N, Sanderson G, Chamtie H, Karunasena S, Chiang J, Holt X, Tang CHM, et al. Machine Learning Augmented Interpretation of Chest X-rays: A Systematic Review. Diagnostics. 2023; 13(4):743. https://doi.org/10.3390/diagnostics13040743

Chicago/Turabian Style

Ahmad, Hassan K., Michael R. Milne, Quinlan D. Buchlak, Nalan Ektas, Georgina Sanderson, Hadi Chamtie, Sajith Karunasena, Jason Chiang, Xavier Holt, Cyril H. M. Tang, and et al. 2023. "Machine Learning Augmented Interpretation of Chest X-rays: A Systematic Review" Diagnostics 13, no. 4: 743. https://doi.org/10.3390/diagnostics13040743

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