Artificial Intelligence Techniques for Medical Imaging and Computational Biology

A special issue of Applied Sciences (ISSN 2076-3417). This special issue belongs to the section "Computing and Artificial Intelligence".

Deadline for manuscript submissions: closed (31 May 2023) | Viewed by 4434

Special Issue Editors


E-Mail Website
Guest Editor
Institute for High-Performance Computing and Networking, National Research Council (ICAR-CNR), 90146 Palermo, Italy
Interests: biomedical image analysis; radiomics; machine learning; digital architectures; biometrics; hardware programmable devices
Special Issues, Collections and Topics in MDPI journals

E-Mail Website
Guest Editor
Department of Information and Electrical Engineering and Applied Mathematics (DIEM), University of Salerno, 84084 Fisciano, Italy
Interests: biomedical image analysis; radiogenomics; machine learning; computational Intelligence; high-performance computing
Special Issues, Collections and Topics in MDPI journals

E-Mail Website
Guest Editor
Department of Human and Social Sciences, University of Bergamo, 24129 Bergamo, Italy
Interests: computational systems biology; bioinformatics systems; biology; high-performance computing; computational intelligence; machine learning
Special Issues, Collections and Topics in MDPI journals

E-Mail Website
Guest Editor
Division of Neuroradiology, Department of Radiology, Cambridge University Hospitals, Cambridge CB2 0QQ, UK
Interests: biomedical image analysis; radiomics; machine learning; neuroimaging; neuro-oncology; metabolic imaging

E-Mail Website
Guest Editor
Institute for High-Performance Computing and Networking, National Research Council (ICAR-CNR), Palermo, Italy
Interests: deep learning; computer vision; biomedical image analysis; machine learning

E-Mail Website
Guest Editor
Faculty of Engineering and Architecture, University of Enna KORE, 94100 Enna, Italy
Interests: biometric recognition systems; bio-inspired processing systems; medical diagnosis support
Special Issues, Collections and Topics in MDPI journals

Special Issue Information

Dear Colleagues,

Emerging artificial intelligence techniques are changing medical and biological procedures and are enabling new ways to deal with the wealth of information coming from clinical exams and tests. Notwithstanding, these specific domains generate new challenges where new computational approaches involving machine learning (ML) or computational intelligence (CI) techniques are needed. Starting from the nature of the processed data, the computational approach can require multiple and specific techniques.

Concerning image processing, ML and CI techniques can effectively perform image processing operations (e.g., segmentation, annotation, co-registration, and classification), in the fields of neuroimaging and oncological imaging. Although the manual approach often remains the golden standard in some tasks (e.g., segmentation and annotation), ML can be employed to support the work of researchers and clinicians. Regarding biology, ML- and CI-based strategies have been continuously applied to solve problems in bioinformatics and computational systems biology (e.g., alignments, dimensionality reduction, and parameter estimation).

In addition, these fields often present new clustering and classification challenges, as well as combinatorial problems, which can be effectively addressed using novel strategies based on ML and CI techniques. Frequently used approaches include support vector machines (SVMs) for classification problems, graph-based methods, artificial neural networks (ANNs), evolutionary computation (EC), and swarm intelligence (SI) techniques.

New trends and interesting research topics have shown deep learning (DL) approaches to be very successful in regard to computer vision and bioinformatics tasks, owing to their ability to automatically extract hierarchical descriptive features from input images or gene expression data. They have also been used in the oncological, neuroimaging, and microscopy imaging domains for automatic disease diagnosis, tissue segmentation, and even synthetic image generation.

Some relevant problems arise from the generalization abilities of the employed deep ANNs or CNNs, considering the high number of required parameters and the reduced sample size of the datasets. Consequently, parameter-efficient design paradigms specifically tailored to biomedical applications ought to be devised, such as by exploiting CI-based techniques (e.g., EC, SI, and neuroevolution).

Considering that many of these topics represent hot topics within clinical research, advanced ML techniques can be suitably exploited to combine heterogeneous sources of information, allowing for multiomics data integration. These types of analyses may represent a significant step towards personalized medicine.

We are pleased to invite you to contribute to this Special Issue, which will cover highly relevant scientific aspects in this field.

This Special Issue aims to provide a forum to publish original research papers covering state-of-the-art and novel algorithms, methodologies, and applications of AI methods for biomedical data analysis and processing, ranging from classic ML to DL.

In this Special Issue, original research articles and reviews are welcome. Research areas may include (but are not limited to) the following:

  • ML and CI techniques for the segmentation, co-registration, classification, or dimensionality reduction of medical images.
  • Generative adversarial models for medical image super-resolution, denoising, and synthesis.
  • Deep learning for neuroimaging and oncological imaging analysis.
  • Application of graph theory to MRI and functional MRI (fMRI) data.
  • Computational modeling and analysis of neuroimaging.
  • Radiomic analyses for disease phenotyping.
  • Radiogenomics for intra- and intertumoral heterogeneity evaluation.
  • CI methods for optimizing biomedical data analysis tasks.
  • Integration of multiomics data.
  • ML and CI techniques for combinatorial problems in bioinformatics and computational biology.
  • Deep neural networks for classification tasks in single-cell data analysis.
  • New clustering approaches for single-cell data analysis.
  • Feature interpretability.
  • Model explainability.
  • Graph neural networks.

We look forward to receiving your contributions.

Dr. Carmelo Militello
Dr. Leonardo Rundo
Dr. Andrea Tangherloni
Dr. Fulvio Zaccagna
Dr. Filippo Vella
Dr. Vincenzo Conti
Guest Editors

Manuscript Submission Information

Manuscripts should be submitted online at www.mdpi.com by registering and logging in to this website. Once you are registered, click here to go to the submission form. Manuscripts can be submitted until the deadline. All submissions that pass pre-check are peer-reviewed. Accepted papers will be published continuously in the journal (as soon as accepted) and will be listed together on the special issue website. Research articles, review articles as well as short communications are invited. For planned papers, a title and short abstract (about 100 words) can be sent to the Editorial Office for announcement on this website.

Submitted manuscripts should not have been published previously, nor be under consideration for publication elsewhere (except conference proceedings papers). All manuscripts are thoroughly refereed through a single-blind peer-review process. A guide for authors and other relevant information for submission of manuscripts is available on the Instructions for Authors page. Applied Sciences is an international peer-reviewed open access semimonthly journal published by MDPI.

Please visit the Instructions for Authors page before submitting a manuscript. The Article Processing Charge (APC) for publication in this open access journal is 2400 CHF (Swiss Francs). Submitted papers should be well formatted and use good English. Authors may use MDPI's English editing service prior to publication or during author revisions.

Keywords

  • machine learning
  • deep learning
  • computational intelligence
  • biomedical image analysis
  • radiomics
  • radiogenomics
  • bioinformatics
  • computational biology
  • multiomics data
  • single-cell data analysis

Published Papers (3 papers)

Order results
Result details
Select all
Export citation of selected articles as:

Research

15 pages, 830 KiB  
Article
A Deep Model for Species-Specific Prediction of Ribonucleic-Acid-Binding Protein with Short Motifs
by Zhi-Sen Wei, Jun Rao and Yao-Jin Lin
Appl. Sci. 2023, 13(14), 8231; https://doi.org/10.3390/app13148231 - 15 Jul 2023
Viewed by 727
Abstract
RNA-binding proteins (RBPs) play an important role in the synthesis and degradation of ribonucleic acid (RNA) molecules. The rapid and accurate identification of RBPs is essential for understanding the mechanisms of cell activity. Since identifying RBPs experimentally is expensive and time-consuming, computational methods [...] Read more.
RNA-binding proteins (RBPs) play an important role in the synthesis and degradation of ribonucleic acid (RNA) molecules. The rapid and accurate identification of RBPs is essential for understanding the mechanisms of cell activity. Since identifying RBPs experimentally is expensive and time-consuming, computational methods have been explored to predict RBPs directly from protein sequences. In this paper, we developed an RBP prediction method named CnnRBP based on a convolution neural network. CnnRBP derived a sparse high-dimensional di- and tripeptide frequency feature vector from a protein sequence and then reduced this vector to a low-dimensional one using the Light Gradient Boosting Machine (LightGBM) algorithm. Then, the low-dimensional vectors derived from both RNA-binding proteins and non-RNA-binding proteins were fed to a multi-layer one-dimensional convolution network. Meanwhile, the SMOTE algorithm was used to alleviate the class imbalance in the training data. Extensive experiments showed that the proposed method can extract discriminative features to identify RBPs effectively. With 10-fold cross-validation on the training datasets, CnnRBP achieved AUC values of 99.98%, 99.69% and 96.72% for humans, E. coli and Salmonella, respectively. On the three independent datasets, CnnRBP achieved AUC values of 0.91, 0.96 and 0.91, outperforming the recent tripeptide-based method (i.e., TriPepSVM) by 8%, 4% and 5%, respectively. Compared with the state-of-the-art CNN-based predictor (i.e., iDRBP_MMC), CnnRBP achieved MCC values of 0.67, 0.68 and 0.73 with significant improvements by 6%, 6% and 15%, respectively. In addition, the cross-species testing shows that CnnRBP has a robust generalization performance for cross-species RBP prediction between close species. Full article
Show Figures

Figure 1

14 pages, 3882 KiB  
Article
4D-Flow MRI Characterization of Pulmonary Flow in Repaired Tetralogy of Fallot
by Ashifa Hudani, Safia Ihsan Ali, David Patton, Kimberley A. Myers, Nowell M. Fine, James A. White, Steven Greenway and Julio Garcia
Appl. Sci. 2023, 13(5), 2810; https://doi.org/10.3390/app13052810 - 22 Feb 2023
Cited by 4 | Viewed by 1391
Abstract
Patients with Tetralogy of Fallot (TOF) have multiple surgical sequelae altering the pulmonary flow hemodynamics. Repaired TOF (rTOF) adults frequently develop pulmonary regurgitation impacting the blood flow pressure, right ventricle load, and pulmonary hemodynamics. We aimed to evaluate the pulmonary flow hemodynamics using [...] Read more.
Patients with Tetralogy of Fallot (TOF) have multiple surgical sequelae altering the pulmonary flow hemodynamics. Repaired TOF (rTOF) adults frequently develop pulmonary regurgitation impacting the blood flow pressure, right ventricle load, and pulmonary hemodynamics. We aimed to evaluate the pulmonary flow hemodynamics using 4D-flow magnetic resonance imaging (MRI) for characterizing altered blood flow, viscous energy loss (EL), wall shear stress (WSS), pressure drop (PD), and ventricular flow analysis (VFA) in rTOF patients. We hypothesized that 4D-flow based parameters can identify pulmonary blood flow alterations. A total of 17 rTOF patients (age: 29 ± 10 years, 35% women) and 20 controls (age: 36 ± 12 years, 25% women) were scanned using a dedicated cardiac MRI protocol. Peak velocity and regurgitant fraction were significantly higher for rTOF patients (p < 0.001). WSS was consistently elevated along the PA in the rTOF (p ≤ 0.05). The rTOF average circumferential WSS was higher than axial WSS at the main pulmonary artery (p ≤ 0.001). PD and EL were consistently higher in the rTOF as compared with controls (p < 0.05). For VFA, delayed ejection increased and retained inflow decreased in rTOF patients (p < 0.001). To conclude, this study demonstrated that 4D-flow MRI pulmonary flow in the rTOF can exhibit altered peak velocity, valvular regurgitation, WSS, EL, PD, and VFA. Full article
Show Figures

Figure 1

13 pages, 1669 KiB  
Article
Patient Mortality Prediction and Analysis of Health Cloud Data Using a Deep Neural Network
by Abdullah Alourani, Kinza Tariq, Muhammad Tahir and Muhammad Sardaraz
Appl. Sci. 2023, 13(4), 2391; https://doi.org/10.3390/app13042391 - 13 Feb 2023
Cited by 2 | Viewed by 1744
Abstract
Cloud computing plays a vital role in healthcare as it can store a large amount of data known as big data. In the current emerging era of computing technology, big data analysis and prediction is a challenging task in the healthcare industry. Healthcare [...] Read more.
Cloud computing plays a vital role in healthcare as it can store a large amount of data known as big data. In the current emerging era of computing technology, big data analysis and prediction is a challenging task in the healthcare industry. Healthcare data are very crucial for the patient as well as for the respective healthcare services provider. Several healthcare industries adopted cloud computing for data storage and analysis. Incredible progress has been achieved in making combined health records available to data scientists and clinicians for healthcare research. However, big data in health cloud informatics demand more robust and scalable solutions to accurately analyze it. The increasing number of patients is putting high pressure on healthcare services worldwide. At this stage, fast, accurate, and early clinical assessment of the disease severity is vital. Predicting mortality among patients with a variety of symptoms and complications is difficult, resulting inaccurate and slow prediction of the disease. This article presents a deep learning based model for the prediction of patient mortality using the Medical Information Mart for Intensive Care III (MIMIC-III) dataset. Different parameters are used to analyze the proposed model, i.e., accuracy, F1 score, recall, precision, and execution time. The results obtained are compared with state-of-the-art models to test and validate the proposed model. Moreover, this research suggests a simple and operable decision rule to quickly predict patients at the highest risk, allowing them to be prioritized and potentially reducing the mortality rate. Full article
Show Figures

Figure 1

Back to TopTop