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Background:
Systematic Review

Gut Microbial and Associated Metabolite Markers for Colorectal Cancer Diagnosis

by
Areej A. Alhhazmi
1,*,
Renad M. Alhamawi
1,
Reema M. Almisned
2,
Hanouf A. Almutairi
3,
Ahdab A. Jan
4,
Shahad M. Kurdi
1,
Yahya A. Almutawif
1 and
Waleed Mohammed-Saeid
5
1
Medical Laboratories Technology Department, College of Applied Medical Sciences, Taibah University, P.O. Box 344, Al-Madinah Al-Munawarah 42353, Saudi Arabia
2
Seha Polyclinic, P.O. Box 150, Al-Madinah Al-Munawarah 41311, Saudi Arabia
3
Bioscience Program, Biological and Environmental Science and Engineering Division, King Abdullah University of Science and Technology (KAUST), P.O. Box 6900, Thuwal 23955, Saudi Arabia
4
Abdulla Fouad Medical Supplies and Services (AFMS), P.O. Box 150, Al-Madinah Al-Munawarah 21414, Saudi Arabia
5
Department of Pharmaceutics and Pharmaceutical Technology, College of Pharmacy, Taibah University, P.O. Box 344, Al-Madinah Al-Munawarah 42353, Saudi Arabia
*
Author to whom correspondence should be addressed.
Microorganisms 2023, 11(8), 2037; https://doi.org/10.3390/microorganisms11082037
Submission received: 14 June 2023 / Revised: 29 July 2023 / Accepted: 30 July 2023 / Published: 8 August 2023
(This article belongs to the Special Issue Gut Microbiota in Disease)

Abstract

:
Globally, colorectal cancer (CRC) is the second most common cause of mortality worldwide. Considerable evidence indicates that dysbiosis of the gut microbial community and its metabolite secretions play a fundamental role in advanced adenoma (ADA) and CRC development and progression. This study is a systematic review that aims to assess the clinical association between gut microbial markers and/or gut and circulating metabolites with ADA and CRC. Five electronic databases were searched by four independent reviewers. Only controlled trials that compared ADA and/or CRC with healthy control (HC) using either untargeted (16s rRNA gene or whole genome sequencing) or targeted (gene-based real-time PCR) identification methods for gut microbiome profile, or untargeted or targeted metabolite profiling approaches from the gut or serum/plasma, were eligible. Three independent reviewers evaluated the quality of the studies using the Cochrane Handbook for Systematic Reviews of Interventions. Twenty-four studies were eligible. We identified strong evidence of two microbial markers Fusobacterium and Porphyromonas for ADA vs. CRC, and nine microbial markers Lachnospiraceae-Lachnoclostridium, Ruminococcaceae-Ruminococcus, Parvimonas spp., Parvimonas micra, Enterobacteriaceae, Fusobacterium spp., Bacteroides, Peptostreptococcus-Peptostreptococcus stomatis, Clostridia spp.-Clostridium hylemonae, Clostridium symbiosum, and Porphyromonas-Porphyromonas asaccharolytica for CRC vs. HC. The remaining metabolite marker evidence between the various groups, including ADA vs. HC, ADA vs. HC, and CRC vs. HC, was not of sufficient quality to support additional findings. The identified gut microbial markers can be used in a panel for diagnosing ADA and/or CRC. Further research in the metabolite markers area is needed to evaluate the possibility to use in diagnostic or prognostic markers for colorectal cancer.

1. Introduction

Globally, colorectal cancer (CRC) is the most frequently occurring cancer, ranking third in cancer incidence and second in mortality in 2020 and accounting for 1.9 million (10%) new cases and about 935,000 (9.4%) deaths around the world [1]. The rate of CRC incidence varies, with the highest reporting cases in Asia (52.3%) followed by Europe (26.9%) and North America (9.3%). In 2020, there were about 4,007 (14.4%) new cases of CRC in Saudi Arabia, making it the most common cancer [2,3].
CRC is a heterogeneous disease that is usually defined as a carcinoma, mostly an adenocarcinoma (cancer of the glandular tissue) in the colon or rectum. It is formed when healthy cells in the lining of the colon or rectum commence to change and uncontrollably multiply, resulting in the formation of polyps or outgrowths [4].
The risk of developing CRC is influenced by many factors, especially environmental and genetic factors. Sex, age, and race are the most crucial elements to be considered in diagnosing CRC. Since colorectal cancer is an illness that is highly affected by gender, males are at a higher risk of developing colorectal cancer, which is approximately 44 percent higher than females [1]. Additionally, between 35 and 40 percent of colorectal cancer cases that are diagnosed have heritable causes, such as low-penetrance genetic mutations, hereditary cancer syndromes like Lynch syndrome, and other unidentified inherited genomic aberrations. With no family history or inherited genomic abnormalities, the remaining 60 to 65 percent of cases are random [1].
Microbiota is a complex microbial community that accounts for the integrity of their environment or the well-being of their hosts. The gastrointestinal tract is home to more than 1014 microorganisms, which includes almost ten times as many bacterial cells as human cells [5]. Microbiota contributes to many functions in the human body, such as immunological functions, metabolic functions, improving gut integrity, and shaping the intestinal epithelium. In the case of dysbiosis, the changes in microbial composition result in the disruption of these mechanisms [6]. Changes in the microbiota can lead to alteration in human inflammatory status and metabolites-generated by the host and gut-inhabited microbiota, which may directly or indirectly contribute to the etiology of CRC. The gut microbiota is recognized as an essential player in human illnesses such as obesity, inflammatory bowel disease, and colorectal cancer. Advancing facts suggest that microbial dysbiosis is strongly linked with the pathogenesis of intestinal tumors [7]. Recent metagenomics-based research has revealed that Parvimonas micra, Solobacterium moorei, Fusobacterium nucleatum, and Peptostreptococcus stomatis have enriched the gut of CRC patients [6]. Furthermore, an increased level of enterotoxigenic Bacteroides fragilis has been observed in the colonic mucosa and feces of CRC patients [8,9]. According to the bacterial driver-passenger model for CRC pathogenesis presented by Tjalsma et al. [10], CRC may be started by “driver” bacteria that are then replaced by “passenger” bacteria throughout carcinogenesis. However, it is still unclear how the human gut microbiota contributes to the development of CRC. Understanding the role played by the microbiome in the pathogenesis of CRC is crucial.
An early diagnosis of CRC raises the chances of survival and cure. CRC diagnosis relies largely on colonoscopy, which is an invasive procedure. In addition, performing CRC-specific antigens blood tests to identify carcinoembryonic antigen (CEA) and CA19-9, which are mainly used in the monitoring of CRC patients. One of the highly used tests for the diagnosis of CRC is stool-based tests, for example, gFOBTs which identify the presence of occult blood through the detection of heme pseudo peroxidase activity in the stool. However, the majority of these tests are expensive and exhibit low specificity and sensitivity [11]. Several studies have examined the composition of the gut’s microbes to detect CRC biomarkers and relate certain pathogenic bacteria to CRC, such as B. fragilis, F. nucleatum, Streptococcus bovis, E. coli, Enterococcus faecalis, and Porphyromonas spp. [6]. Given the importance of gut microbiome profiling, which has been extensively conducted using 16S rRNA gene sequencing or shotgun metagenomics techniques [12], the direct link between the gut microbiota at the genus and the species levels, in addition to different CRC stages is challenging. Nevertheless, certain CRC microbial biomarker strains can be easily influenced by diet, antibiotics, hormone treatment, and chemotherapy.
In the case of CRC, disruption to the epithelial and mucous barriers, gastrointestinal inflammation, immunological escape, and genetic/epigenetic changes all work together to directly influence CRC development [8,13]. Numerous disorders, including type 1 diabetes, inflammatory bowel disease (IBD), and breast cancers, have been linked to metabolic changes [14,15,16,17,18]. Additionally, it has been shown that metabolites alter in the colon tissue, urine, serum, and feces of CRC patients as well as in CRC animal models [19,20,21]. Hence, accumulating numbers of metabolic markers have been proposed for CRC diagnosis, encompassing short-chain fatty acids [22], amino acids [23], bile acids (BAs) [24,25], tryptophan (Trp) metabolites [26], and L-carnitine metabolite (trimethylamine N-oxide) [27]. Additionally, few studies have linked gut bacteria dysbiosis to the altered metabolites in CRC.
This study aims to review relevant publications from five different databases to assemble gut microbial markers, gut metabolites, and circulating metabolites associated with CRC. Then, microbial biomarkers association with metabolites in CRC was collectively assessed. The analyzed data sets included those with stool or tissue microbiome sequencing, metabolomics profiling, and/or association studies examining the association between microbiome dysbiosis and CRC. The microbiome sequencing was either targeted for specific microbes using real-time PCR or untargeted, such as metagenomic sequencing or 16s rRNA gene sequencing. The metabolomics profiling for which targeted and untargeted based analyses using different hyphenated liquid chromatography—mass spectrometric (LC-MS) techniques of gut or plasma/serum samples were included.

2. Materials and Methods

In this systematic review of the literature, we used the Cochrane Handbook for Systematic Reviews of Interventions and examined the gut microbiota, gut metabolite indicators, and/or circulating metabolite markers as the intervention [28]. Our reporting was planned according to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) statement [29]. Literature search and study selection: a systematic search was conducted till 30 October 2022, using MEDLINE1, Google Scholar, Wiley, ScienceDirect, and Spring. Three experts (A.A.h, R.M.A, and W.M.S) in the fields of immunology, bioanalytical techniques, and microbiology collaborated to choose the search terms. The references cited in the listed publications were examined to find other studies. Five authors (Y.A.A, R.M.M, AAM, S.M.K, and A.A.J) selected studies that compared healthy controls with adenoma and/or carcinoma with respect to gut microbiome markers and/or gut and/or circulating metabolite markers, and their association for diagnosis or prognosis purposes. Following the selection, three authors (A.A.h, R.M.A, and W.M.S) reviewed the selected papers up until 30 December 2022; results from each database were reviewed, and duplicates were excluded (Figure 1).
The CRC group was defined as cancer patients where cancer starts in the colon or rectum. The development of CRC occurs in stages, starting with normal epithelium, progressing through a pre-malignant lesion (known as an adenoma), into a malignant lesion (carcinoma), which invades nearby tissues and has the potential to spread throughout the body (metastasis). The intervention was identified using the search term “colorectal cancer”, “adenoma”, “carcinoma”, “polyps adenoma”, and “sporadic carcinoma”. The gut or intestinal microbiome was defined as the composition of microorganisms (bacteria, archaea, and eukaryota) colonizing the human gastrointestinal tract. Gut or intestinal microbiome intervention was identified using the search terms “gut or intestinal microbiota”, “gut or intestinal microbiome”, “gut or intestinal microbiome profile”, “gut or intestinal microbiota profile”, “gut or intestinal microbiome markers”, and “gut or intestinal microbiota markers”. Gut or intestinal and circulating metabolites were defined as small molecules that are generated as intermediate or end products of microbial metabolism in the gastrointestinal tract or intestinal and/or circulating system. The intervention was identified using the search term “gut or intestinal metabolites”, “gut or intestinal metabolomic”, “gut or intestinal metabolite profile”, “gut or intestinal metabolomic profile”, “gut or intestinal metabolite markers”, “gut or intestinal metabolomic markers”, “serum metabolites”, “serum metabolomic”, “serum metabolite profile”, “serum metabolomic profile”, “serum metabolite markers”, “serum metabolomic markers”, “plasma metabolites”, “plasma metabolomic”, “plasma metabolite profile”, “plasma metabolomic profile”, “plasma metabolite markers”, “plasma metabolomic markers”.

2.1. Eligibility Criteria

Only studies that compared healthy individuals to people diagnosed with adenoma or carcinoma and underwent peer review were considered. Reports on conference proceedings, case series with less than ten participants, case studies, systematic reviews, and protocol papers were all excluded. Three researchers (AAh, RA, and WMS) with a collective experience of more than ten years in the literature review chose the studies. The complete texts of the potentially suitable studies were retrieved after each title and abstract had been independently reviewed. At the titles and abstracts stage, disagreements were settled by consensus.

2.2. Data Extraction

Based on published guidelines, a standard form (Table S1) was created to retrieve data [30,31,32]. Three researchers (A.A.h, R.M.A, and W.M.S) extracted and cross-checked the data for each study. For each study, the following details were recorded: (1) Participant characteristics, including sample size, age, gender, and diagnosis; (2) Inclusion and Exclusion Criteria; and (3) Interventional features: untargeted; gut microbiome profile, untargeted gut/circulating metabolite profile, the association between gut microbiome species and colorectal cancer, the association between gut/circulating metabolite profile and colorectal cancer, and (4) characteristics of the outcomes: gut microbiome/genera/species, gut/circulating metabolites types.
Based on sensitivity, specificity, and area under the curve (AUC), the diagnostic performance of the investigated biomarkers was evaluated. If any of the data could not be directly described, the appropriate values were, if possible, calculated using other information.

2.3. Methodological Quality

The included studies’ quality was evaluated in accordance with PRISMA and the Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) guidelines [30]. The subject recruitment, examiners, methodology, results, handling of missing data, statistical analysis, and findings were the seven categories that were the focus of the quality review (Table S2). Each publication was critically analyzed independently by three reviewers (A.A.h, R.M.H, and W.M.S), and conclusions were confirmed by consensus. Prior to the thorough assessment, five full-text papers were evaluated and discussed for calibration. Studies were given a quality score based on a minimum threshold of 70%; those that met the threshold were deemed to be of good quality, and those that fell below it were assessed to be of low quality [31] (Table 1).

3. Results

3.1. Studies Included in the Review

After excluding duplicates, the search resulted in 42 references (Figure 1). A title and abstract screening resulted in the exclusion of 18 papers [32,33,34,35,36,37,38,39,40,41,42,43,44,45,46,47,48,49]. As a result, 24 papers in total met the criterion for selection. The most frequent reasons for exclusion were failing to meet the exclusion criteria (e.g., using animals in experiments or simply conducting bioinformatic analyses from databases) or using the incorrect study design (e.g., leaving out the healthy comparison group or CRC).

3.2. Comparison Groups/Subgroups of the Studies

Twelve studies included the three basic comparison groups; ADA, CRC, and HC, whereas ten studies included participants from CRC and HC only. Two studies had only two comparison groups, ADA and HC. All studies included both genders except one paper included only male participants, and in four studies, gender was not reported. Age range varied among the included studies, for which the youngest reported age was 18 yrs. Among the included studies, eight papers recorded cancer locations, and nine studies specified cancer stages (Table 2). Table 2 summarizes the study type, recruitment strategy, selection criteria, sample size, study frame time, and location.

3.3. Interventions of the Included Studies

Of the 24 studies meeting the inclusion criteria, 11 papers investigated both gut microbiome and associated metabolites, seven papers profiled only gut microbiome, and six described associated metabolites in CRC patients. Thirteen studies conducted an untargeted gut microbiome technique, whereas four performed targeted methods among the included studies. One study performed untargeted microbiome profiling, followed by the targeted method. For metabolites profiling, eight studies employed an untargeted profiling technique, and one study did the untargeted followed by the targeted method. Eight studies used the targeted metabolite method (Table 3).
The majority of the studies (9 out of 11) conducted both microbiome and metabolite profiling using fecal specimens. One study used rectal mucosa biopsy, and another study used stool to extract bacterial extra vesicles (EV). All but one of the seven studies that only focused on microbiome profiling used fecal specimens. The remaining study used rectal mucosa biopsy along with the fecal specimen. For metabolite profiling studies, three studies used fecal specimens, two used serum specimens, and one used plasma specimens. From the resulting 24 studies, we reported the outcome measurement of metabolites as (distribution of metabolite types) (Table 3). Microbiome outcomes were documented as (the distribution of different genera/species in the different study groups and fold change of specific gene expression of particular species). Table 3 summarizes the interventions, the comparison groups, the specimen type, and the metric used in the included studies.
Five studies (Flemer et al. [67], Zeller et al. [68], Zacular et al. [69], Eklöf et al. [71], and Gao et al. [72]) investigated only bacteria as biomarkers and also reported AUCs for diagnostic evaluation. According to Zeller et al. [68], six bacteria differentiated between CRC and healthy controls with an AUC of 85% (84–87%); similarly, Flemer et al. [67] identified six bacteria that distinguished between CRC and healthy controls with an AUC of 87%. Eklöf et al. [71] showed that only one bacterium can differentiate between ADA and CRC with an AUC of 73.1%, yet with 84.6% sensitivity and 63% specificity. Six, four, and six bacteria were used to identify ADA vs. HC, ADA vs. CRC, and CRC vs. HC with AUC values of 79.8% (687–90.8%), 82.3% (72.2–92.3%), and 83.9% (74–93.8%), respectively, as reported by Zacular et al. [69]. Gao et al. [72] showed AUCs of 61.6% (52–71%) (sensitivity: 83.6% and specificity: 39%) and 85.8% (78–93%) (sensitivity: 66.7% and specificity: 98%) for when 18 bacterial species implemented for the diagnosis of ADA or CRC, respectively (Table 4).
Two studies (Yang et al. [75] and Godert et al. [61]) reported only metabolites as bioindicators and evaluated CRC diagnostic implementation. According to Yang et al. [75], two metabolites, cadaverine and putrescine, can be used to identify CRC with AUCs of 77% and 67.2, respectively. An AUC of 77% based on 10 metabolites was reported by Godert et al. [61] (Table 4).
Three studies (Kim et al. [56], Coker et al. [60], and Chen et al. [70]) evaluated the diagnostic application of both biomarkers, bacteria, and metabolites. According to Kim et al. [56], using the identified bacteria alone can have an AUC of 95%, and the two metabolites alone can generate an AUC of 92%; however, combining the two bacteria and the two metabolites improved the AUC to 100%. An AUC of 94.7% (91.5–96.83%) and 87.59% (83.58–91.6%) based on only 6 bacteria and 14 bacteria differentiated between ADA vs. CRC and ADA vs. HC, respectively. However, when the 14 bacteria were combined with the two metabolites, the AUC was 93% (91.07–96.42%) for CRC diagnosis by Coker et al. study [60]. When Bacteroidetes was combined with Acetic acid, butyric acid, and t10, c12-CLA, they exhibited an AUC of 90% (70–90%) to differentiate prelesion (ADA) as Chen et al. [70] reported (Table 4).

3.4. Methodological Quality

Sixteen studies met the methodological high-quality threshold of 70% (Table 5) [26,50,52,54,56,57,58,60,62,63,66,67,68,69,70,75]. Four studies scored between 60 and 69% [71,72,74,75], and four studies scored 50–59% [53,59,61,73]. The major source of bias in the resulting 24 papers was the failure to report whether the person(s) experimenting was/were blinded to the study groups and quality controls, followed by the statistical analyses used, such as reporting the confidence interval for change in outcomes from before to after intervention, the distribution of principal confounders in each group of subjects, and adjustment for confounders in the analyses. All studies noticeably described (1) their sample size estimation for each experimental group, (2) their main findings, and (3) the main hypothesis and objectives and validity of the reported main outcome.

3.5. Measurement Outcomes

3.5.1. Primary Outcome Measures

Microbial Markers among ADA and CRC Compared to Healthy Control (HC) Using the Untargeted Microbiome Approach

Microbial markers associated with CRC and ADA were evaluated in 18 studies by two approaches: untargeted or targeted method. The untargeted approach applied either 16s rRNA gene or whole genome sequencing analysis, whereas the targeted method used real-time PCR targeting specific microbial genes. Eleven studies used the 16s rRNA gene sequencing analysis [26,50,56,62,63,67,69,70,72,74,75], and two studies used the whole genome sequencing analysis [53,60,68] (Table 3).
There was conflicting evidence of microbial markers between ADA and HC (Nugent et al. [52], Zackular et al. [69], Chen et al. [70], Gao et al. [72]). However, there was strong evidence of associated microbial markers for CRC compared to ADA. Two microbial markers were found to be increased in CRC compared to ADA, Fusobacterium spp. (Zeller, et al. [68], Zackular et al. [69], and Gao et al. [72]) and Porphyromonas (Zeller et al. [68] and Zackular et al. [69]. Fusobacterium spp. was identified in two high-quality studies (Zeller et al. [68] and Zackular et al. [69]) and one moderate-quality paper (Gao et al. [72]). Porphyromonas was profiled in two high-quality papers (Zeller et al. [68], Zackular et al. [69]) (Table 6a).
There was strong evidence that nine microbial markers were associated with CRC compared to HC as follows: Lachnospiraceae-Lachnoclostridium, Ruminococcaceae-Ruminococcus, Parvimonas spp., P micra, Enterobacteriaceae, Fusobacterium spp., Bacteroides, Peptstreptococcus-P. stomatis, Clostridia spp.-Clostridium hylemonae, Clostridium symbiosum, and Porphyromonas-P. asaccharolytica (Table 6a).
Lachnospiraceae-Lachnoclostridium and Ruminococcaceae-Ruminococcus were identified in three high-quality papers: Kim et al. [56], Sinha et al. [62], and Zackular et al. [69] and Kim et al. [56], Flemer et al. [67] and Zeller, et al. [68], respectively. Parvimonas spp.-P. micra was profiled in three high-quality studies (Kim et al. [56], Flemer et al. [67], and Zeller et al. [68]) and one in a moderate-quality study (Gao et al. [72]). The group Enterobacteriaceae was found as microbial markers in CRC patients in three high-quality studies (Kim et al. [56], Zackular et al. [69], and Yang et al. [75]) (Table 6a).
Fusobacterium is one of the most common CRC-microbial markers, five high-quality papers (Shina et al. [62] Flemer et al. [67], Zackuler et al. [69] and Yang et al. [75]) and one moderate-quality study (Gao et al. [72]) identified this genus. Zeller et al. [68] typed Fusombacterium to the sub-species as F. nucleatum subsp. vincentii, F. nucleatum subsp. Animalis, Fu. nucleatum subsp. nucleatum, F. nucleatum subsp. Polymorphum, whereas Gao et al. [72] identified the species level only F. nucleatum (Table 6a).
Bacteroids were profiled in two high-quality papers (Zeller et al. [68] and Felmer et al. [67]), whereas in Zeller et al. [68] specifically B. fragilis was characterized. P. stomatis is another CRC-microbial marker that was described in two high-quality studies (Felmer et al. [67] and Zeller et al. [68]) and one low-quality paper (Gao et al. [72]). Clostridia spp. was characterized in two high-quality papers (Shinan et al. [62] and Zeller et al. [68]), where two species, C. hylemonae, C. symbiosum, were described in Zeller et al. [68]. Porphyromonas was profiled as a CRC-microbial marker in two high-quality studies (Zeller et al. [68] and Zackular), in Zeller et al. [68] P. asaccharolytica was identified (Table 6a).
There was limited evidence of the association of Streptococcus spp. with CRC compared to HC, as the two studies profiled Streptococcus spp. were in the low-quality category. Chang et al. [53] identified S. gallolyticus and another study (Goa et al. [72]) described S. intermedius. Results indicated no evidence of the association of the other microbial markers shown in Table 6a with CRC compared to HC.

Microbial Markers among ADA and CRC Compared to Healthy Control (HC) Using the Targeted Microbiome Approach

Microbial markers associated with CRC and ADA were evaluated in four studies using real-time PCR targeting specific microbial genes. No studies identified microbial markers associated with ADA compared to HC and ADA compared to CRC. However, there was moderate evidence of Fusobacterium spp.-F. nucleatum as a microbial marker for CRC compared to HC. Two studies characterized Fusobacterium spp. as a microbial marker, one with high-quality (Clos-Garcia et al. [63]) and one with a low-quality score (Eklöf et al. [71]) (Table 6b).

Metabolite Markers among ADA and CRC Compared to Healthy Control (HC) Using the Non-Targeted and Targeted Metabolite Approaches

Metabolite markers linked with CRC and ADA were assessed in 17 studies in two ways, non-targeted or targeted profiling methods. The non-targeted approach applied (1 study [50]) Ultra-Performance Liquid Chromatography/Mass Spectrometry platform (UPLC-MS/MS), (1 study [52]) Liquid chromatography coupled to Gas Chromatography Time-of-Flight Mass Spectrometry (LC-GCTOF-MS/MS), (1 study [56]) Gas Chromatography Time-of-Flight Mass Spectrometry (GCTOF-MS/MS), (1 studies [61]) High-Performance Liquid Chromatography/Mass Spectrometry platform (HLC-MS/MS), (2 studies [74,75]) Gas Chromatography—Mass Spectrometry (GC-MS), (1 study [62]) HPLC-GC-MS/MS analyses, (1 study [66]) GCTOF-MS-UPLC-QTOF-MS, and (1 study [70]) Ion Chromatography/UPLC-MS/MS. The targeted approach varied among the nine studies: (2 studies [26,63]) UPLC-MS/MS, (1 study [54]) LC-MS/MS, (2 studies [57,74]) GC-MS/MS, (2 studies [58,73]) GC, (1 study [60]) GCTOF-MS/MS, and (1 study [22]) HPLC platforms (Table 3).
There was conflicting evidence of common metabolite markers in ADA compared to HC. Three studies (Kim et al. (high-quality) [56], Nugent et al. (low-quality) [52], and Kim et al. (high-quality) [50]) identified metabolite markers in ADA compared to the HC group using the untargeted means.
There was limited evidence of one metabolite marker (Palmitoyl–sphingomyelin) linked to CRC compared to HC [61,62], whereas there was moderate evidence of another metabolite marker, Proline [66,74], associated with CRC compared to HC. Palmitoyl-sphingomyelin was profiled in two papers, a high-quality paper [62] and a low-quality study [61]. The amino acid, Proline, was identified in a high-quality study [66] and low-quality paper [74] (Table 6c).
Only one study identified metabolite markers using the targeted method for ADA vs. HC groups or ADA vs. CRC groups. Seven studies profiled metabolite markers in CRC vs. HC [26,54,57,58,60,73,75], yet there were conflicting results (no common markers). Three high-quality papers [26,54,60] and four studies of low-quality [57,58,73,75] identified the metabolite markers (Table 6d).

3.5.2. Secondary Outcome Measures

Microbial Markers for Cancer Stages and Locations

Among the included studies, eight papers recorded cancer locations, and nine studies specified cancer stages (Table 3). Based on the untargeted means, one paper [72] identified microbial markers for early stage I, III, and late stage IV. Moreover, one paper [67] profiled microbial markers for different cancer locations. There was no evidence of distinguished microbial markers among the different stages or locations. On the targeted approach, one paper [63] described microbial markers for late-stage IV. Moreover, one paper [22] profiled microbial markers for cancer on the left side. There was no evidence of distinguished microbial markers among the different stages or locations.

4. Discussion

The present systematic review identified strong evidence of two microbial markers for CRC compared to ADA; Fusobacterium spp.-F. nucletaum (Zelleret al. [68], Zackular et al. [69], and Gao et al. [72]) and Porphyromonas (Zeller et al. [68] and Zackular et al. [69]) using the untargeted interventions. Yet, using the targeted method, no evidence was identified for microbial markers associated with CRC compared to ADA.
We identified strong evidence of nine microbial markers associated with CRC compared to HC as follows: Lachnospiraceae-Lachnoclostridium, Ruminococcaceae-Ruminococcus, Parvimonas spp., P. micra, Enterobacteriaceae, Fusobacterium spp., Bacteroides, Peptostreptococcus-P. stomatis, Clostridia spp.-C. hylemonae, C. symbiosum, and Porphyromonas-P. asaccharolytica using the untargeted approach. Moreover, results indicated moderate evidence of Fusobacterium spp.-F. nucleatum as a microbial marker for CRC compared to HC. However, we could not identify evidence for any microbial markers associated with ADA compared to HC using the untargeted and targeted methods.
These findings are consistent with the findings of a systematic review conducted by Russ et al., which investigated the association between the human gut microbiome and the risk of CRC. The study found that Fusobacterium and Bacteroides were the most enriched microbial species in CRC compared to HC [76]. Another systematic review found nine fecal microbiotas (Fusobacterium, Enterococcus, Porphyromonas, Salmonella, Pseudomonas, Peptostreptococcus, Actinomyces, Bifidobacterium, and Roseburia) to be associated with colorectal neoplasia [77].
In the current systematic review, results indicated conflicting evidence of metabolite markers for ADA in comparison to HC using the untargeted methods, yet no evidence using the targeted approach. Limited evidence was demonstrated of Palmitoyl–sphingomyelin as a metabolite marker of CRC compared to HC [61,62], whereas moderate evidence was identified of an amino acid, Proline [66,74], as a metabolite marker for CRC compared to HC using the untargeted approach. However, results demonstrated conflicting evidence of associated metabolite markers with CRC vs. HC using the targeted intervention. There was no evidence of distinguished metabolite markers for ADA compared to CRC using both untargeted and targeted interventions.
The enrichment of amino acids, cadaverine, and creatine in CRC was discovered by a recent meta-analysis that combined LEfSe, random forest (RF), and cooccurrence network approaches to find a collection of global CRC biomarkers. They had a positive correlation with microorganisms linked to CRC (P. stomatis, Gemella morbillorum, B. fragilis, Parvimonas species, F. nucleatum, Solobacterium moorei, and Clostridium symbiosum), but their correlation with microbes linked to controls was negative [6].
Secondary outcomes were not frequently used in the included studies, with no microbial or metabolite fingerprint for the different groups. These included microbial and metabolite markers for cancer stages and cancer locations. Based on the evidence investigated here, no evidence was identified of microbial or metabolite markers for the ADA vs. HC, ADA vs. CRC, or CRC vs. HC using targeted or untargeted interventions. Based on these studies, further investigation of the outcomes in relation to the ADA and CRC is warranted.

5. Study Limitations

Studies only available in English were included in this review; no search of the grey literature was performed. A potential bias in the choice of pertinent studies may have resulted from three sources. As the publications included in this systematic review varied greatly in their methodological approaches, comparison groups, and statistical analyses, meta-analysis was not possible. Gut microbiome and associated metabolites are subjected to confounding variables such as age, gender, diet, medication, smoking, and other lifestyle factors [78]. Moreover, there can be significant differences in the gut microbiome and its metabolites between geographically distinct populations and across countries [79,80].
More than 83% of the included studies focused primarily on identifying biomarkers for CRC diagnosis, yet four studies (16.6%), particularly Sun et al. [26], Nugent et al. [52], Flemer et al. [67], and Yusuf et al. [73], the main aim was to identify microbes or metabolites that could contribute to the pathology of CRC. Sun et al. [26] study identified bacteria and metabolites; Nugent et al. [33] reported associated bacteria with CRC; Flemer et al. [67]; and Yusuf et al. [73] studied only associated metabolites. These papers included healthy controls in comparison to ADA or CRC and performed association analysis to evaluate the contribution of such markers in the CRC progression, suggesting these microbes or metabolites as potential markers of CRC diagnosis. Therefore, we included the four studies in the analysis. However, further evaluation from a diagnostic perspective is much needed.
Various alpha and beta indices, including the Bray–Curtis dissimilarity, Jaccard distance, and UniFrac, as well as the Chao Index, Simpson Index, Shannon Index, ACE Index, and Good’s Coverage Index, have been reported across the included research. Most of the studies that were considered demonstrated microbial dysbiosis between CRC and the healthy control group. The stated estimates for alpha and beta diversity are indices rather than true effective difference figures. Due to the non-linear nature of these indices, it is incorrect to compare them between different studies and draw inferences about their biological importance. Therefore, we have not reported and compared these indices in the systematic review.
Most of the included studies were conducted in Asian countries (Table 2), which can be untransferable across the world. Additionally, depending on the interventions used in this research, some of our specific summary statements were in disagreement with one another. (Table 6). There was no consistency in sample types, collection, and storage temperature. Moreover, the lack of standardization in DNA and metabolite extractions across the included studies has influenced microbiome and metabolite profiling. Further, one of the major conflicts observed was for the intervention approaches, untargeted and targeted methods. Each method applied different analytical means. Microbiome profiling used either 16S rRNA gene or whole genome sequencing for an untargeted approach, or real-time PCR for a targeted approach. Each method has its limitations from the taxonomic analysis perspective [81]. Likewise, metabolite profiling was conducted by a variety of methods. There was significant variation among these methodologies, which could lead to biases and make comparisons between the groups difficult. [82]. Therefore, the level of evidence assessment was classified into two main categories: the untargeted and targeted approaches for each microbial and metabolite profile. There were three studies with low quality (weighted 51.8%, 55.5%, and 59.3% in the summary statement, respectively). This suggests that even a different observation from a low-quality study could substantially alter the strength of the evidence for a given summary conclusion. This might have made it more difficult to distinguish between fingerprint marks left by different groups and caused frequent inconsistencies in evidence summary statements.

6. Conclusions

We identified strong evidence of two microbial markers, Fusobacterium spp.-F. nucletaum and Porphyromonas for ADA vs. CRC, and nine microbial markers Lachnospiraceae-Lachnoclostridium, Ruminococcaceae-Ruminococcus, Parvimonas spp., P. micra, Enterobacteriaceae, Fusobacterium spp., Bacteroides, Peptostreptococcus-P. stomatis, Clostridia spp.-C. hylemonae, Clostridium symbiosum, and Porphyromonas-P. asaccharolytica for CRC vs. HC.
Based on the data that have already been reviewed here, there is encouraging evidence that microbial markers from fecal samples may be used to develop new, inexpensive tests that could supplement the collection of existing non-invasive CRC screening tools. However, to make results more comparable and allow for the drawing of conclusions on a wider scale, future research should concentrate on creating standardized and reproducible protocols for researching the human gut microbiota.
The remaining evidence of metabolite markers among the different groups ADA vs. HC, ADA vs. HC, and CRC vs. HC was not of sufficiently high quality to permit further conclusions. With this finding, these microbial markers can be used in a panel for the diagnosis of ADA and CRC. Further research in the metabolite markers area is needed to evaluate the possibility of diagnostic or prognostic markers for colorectal cancer.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/microorganisms11082037/s1, Supplementary material of this systematic review can be found in the online version. Table S1. Extraction form, Table S2. Appraisal quality form.

Author Contributions

Conceptional design of the project, writing and editing the manuscript, and generating figures and tables were performed by A.A.A. and R.M.A. (Renad M. Alhamawi); W.M.-S., H.A.A., R.M.A. (Renad M. Alhamawi), Y.A.A. and W.M.-S. wrote and reviewed the manuscript. Five authors (Y.A.A., R.M.A. (Reema M. Almisned), H.A.A., S.M.K. and A.A.J.) performed the search and initial evaluation and extracted the abstracts and full text. All authors have read and agreed to the published version of the manuscript.

Funding

This research received a grant from the Ministry of Education in Saudi Arabia through project number 422/12.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

The authors extend their appreciation to the Deputyship for Research & Innovation, Ministry of Education in Saudi Arabia, for funding this research work through project number 422/12. Also, the authors would like to extend their appreciation to Taibah University for its supervision support.

Conflicts of Interest

The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

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Figure 1. Search strategy guided by the PRISMA flow diagram [29].
Figure 1. Search strategy guided by the PRISMA flow diagram [29].
Microorganisms 11 02037 g001
Table 1. Levels of evidence for summary statements and description of criteria adopted a priori to determine the level of evidence.
Table 1. Levels of evidence for summary statements and description of criteria adopted a priori to determine the level of evidence.
LevelDescription
StrongConsistent results (≥70%) from at least 2 high-quality studies
Moderate1 high-quality study and consistent findings (≥70%) in 1 or more low-quality studies
LimitedFindings in 1 high-quality * study or consistent results (≥70%) among low-quality studies
NONo study identified
ConflictingInconsistent results, irrespective of study quality
* Studies with quality scores over 70% were deemed high quality.
Table 2. Description of study type and study participants in the included studies.
Table 2. Description of study type and study participants in the included studies.
AuthorStudy TypeRecruitment Strategy and Selection CriteriaNumber of Subjects and GroupsLocation and Time Frame
Sun et al.
[26]
Case-control study for untargeted microbiome and targeted metabolites identification, specifically Tryptophan and its metabolites in CRC patientsMale and female
Aged 18–80 yrs
ADA, CRC, HC
Healthy control = 38
Microorganisms 11 02037 i001 24 Microorganisms 11 02037 i002 14
56.85 yrs ± 10.99
ADA = 33
Microorganisms 11 02037 i001 23 Microorganisms 11 02037 i002 10
61.18 yrs ± 8.53
CRC = 46
Microorganisms 11 02037 i001 32 Microorganisms 11 02037 i002 14
63.63 yrs ± 11.39
The China–Japan Friendship Hospital, China
March 2019 and December 2019
Kim et al.
[50]
Case-control study for untargeted metabolites and microbiome identification in CRC patients
Ps. The samples were obtained from cross sectional study, which gives this study a cross-sectional nature
All samples selected here have been enrolled in previous study [51]
Male and female
Aged 50–80 yrs
ADA, CRC, and
HC.
Healthy control = 102
Microorganisms 11 02037 i001 62 Microorganisms 11 02037 i002 40
50–59 yrs = 18
60–69 yrs = 49
>70 yrs = 35
ADA = 102
Microorganisms 11 02037 i001 62 Microorganisms 11 02037 i002 40
50–59 yrs = 17
60–69 yrs = 50
>70 yrs = 35
CRC = 6
Microorganisms 11 02037 i001 20 Microorganisms 11 02037 i002 16
50–59 yrs = 6
60–69 yrs = 19
>70 yrs = 11
ND
2001 to 2007
Nugent et al. [52]Case-control study for targeted microbiota (Lactobacillus sp., Escherichia coli, Bifidobacterium sp., Clostridium sp., Bacteroides sp., and Eubacteria) and untargeted metabolites identification in CRC patientsMale and female
Aged > 30 yrs
ADA and HC
Healthy control = 15
Microorganisms 11 02037 i001 4 Microorganisms 11 02037 i002 11
55.0 yrs ± 1.1
ADA = 15
Microorganisms 11 02037 i001 6 Microorganisms 11 02037 i002 9
54.3 yrs ± 1.1
University of North Carolina Hospitals, USA
ND
Chang et al. [53]Case-control study for untargeted microbiome in CRC patientsOnly Male
Aged 38–77 yrs
CRC and HC
Healthy control = 12
Microorganisms 11 02037 i001 12
CRC = 6
Microorganisms 11 02037 i001 6
Haikou people’s Hospital, Hainan, China
ND
Metagenomics sequences of 59 patients with CRC were obtained from the NCBI database (ref_CRC, Metagenomics sequencing data: PRJEB7774).
Guertin et al. [54]Case-control study for targeted metabolites, trimethylamine N-oxide, Carnitine, Choline, and Betaine in CRC patients
“Nested case-control study within the Alpha Tocopherol and Beta Carotene Cancer Prevention (ATBC) Study, described in detail elsewhere [55]
Gender ND
Aged
50–69 yrs
CRC and HC
Healthy control = 644CRC = 644USA
ATBC study (1985–1988)–(1993) [55]
Tumor location
Proximal colon = 169
Distal colon = 153
Rectum ICD-9 = 282
Kim et al.
[56]
Case-control study for untargeted microbiome and untargeted metabolites in CRC patientsMale and female
Aged 45–80 yrs
CRC and HC
Healthy control = 40
Microorganisms 11 02037 i001 22 Microorganisms 11 02037 i002 18
49–78 yrs
CRC = 32
Microorganisms 11 02037 i001 20 Microorganisms 11 02037 i002 16
45–80 yrs
CRC patients from Seoul National University Bundang Hospital and Chung-Ang University Hospital, South Korea
HC individuals from Haewoondae Baek Hospital, South Korea
April 2016–April 2018.
Tumor Stage
0 = 1
I = 7
II = 12
III = 9
IV = 3
Tumor location
Cesum = 2
Ascending = 6
Transverse = 1
Sigmoid = 12
Rectal = 7
Song et al.
[57]
Pilot, case-control study for targeted metabolites, long and short fatty acid in CRC patientsMale and female
Aged 45–70 yrs
ADA, CRC, and HC
Healthy control = 28
Microorganisms 11 02037 i001 22 Microorganisms 11 02037 i002 6
51.1 yrs ± 6.0
ADA = 27
Microorganisms 11 02037 i001 25 Microorganisms 11 02037 i002 1
53.6 yrs ± 7.2
CRC = 26
Microorganisms 11 02037 i001 16 Microorganisms 11 02037 i002 10
59.7 yrs ± 12.2
Asan Institute for Life Sciences, University of Ulsan College of Medicine, South Korea
July 2014 and August 2014
Tumor stage
I = 3
IIa = 5
IIc = 1
IIIb = 11
IIIc = 3
IVa = 3
Presence of lymph node metastasis = 16
Presence of colonoscopic obstruction = 5
Tumor location
Proximal cancer (above splenic flexure) = 3
Distal cancer (below splenic flexure) = 23
Genua et al. [58]Case-control study for targeted metabolites, Acetic Acid, Propionic Acid, i-Butyric Acid, Butyric Acid, 2-MethylButyric Acid, i-Valeric Acid, Valeric Acid from serum in CRC patientsMale and female
Cohort Irish and Czech
Aged 45–70 yrs
Tubular tubulovillous adenoma (TA/TVA), High-grade dysplasia (HGD), CRC, and HC
Irish cohort 128The Adelaide & Meath Hospital in Dublin, Ireland
Thomayer Hospital in Prague, Czech Republic.
Healthy control = 36
Microorganisms 11 02037 i001 17 Microorganisms 11 02037 i002 19
58 yrs ± 7
TA/TVA = 48
Microorganisms 11 02037 i001 30 Microorganisms 11 02037 i002 18
61.5 yrs ± 11
HGD = 18
Microorganisms 11 02037 i001 11 Microorganisms 11 02037 i002 7
59 yrs ± 7
CRC = 26
Microorganisms 11 02037 i001 13 Microorganisms 11 02037 i002 13
56 yrs ± 23
Czech cohort 85
Healthy control = 27
Microorganisms 11 02037 i001 12 Microorganisms 11 02037 i002 15
56 yrs ± 10
CRC = 58
Microorganisms 11 02037 i001 40 Microorganisms 11 02037 i002 18
64 yrs ± 15
D’asheesh et al. [59]Case-control study for targeted microbiota
Lactobaccilus acidophilus, Lactobacillus Plantarum, and Enterococcus faecalis
Aged 20–76 yrs
Gender ND
CRC and HC
Healthy control = 300
45.3 ± 2.5
CRC = 30055.34 ± 3.66Iran
March 2014 to October 2019
Coker et al.
[60]
Case-control study for untargeted microbiome and targeted metabolitesMale and female
Aged 58–83 yrs
ADA, CRC, and HC
Healthy control 128
Microorganisms 11 02037 i001 59 Microorganisms 11 02037 i002 69
64.03 yrs ± 6.84
ADA 140
Microorganisms 11 02037 i001 64 Microorganisms 11 02037 i002 54
65.84 yrs ± 5.53
CRC 118
Microorganisms 11 02037 i001 64 Microorganisms 11 02037 i002 54
73.21 yrs ± 10.37
Prince of Wales Hospital, the Chinese University of Hong Kong
ND
Goedert et al. [61]Case-control study for untargeted metabolitesMale and female
Aged 46–75 yrs
CRC and HC
Healthy control 102
Microorganisms 11 02037 i001 55.9% Microorganisms 11 02037 i002 44.1%
58.3 yrs ± 12.9
CRC 48
Microorganisms 11 02037 i001 64.6% Microorganisms 11 02037 i002 35.4%
62.9 yrs ± 13.7
1985–1989
Washington DC area hospitals, USA
Tumor stage
Non-invasive = 20.8%
Invasive, no known metastases = 41.7%
Known metastases = 35.4%
Missing = 2.1%
Tumor location
Right colon = 29.1%
Left colon = 33.3%
Rectal = 27.1%
Missing = 10.4%
Sinha et al. [62]Case-control study for untargeted microbiome and untargetd metabolitesMale and female
Aged 45–76 yrs
CRC and HC
Healthy control = 89
Microorganisms 11 02037 i001 55.5% Microorganisms 11 02037 i002 40.5%
58.4 yrs ± 13
CRC = 42
Microorganisms 11 02037 i001 59.5% Microorganisms 11 02037 i002 40.5%
63.4 yrs ± 13.1
ND
1985–1987
Tumor stage
Non-invasive = 21.4%
Invasive, no known metastases = 42.9%
Known metastases = 33.3%
Missing = 2.1%
Clos-Garcia et al. [63]Case-control study for targeted metabolites as in [64]
and untargeted microbiome identification in CRC patients
Male and female
Aged >18 yrs
ADA, CRC, and HC
Healthy control = 77
Microorganisms 11 02037 i001 35 Microorganisms 11 02037 i002 48
64.62 yrs
ADA = 69
Microorganisms 11 02037 i001 41 Microorganisms 11 02037 i002 41
67.99 yrs
CRC = 99
Microorganisms 11 02037 i001 60 Microorganisms 11 02037 i002 39
70.16 yrs
Samples batch 1 and 2 from COLONPREDICT study [65]
Batch 3 from Instituto de Investigación Sanitario Galicia Sur, Spain
ND
Tan et al.
[66]
Case-control study for untargeted metabolites in CRC patientsCRC and HC
Aged 24–82 yrs
Healthy control = 102
31–76 yrs
CRC = 101
24–82 yrs
The Ruijin Hospital affiliated with Shanghai Jiao Tong University School of Medicine, China
ND
Tumor stage
I = 26
II = 43
III = 26
IV = 6
Tumor location
Ascending = 21
Descending = 9
Sigmoid colon = 7
Rectum = 63
Flemer et al. [67]Case-control study for untargeted microbiome from stool and mucosa in CRC patientsFemale and male
Aged 27–82 yrs
CRC, ADA, and HC
Healthy control = 56Polyps ADA = 21CRC = 59Mercy University Hospital, Ireland
ND
Zeller et al. [68]Case-control study for untargeted microbiome from stool and mucosa in CRC patientsFemale and male
Aged 34–69 yrs
Adenoma (small < 1 cm and large > 1 cm)
HC from different cohorts from France and Germany
Healthy control = 358
Cohort France = 61
Cohort Germany = 297
ADA = 42
Cohort France
ADA small = 27
ADA large = 15
CRC = 91F group
Assistance Publique-Hôpitaux de Paris (academic hospitals)
G population
the Department of Surgery at the University Hospital Heidelberg and the affiliated Hospital Salem
H population
From my microbe project http://my.microbes.eu/
(accessed on 12 June 2023) ND
Cohort France = 61
Tumor stage
0 = 0
I = 15
II = 7
III = 10
IV = 21
Cohort Germany = 38
Tumor stage
0 = 25
I = 0
II = 0
III = 13
IV = 0
Zackular et al. [69]Case-control study for untargeted microbiome from stool in CRC patientsMale and female
Aged >18 yrs
ADA, CRC, and HC
Healthy control = 30
Microorganisms 11 02037 i001 11 Microorganisms 11 02037 i002 19
55.3 yrs (±9.2)
ADA = 30
Microorganisms 11 02037 i001 18 Microorganisms 11 02037 i002 12
61.3 yrs (±11.1)
CRC = 30
Microorganisms 11 02037 i001 21 Microorganisms 11 02037 i002 9
59.4 yrs (±11)
Toronto (Canada), Boston (USA), Houston (USA), and Ann Arbor (USA)
ND
Ohigashi et al. [22]Case-control study for targeted metabolites and microbiome from stool in CRC patientsMale and female
Aged 52–81 yrs
ADA, CRC, and HC
Healthy control = 27
Microorganisms 11 02037 i001 16 Microorganisms 11 02037 i002 11
65.6 yrs ± 13.5
ADA = 22
Microorganisms 11 02037 i001 11 Microorganisms 11 02037 i002 11
66.6 yrs ± 9.2
CRC = 93
Microorganisms 11 02037 i001 49 Microorganisms 11 02037 i002 44
68.9 yrs ± 12.1
ND
November 2007–October 2010
Tumor stage
Dukes A (36 patients)
Dukes B (19 patients)
Dukes C (24 patients)
Dukes D (14 patients)
Chen et al. [70]Case-control study for untargeted metabolites and microbiome, followed by targeted microbiota using functional genes from stool in CRC patientsMale and female
Aged 40–63 yrs
ADA and HC
Healthy control = 30
Microorganisms 11 02037 i001 13 Microorganisms 11 02037 i002 17
50.33 yrs ± 10.87
ADA = 30
Microorganisms 11 02037 i001 20 Microorganisms 11 02037 i002 10
53.23 yrs ± 10.14
The First Affiliated Hospital of Kunming Medical University, China
November 2017 to April 2018
Eklöf et al. [71]Case-control study for targeted microbiome in CRC patientsMale and female
Aged > 34 yrs
CRC, ADA, HC
Healthy control = 65
Microorganisms 11 02037 i001 35 Microorganisms 11 02037 i002 30
34–80 yrs
Dysplasia ADA = 134
Microorganisms 11 02037 i001 80 Microorganisms 11 02037 i002 54
34–80 yrs
CRC = 39
Microorganisms 11 02037 i001 20 Microorganisms 11 02037 i002 19
34–80 yrs
The University Hospital in Umeå, Sweden
September 2008 to March 2013
Tumor stage
I = 2
II = 21
III = 8
IV = 7
Tumor location
TotalDysplasiaCRC
Right371249
Left591776
Rectum381040
Gao et al. [72]Case-control study for untargeted microbiome in CRC patientsMale and female
Aged ND
CRC, precancer (ADA), HC
Healthy control = 442
Microorganisms 11 02037 i001 60.65%
Microorganisms 11 02037 i002 39.35%
65.79 yrs ± 12.73
Precancer (ADA) = 195 (31)
Microorganisms 11 02037 i001 62.5%
Microorganisms 11 02037 i002 37. 5%
63.07 yrs ± 12.84
CRC = 155
Microorganisms 11 02037 i001 29.48%
Microorganisms 11 02037 i002 70.52%
64.96 yrs ± 10.44
The Shanghai Tenth People’s Hospital, Tongji University School of Medicine and Changzheng Hospital affiliated with the Naval Medical University, China
The discovery cohort from January 2014–November 2015
The validation cohort from March 2016–December 2017
Tumor stage
0 = 25 (16.13%)
I = 51 (32.9%)
II = 56 (36.13%)
III = 11.7 (10%)
IV = 12 (7.74%)
Tumor location
Ascending colon = 25 (16.13%)
Transverse colon = 7 (4.52%)
Descending colon = 10 (6.45%)
Sigmoid colon = 33 (21.29%)
Rectum = 70 (45.16%)
Undefined = 5 (2.3%)
Yusuf et al. [73]Case-control study for targeted metabolites, short-chain fatty acids, acetate, propionate and butyrate acids in CRC patientsMale and female
Aged >18 yrs
CRC and HC
Healthy control = 14
Microorganisms 11 02037 i001 9 Microorganisms 11 02037 i002 5
50 yrs ± 17.6
CRC = 14
Microorganisms 11 02037 i001 10 Microorganisms 11 02037 i002 4
53.8 yrs ± 13.3
General Teaching Hospital Banda Aceh, Indonesia
ND
Weir et al. [74]Case-control study for untargeted microbiome and untargeted metabolites followed by targeted for short chain fatty acids in CRC patientsMale and female
Aged >18 yrs
CRC and HC
Healthy control = 11
Microorganisms 11 02037 i001 7 Microorganisms 11 02037 i002 3
50 yrs ± 17.6
CRC = 10
Microorganisms 11 02037 i001 8 Microorganisms 11 02037 i002 2
53.8 yrs ± 13.3
The University of Colorado Health-Poudre Valley Hospital in Fort Collins, CO, USA
ND
Tumor stage *
T1 = 2
T2 = 3
T3 = 4
Tis = 1
* Tis: Carcinoma in situ: intraepithelial or invasion of lamina propria; T1: Tumor invades submucosa; T2: Tumor invades muscularis propria; T3:Tumor invades through muscularis propria into the subserosa or into nonperitonealized pericolic or perirectal tissue.
Tumor location
Ascending 3
Rectum 3
Sigmoid 4
Yang et al. [75]Case-control study for untargeted microbiome and metabolites in CRC patientsMale and female
Aged >60 and <60 yrs
CRC and HC
Healthy control = 50
Microorganisms 11 02037 i001 17 Microorganisms 11 02037 i002 33
>60 yrs = 33
<60 yrs = 17
CRC = 50
Microorganisms 11 02037 i001 26 Microorganisms 11 02037 i002 24
>60 yrs = 24
<60 yrs = 26
Ongji University Affiliated Tenth People’s Hospital (Shanghai, China)
January 2014 to September 2014
Table 3. Description of the intervention used in the included studies.
Table 3. Description of the intervention used in the included studies.
AuthorGroupInterventionSample TypeMetric
Sun et al. [26]Experimental group
AD and CRC
Control group
Targeted metabolites identificationUntargeted microbiome identificationFecal specimen+/− of Trp and its metabolites
Indole/Trap ratio
Distribution (abundance) at bacterial genera level
Tryptophan (Trap) and its metabolites, such as L-Trp, L-Kynurenine (KYN), indole, skatole, indole-3-carboxylic acid (I3CA), Indole-3-aldehyde (IALD), Indole-3-acetate (IAA), Indolepropionic acid (IPA), indoxyl-3-sulfate (I3S), and Indole-3-acetadehyde (IAALD) using Ultraperformance liquid chromatography coupled to tandem mass spectrometry (UPLC-MS/MS) analysis16S geneRNA gene sequencing using an Illumina NovaSeq PE250
Kim et al. [50]Experimental group
AD and CRC
Control group
Untargeted metabolites identificationUntargeted microbiome identificationFecal specimenDistribution (abundances) of metabolites
Distribution (abundance) bacterial genera
UPLC-MS/MS platform16S gene RNA gene sequencing using the Illumina MiSeq system
Nugent et al. [52]Experimental group
AD
Control group
Untargeted metabolites identificationTargeted microbiome identificationRectal mucosal biopsy+/− of metabolites
Distribution (abundance) of bacterial genera/species
Liquid chromatography and gas
chromatography time of flight mass spectrometry
For Lactobacillus sp., Escherichia coli, Bifidobacterium sp., Clostridium sp., Bacteroides sp., and Eubacteria using qPCR with primers that amplify 16S rDNA
Chang et al. [53]Experimental group
CRC
Control group
Untargeted microbiome identificationFecal specimenDistribution (abundance) of bacterial species
Whole-genome shotgun sequencing Illumina HiSeq
Guertin et al. [54]Experimental group
CRC
Control group
Targeted metabolites identificationSerum specimen+/− of serum metabolites, trimethylamine N-oxide, Carnitine, Choline, and Betaine
Odds ratio of serum metabolites, trimethylamine N-oxide, Carnitine, Choline, and Betaine
Trimethylamine N-oxide, Carnitine, Choline, and Betaine in CRC patients using liquid chromatography (LC) tend mass spectrometry (MS)
Kim et al. [56]Experimental group
CRC
Control group
Untargeted metabolites identificationUntargeted microbiome identificationStool to extract bacterial extra vesicles (EV)Distribution (Abundance) of metabolites
Fold change difference of the means
Distribution of bacterial genera
Gas chromatography-time-of-flight mass spectrometry16S gene RNA gene sequencing by MiSeq Illumina.
Song et al. [57]Experimental group
CRC
Control group
Targeted metabolites identificationFecal specimenDistribution (Abundance) of metabolites
Mean ± SD
Long and short fatty acids using gas chromatography—mass spectrometry
Genua et al. [58]Experimental group
TA/TVA
HGD
CRC
Control group
Targeted metabolites identificationPlasma specimen+/− of the following metabolites,
Acetic Acid, Propionic Acid, i-Butyric Acid, Butyric Acid, 2-MethylButyric Acid, i-Valeric Acid, Valeric Acid
Mean/IQ
Acetic Acid, Propionic Acid, i-Butyric Acid, Butyric Acid, 2-MethylButyric Acid, i-Valeric Acid, Valeric Acid using gas chromatography
D’asheesh et al. [59]Experimental group
CRC
Control group
Targeted microbiome identificationFecal specimenFold change
and CFU/ml
Lactobacillus acidophilus, Lactobacillus palntarom and Enterococcus faecalis
By real-time PCR
Coker et al. [60]Experimental group
ADA and CRC
Control group
Targeted metabolites identificationUntargeted microbiome identificationFecal specimenDistribution (Abundance) of metabolites
Fold change
Distribution (Abundance) of bacterial species
Methyl and ethyl chloroformate (MCF and ECF) derivatized compounds identified previously using gas chromatography coupled to time-of-flight mass spectrometer (GC-TOFMS) analysisWhole-genome shotgun sequencing of all samples was carried out on an Illumina HiSeq.
Goedert et al. [61]Experimental group
CRC
Control group
Untargeted metabolites identificationFecal specimenDistribution (Abundance) of metabolites
High-performance liquid chromatography/tandem mass spectrometry
Sinha et al. [62]Experimental group
CRC
Control group
Untargeted metabolites identificationUntargeted microbiome identificationFecal specimenDistribution (Abundance) of metabolites
Distribution of bacterial genera
Odds ratio for both microbiota and metabolites
HPLC-GC/MS-MS16S rRNA gene sequencing
Clos-Garcia et al. [63]Experimental group
ADA,
CRC
Control group
Targeted metabolites identificationUntargeted microbiome identificationFecal specimenDistribution (Abundance) of metabolites
Distribution of bacterial genera
UHPLC-MS16S rRNA gene sequencing
Tan et al. [66]Experimental group
CRC
Control group
Untargeted metabolites identificationSerum specimenDistribution (Abundance) of metabolites %
Gas chromatography time-of-flight mass spectrometry (GC−TOFMS)UPLC−QTOFMS
Flemer et al. [67]Experimental group
ADA
CRC
Control group
Untargeted microbiome identificationFecal specimen
and mucosa biopsy
Distribution of bacterial species
16S rRNA gene sequencing
Zeller et al. [68]Experimental group
ADA
CRC
Control group
Untargeted microbiome identificationFecal specimen and mucosa biopsyDistribution (Abundance) of bacterial genera
Whole-genome shotgun sequencing of fecal samples)
16S rRNA gene sequencing (DNA from 48 tissue sample pairs (tumor and healthy mucosa) and 129 fecal samples
Zackular et al. [69]Experimental group
ADA
CRC
Control group
Untargeted microbiome identificationFecal specimenDistribution (Abundance) of bacterial genera
16S rRNA gene sequencing analysis
Ohigashi et al. [22]Experimental group
ADA
CRC
Control group
Targeted metabolites identificationTargeted microbiome identificationFecal specimenDistribution (Abundance) of metabolite.
Bacterial counts
Organic acids, identification from stools using high-performance liquid chromatography system.Clostridium leptum, Bacteroides fragilis, Bifidobacterium,
Atopobium, Prevotella, Clostridium difficile, Clostridium perfringens, Lactobacillus casei, Lactobacillus gasseri, Lactobacillus plantarum, Lactobacillus reuteri, Lactobacillus ruminis, Lactobacillus sakei, Lactobacillus brevis, Lactobacillus fermentum, Lactobacillus fructiborans Enterobacteriaceae, Enterococcus, Staphylococcus,
Pseudomonas using real-time PCR
Chen et al. [70]Experimental group
ADA
Control group
Untargeted metabolites identificationUntargeted microbiome identificationFecal specimenAbundance/distribution and concentration of metabolite.
Bacterial species distribution/abundance
Fold-change in gene expression of bacterial species producing specific metabolites.
Ion chromatography and ultra-performance liquid chromatography-tandem mass spectrometry (UPLC-MS/MS).16S rRNA gene sequencing analysis followed by real-time PCR to identify bacteria that produced specific metabolites
Targeted microbiome identification
Real-time PCR analysis, butyrate-producing bacteria, determined by the presence of the butyryl-coenzyme-A-CoA transferase (bcoA) gene, secondary bile acid-producing bacteria, determined by the presence of the Bile acid 7α-dehydroxylation (baiCD) gene, conjugated linoleic acid-producing bacteria, determined by the presence of the plasminogen activator inhibitor 1(pai-1) gene, plasmid-encoded cfr gene (clbA) gene and the polypeptide outer membrane usher protein (afaC) gene of the afa-1 operon were used to detect Putative inactive phenolphthiocerol synthesis polyketide synthase type I (pks1) bacteria and afa-1 adhesin-expressing diffusely adhering Escherichia coli (DAEC), respectively For F. nucleatum 16S rRNA gene
Eklöf et al. [71]Experimental group
ADA/dysplasia
CRC
Control group
Targeted microbiome identificationFecal specimen+/− of clbA and afaC +, F. nucleatum
bacteria
qPCR clbA gene colibactin-producing bacteria, diffusely adherent Escherichia coli harboring the afa-1 operon, and F. nucleatum
Gao et al. [72]Experimental group
ADA
CRC
Control group
Untargeted microbiome identificationFecal specimenDistribution (Abundance) of bacterial species
16S rRNA gene sequencing analysis
Yusuf et al. [73]Experimental group
CRC
Control group
Targeted metabolites identificationFecal specimen+/− absence of acetate, propionate and
butyrate acids
Acetate, propionate and butyrate acids by gas chromatography
Weir et al. [74]Experimental group
CRC
Control group
Untargeted metabolites identificationUntargeted microbiome identificationFecal specimenDistribution (Abundance) of bacterial species, % abundant, fold change
Distribution (abundance)
Gas chromatography-mass spectrometry (GC-MS)16S rRNA gene sequencing analysis
Targeted metabolites identification
Gas chromatography-mass spectrometry (GC-MS)
Yang et al. [75]Experimental group
CRC
Control group
Untargeted metabolites identificationUntargeted microbiome identificationFecal specimenDistribution (Abundance) of bacterial species,
Gas chromatography-mass spectrometry (GC-MS)16S rRNA gene sequencing analysis
Table 4. Included studies identified microbial and metabolites associated with ADA or CRC for diagnostic purposes.
Table 4. Included studies identified microbial and metabolites associated with ADA or CRC for diagnostic purposes.
AuthorComparison GroupBacterial or Metabolite MarkersPerformance to Detect ADA or CRCIdentification Technique
AUC (CI 95%)Sen/Spec
Sun et al. [26]ADA vs. HC3 metabolites
IPA
IALD
Indole/Trap ratio
NDND16S rRNA gene sequencing.
Ultraperformance liquid chromatography coupled to tandem mass spectrometry.
ADA vs. HC4 metabolites
Skatole
IALD
I3CA
Indoles
NDND
CRC vs. HC10 Bacteria
Bacteroides
Bacilli
Clostidales_Incertae_Sedis XI
Clostridia
Fusobacteria
Verrucomicrobia
Corynebacteriacea
Enterobacteriacea
5 metabolites
KYN
IPA
IALD
I3CA
Indole/Trap ratio
NDND
Kim et al. [50]AD vs HC24 metabolites
Endocannabinoid
N acetyl-cadverine
Bilirubin ZZ
Lionleoyl ethanolamide
Oleoyl ethanolamide
Palmitoyl ethanolamide
3-Hydroxy-palmitate
Myristoleate
Palmitoleate
1-Linoleoyl-GPE
1-Palmitioyl -GPE
Secondary bile acid
3b-Hydroxy-5-cholenoic acid
Deoxycholate
Polyunsaturated fatty acid
Docosahexaenoate
Docosapentaenoate
Hexadecadienoate
Sphingolipid
N-palmitoyl-saphinganine
Hexadecasphinganine
Sphinganine
Piperine
3,7-Dimethyl-urate
NDNDUPLC-MS/MS platform
CRC vs. HC8 metabolites
Polyunsaturated fatty acid
Docosahexaenoate
Docosapentaenoate
Hexadecadienoate
Sphingolipid
N-palmitoyl-saphinganine
Hexadecasphinganine
Sphinganine
Piperine
3,7-Dimethyl-urate
NDND
Nugent et al. [52]ADA vs. HC23 metabolites
Galactose, 13,14-dihydro-15-keto-PGE2, 5-oxoproline, 2,4-diaminobutyric acid, Pentadecanoic acid, 5-hydroxyindoleacetic acid, Phosphoric acid, 2-aminoethanol, Dihydroceramide, Ornithine, linoleic acid, Petroselinic acid, LysoPC (18:2(9Z,12Z)), Myo-inositol, Diketogulonic acid, Prostaglandin E2, Methionine, 2-aminobutyric acid, Oleamide, Glycine, Maltitol, 2-phenylglycine, 2-phenylacetamide, N6-acetyl-L-lysine
NDNDLiquid chromatography and gas chromatography time of flight mass spectrometry
Chang et al. [53]CRC vs.
HC
18 bacteria
Parvimonas micra
Fusobacterium nucleatum
Clostridium saccharoperbutylacetonicum
Clostridium beijerinckii
Eubacterium celluloslvens
Lachnoclostridium phytofermentans
Clostridium butyricum
Herbiirix luporum
Balcillus cereus
Blautia sp. SCOSB48
Anaerobutyrucium hallii
Lachnospiraceae bacterium Choco86
Eubacterium eligens
Blautia hansenii
Longibaculum SPKGMB06250
Clostridum sporogenes
Faecalibacterium prausnitizi
Anaerostipes hardus
NDNDWhole-genome shotgun sequencing
Guertin et al. [54]CRC vs. HC1 metabolite
Serum choline
NDNDLiquid chromatography (LC) tandem mass spectrometry (MS)
Kim et al. [56]CRC vs. HC2 Bacteria
Solanum melongena, Collinsella
95%ND16S rRNA gene sequencing
Gas chromatography-time-of-flight mass spectrometry
2 metabolites
Leucine and Oxalic acid
92%ND
Both bacteria+ metabolites
Solanum melongena, Collinsella, Leucine and Oxalic acid
100%ND
Song et al. [57]CRC vs. HC4 metabolites
Monounsaturated fatty acid (MUFAs), Oleic acid, ω-6-polyunsaturated fatty acids (ω-6 PUFAs), and Linoleic acid
NDNDGas chromatography-mass Spectrometry
Genua et al. [58]ADA vs. CRC1 metabolite
2-MethylButyric acid
Gas chromatography
CRC vs. HC4 metabolites
Acetic acid, Propnic acid,
i-Valeric, and Valeric acid
NDND
D’asheesh et al. [59]CRC vs. HC3 Bacteria
Lactobacillus acidophilus, Lactobacillus palntarom, and Enterococcus faecalis
NDNDReal-time PCR
Coker et al. [60]ADA vs. CRC6 bacteria
Roseburia inulinivorans
Xanthmonas perforans
Fusobacterium nucleatum
Eiknella corrodens
Parvimonas micra
Peptostreptococcus anaerobius
11 metabolites
2-Hydroxy butyric acid
Gamma Aminobutyric acid
L-alanine
L-Aspartic acid
Norvaline
Orinthine
Oxoadipic acid
Oxoglutaric acid
Palmitoleic acid
Pimelic acid
Only bacteria
94.17% (91.5–96.83)
NDWhole-genome shotgun sequencing
Gas chromatography coupled to time-of-flight mass Spectrometer (GC-TOFMS)
ADA vs. HC14 bacteria
Roseburia inulinivorans
Xanthmonas gardneri
Fusobacterium nucleatum
Prevotella intermedia
Peptostreptococcus stomatis
Sutterella parviruba
4 metabolites
Alpha-Linoleici acid
L-Homoserine
Phenylacetic acid
Phenyllactic ac
Only bacteria
87.59% (83.58, 91.6%)
ND
CRC vs. HC14 bacteria
Eubacteria cellulosolvens
Lachinospiraceae_bacterium-3-1-57FAA-CT1
Clostridium bolteae
Streptococcus tigurinus
Xanthmonas gardneri
Eikenella corrodens
Oscillibacter valericigens
Actinomyces viscosus
Synergistes_sp_1_syn1
Clostridium symbiosum
Prevotella intermedia
Slackia exigua
Prevotella nigrescens
Porphymonas gingivalis
2 metabolites
L-Asparagine
Phenyllactic acid
Both 14 bacteria and 2 metabolites
93.7% (91.07, 96.42%)
ND
Goedert et al. [61]CRC vs. HC10 metabolites
3-Dehydrocarnitine, p aminobenzoate (PABA)
α-Tocopherol, γ-Tocopherol,
Pterin, N-2-Furoyl-glycine, p-Hydroxybenzaldehyde, Sitostanol, Conjugated linoleate-18-2N7, Palmitoyl-sphingomyelin, Mandelate
77%NDHigh-performance
liquid chromatography/tandem mass spectrometry
Sinha et al. [62]CRC vs. HC4 Bacteria
Fusobacterium, g-Porphyromonas,
Clostridia,
Lachnospiraceae
5 metabolites
p-hydroxy-benzaldehyde, Palmitoyl-sphin-gomyelin
p-aminobenzoate, Conjugated linoleate, and Mandelate
NDND16S rRNA gene sequencing
HPLC-GC/MS-MS
Clos-Garcia et al. [63]ADA vs. H1 metabolite
Triacylglycerol
NDND16S rRNA gene sequencing
UHPLC-MS
ADA vs. CRC4 Bacteria
Streptococcus
Parvvimonas
Coriobacteriaceae
Adlercreutzia
3 metabolites
cholesteryl esters, sphingolipids, Glycerophospatidylcholine
NDND
CRC vs. HC7 Bacteria
Fusobacterium, Streptococcus, Parvimonas, Coprococcus, Blatia, Clostridum, Staphylococcus
3 metabolites
Cholesteryl esters, sphingolipids, Glycerophospatidylcholine
NDND
Tan et al. [66]CRC vs. HC72 metabolites
This involved the following categories: Tricarboxylic acid (TCA) cycle, urea cycle, glutamine, fatty acids, and gut flora metabolism Tan et al. [66]
NDNDGas chromatography time-of-flight mass spectrometry (GC−TOFMS) UPLC−QTOFMS
Flemer et al. [67]CRC vs. HC6 Bacteria
Bacteroides
Roseburia
Ruminococcus
Oscillibacter
Lachinospiraceae incertae
Coporoccus
87%ND16S rRNA gene sequencing
Zeller et al. [68]CRC vs. HC2 Bacteria
Fusobacterium nucleatum subsp. vincentii and Fusobacterium nucleatum subsp. animalis
85%
(84–87%)
NDWhole-genome shotgun sequencing/16S rRNA gene sequencing
Zackular et al. [69]ADA vs. HC6 Bacteria
Fusobacterium, Porphyromonas, Lachnospiraceae, Enterobacteriaceae, Bacteroides, Lachnospiraceae Clostridiales
79.8%
(68.7–90.8%)
ND16S rRNA gene sequencing
ADA vs. CRC4 Bacteria
Fusobacterium, Porphyromonas, Parasutterella
Pacscolarctobacterium
82.3%
(72.2–92.3%)
ND
CRC vs. HC6 Bacteria
Fusobacterium, Porphyromonas, Lachnospiraceae, Enterobacteriaceae, Bacteroides, Lachnospiraceae and Clostridiales
83.9%
(74–93.8%)
ND
Ohigashi et al. [22]ADA vs. CRC3 Bacteria
Clostridium leptum,
Bacteroides fragilis,
Staphylococc
NDNDReal-time PCR
Liquid chromatography system
CRC vs. HC7 Bacteria
C. coccoides, C. leptum, B. fragilis, Bifidobacterium, Atopobium, Enterobacteriaceae,
Staphylococcu
4 Metabolites
Acetic acid, Propionic acid, Butyric acid, and Valeric acid
NDND
Chen et al. [70]ADA vs. HC1 Bacterium
Bacteroidete
3 Metabolites
Acetic acid, butyric acid,
and t10, c12-CLA
Both
90%
(70–90%)
ND16S rRNA gene sequencing analysis followed by real-time PCR.
Ion chromatography and ultra-performance liquid chromatography-tandem mass spectrometry (UPLC-MS/MS).
Eklöf et al. [71]ADA/dysplasia vs. CRC1 Bacterium
F. nucleatum
73.7%84.6% and 63.1%Real-time PCR
Gao et al. [72]ADA vs. HC
and
CRC vs. HC
18 Bacteria
Rhodococcus, Anaerostipes, Escherichia_Shigella,
Akkermansia,
Gemella,
Clostridium_XVIII,
Alkaliphilus Paenibacillus, Enterococcus,
Fusobacterium,
Fusicatenibacter,
Blautia Porphyromonas, Faecalibacterium, Parvimonas, Peptostreptococcus, Clostridium_IV Bacillus
ADA vs. HC
61.6%
(52–71%)
CRC vs. HC
85.8%
(78–93%)
ADA vs. HC
83.6% and 39%
CRC vs. HC
66.7% and 98%
16S rRNA gene sequencing
Yusuf et al. [73]CRC vs. HC3 Metabolites
Acetate, propionate and butyrate acids
NDNDGas Chromatography
Weir et al. [74]CRC vs. HC18 Bacteria
Bacteroides finegoldii, Bacteroides intestinalis, Prevotella copri,
Prevotella oris, Ruminococcus obeum, Dorea formicigenerans, Lachnobacterium bovis, Lachnospira pectinoschiza, Pseudobutyrivibrio ruminis, Bacteroides capillosus, Ruminococcus albus, Dialister invisus,
Dialister pneumosintes, Megamonas hypermegale, Acidaminobacter unclassified,
Phascolarctobacterium unclassified, Citrobacter farmer,
Akkermansia muciniphila,
NDND16S rRNA gene sequencing analysis
Gas chromatography—mass spectrometry (GC-MS)
20 Metabolites
Alanine, Glutamate, Glycine, Aspartic acid, Leucine, Lysine, Proline, Threonine, valine, Phenylalanine, Benzeneacetic acid, Propionic acid, pantothenic acid, Cholesterol derivatives, Oleic acid, Linoleic acid, Elaidic acid, Glycerol, Monooleoylglycerol, Ursodeoxycholic acid
NDND
Yang et al. [75]CRC vs. HC13 Bacteria
Escherichia-Shigella, Parvimonas, Fusobacterium, CFT112H7_norank, Porphyromonas. Firmicutes, Clostridiales, Clostridia, Lachnospiraceae, Ruminococcaceae, Selenomonadales, Negativicutes, and Faecalibacterium
NDNDGas chromatography—mass spectrometry (GC-MS)
16S rRNA gene sequencing analysis
2 metabolites
Cadaverine
putrescine
Only metabolites, each one alone:
74%
67.2
ND
Table 5. Quality appraisal of the included studies.
Table 5. Quality appraisal of the included studies.
AuthorRecruitment/5Examiner/2Methodology/5Outcomes/2Missing Data/7Statistical Analysis/5Results/2Overall Score/28Overall Score
100%
Zhen Sun et al. [26]40327322177.7
Kim et al. [50]40527522592.5
Nugent et al. [52]40227221970.3
Chang et al. [53]00127311451.8
Guertin et al. [54]12527522488.8
Kim et al. [56]40427522488.8
Song et al. [57]40327312074.1
Genua et al. [58]20526512074.1
D’asheesh et al. [59]30324201451.8
Coker et al. [60]40527522592.5
Goedert et al. [61]21226211659.3
Sinha et al. [62]20527522385.2
Clos-Garcia
et al. [63]
10527522381.1
Tan et al. [66]40527312281.1
Flemer et al. [67]40 5 2 7 5 2 2592.6
Zeller et al. [68]40 5 2 7 5 2 2592.6
Zackular et al. [69]40516322177.8
Ohigashi et al. [22]40326111762.9
Chen et al. [70]40326412074.1
Eklöf et al. [71]20326311762.9
Gao et al. [72]30227211762.9
Yusuf et al. [73]30126211555.5
Weir et al. [74]40227211866.7
Yang et al. [75]40527322385.2
Table 6. Levels of evidence for summary statements for each intervention.
Table 6. Levels of evidence for summary statements for each intervention.
a. Untargeted Microbiome Identification
Study (Appraisal Quality)Increased in ADA vs. HCIncreased in CRC vs. ADAIncreased in CRC vs. HC
Nugent et al. [52]
66.6% (L)
Bifidobacterium sp. Eubacteria
Chang et al. [53]
51.8% (L)
Streptococcus gallolyticus,
Haemophillus parainfluenza, Dialister sp. Marseille-P5638,
Ruthenibacterium lactatiformans
Kim et al. [56]
88.8% (H)
Bifidobacterium, Collinsella,
Blautia, Lachnoclostridium
Lachnospiraceae, Dorea
Eubacterium coprostanoligenes group
Ruminococcaceae-Ruminococcus
Faecalibacterium, Subdoligranulum
Catenibacterium, Parvimonas
Ruminiclostridium, Enterobacter
Diaphorobacter
Sinha et al. [62]
85.2% (H)
Fusobacterium, Porphyromonas
Clostridia, Lachnospiraceae
Flemer et al. [67]
92.6% (H)
Bacteroides, Roseburia
Ruminococcus, Oscillibacter
Porphyromonas, Peptostreptococcus,
Parvimonas, Fusobacterium
Zeller et al. [68]
92.6% (H)
Fusobacterium nucleatum subsp. vincentii
Fusobacterium nucleatum subsp. Animalis
Fusobacterium nucleatum subsp. nucleatum
Fusobacterium nucleatum subsp. polymorphum
Porphyromonas asaccharolytica
Prevotella nigrescens
Peptostreptococcus stomatis
Parvimonas sp.
Parvimonas micra
Olsenella uli
Parvimonas sp.
Streptococcus anginosus
Fusobacterium nucleatum subsp. vincentii
Fusobacterium nucleatum subsp. Animalis
Fusobacterium nucleatum subsp. nucleatum
Pseudoflavonifractor capillosus
Fusobacterium nucleatum subsp. polymorphum
Porphyromonas asaccharolytica
Ruminococcaceae bacterium
Prevotella nigrescens
Peptostreptococcus stomatis
Leptotrichia hofstadii
Parvimonas sp.
Parvimonas micra
Bacteroides fragilis
Bilophila wadsworthia
Neisseria sp.
Campylobacter rectus
Selenomonas sputigena
Leptotrichia buccalis
Clostridium hylemonae
Clostridium symbiosum
Zackular et al. [69]
77.8% (H)
Ruminococcaceae
Clostridium
Pseudomonas
Porphyromonadaceae
Fusobacterium
Bacteroides
Phascolarctobacterium
Porphyromonas
Fusobacterium
Porphyromonas
Lachnospiraceae
Enterobacteriaceae
Chen et al. [70]
74.1 (H)
Bacteroides
Escherichia
Faecalibacterium
Citrobacter
Gao et al. [72]
62.9% (L)
Bacillus cereus
Bacillus thuringiensis
Bacillus amyloliquefaciens
Cronobacter sakazakii
Alcanivorax hongdengensis
Burkholderia mallei
Clostridium ramosum
Coprobacillus sp.
Fusobacterium sp.
Streptococcus intermedius
Peptostreptococcus stomatis
Parvimonas micra
F. nucleatum
Weir et al. [74]
66.7% (L)
Acidaminobacter Citrobacter farmer
Akkermansia muciniphila
Yang et al. [75]
85.2% (H)
Enterobacteriaceae
Fusobacterium
Increased in ADA vs. HC
Overlapping microbial markersNo common microbial markers
4 studies [52,69,70,72]
Level of evidenceConflicting
Increased in CRC vs. ADA
Overlapping
microbial markers
Fusobacterium sp.
3 studies [68,69,72]
Porphyromonas
2 studies [68,69]
Level of evidenceStrongStrong
Increased in CRC vs. HC
Overlapping
microbial markers
Lachnospiraceae-Lachnoclostridium
3 studies
[56,62,69]
Ruminococcaceae-Ruminococcus
4 studies
[56,62,67,68]
Parvimonas
Parvimonas micra
4 studies
[56,67,68,72]
Enterobacteriaceae
2 studies
[69,75]
Fusobacterium sp.
5 studies
[62,67,68,69,75]
Bacteroides
2 studies
[67,68]
Peptostreptococcus sp.
2 studies
[67,72]
Clostridia sp.
C. hylemonae
C. symbiosum
2 studies
[62,68]
Porphyromonas
4 studies
[62,67,68,69]
Streptococcus sp.
S. gallolyticus, S. intermedius
2 studies
[53,72]
Level of evidenceStrongStrongStrongStrongStrongStrongStrongStrongStrongLimited
b. Targeted microbiome identification
Study (Appraisal quality)Increased in ADA vs. HCIncreased in CRC vs. ADAIncreased in CRC vs. HC
D’asheesh et al. [59]
51.8 (L)
Bifidobacterium sp. Eubacteria Enterococcus faecalis
Clos-Garcia et al. [63]
81.1% (H)
Staphylococcus and ParvimonasFusobacterium,
Staphylococcus and Parvimonas
Ohigashi et al. [22] 62.9% (L) C. difficile
C. perfringens,
Pseudomonas *,1
Eklöf et al. [71]
62.92% (L)
F. nucleatum
Increased in ADA vs. HC
Overlapping
microbial markers
Only one study was reported.
[12]
Level of evidenceNO
Increased in CRC vs. ADA
Overlapping
microbial markers
Only one study was reported.
[63]
Level of evidenceNO
Increased in CRC vs. HC
Overlapping
microbial markers
Fusobacterium sp.
2 studies
[63,71]
Level of evidenceModerate
c. Untargeted Metabolites Identification
Study (Appraisal quality)Increased in ADA vs. HCIncreased in CRC vs. HC
Kim et al. [56]
92.5% (H)
Endocannabinoid
N acetyl-cadverine
Bilirubin ZZ
Lionleoyl ethanolamide
Oleoyl ethanolamide
Palmitoyl ethanolamide
3-Hydroxy-palmitate
Myristoleate
Palmitoleate
1-Linoleoyl-GPE
1-Palmitioyl -GPE
Polyunsaturated fatty acid
Docosahexaenoate
Docosapentaenoate
Hexadecadienoate
Secondary bile acid
3b-Hydroxy-5-cholenoic acid
Deoxycholate
Sphingolipid
N-palmitoyl-saphinganine
Hexadecasphinganine
Sphinganine
Piperine
3,7-Dimethyl-urate
Nugent et al. [52]
66.7% (L)
The inflammatory metabolite prostaglandin E2
Kim et al. [50]
88.8% (H)
Aminoacids
Leucine
Isoleucine
Alanine
Lysine
Tyramine
Aminoisobutyric acid
Amino alcohol
Ethanolamine
Aromatic alcohol
Phenol
Carboxylic acid
Furoic acid
Succinic acid
Oxalic acid
Fatty acid
Butanoic acid
Hexanoic acid
Palmitic acid
Oleic acid
Godert et al. [61]
59.3% (L)
Heme-related molecules
Heme
Z-18565
X_19549
Cofactors. and vitamin
α-Tocopherol
γ-Tocopherol
Pterin
Xenobiotics
4-Acetamidophenol
2-Hydroxyacetaminophen sulfate
3-Cystein-S-YL-acetaminophen
p-Acetamidophenylglucuronide
Para-aminobenzoic acid (PABA)
N-2-Furoyl-glycine
Sitostanol
p-Hydroxybenzaldehyde
Mandelate
Peptides/Aminoacids
Histidine
Cis-Urocanate
Tryptophyl-glycine
Leucyl-tryptophan
Alanyl-histidine
Histidyl-glycine
Tyrosylglutamine
Histidyl-alanine
Valyl-aspartate
Pyro-glutamyl-glycine
Alanyl-leucine
Alanyl-tryptophan
Histidylphenylalanine
Leucyl-glutamate
Leucyl-serine
α-Glutamyl-valine
Prolyl-alanine
Valyl-histidine
Lipids
Palmitoyl-sphingomyelin
Conjugated linoleate-18-2N7
3-Dehydrocarnitine
Shina et al. [62]
85.5% (H)
Palmitoyl_Sphingomyelin
p_Hydroxybenzaldhyde
Tan et al. [66]
81.1% (H)
Fatty acid metabolism
β-hydroxybutyrate
betaine
Glycerol
Oleamide
Oleic acid
Erythrotetrofuranose Carnitine (18:1)
Linolic acid Acetyl carnitine Elaidic acid 3-oxodecanoic acid
Palmitic acid
valine, leucine, and isoleucine degradation
Allisoleucine
Arginine and proline metabolism
Creatinine
Purine nucleotide synthetics
Xanthosine
Cystine & methionine metabolism
Cystine
Carbohydrate metabolism
Threitol
Phospholipid metabolism
Sphinganine
CPA(18:0/0:0)
Glutathione metabolism
2-hydroxybutyric acid
2-aminobutanoic acid
TCA cycle
Pyruvate
Vitamin B6 metabolism
Glycolaldehyde
Others
Tetrahydrogestrinone
Allyl isothiocyanate
Proline
Weir et al. [74]
66.7% (L)
Aminoacids
Alanine
Glutmate
Glycine
Aspartic acid
Leucine
Lysine
Proline
Serine
Threonine
Valine
Phenylalanine
Carboxylic acids
Beneneacetic acid
Propionic acid
Mysteric acid
Pantothenic acid
Steroids
Cholesterol derivative
Yang et al. [75]
85.2% (H)
4-Methylvaleric acid
9-(2-Carboxyethyl)-2,2,4,4-tetramethyl-1,2,3,4-tetrahydro-gamma-carboline Adenosine
Butanoic acid
d-2-Aminobutyric acid
DL-Ornithine
D-Proline, n-propoxycarbonyl-, hexadecyl ester
Heptanedioic acid
Heptanoic acid
Hexane, 2,5-dimethyl
L-5-Hydroxytryptophan
L-Lysine
L-Tryptophan
L-Norleucine
L-Norvaline
Pentanoic acid
N-Acetyl-D-glucosamine
Cadaverine
Increased in ADA vs. HC
Overlapping
metabolite markers
No common metabolites
5 studies
[50,52,56,74,75]
Level of evidenceConflicting
Increased in CRC vs. HC
Overlapping metabolite markersPalmitoyl-sphingomyelin
2 studies
[61,62]
Proline
2 studies
[66,74]
Level of evidenceModerate Moderate
d. Targeted metabolites identification
Study (Appraisal Quality)Increased in ADA vs. HCIncreased in CRC vs. ADAIncreased in CRC vs. HC
Zhen Sun et al. [26]
77.7% (H)
Kynurenin(KYN)
Indole-3-aldehyde (IALD) and Indole-3-carboxylic acid
(I3CA)
The ratio of KYN to Trp (KYN/Trp ratio)
Kynurenin(KYN)
Indole-3-aldehyde (IALD) and Indole-3-carboxylic acid
(I3CA)
The ratio of KYN to Trp (KYN/Trp ratio)
Guertin et al. [54]
88.8% (H)
Serum choline
Song et al. [57]
74.1% (L)
Monounsaturated fatty acids (MUFAs)
C18:1ω-9 Oleic acid
ω-6 polyunsaturated fatty acids (PUFAs)
C18:2ω-6 Linoleic acid
Genua et al. [58]
74.1% (L)
2-MethylButyric Acid
Acetic Acid
Propionic acids
Coker et al. [60]
92.5% (H)
Phenyllactic acid, Phenylacetic acid, L-Phenylalanine, L-Valine, L-Alpha-aminobutyric acid, L-Proline, L-Alanine Oxoglutaric acid, L-Isoleucine, Gamma-Aminobutyric acid, L-Leucine, Glycine, L-Methionine, L-Tyrosine, L-Aspartic acid, Butyric acid, Glutathione, Succinic acid, 2-Hydroxybutyric acid, Malic acid, 3-Aminoisobutanoic acid, Ornithine, Beta-Alanine, Myristic acid, Oxoadipic acid, Alpha-Linolenic acid, L-Serine, Nicotinic acid, Linoleic acid, Pelargonic acid, Pyroglutamic acid, Glutaric acid, Hexanoic acid, L-Homoserine, 5-Dodecenoic acid, Pimelic acidL-alanine, glycine
L-proline
L-aspartic acid
L-valine
L-leucine
L-serine
myristic acid
phenyl lactic acid oxoglutaric acid
L-phenylalanine
L-alpha-aminobutyric acid
phenylacetic acid palmitoleic acid
3-aminoisobutanoic acid norvaline
Ohigashi et al. [22]
62.9% (M)
Succinic acid
Yusuf et al. [73]
55.5% (M)
The opposite decrease in Acetate
Propionate
butyrate acids
Increased in ADA vs. HC
Overlapping microbial markersOnly one study
[19]
Level of evidenceNO
Increased in CRC vs. ADA
Overlapping microbial markersOnly one study [60]
Level of evidenceNO
Increased in CRC vs. HC
Overlapping
microbial markers
No common metabolites
6 studies
[26,54,57,60,73,75]
Level of evidenceConflicting
e. Untargeted microbial markers for tumor stages and locations
Study (Appraisal Quality)Microbial Markers in CRC Early Stage IMicrobial Markers in CRC III StageMicrobial Markers in CRC IV, Late StageMicrobial Markers in Distal Cancers vs. Proximal CancersMicrobial Markers in Rectal vs. Proximal CancersMicrobial Markers in Proximal Cancer
Flemer et al. [67]
92.6% (H)
Alistipes Akkermansia Halomonas ShewanellaAlistipes Akkermansia Halomonas ShewanellaFaecalibacterium
Blautia Clostridium
Gao et al. [72]
62.9% (M)
Escherichia/ShigellaBacteroidesSaccharibacteria incertaesedisEscherichia/Shigella
Microbial markers in CRC early stage I
Overlapping
microbial markers
Only one study reported.
[72]
Level of evidenceNO
Microbial markers in CRC III stage
Overlapping
microbial markers
Only one study reported.
[72]
Level of evidenceNO
Microbial markers in CRC IV, late-stage
Overlapping
microbial markers
Only one study reported.
[72]
Level of evidenceNO
Microbial markers in distal cancers vs. proximal cancers
Overlapping
microbial markers
No common metabolites
Two studies
[67,72]
Level of evidenceConflicting
Microbial markers in rectal vs. proximal cancers
Overlapping
microbial markers
Only one study reported.
[67]
Level of evidenceNO
Microbial markers in proximal cancer
Overlapping
microbial markers
Only one study reported.
[67]
Level of evidenceNO
f. Targeted microbial markers for tumor stages and locations
Study (Appraisal Quality)Microbial Markers in CRC IV, Late StageMicrobial Markers on Right Side
Clos-Garcia et al. [63]
81.1% (H)
Bulleidia Fusobacterium Butyrivibrio
Peptostreptococcus Staphylococcus
Parvimonas Selenomonas
Ohigashi et al. [22]
62.9% (M)
Clostridium perfringens
Microbial markers in CRC IV, late-stage
Overlapping
microbial markers
Only one study reported.
[63]
Level of evidenceNO
Microbial markers on right side
Overlapping
microbial markers
Only one study reported.
[22]
Level of evidenceNO
g. Untargeted metabolite markers for tumor stage and location
Study (Appraisal Quality)Microbial Markers in CRC Late Stage IV vs. Early Stage I
Tan et al. [66]
81.1% (H)
Beta hydroxybuturate
Microbial markers in CRC late stage IV vs. early stage I
Overlapping
microbial markers
Only one study reported.
[66]
Level of evidenceNO
* 1 healthy control included adenoma and non-adenoma participants.
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Alhhazmi, A.A.; Alhamawi, R.M.; Almisned, R.M.; Almutairi, H.A.; Jan, A.A.; Kurdi, S.M.; Almutawif, Y.A.; Mohammed-Saeid, W. Gut Microbial and Associated Metabolite Markers for Colorectal Cancer Diagnosis. Microorganisms 2023, 11, 2037. https://doi.org/10.3390/microorganisms11082037

AMA Style

Alhhazmi AA, Alhamawi RM, Almisned RM, Almutairi HA, Jan AA, Kurdi SM, Almutawif YA, Mohammed-Saeid W. Gut Microbial and Associated Metabolite Markers for Colorectal Cancer Diagnosis. Microorganisms. 2023; 11(8):2037. https://doi.org/10.3390/microorganisms11082037

Chicago/Turabian Style

Alhhazmi, Areej A., Renad M. Alhamawi, Reema M. Almisned, Hanouf A. Almutairi, Ahdab A. Jan, Shahad M. Kurdi, Yahya A. Almutawif, and Waleed Mohammed-Saeid. 2023. "Gut Microbial and Associated Metabolite Markers for Colorectal Cancer Diagnosis" Microorganisms 11, no. 8: 2037. https://doi.org/10.3390/microorganisms11082037

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