Literature DB >> 28833079

Cancer-associated fecal microbial markers in colorectal cancer detection.

Vincy Eklöf1, Anna Löfgren-Burström1, Carl Zingmark1, Sofia Edin1, Pär Larsson1, Pontus Karling2, Oleg Alexeyev1, Jörgen Rutegård3, Maria L Wikberg1, Richard Palmqvist1.   

Abstract

Colorectal cancer (CRC) is the second most common cause of cancer death in the western world. An effective screening program leading to early detection of disease would severely reduce the mortality of CRC. Alterations in the gut microbiota have been linked to CRC, but the potential of microbial markers for use in CRC screening has been largely unstudied. We used a nested case-control study of 238 study subjects to explore the use of microbial markers for clbA+ bacteria harboring the pks pathogenicity island, afa-C+ diffusely adherent Escherichia coli harboring the afa-1 operon, and Fusobacterium nucleatum in stool as potential screening markers for CRC. We found that individual markers for clbA+ bacteria and F. nucleatum were more abundant in stool of patients with CRC, and could predict cancer with a relatively high specificity (81.5% and 76.9%, respectively) and with a sensitivity of 56.4% and 69.2%, respectively. In a combined test of clbA+ bacteria and F. nucleatum, CRC was detected with a specificity of 63.1% and a sensitivity of 84.6%. Our findings support a potential value of microbial factors in stool as putative noninvasive biomarkers for CRC detection. We propose that microbial markers may represent an important future screening strategy for CRC, selecting patients with a "high-risk" microbial pattern to other further diagnostic procedures such as colonoscopy.
© 2017 The Authors International Journal of Cancer published by John Wiley & Sons Ltd on behalf of UICC.

Entities:  

Keywords:  F. nucleatum; clbA; colorectal cancer; gut microbiota; screening; stool

Mesh:

Substances:

Year:  2017        PMID: 28833079      PMCID: PMC5697688          DOI: 10.1002/ijc.31011

Source DB:  PubMed          Journal:  Int J Cancer        ISSN: 0020-7136            Impact factor:   7.396


colorectal cancer Escherichia coli diffusely adherent E. coli Fusobacterium nucleatum Faecal and Endoscopic Colorectal Study in Umeå cancer‐associated microbial alterations Colorectal cancer (CRC) is the second most diagnosed cancer in women, and the third in men worldwide.1, 2 The mortality of patients with metastatic disease is high, indicating the necessity of a good and reliable screening method to detect the tumor at an early operable stage. Colonoscopy is currently the most reliable method for detection of early staged CRC, but it is uncomfortable for the patients, time consuming and costly. Recent studies have shown that changes in the intestinal microbiota are associated with CRC.3, 4, 5, 6 A noninvasive screening method, analyzing cancer‐associated microbial alterations in stool, may have many benefits for both the health care system and the participating patients. The gut microbiota plays many important roles in digestion, but has at the same time been implicated in diseases of the host. In the last years, accumulating evidence suggests that interactions between the mucosa and the microbiota are important, in both immunology and tumorigenesis (reviewed in Ref. 7). A number of studies have also provided mechanistic evidence that specific bacterial populations can change the milieu in the mucosa, promoting a proinflammatory response, and inducing double‐stranded DNA breakage and mutations that can lead to tumor initiation and progression.8, 9, 10, 11, 12, 13, 14, 15, 16, 17 Bacteria positive for clbA harbors the pks pathogenicity island and produces colibactin, a genotoxin capable of inducing double‐stranded DNA breaks and cellular senescence, leading to increased production of growth factors that can stimulate tumor growth.18, 19 Colibactin‐producing Escherichia coli (E. coli) and afa‐C+ diffusely adherent E. coli (DAEC) have both been linked to human CRC.20, 21, 22 Escherichia coli carrying pks have been found in 56–67% of human colorectal tumors compared to around 20% in controls.20, 22 DAEC carrying the afimbrial adhesin (afa‐1) operon were shown by Prorok‐Hamon et al. to be more common among E. coli strains isolated from CRC patients compared to controls.21 Compared to 17–36% of controls, 67–80% of colorectal tumors are found to be positive for afaC.21, 22 The afa‐1+ DAEC have the ability to adhere to, and invade epithelial cells and likely play a role in epithelial‐to‐mesenchymal transition.16 Fusobacterium nucleatum (F. nucleatum) is part of the commensal flora of the gut and oral cavity, but has been linked to a number of pathological conditions, including periodontitis, appendicitis, inflammatory bowel disease (IBD) and CRC.23, 24, 25, 26, 27, 28 F. nucleatum has been found in higher levels in CRC, and adenomas, compared to adjacent normal tissue.10, 23, 24, 25 It is a highly adhesive bacterial species and has the ability to invade colonic epithelial cells.13, 29 Additionally, recent studies showed that, in human CRC, high amounts of F. nucleatum in tumor tissue is correlated to low infiltration of T lymphocytes and poor patient prognosis.30, 31 In this study, we investigated the utility of microbial markers for clbA+ bacteria (clbA) and, afa‐1+ DAEC (afaC), and F. nucleatum, in CRC detection, using 238 human stool samples from the FECSU (the Faecal and Endoscopic Colorectal Study in Umeå) cohort.

Material and Methods

Study cohort

The study is based on the Faecal and Endoscopic Colorectal Study in Umeå (FECSU) cohort of 1136 patients who went through colonoscopy at the University Hospital in Umeå, Sweden, between the years 2008–2013 (September 2008 to March 2013). Indications for colonoscopy were gastrointestinal symptoms of large bowel disease, visible bleeding and/or positive fecal hemoglobin (F‐Hb) test. A total of 2660 patients were scheduled for colonoscopy during the time period (see flow chart in Fig. 1). Independent of underlying indications, 1997 patients were invited to participate in the study. Exclusion criteria were planned colonoscopy within 1 week, dementia and low‐performance status, including mentally or physically disabled persons. Of the invited patients, 861 patients denied participation.
Figure 1

Flow chart describing the FECSU cohort and the selection of study subjects.

Flow chart describing the FECSU cohort and the selection of study subjects. Patients were asked to leave stool samples before the precolonoscopy cleansing procedure started. Study information and tubes for stool sample collection were sent to the patients together with the invitation for the clinical colonoscopy examination. The colonoscopy was routinely performed at the endoscopy unit and the clinical findings were recorded. Biopsies were taken when clinically relevant. Lesions/findings were recorded by a pathologist, and the neoplastic lesions were further classified as low‐grade dysplasia, high‐grade dysplasia or adenocarcinoma according to the WHO classification of tumors of the digestive system.32 If several lesions were present, the most severe lesion was recorded for the patient. The study protocol was approved by the Regional Ethical Review Board in Umeå, Sweden (Dnr 08–184 M; Dnr 07–045 M). All individuals in this study have signed a written consent form.

Selection of study subjects

Cases with CRC or dysplasia were identified by reading patient records including the pathology reports. Patients selected for the study included all the 39 identified cases of CRC, all the 135 cases of low‐ and high‐grade dysplasia and 66 controls. All study subjects included were adults with the youngest 34 years of age. As the number of cases with high‐grade dysplasia was low (only ten cases), both low‐ and high‐grade dysplasia were included in one group of dysplasia. Controls were selected from the group of FECSU patients where a biopsy was taken, but recorded with no neoplastic findings. Patients with IBD or findings of hyperplastic polyps were excluded from the controls. The controls were matched by age and gender to the CRC cases and a randomized subset of the dysplasia group.

Stool/tissue collection and storage

With the envelope of invitation for colonoscopy examination that were sent to the patients, three tubes for stool sample collection were enclosed, along with information about the collection procedure; one tube containing 5 ml of preservative buffer, RNAlater ® (Ambion®), one tube for fecal hemoglobin (F‐Hb) analysis and a third tube for F‐calprotectin (data not presented). Stool samples were collected by the participant prior to the preparation for the colonoscopy procedure. The samples were stored at room temperature for a maximum of 7 days before being processed at the lab facility. RNAlater ® is bacteriostatic (the bacteria remain intact but do not grow). The adequacy of using RNAlater ® as a preservative was validated by comparison of DNA yield and quality of samples stored in RNAlater ® in room temperature for 5 days, to that of immediately frozen samples (Supporting Information, Table S1). The samples containing RNAlater ® were centrifuged for 20 min at 2000 rpm, and excess fluid was removed before storage at −80°C. F‐Hb was analyzed manually using a fecal immunochemical test (FIT), Analyz F.O.B Test (ANL products AB), according to manufacturer's instructions.

DNA extraction

Stool DNA (sDNA) was prepared from approximately 0.2 g stool using QIAamp® DNA Stool Mini Kit (Qiagen) according to the manufacturer's instructions. Double stranded DNA‐recovery was measured using Qubit® dsDNA BR Assay (Molecular probes) with the Qubit® 2.0 Fluorometer.

Detection of microbial markers in stool by real‐time qPCR

Quantitative PCR assays targeting the clbA gene and the afaC gene of the afa‐1 operon were used to detect pks+ bacteria and Afa‐1 adhesin‐expressing DAEC, respectively. Escherichia coli Nissle 1917 was used as a positive control for pks. Real‐time qPCR reactions were run in duplicates using the SYBR Green PCR kit on the 7900HT Fast Real‐Time PCR System (Applied Biosystems). The following cycling conditions were used: for clbA, 5 min at 95°C, 40 cycles of 15 sec at 95°C, 30 sec at 50°C and 1 min at 72°C; for afaC, 10 min at 95°C, and 40 cycles of 15 sec at 95°C, and 15 sec at 65°C; for the 16S rRNA gene, 5 min at 95°C, 40 cycles of 10 sec at 95°C, and 30 sec at 60°C. The quantification cycle (C q) was calculated using the SDS 2.4 software (Applied Biosystems). The performance of the PCR assays was checked by analyses of replicates, serial dilutions, melting curves and separation on agarose gels. Samples not amplified with the appropriate amplicon length and not within 38 cycles were considered negative for the microbial factors. F. nucleatum was assessed by real‐time qPCR using the Microbial DNA qPCR Assay (Qiagen) containing a FAM‐labeled probe specific for F. nucleatum 16S rRNA gene (GeneBank Acc. FJ471654.1) according to manufacturer's instructions. F. nucleatum subsp. nucleatum Knorr (ATCC 25586 D‐5) was used as positive control. The reactions were run on the Applied Biosystems 7900HT Fast Real‐Time PCR System using the following cycling conditions; 95°C for 10 min, 40 cycles of 15 sec at 95°C, and 2 min at 60°C. Samples amplified within 38 cycles were considered to have template concentration positive for the specific sequence. The level of F. nucleatum in each sample was given as a relative quantification with the total microbial 16S rRNA gene DNA in each sample as reference. The relative levels of F. nucleatum were calculated using 2−Δ q, giving ΔC q =   − C q 16 S rRNA gene. Two samples were excluded from qPCR analyses due to technical difficulties. The following primer sequences were used in this study: , forward 5′‐ATGAGGATTGATATATTAATTGGACA‐3′ 33 and reverse 5′‐GGTTTGCCATATTTGCACGTAC‐3′ product size 233 bp, ; forward 5′‐CGGCTTTTCTGCTGAACTGGCAGGC‐3′34 and reverse 5′‐CCGCTCAGCACGTATGTATGAACTC‐3′ product size 200 bp; forward 5′‐CCATGAAGTCGGAATCGCTAG‐3′ and reverse 5′‐GCTTGACGGGCGGTGT‐3′ (16S rRNA Gene Universal Bacteria Control Primers from the NEBNext® Microbiome DNA Enrichment Kit (Biolabs)).

Statistical methods

Statistical analyses were performed using the IBM SPSS Statistics 23 (SPSS Inc.). χ 2 tests were used to compare categorical variables, unless expected frequencies were <5 when Fisher's exact test was used. The nonparametric Kruskal–Wallis H or Mann–Whitney U test was used to compare differences in continuous variables between groups. p values <0.05 were considered statistically significant. Area under the receiver operating characteristic (ROC) curve was calculated using the variable for F. nucleatum and cancer diagnosis, and the Youden's index was used to identify the cutoff for F. nucleatum levels that gave the most sensitive and specific assay to detect cancer. This cutoff was used in the F. nucleatum assay to identify stool samples as positive (with high levels of F. nucleatum) or negative (with low levels of F. nucleatum). In the CAMA test combining microbial markers or the test combining CAMA with F‐Hb, a negative test result was given to stool samples negative for both markers and a positive test result given to stool samples with one or both markers positive. Sensitivity was defined as the percent of CRC or dysplasia cases with a positive test result. Specificity was defined as the percent of nested controls with a negative test result.

Results

Patient characteristics

The overall study cohort included 1136 patients invited to colonoscopy after presenting with symptoms from the large bowel. A flow chart describing the collection of the study cohort with inclusion/exclusion criteria can be found in Fig. 1. Among these, 39 patients were diagnosed with CRC and 135 patients with different degrees of dysplasia, and were selected for further studies. Also included in the study were 66 matched controls, who underwent colonoscopy but with no pathological findings. The clinical characteristics of the included study subjects are presented in Table 1. Most of the cancers were found in stage II (53.8%) and in left colon (43.6%).
Table 1

Clinical characteristics of study patientsa

TotalControlDysplasiaCancer
n = 238 n = 65 n = 134 n = 39
Age (%)
34–5933 (13.9)6 (9.2)23 (17.2)4 (10.3)
60–6994 (39.5)22 (33.8)60 (44.8)12 (30.8)
70–8085 (35.7)26 (40.0)41 (30.6)18 (46.2)
>8026 (10.9)11 (16.9)10 (7.5)5 (12.8)
Gender (%)
Female103 (43.3)30 (46.2)54 (40.3)19 (48.7)
Male135 (56.7)35 (53.8)80 (59.7)20 (51.3)
Location (%) n = 173
Right colon49 (28.3)n.a.37 (27.6)12 (30.8)
Left colon76 (43.9)n.a.59 (44.0)17 (43.6)
Rectum48 (27.7)n.a.38 (28.4)10 (25.6)
Stage (%)
In.a.n.a.2 (5.1)
IIn.a.n.a.21 (53.8)
IIIn.a.n.a.8 (20.5)
IVn.a.n.a.7 (17.9)

Shown are patients with complete data sets for microbial markers.

Abbreviation: n.a., not applicable.

Clinical characteristics of study patientsa Shown are patients with complete data sets for microbial markers. Abbreviation: n.a., not applicable.

Bacteria positive for clbA are more abundant in stool of patients diagnosed with CRC

A qPCR‐assay targeting the clbA gene was used to detect colibactin‐producing bacteria in DNA from stool of study patients. clbA was more often detected in stool samples of CRC patients compared to patients with dysplasia (p = 0.004) or controls (p < 0.001) (Fig. 2 a). The difference in clbA detection frequency between patients with dysplasia and controls was of borderline significance (p = 0.055), but the stepwise increased frequency from controls, to dysplasia to cancers indicate that clbA may represent a useful marker for early changes leading to CRC. With a specificity of 81.5%, the clbA assay detected 56.4% of CRCs and 31.3% of dysplasias (Fig. 2 a and Table 2). The clinical characteristics of cancer patients in relation to clbA can be found in Supporting Information, Table S2.
Figure 2

Bacteria carrying clbA are abundant in stool of CRC patients. Differences in absolute number (n) and percentage (%) of (a) clbA‐ and (b) afaC‐positive stool samples between controls, and patients diagnosed with dysplasia or cancer are illustrated.

Table 2

Microbial alterations in stool of patients diagnosed with dysplasia or cancer

TotalControlDysplasiaCancer p value
clbA (%) n = 238 n = 65 n = 134 n = 39<0.001
Negative162 (68.1)53 (81.5)92 (68.7)17 (43.6)
Positive76 (31.9)12 (18.5)42 (31.3)22 (56.4)
afaC (%) 0.46a
Negative219 (92.0)60 (92.3)125 (93.3)34 (87.2)
Positive19 (8.0)5 (7.7)9 (6.7)5 (12.8)
F. nucleatum (%) <0.001
Low169 (71.0)50 (76.9)107 (79.8)12 (30.8)
High69 (29.0)15 (24.3)27 (20.1)27 (69.2)
F‐Hb (%) n = 178 n = 41 n = 108 n = 29<0.001
Negative129 (72.5)37 (90.2)82 (75.9)10 (34.5)
Positive49 (27.5)4 (9.8)26 (24.1)19 (65.5)

Unless otherwise indicated, χ 2 test was used for categorical variables.

Fisher's exact test.

Abbreviation: F‐Hb, immunochemical fecal hemoglobin test.

Bacteria carrying clbA are abundant in stool of CRC patients. Differences in absolute number (n) and percentage (%) of (a) clbA‐ and (b) afaC‐positive stool samples between controls, and patients diagnosed with dysplasia or cancer are illustrated. Microbial alterations in stool of patients diagnosed with dysplasia or cancer Unless otherwise indicated, χ 2 test was used for categorical variables. Fisher's exact test. Abbreviation: F‐Hb, immunochemical fecal hemoglobin test. DAEC carrying afa‐1 were detected in DNA from stool using a qPCR assay targeting the afaC gene in the afa‐1 operon. Very few of the stool samples were positive for afaC (Fig. 2 b). The stool samples originating from individuals diagnosed with CRC were slightly more frequently positive for afaC than samples from dysplasias or controls, but this was not statistically significant. With a specificity of 92.3%, the afaC assay detected only 12.8% of the cancers (Table 2). Notably, of the 5 afaC+ cancers, 4 were also clbA+, a pattern that was not found among the dysplasia or control groups (data not shown).

F. nucleatum is enriched in stool of patients with CRC

Quantitative PCR was applied to detect F. nucleatum in DNA from stool of study patients. F. nucleatum was found in stool of all patients, however, at varying levels (Fig. 3 a). Patients diagnosed with CRC displayed significantly higher levels of F. nucleatum in stool compared to patients with dysplasia (p < 0.001) and controls (p < 0.001). No difference was found in F. nucleatum DNA levels between patients with dysplasia and controls. The clinical characteristics of cancer patients in relation to F. nucleatum can be found in Supporting Information, Table S2.
Figure 3

Increased levels of F. nucleatum are detected in stool of CRC patients. (a) A Beeswarm Boxplot is used to illustrate the relative levels of F. nucleatum in stool of control patients, and patients diagnosed with dysplasia or cancer. Horisontal lines indicate median (in bold) and quartiles. (b) An ROC curve displaying the specificity and the sensitivity for the F. nucleatum assay. The ROC curve was calculated using the variable for F. nucleatum and cancer/no cancer. The level of F. nucleatum in each sample is given as a relative quantification with the total microbial 16S rRNA gene DNA in each sample as reference 2∧ (−ΔCq), ΔCq = Cq − Cq16 rRNA gene).

Increased levels of F. nucleatum are detected in stool of CRC patients. (a) A Beeswarm Boxplot is used to illustrate the relative levels of F. nucleatum in stool of control patients, and patients diagnosed with dysplasia or cancer. Horisontal lines indicate median (in bold) and quartiles. (b) An ROC curve displaying the specificity and the sensitivity for the F. nucleatum assay. The ROC curve was calculated using the variable for F. nucleatum and cancer/no cancer. The level of F. nucleatum in each sample is given as a relative quantification with the total microbial 16S rRNA gene DNA in each sample as reference 2∧ (−ΔCq), ΔCq = Cq − Cq16 rRNA gene). The area under the ROC curve was 0.737 for detection of CRC (Fig. 3 b). A cutoff (0.00026) was selected that gave the most reliable analysis for detecting cancer in the study patients. With a specificity of 76.9%, the F. nucleatum assay detected 69.2% of CRCs and 20.1% of dysplasias (Table 2). At the selected cutoff, the F. nucleatum assay detected CRC with a higher sensitivity (69.2%) than clbA (56.4%) and the immunochemical F‐Hb test currently used in the clinic (65.5%). However, the F‐Hb test was more specific (90.2%) than F. nucleatum (76.9%), detecting <10% false positives (Table 2).

A test combining markers of microbial alterations in stool predicts CRC

To improve the CRC detection assay, the two microbial markers detecting clbA and F. nucleatum were combined in a single test here termed the cancer‐associated microbial alterations (CAMA) test, where one or more positive markers predicts CRC. The afaC assay was excluded from the test since afaC was detected in very few cases and did not significantly differ between controls and cancer. At a specificity of 63.1%, the CAMA test detected CRC with a sensitivity of 84.6% (Table 3). Combining the CAMA test with the immunological F‐Hb test, slightly increased sensitivity (89.7%) for detection of CRC, but at the same time specificity (61.0%) was slightly decreased.
Table 3

A test combining microbial markers and F‐Hb in CRC screening

TotalControlDysplasiaCancer p value
CAMA (%) n = 238 n = 65 n = 134 n = 39<0.001
Negative118 (49.6)41 (63.1)71 (53.0)6 (15.4)
Positive120 (50.4)24 (36.9)63 (47.0)33 (84.6)
CAMA/F‐Hb (%) n = 178 n = 41 n = 108 n = 29<0.001a
Negative70 (39.3)25 (61.0)42 (38.9)3 (10.3)
Positive108 (60.7)16 (39.0)66 (61.1)26 (89.7)

A positive score was given to stool samples positive for one or both of clbA and F. nucleatum. Unless otherwise indicated, χ 2 test was used for categorical variables.

2Fisher's exact test.

Abbreviation: CAMA, cancer‐associated microbial alterations.

A test combining microbial markers and F‐Hb in CRC screening A positive score was given to stool samples positive for one or both of clbA and F. nucleatum. Unless otherwise indicated, χ 2 test was used for categorical variables. 2Fisher's exact test. Abbreviation: CAMA, cancer‐associated microbial alterations.

DISCUSSION

In this nested case–control study, we explored the utility of using fecal microbial markers of microbial alterations in CRC detection. We found that individual markers for clbA+ bacteria and F. nucleatum were more highly abundant in stool of patients with CRC compared to controls, and could predict cancer with a sensitivity of 56.4% and 69.2%, respectively. The specificity of both assays was close to 80%. Combining the two markers into the CAMA test increased sensitivity to 84.6%, but with the drawback of reduced specificity. When combining CAMA and the immunochemical F‐Hb test, the sensitivity was even higher 89.7%, but the specificity was slightly reduced. Our findings support the potential role of microbial factors in stool as putative noninvasive biomarkers for CRC detection. We chose a nested case–control model, as it is generally more efficient than a case–control design with the same number of selected controls. However, one limitation of this study is that it is not randomized, as all patients selected for colonoscopy presented with symptoms from the large bowel. The controls, even though recorded without disease, may therefore not have represented a true healthy population. Another limitation is the lack of a validation cohort. The CAMA test was able to detect cancer with a high sensitivity, suggesting it to be a good test to detect cancer. In this study it was found to be more sensitive than the F‐Hb test currently used in clinic. The relatively low specificity of the test would however result in around 35–40% of tested patients being diagnosed with a “high‐risk” flora but without showing signs of dysplasia or neoplasia. This may cause psychological burden for the screening participants and will require continuous follow up by further tests and colonoscopy. It will be with great interest that we follow up on the currently healthy patients diagnosed with a “high risk” microbial pattern, to find out whether or not these patients later on will develop disease. Further studies and verifications in additional cohorts are required to understand the full potential of microbial markers in CRC progression and screening. Advantages of the microbial marker test is that it represents a cost‐efficient, straight forward, and noninvasive procedure. It is likely that a higher number of patients would agree to a screening procedure leaving stool samples compared to screening by colonoscopy. The stool samples were collected prior to the precolonoscopy cleansing procedure and stored in a chemical stabilizer with bacteriostatic activity, which according to our evaluation preserves microbial DNA quality. The test might, however, be sensitive to antibiotic treatment and stool sampling, as it is a single test, randomly sampled by the patient from a small amount of stool. Data on ongoing antibiotic treatment has been collected for all patients in the FECSU cohort, but no patients included in this study were registered with ongoing antibiotic treatment. However, we cannot exclude long‐term changes in the composition of the microbiota associated with previous antibiotic treatment. F‐Hb tests are currently the most commonly used noninvasive screening method in CRC and are generally found to be more specific than our CAMA test.35 A major advantage of microbial markers in relation to F‐Hb tests is that they could detect also nonbleeding lesions. Microbial markers such as for F. nucleatum have also been suggested to be useful for detecting serrated polyps, not fully efficiently detected by F‐Hb tests.36, 37 F. nucleatum levels in stool have previously been assessed as a noninvasive biomarker in CRC. In a study by Kostic et al., a significant stepwise increase in F. nucleatum levels was found from controls to adenomas to carcinomas, suggesting the potential of F. nucleatum as a marker for detection of early changes.10 In another study by Flanagan et al., F. nucleatum was found, like in our study, to be more abundant in stool of carcinomas but with no significant difference between adenomas (or dysplasias) and controls.38 In our study, clbA turned out to be the most promising marker for early detection, as the prevalence increased already with dysplastic lesions. Further studies of microbial factors as early detection markers are required to elucidate these differences. As recently described in the bacterial driver‐passenger model, some bacteria are likely procarcinogenic and involved in CRC development while others defined as passengers may be involved in later stages of tumor progression.39 Colibactin‐producing E. coli can increase the mutation rate of infected cells,9 and could therefore be an example of a bacterial driver. On the other hand, a change in the microbiota could instead be a consequence of epithelial changes following CRC progression. F. nucleatum has been shown to bind to epithelial cells through a Fap2/GalGalNAc interaction, where GalGalNAc is overexpressed in CRC cells compared to non‐neoplastic epithelial cells.40 These findings suggest that F. nucleatum may be a bacterial passenger. Further studies, including the evaluation of bacterial markers in tumor tissue, are needed to elucidate the roles of microbial shifts in CRC development and progression. Models of microbial alterations combining different “high‐risk” bacteria may improve the specificity of diagnostic tests for CRC. A few metagenomics studies have addressed variations of the microbiome in stool of patients with colorectal adenomas or carcinomas for potential use as noninvasive screening markers for CRC.41, 42, 43, 44 In a study by Yu et al., compositional differences for several bacterial species were identified in patients with CRC compared to controls. Using qPCR, the specific markers buturyl‐CoA dehydrogenase (F. nucleatum) and rpoB (Parvimonas micra) were further found to be highly enriched in stool of patients with early stages of CRC.42 In a study by Zackular et al., they identified a panel of microbial markers that was differentially expressed in controls, adenomas and carcinomas. These changes in the gut microbiome could significantly complement the ability of clinical characteristics, and the gFOBT test to identify the different patient diagnoses.44 Furthermore, Wong et al. very recently showed that quantitation of fecal F. nucleatum improved and had a complementary value added to the FIT test.45 Therefore, combining different microbial markers of “high‐risk” flora with F‐Hb tests, clinical characteristics and tumor‐specific DNA, RNA or protein biomarkers in stool may be a putative screening strategy in the future to more accurately identify patients in early stages of disease progression. In conclusion, we suggest that analyses of markers of microbial alterations in stool may be putative noninvasive diagnostic markers for CRC. We suggest that detection of a “high‐risk” microbial pattern in stool may identify patients with increased risk of developing CRC. Future studies combining different microbial markers and as well as other biomarkers in a true population‐based setup may lead to important advances in CRC screening. Further studies are also needed to address the role of the microbiota in cause or consequence of tumor progression. These studies may lead to important understandings of the role of the microflora in progression of CRC and the identification of important microbial markers for detection of early disease.

CONTRIBUTORS

Study concept and design: VE, MLW, JR, OA, PK, RP; acquisition of data: ALB, VE, CZ; data analyses: ALB, VE, SE, PL; drafting of the manuscript: ALB, VE, CZ, MLW, SE, RP. Critical revision of the manuscript for important intellectual content: PL, PK, OA, JR. All authors approved the final version of the manuscript. Supporting Information Table 1. Click here for additional data file. Supporting Information Table 2. Click here for additional data file.
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1.  Invasive potential of gut mucosa-derived Fusobacterium nucleatum positively correlates with IBD status of the host.

Authors:  Jaclyn Strauss; Gilaad G Kaplan; Paul L Beck; Kevin Rioux; Remo Panaccione; Rebekah Devinney; Tarah Lynch; Emma Allen-Vercoe
Journal:  Inflamm Bowel Dis       Date:  2011-01-13       Impact factor: 5.325

2.  Bacterial genotoxin colibactin promotes colon tumour growth by inducing a senescence-associated secretory phenotype.

Authors:  Antony Cougnoux; Guillaume Dalmasso; Ruben Martinez; Emmanuel Buc; Julien Delmas; Lucie Gibold; Pierre Sauvanet; Claude Darcha; Pierre Déchelotte; Mathilde Bonnet; Denis Pezet; Harald Wodrich; Arlette Darfeuille-Michaud; Richard Bonnet
Journal:  Gut       Date:  2014-03-21       Impact factor: 23.059

Review 3.  Fusobacterium nucleatum in periodontal health and disease.

Authors:  Benoit Signat; Christine Roques; Pierre Poulet; Danielle Duffaut
Journal:  Curr Issues Mol Biol       Date:  2011-01-10       Impact factor: 2.081

4.  Intestinal inflammation targets cancer-inducing activity of the microbiota.

Authors:  Janelle C Arthur; Ernesto Perez-Chanona; Marcus Mühlbauer; Sarah Tomkovich; Joshua M Uronis; Ting-Jia Fan; Barry J Campbell; Turki Abujamel; Belgin Dogan; Arlin B Rogers; Jonathan M Rhodes; Alain Stintzi; Kenneth W Simpson; Jonathan J Hansen; Temitope O Keku; Anthony A Fodor; Christian Jobin
Journal:  Science       Date:  2012-08-16       Impact factor: 47.728

5.  The human gut microbiome as a screening tool for colorectal cancer.

Authors:  Joseph P Zackular; Mary A M Rogers; Mack T Ruffin; Patrick D Schloss
Journal:  Cancer Prev Res (Phila)       Date:  2014-08-07

6.  Fusobacterium nucleatum associates with stages of colorectal neoplasia development, colorectal cancer and disease outcome.

Authors:  L Flanagan; J Schmid; M Ebert; P Soucek; T Kunicka; V Liska; J Bruha; P Neary; N Dezeeuw; M Tommasino; M Jenab; J H M Prehn; D J Hughes
Journal:  Eur J Clin Microbiol Infect Dis       Date:  2014-03-06       Impact factor: 3.267

Review 7.  Gut microbiota imbalance and colorectal cancer.

Authors:  Johan Gagnière; Jennifer Raisch; Julie Veziant; Nicolas Barnich; Richard Bonnet; Emmanuel Buc; Marie-Agnès Bringer; Denis Pezet; Mathilde Bonnet
Journal:  World J Gastroenterol       Date:  2016-01-14       Impact factor: 5.742

8.  Cancer incidence and mortality worldwide: sources, methods and major patterns in GLOBOCAN 2012.

Authors:  Jacques Ferlay; Isabelle Soerjomataram; Rajesh Dikshit; Sultan Eser; Colin Mathers; Marise Rebelo; Donald Maxwell Parkin; David Forman; Freddie Bray
Journal:  Int J Cancer       Date:  2014-10-09       Impact factor: 7.396

9.  Towards the human colorectal cancer microbiome.

Authors:  Julian R Marchesi; Bas E Dutilh; Neil Hall; Wilbert H M Peters; Rian Roelofs; Annemarie Boleij; Harold Tjalsma
Journal:  PLoS One       Date:  2011-05-24       Impact factor: 3.240

10.  Potential of fecal microbiota for early-stage detection of colorectal cancer.

Authors:  Georg Zeller; Julien Tap; Anita Y Voigt; Shinichi Sunagawa; Jens Roat Kultima; Paul I Costea; Aurélien Amiot; Jürgen Böhm; Francesco Brunetti; Nina Habermann; Rajna Hercog; Moritz Koch; Alain Luciani; Daniel R Mende; Martin A Schneider; Petra Schrotz-King; Christophe Tournigand; Jeanne Tran Van Nhieu; Takuji Yamada; Jürgen Zimmermann; Vladimir Benes; Matthias Kloor; Cornelia M Ulrich; Magnus von Knebel Doeberitz; Iradj Sobhani; Peer Bork
Journal:  Mol Syst Biol       Date:  2014-11-28       Impact factor: 11.429

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  52 in total

Review 1.  Oral and intestinal bacterial exotoxins: Potential linked to carcinogenesis.

Authors:  Matthew Silbergleit; Adrian A Vasquez; Carol J Miller; Jun Sun; Ikuko Kato
Journal:  Prog Mol Biol Transl Sci       Date:  2020-04-09       Impact factor: 3.622

2.  Reactivity of an Unusual Amidase May Explain Colibactin's DNA Cross-Linking Activity.

Authors:  Yindi Jiang; Alessia Stornetta; Peter W Villalta; Matthew R Wilson; Paul D Boudreau; Li Zha; Silvia Balbo; Emily P Balskus
Journal:  J Am Chem Soc       Date:  2019-07-11       Impact factor: 15.419

3.  Fusobacterium Nucleatum Is a Risk Factor for Metastatic Colorectal Cancer.

Authors:  Wen-Dan Chen; Xin Zhang; Ya-Ping Zhang; Cong-Bo Yue; Yan-Lei Wang; Hong-Wei Pan; Yan-Li Zhang; Hui Liu; Yi Zhang
Journal:  Curr Med Sci       Date:  2022-06-08

Review 4.  Which bacterial toxins are worthy of validation as markers in colorectal cancer screening? A critical review.

Authors:  Kristyna Mezerova; Vladislav Raclavsky; Lubomir Stary
Journal:  Biomed Pap Med Fac Univ Palacky Olomouc Czech Repub       Date:  2021-11-05       Impact factor: 1.245

5.  Immunotherapy in Colorectal Cancer: Potential of Fecal Transplant and Microbiota-augmented Clinical Trials.

Authors:  Robin Park; Shahid Umar; Anup Kasi
Journal:  Curr Colorectal Cancer Rep       Date:  2020-06-05

6.  Amending microbiota by targeting intestinal inflammation with TNF blockade attenuates development of colorectal cancer.

Authors:  Ye Yang; Raad Z Gharaibeh; Rachel C Newsome; Christian Jobin
Journal:  Nat Cancer       Date:  2020-06-22

Review 7.  Role of gut microbiota in epigenetic regulation of colorectal Cancer.

Authors:  Yinghui Zhao; Chuanxin Wang; Ajay Goel
Journal:  Biochim Biophys Acta Rev Cancer       Date:  2020-12-13       Impact factor: 10.680

8.  Elevated Faecal Calprotectin in Patients with a Normal Colonoscopy: Does It Matter in Clinical Practice? A Retrospective Observational Study.

Authors:  Henrik Hovstadius; David Lundgren; Pontus Karling
Journal:  Inflamm Intest Dis       Date:  2021-02-17

Review 9.  Gut Microbiota as Potential Biomarker and/or Therapeutic Target to Improve the Management of Cancer: Focus on Colibactin-Producing Escherichia coli in Colorectal Cancer.

Authors:  Julie Veziant; Romain Villéger; Nicolas Barnich; Mathilde Bonnet
Journal:  Cancers (Basel)       Date:  2021-05-05       Impact factor: 6.639

Review 10.  Viruses and Bacteria Associated with Cancer: An Overview.

Authors:  Davide Zella; Robert C Gallo
Journal:  Viruses       Date:  2021-05-31       Impact factor: 5.048

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