Abstract
Background
Microbial dysbiosis has been closely linked with colorectal cancer development. However, data is limited regarding the relationship of the mucosal microbiome, adenomatous polyps and dietary habits. Understanding these associations may elucidate pathways for risk stratification according to diet.
Results
Patients undergoing screening colonoscopy were included in our prospective, single center study and divided into adenoma or no adenoma cohorts. Oral, fecal, and mucosal samples were obtained. Microbial DNA was extracted, and amplicon libraries generated using primers for the 16S rRNA gene V4 region. Patient and dietary information was collected. Of 104 participants, 44% presented with polyps, which were predominantly tubular adenomas (87%). Adenoma formation and multiple patient dietary and lifestyle characteristics were associated with mucosal microbiome diversity. Lifestyle factors included age, body mass index, adenoma number, and dietary consumption of red meats, processed meats, vegetables, fruit, grain, fermented foods and alcohol.
Conclusion
In this study we showed associations between dietary habits, adenoma formation and the mucosal microbiome. These early findings suggest that ongoing research into diet modification may help reduce adenoma formation and subsequently the development of CRC.
Supplementary Information
The online version contains supplementary material available at 10.1186/s13099-022-00525-w.
Introduction
Colorectal cancer (CRC) is a leading cause of cancer-related mortality and has been associated with environmental, nutritional and behavioral factors as well as with age [1–3]. Mounting data suggests that the enteric microbiome may be associated with CRC development. While the majority of an individual’s microbiome is relatively stable outside of extremes of age [4], human factors, such as diet, alcohol consumption and exercise have the potential to reshape the gut microbiome [5, 6], and therefore may serve as modifiable factors to help prevent the development of CRC. Since CRC arises out of adenomatous polyps [7], identifying changes in the microbiome associated with adenomas may help understand some of the early changes associated with tumorigenesis. We have previously shown that the colonic mucosal microbiome in patients with adenomas is distinct from patients without adenomatous polyps [8]. In this study, we examine the interplay between patient clinical factors, their oral, fecal and mucosal microbiome diversity and adenoma burden. Using the same cohort of patients undergoing screening colonoscopy [8], we evaluated the effects of health and dietary characteristics on the diversity of the microbiome, and describe associations among adenoma and non-adenoma formers and their health and dietary practices.
Methods
Subject enrollment and data analysis
Subjects scheduled to undergo screening colonoscopy at Oregon Health and Science University were prospectively enrolled in the study from October 2018–2019 following informed consent (Institutional Review Board #17350). Oral samples and fecal samples prior to bowel prep were obtained. The patient inclusion flowchart is included in Fig. 1. Patient information was obtained from the electronic medical record and patient questionnaires (Additional file 1and 2). Regular activity was defined as equal to or greater than 150-min of moderate-intensity or 75-min of vigorous-intensity aerobic physical activity each week per US Department of Health & Human Services standard [9].
Sequencing and microbiome analysis
Stool, tissue, and oral swab samples were obtained from patients and stored and processed as previously described [10.1097/SLA.0000000000005261]. Briefly, DNA was extracted from fecal, oral swab, and mucosal samples using the DNeasy PowerSoil Pro kit according to the manufacturer’s protocol with the addition of a 10-min incubation at 65 °C immediately before bead beating to facilitate bacterial lysis. This incubation was followed by bead beating on the highest setting for 10-min using Vortex Genie 2 and a 24-sample vortex adaptor. Isolated DNA (1µL) was used to amplify the 16S rRNA V4 region in triplicate as previously described using the 515f and 806r primers [10.1073/pnas.1000080107 ; 10.1038/ismej.2012.8]. Amplicon libraries were quantified and 200 ng of each library was pooled, purified using the QIAquick PCR Purification Kit, and sequenced on an Illumina MiSeq instrument (300 bp. Sequence reads were input into DADA2 [29] for quality filtering, amplicon sequence variant (ASV) calling (default parameters), and taxonomic assignment against the Silva database (v128). Non-prokaryotic reads were filtered from our dataset and raw ASV tables were rarefied to a depth of 10,000 counts using R and vegan [10.1111/j.1654-1103.2003.tb02228.x]. Samples with less than 10,000 sequences were removed prior to rarefaction.
Statistical analyses
We applied constrained metric scaling (vegan::capscale; distance = “euclidean”) followed by bidirectional stepwise model selection (vegan::ordistep)and environmental fitting (vegan::envfit) to log transformed (vegan::decostand) rarefied fecal, mucosal, and oral genera abundance data (R v4.1.1), individually, (https://github.com/chrisgaulke/ohsu_combined_adenoma_data) to identify patient parameters that best explain microbiome diversity (Table 1). False discovery rate was controlled at 0.1 for both envfit and ordistep analyses using with R::p.adjust(method = “fdr”).The overall significance of each model and the significance of model terms, was assessed using an ANOVA-like permutational test (vegan::anova.cca). The variation explained by each model was calculated using vegan:: RsquareAdj. Continuous variables were compared using a t-test for parametric variables and a Mann–Whitney U test for nonparametric variables. Categorical variables were compared using Chi-square test or Fisher exact test given distribution.
Table 1.
F | p-value | |
---|---|---|
Fecal | ||
Bristol Score | 1.27 | 1.80E-02 |
Age | 1.31 | 2.70E-02 |
Processed Meat | 1.55 | 3.30E-02 |
Fruit | 1.85 | 1.10E-02 |
Grain | 1.55 | 3.80E-02 |
Regular Activity | 2.52 | 1.00E-03 |
Alcohol use | 1.57 | 3.20E-02 |
Diabetes | 1.36 | 2.70E-02 |
Vitamin D | 1.75 | 1.10E-02 |
Hormone Therapy | 1.79 | 1.40E-02 |
Oral | ||
Bristol Score | 1.45 | 8.00E-03 |
BMI | 3.31 | 2.00E-03 |
Red Meat | 1.66 | 6.80E-02 |
Calcium | 2.41 | 1.50E-02 |
Mucosal | ||
Age | 1.41 | 1.30E-02 |
Adenoma | 2.44 | 5.00E-03 |
Fruit | 1.89 | 7.00E-03 |
Diabetes | 1.98 | 2.00E-03 |
Vitamin D | 1.45 | 4.60E-02 |
Hormone Therapy | 1.75 | 1.70E-02 |
F-statistic and p-value generated using an ANOVA-like permutation test (R::vegan::anova.cca) for each predictor retained after model selection. False discover rate was controlled at 0.1. Factors evaluated were age; bristol score; gender; body mass index (BMI); regular activity; number of polyps; number of adenomas; consumption of red meat, vegetable, fruit, grain, processed meat, fermented food, alcoholic beverages; diseases including: gastroesophageal reflux disease (GERD), cancer, autoimmune disease, diabetes, other gastrointestinal disorders; and medications including: ASA, NSAID, Vitamin D, Vitamin E, Calcium, metformin, hormone replacement therapy and probiotics
Data availability
The raw data files from this work are published at the SRA project numbers PRJNA650009 and PRJNA745994. The metadata, ASV, and taxonomy tables are available at https://github.com/chrisgaulke/adenoma_cca.
Results
One-hundred-four patients underwent screening colonoscopy with a mean age of 60 years (range 41–78 years, SD ± 8.7). Adenomatous polyps were identified in 46% of participants and were most commonly located in the ascending colon (58%). The vast majority of adenomas were tubular adenomas (87% vs 2% tubulovillous and 11% sessile). Cohorts with and without adenomas were similar in dietary practices and patient characteristics with the exception of smoking (25% controls, 48% adenoma formers, p = 0.015) and regular activity (79% controls, 58% adenoma formers, p = 0.026) [8]. To identify associations between patient characteristics and microbiome diversity we coupled redundancy analysis with stepwise model selection. Overall, oral (F(12,71) = 1.71; p = 0.001; R2 = 0.09), fecal (F(21,67) = 1.47; p = 0.001; R2 = 0.1), and mucosal (F(12,77) = 1.45; p = 0.001; R2 = 0.06) microbial communities were moderately associated with host dietary habits and health. Oral microbial community diversity varied significantly with Bristol score, patient BMI, calcium supplementation, red meat consumption, and consumption of fermented foods (Table 1). There was little overlap between the factors that significantly associated with oral microbiome diversity and those that associated with fecal and mucosal diversity. However, fecal, and mucosal microbial communities were both substantially impacted by age, fruit consumption, diabetes, calcium supplementation and hormone replacement therapy. Fecal diversity also associated with alcoholic beverage and grain consumption, but while observed in mucosal compartments as well, these associations did not reach significance (Table 1). Consistent with our previous work [8], only mucosal microbiome diversity linked with adenoma burden (Table 1).
To evaluate associations between patient characteristics and health behaviors and microbiome diversity we fit each patient and health factor that our model selection procedure identified as contributing to microbiome diversity to a constrained ordination of microbiome diversity (Table 2). This allowed us to identify linear association between microbiome diversity and patient characteristics and how these associations were related. Oral microbiome diversity correlated with BMI (R2 = 0.27, p = 1.0 × 10− 3), red meat consumption (R2 = 0.1019, p = 0.02) and calcium supplementation (R2 = 0.08, p = 2.0 × 10− 3; Fig. 2A). Instead, fruit and grain consumption (R2 = 0.22, p = 1.0 × 10− 3) dominated the correlation with fecal microbial diversity (Fig. 2B). In addition, regular activity (R2 = 0.15, p = 1.0 × 10− 3), diabetes (R2 = 0.21, p = 1.0 × 10− 3), Bristol stool scale (R2 = 0.29, p = 1.0 × 10− 3), age (R2 = 0.01, p = 1.0 × 10− 3), vitamin D consumption (R2 = 0.04, p = 3.1 × 10− 2) and hormonal therapy (R2 = 0.04, p = 1.7 × 10− 2) were also associated with fecal microbiome diversity.
Table 2.
R2 | p-value | |
---|---|---|
Fecal | ||
Fruit | 0.22 | 1.00E-03 |
Grain | 0.14 | 3.00E-03 |
Bristol | 0.29 | 1.00E-03 |
Age | 0.11 | 1.00E-03 |
Regular Activity | 0.15 | 1.00E-03 |
Diabetes | 0.21 | 1.00E-03 |
Vitamin D | 0.04 | 3.10E-02 |
HRT | 0.04 | 1.70E-02 |
Oral | ||
Bristol Score | 0.51 | 1.00E-03 |
BMI | 0.27 | 1.00E-03 |
Red Meat | 0.10 | 2.00E-02 |
Calcium | 0.08 | 2.00E-03 |
Mucosal Tissue | ||
Adenoma Number | 0.32 | 1.00E-03 |
Fruit | 0.20 | 1.00E-03 |
Fermented Foods | 0.11 | 4.00E-03 |
Alcohol Use | 0.09 | 1.70E-02 |
Age | 0.26 | 1.00E-03 |
Diabetes | 0.29 | 1.00E-03 |
HRT | 0.05 | 1.20E-02 |
An R2 and p-value generated from an environmental fit of each predictor to the primary axes of variation (CAP 1 and 2). False discover rate controlled at 0.1
HRT Hormone replacement therapy
There were some similarities between the mucosal microbiome diversity from that of the fecal microbiome. Fruit consumption was again associated with microbiome diversity (R2 = 0.20, p = 1.0 × 10− 3) and there was a trend in grain consumption though not significant (R2 = 0.30, p = 0.26; Fig. 2C). Fermented foods and alcohol consumption were also significantly associated with mucosal microbiome diversity (R2 = 0.11, p = 4.0 × 10− 3, R2 = 0.09, p = 0.17). Other patient factors such as age (R2 = 0.26, p = 1.0 × 10− 3), diabetes (R2 = 0.29, p = 1.0 × 10− 3), and hormonal therapy (R2 = 0.51, p = 0.12) were also associated. The greatest association between diversity and the mucosal microbiome was adenoma presence (R2 = 0.32, p = 1.0 × 10− 3). In fecal communities, the vectors of association between alcoholic beverage and grain consumption and microbiome diversity suggest that these lifestyle factors may have opposing effects on the microbiome. Similarly, in mucosal samples, total adenoma burden and consumption of fermented foods and fruit exhibit distinct opposing effect on microbiome diversity, suggesting that individuals with high fruit and fermented food intake tend to manifest patterns of microbiome diversity that associate with lower adenoma burden. Supporting this observation, patients in the ordination quadrant associated with higher fruit consumption (lower right) had significantly fewer adenomas when compared in the quadrant opposite (upper left; Fig. 2D).
Discussion
Diet and exercise have been shown to affect CRC risk [1–3]. We recently demonstrated that specific microbial community compositions associate with adenoma formation. However, the factors that underly the assembly of a microbiota that promotes CRC or adenoma formation remains unresolved. Here we have identified host lifestyle factors including consumption of specific food types that promote mucosal microbiome diversity associated with lower levels of adenoma burden [8]. Like our previous work, the only association between microbiome diversity and adenomas was that of the mucosal microbiome and while we appreciated differences between human factors and microbiome diversity based on the sampling site (oral, fecal, mucosal). We also found that there were some similarities, in particular, fruit, grain and fermented food intake, appeared to be associated with mucosal microbiome diversity. Diabetes, hormone replacement therapy, vitamin D supplementation, alcohol consumption, age and regular activity were also correlated with diversity of the mucosal microbiome.
Overall, these findings are consistent with epidemiological associations with colorectal cancer [3]. In our study were not able to disentangle the complex relationships between the different variables included, however, we can appreciate a relationship between diet, the mucosal microbiome and adenomas. However, while dietary habits and human factors have been shown to affect colorectal adenoma and cancer risk, mechanisms to explain this phenomenon are not yet elucidated, though the microbiome presents as a reasonable conduit for the deleterious effects of human habits. The interplay between patient habits, the microbiome and adenomas, is complex, however, even with our cohort we see relationships suggesting that these interactions are real, and may present an impactful point for intervention. To fully understand these relationships would take a multi-institutional effort, one which further builds on these data to show that the mucosal microbiome may be altered, that interventions are affordable and that compliance with such interventions may be sustainable for patients with high compliance.
Conclusions
In this study we showed associations between dietary habits, adenoma formation and in particular the mucosal microbiome. It is suggested that diet modification shapes mucosal microbiome and may pose a modifiable risk factor for adenoma formation and the development of colorectal neoplasia.
Supplementary Information
Acknowledgements
The authors would like to acknowledge Kristin D Kasschau PhD for her work with sample processing.
Author contributions
Dr. Katherine Watson was involved with collection of data, analysis of data, drafting of manuscript. Ms. Kyla Siemens was involved with collection of data. Dr. Sudarshan Anand was involved with critical editing of manuscript. Dr. Ivy Gardner was involved with collection of data, analysis of data, drafting of manuscript. Dr. Thomas Sharpton was involved with critical editing of manuscript. Ms. Elizabeth Dewey was involved with analysis of data. Dr. Robert Martindale was involved with critical editing of manuscript. Dr. Christopher Gaulke was involved with collection of data, analysis of data, drafting of manuscript, and critical editing of manuscript. Dr. Vassiliki Tsikitis was involved with collection of data, analysis of data, drafting of manuscript, and critical editing of manuscript. All authors read and approved the final manuscript.
Funding
This research did not receive any specific grant from funding agencies in the public, commercial, or not-for-profit sectors.
Availability of data and materials
The datasets generated and analyzed during the current study are available at https://github.com/chrisgaulke/ohsu_combined_adenoma_data.
Declarations
Ethics approval and consent to participate
Subjects scheduled to undergo screening colonoscopy at Oregon Health & Science University were prospectively enrolled in the study from October 2018–2019 following informed consent. The Oregon Health & Science University Institutional Review Board is the ethics committee that approved this study and the reference number is #17350.
Consent for publication
Not applicable.
Competing interests
None of the authors have any competing interests to disclose.
Footnotes
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Christopher A. Gaulke and Vassiliki Liana Tsikitis equal contribution to this work
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Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Supplementary Materials
Data Availability Statement
The raw data files from this work are published at the SRA project numbers PRJNA650009 and PRJNA745994. The metadata, ASV, and taxonomy tables are available at https://github.com/chrisgaulke/adenoma_cca.
The datasets generated and analyzed during the current study are available at https://github.com/chrisgaulke/ohsu_combined_adenoma_data.