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Objective:
This study is designed to address the complex interplay between the gut microbiome, environmental factors, and inflammatory diseases, with a specific emphasis on serving as a healthy cohort for several related projects.
Primary hypotheses:
Since data from this study will be used as control data for four studies, four primary hypothesis will be defined.
Hypothesis H1: Levels of intestinal inflammation will be substantially higher in Zimbabweans living in rural areas and low-resource settings (i.e. high-density areas) compared to Zimbabwean and Swiss individuals living in high-resource settings.
Hypothesis H2: Bottlenecks and blooms of bacterial strains are less frequent in healthy participants than in inflammatory bowel disease (IBD) patients and bacterial strains will have lower mutation rates in healthy patients when compared to strains from IBD subjects (partner study: BASEC 2021-00871).
Hypothesis H3: Longitudinal changes of the faecal microbiome of healthy Swiss individuals differ systematically compared to longitudinal changes of the faecal microbiome of Swiss UC patients with active disease (partner study: BASEC 2022-02008).
Hypothesis H4: The HRV of healthy Swiss individuals differ systematically from HRV of Swiss IBD patients and can be associated with differentially abundant bacterial taxa (partner study: BASEC 2022-02008).
Objective:
This study investigates the relationship between lifestyle, gut bacteria, and diseases such as colorectal cancer and inflammatory bowel diseases (IBD). The investigators aim to understand how the gut microbiome, influenced by different environments, impacts disease development. Our research focuses on healthy Swiss individuals as a control group for ongoing projects.
Primary hypotheses:
Since data from this study will be used as control data for four studies, four primary hypothesis will be defined.
Hypothesis H1: Levels of intestinal inflammation will be substantially higher in Zimbabweans living in rural areas and low-resource settings (i.e. high-density areas) compared to Zimbabwean and Swiss individuals living in high-resource settings.
Hypothesis H2: Bottlenecks and blooms of bacterial strains are less frequent in healthy participants than in IBD patients and bacterial strains will have lower mutation rates in healthy patients when compared to IBD subjects (partner study: BASEC 2021-00871).
Hypothesis H3: Longitudinal changes of the faecal microbiome of healthy Swiss individuals differ systematically compared to longitudinal changes of the faecal microbiome of Swiss UC patients with active disease (partner study: BASEC 2022-02008).
Hypothesis H4: The heart rate variability (HRV) of healthy Swiss individuals differ systematically from HRV of Swiss IBD patients and can be associated with differentially abundant bacterial taxa (partner study: BASEC 2022-02008).
Secondary hypotheses Hypothesis H5: The faecal microbiome composition of healthy Swiss individuals differs systematically from the faecal microbiome composition of healthy Zimbabweans. (O1)
Hypothesis H6: The faecal microbiome composition of healthy Swiss individuals differs systematically from the faecal microbiome of Swiss UC patients experiencing a disease flare.
Hypothesis H7: The faecal microbiome composition of healthy Swiss individuals differs systematically from the faecal microbiome of Swiss UC patients after achieving disease remission.
Hypothesis H8: The faecal microbiome composition of healthy Swiss without symptoms of irritable bowel syndrome (Rome IV criteria) differs systematically from the faecal microbiome of healthy Swiss with symptoms of irritable bowel syndrome.
Design:
Observational cohort study with 200 healthy Swiss participants. Participants are followed-up during one year. During the study, 12 faecal samples, voluntary blood samples, and comprehensive data are collected from each participant. Assessed data include clinical assessments, detailed socio-economic information and voluntary heart rate variability (HRV) measurements. The study's longitudinal approach comprises 12 defined follow-ups at days 0, 3, 5, and 7; weeks 2, 3, 4, 8, and 12; and months 6, 9, and 12. The faecal samples will be collected by the participants at home with provided vials. In addition, each faecal sample is accompanied by a follow-up questionnaire to filled out by the patient. The questionnaires focus on gastrointestinal symptoms, fatigue, socio-economic variables, emotional well-being, five factor model (personality) assessment and type D personality, and a simple dietary assessment covering a 24-hour period. Participants will mail the stool vials and questionnaires, using a provided envelope, to Inselspital Bern via the Swiss postal service. Blood samples will be acquired only from a subset of the participants primarily at enrolment.
Recruitment:
Primarily at the Department of Visceral Surgery and Medicine of the University Hospital Bern (Inselspital Bern), and through outreach to the general population.
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| Measure | Description | Time Frame |
|---|---|---|
| Intestinal inflammation - healthy Swiss vs. healthy Zimbabweans | Difference in calprotectin levels of healthy Swiss individuals and healthy Zimbabweans in high-resource settings compared to calprotectin levels in Zimbabweans in low-resource settings. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Evolutionary dynamics of bacterial strains - Swiss healthy vs. Swiss IBD | The evolutionary dynamics of the most frequent and the most abundant bacteria in healthy Swiss individuals compared to Swiss IBD patients by assessing mutation rate per genome per generation. Comment: calculation of mutation rates is only feasible for abundant bacteria which can be found in a high fraction of participants over more than one timepoint. The investigators will thus determine the most suitable bacterial species and focus the analysis on this bacterial species. | All timepoints with samples in both groups will be analysed. |
| Intra-individual microbiome composition changes - Swiss healthy vs. Swiss UC with initial active disease | Difference in absolute dissimilarity (weighted Unifrac index) changes within individuals over time between the faecal microbiomes of healthy Swiss individuals and the faecal microbiomes of Swiss UC patients initially experiencing a disease flare. | Samples from enrolment and after 12 months will be analysed. Alternatively, samples from enrolment and a second timepoint (> 1 week later) with the most available samples and relevant metadata will be prioritised. |
| Heart rate variability - Swiss healthy vs. Swiss IBD | Heart rate variability (the root mean square of successive differences) measurements compared between healthy Swiss individuals and Swiss IBD patients. | Measurments from the first timepoint with heart rate variability assessment will be analysed. |
| Measure | Description | Time Frame |
|---|---|---|
| Difference in healthy microbiome composition - Swiss vs. Zimbabweans | Dissimilarity (weighted Unifrac index) between the microbiomes of healthy Swiss individuals and the microbiomes of healthy Zimbabweans. (H5) The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Measure | Description | Time Frame |
|---|---|---|
| Difference in microbiome composition - Healthy Swiss circadian cycle | Dissimilarity changes (weighted Unifrac index) between the microbiomes of samples from healthy Swiss individuals in dependence on the circadian cycle (indicated by sampling time). The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. |
Inclusion Criteria:
Exclusion Criteria:
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The study population will be recruited through convenience sampling at our institution in Bern and via outreach to the general population Switzerland-wide with a bias favouring the German speaking parts because documents are in German only. No members of the study team will be participants.
| Name | Role | Phone | Extension | |
|---|---|---|---|---|
| Sebastian B. U. Jordi | Contact | +41 31 664 33 63 | research.2omrx@passfwd.com | |
| Benjamin Misselwitz, MD | Contact | +41 31 664 04 30 | benjamin.misselwitz@insel.ch |
| Name | Affiliation | Role |
|---|---|---|
| Benjamin Misselwitz, MD | Inselspital, Bern University Hospital | Principal Investigator |
| Sebastian B. U. Jordi | University of Bern | Study Director |
| Facility | Status | City | State | ZIP | Country | Contacts |
|---|---|---|---|---|---|---|
| Department of Visceral Surgery and Medicine, Inselspital, Bern University Hospital, University of Bern, Switzerland | Recruiting | Bern | 3010 | Switzerland |
A majority of participants are expected to provide consent for the continued use of their data and samples. These samples and data may be shared in collaborative efforts with other researchers upon reasonable request and subsequent review by the Principal Investigator (PI) and Study Director. The decision regarding sharing is always at the discretion of the PI and Study Director and does not need to be justified.
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| ID | Term |
|---|---|
| D000092862 | Psychological Well-Being |
| D015212 | Inflammatory Bowel Diseases |
| D043183 | Irritable Bowel Syndrome |
| ID | Term |
|---|---|
| D010549 | Personal Satisfaction |
| D001519 | Behavior |
| D005759 | Gastroenteritis |
| D005767 | Gastrointestinal Diseases |
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| Difference in microbiome composition - Swiss healthy vs. Swiss UC active | Dissimilarity (weighted Unifrac index) between the microbiomes of healthy Swiss individuals and the microbiomes of Swiss UC patients with active disease (i.e., in a disease flare). (H6) The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints of defined subgroups will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Difference in microbiome composition - Swiss healthy vs. Swiss UC remission | Dissimilarity (weighted Unifrac index) between the microbiomes of healthy Swiss individuals and the microbiomes of Swiss UC patients with inactive disease (i.e., remission). (H7) The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints of defined subgroups will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Difference in microbiome composition - Swiss healthy no IBS vs. Swiss healthy IBS | Dissimilarity (weighted Unifrac index) between the microbiomes of healthy Swiss with and without symptoms of irritable bowel syndrome (Rome IV criteria). (H8) The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints of defined subgroups will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Difference in microbiome composition - Swiss low HRV vs. Swiss high HRV | Dissimilarity (weighted Unifrac index) between the microbiomes of individuals with a low heart rate variability compared to individuals with a high HRV. (H8) The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints of defined subgroups will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Difference in microbiome composition - Healthy Swiss menstrual cycle | Dissimilarity changes (weighted Unifrac index) between the microbiomes of samples from healthy Swiss females in dependence on the menstrual cycle. The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Difference in microbiome composition - Healthy Swiss fatigue symptoms | Dissimilarity (weighted Unifrac index) between the microbiomes of healthy Swiss individuals with and without symptoms of fatigue assessed by the VAS-F fatigue severity scale. The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Difference in microbiome composition - Healthy Swiss depressive symptoms | Dissimilarity (weighted Unifrac index) between the microbiomes of healthy Swiss individuals with and without symptoms of depression assessed by a two questions screening test. The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Difference in microbiome composition - Healthy Swiss personality (NEO-FFI) | Dissimilarity (weighted Unifrac index) between the microbiomes of healthy Swiss individuals in dependence on scores in personality domains assessed by the NEO-FFI questionnaire. The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Difference in microbiome composition - Healthy Swiss personality (DS14) | Dissimilarity (weighted Unifrac index) between the microbiomes of healthy Swiss individuals with and without type D personality assessed by the DS14 questionnaire. The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Difference in microbiome composition - Healthy Swiss nutrition | Dissimilarity (weighted Unifrac index) between the microbiomes of healthy Swiss individuals in dependence on their recent nutrition (simple self-reported dietary assessment covering a 24-hour period). The endpoint will be tested by performing a permutational multivariate analysis of variance of the index with the adonis function of the vegan R package or another appropriate method. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Healthy Swiss core microbiome (strict) - Composition | Characterisation of a constant healthy Swiss core microbiome comprising bacterial taxa that are present in all available samples of healthy Swiss individuals. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Healthy Swiss core microbiome (light) - Composition | Characterisation of a healthy Swiss core microbiome comprising bacterial taxa that are present in 80% of available samples of healthy Swiss individuals. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| Healthy Swiss core microbiome (strict) - Bacterial metabolic pathways | Characterisation of core bacterial metabolic pathways present (independent of expression) in all available samples of healthy Swiss individuals. The presence of a bacterial metabolic pathway will either be inferred by PICRUSt (or comparable tools) and/or assessed by shotgun metagenomic sequencing and/or full genome sequencing of isolated bacterial strains from participant samples. | All sampling timepoints will be analysed, accounting for dependence between samples from the same individual. Alternatively, the timepoint with the most available samples and relevant metadata will be prioritised. |
| D004066 |
| Digestive System Diseases |
| D007410 | Intestinal Diseases |
| D003109 | Colonic Diseases, Functional |
| D003108 | Colonic Diseases |