Unravelling metabolite-microbiome interactions in inflammatory bowel disease through AI and interaction-based modelling
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Publication date
2024-12-09Subject
GastroenterologyMicrobiology. Immunology
Biochemistry
Clinical pathology
Diseases & disorders of systemic, metabolic or environmental origin
Public health. Health statistics. Occupational health. Health education
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Inflammatory Bowel Diseases (IBDs) are chronic inflammatory disorders of the gastrointestinal tract and colon affecting approximately 7 million individuals worldwide. The knowledge of specific pathology and aetiological mechanisms leading to IBD is limited, however a reduced immune system, antibiotic use and reserved diet may initiate symptoms. Dysbiosis of the gut microbiome, and consequently a varied composition of the metabolome, has been extensively linked to these risk factors and IBD. Metagenomic sequencing and liquid-chromatography mass spectrometry (LC-MS) of N = 220 fecal samples by Fransoza et al., provided abundance data on microbial genera and metabolites for use in this study. Identification of differentially abundant microbes and metabolites was performed using a Wilcoxon test, followed by feature selection of random forest (RF), gradient-boosting (XGBoost) and least absolute shrinkage operator (LASSO) models. The performance of these features was then validated using RF models on the Human Microbiome Project 2 (HMP2) dataset and a microbial community (MICOM) model was utilised to predict and interpret the interactions between key microbes and metabolites. The Flavronifractor genus and microbes of the families Lachnospiraceae and Oscillospiraceae were found differential by all models. Metabolic pathways commonly influenced by such microbes in IBD were CoA biosynthesis, bile acid metabolism and amino acid production and degradation. This study highlights distinct interactive microbiome and metabolome profiles within IBD and the highly potential pathways causing disease pathology. It therefore paves way for future investigation into new therapeutic targets and non-invasive diagnostic tools for IBD.Citation
Hodgkiss R, Acharjee A. Unravelling metabolite-microbiome interactions in inflammatory bowel disease through AI and interaction-based modelling. Biochim Biophys Acta Mol Basis Dis. 2024 Dec 9;1871(3):167618. doi: 10.1016/j.bbadis.2024.167618. Epub ahead of print.Type
ArticlePMID
39662756Publisher
Elsevierae974a485f413a2113503eed53cd6c53
10.1016/j.bbadis.2024.167618