Litcius/Paper detail

Explainable AI-prioritized plasma and fecal metabolites in inflammatory bowel disease and their dietary associations

Serena Onwuka, Laura Bravo-Merodio, Georgios V. Gkoutos, Animesh Acharjee

2024iScience15 citationsDOIOpen Access PDF

Abstract

Fecal metabolites effectively discriminate inflammatory bowel disease (IBD) and show differential associations with diet. Metabolomics and AI-based models, including explainable AI (XAI), play crucial roles in understanding IBD. Using datasets from the UK Biobank and the Human Microbiome Project Phase II IBD Multi'omics Database (HMP2 IBDMDB), this study uses multiple machine learning (ML) classifiers and Shapley additive explanations (SHAP)-based XAI to prioritize plasma and fecal metabolites and analyze their diet correlations. Key findings include the identification of discriminative metabolites like glycoprotein acetyl and albumin in plasma, as well as nicotinic acid metabolites andurobilin in feces. Fecal metabolites provided a more robust disease predictor model (AUC [95%]: 0.93 [0.87-0.99]) compared to plasma metabolites (AUC [95%]: 0.74 [0.69-0.79]), with stronger and more group-differential diet-metabolite associations in feces. The study validates known metabolite associations and highlights the impact of IBD on the interplay between gut microbial metabolites and diet.

Topics & Concepts

Inflammatory bowel diseaseFecesInflammatory Bowel DiseasesDiseaseMedicinePhysiologyGastroenterologyInternal medicineBiologyMicrobiologyLiver Disease Diagnosis and TreatmentGut microbiota and healthInflammatory Bowel Disease