Litcius/Paper detail

Performance of Gut Microbiome as an Independent Diagnostic Tool for 20 Diseases: Cross-Cohort Validation of Machine-Learning Classifiers

Min Li, Jinxin Liu, Jiaying Zhu, Huarui Wang, Chuqing Sun, Na Gao, Xing‐Ming Zhao, Wei‐Hua Chen

2023Gut Microbes54 citationsDOIOpen Access PDF

Abstract

Cross-cohort validation is essential for gut-microbiome-based disease stratification but was only performed for limited diseases. Here, we systematically evaluated the cross-cohort performance of gut microbiome-based machine-learning classifiers for 20 diseases. Using single-cohort classifiers, we obtained high predictive accuracies in intra-cohort validation (~0.77 AUC), but low accuracies in cross-cohort validation, except the intestinal diseases (~0.73 AUC). We then built combined-cohort classifiers trained on samples combined from multiple cohorts to improve the validation of non-intestinal diseases, and estimated the required sample size to achieve validation accuracies of >0.7. In addition, we observed higher validation performance for classifiers using metagenomic data than 16S amplicon data in intestinal diseases. We further quantified the cross-cohort marker consistency using a Marker Similarity Index and observed similar trends. Together, our results supported the gut microbiome as an independent diagnostic tool for intestinal diseases and revealed strategies to improve cross-cohort performance based on identified determinants of consistent cross-cohort gut microbiome alterations.

Topics & Concepts

BiologyMicrobiomeGut microbiomeCohortComputational biologyMachine learningBioinformaticsArtificial intelligenceInternal medicineComputer scienceMedicineGut microbiota and healthDiet and metabolism studiesMachine Learning in Healthcare
Performance of Gut Microbiome as an Independent Diagnostic Tool for 20 Diseases: Cross-Cohort Validation of Machine-Learning Classifiers | Litcius