The gut microbiome is involved in human health and disease, and its comprehensive understanding is necessary to exploit it as a diagnostic or therapeutic tool. Multi-omics approaches, including metagenomics, metatranscriptomics, metabolomics, and metaproteomics, enable depiction of the gut microbial ecosystem's complexity. However, these tools generate a large data stream in which integration is needed to produce clinically useful readouts, but, in turn, might be difficult to carry out with conventional statistical methods. Artificial intelligence and machine learning have been increasingly applied to multi-omics datasets in several conditions associated with microbiome disruption, from chronic disorders to cancer. Such tools have potential for clinical implementation, including discovery of microbial biomarkers for disease classification or prediction, prediction of response to specific treatments, and fine-tuning of microbiome-modulating therapies. The state of the art, potential, and limits, of artificial intelligence and machine learning in the multi-omics approach to gut microbiome are discussed.

Rozera, T., Pasolli, E., Segata, N., Ianiro, G., Recensione a "Rozera T, Pasolli E, Segata N, Ianiro G., Machine Learning and Artificial Intelligence in the Multi-Omics Approach to Gut Microbiota. Elsevier Inc., Gastroenterology 2025", <<GASTROENTEROLOGY>>, 2025; 169 (3):487-501. 10.1053/j.gastro.2025.02.035 [https://hdl.handle.net/10807/338240]

Machine Learning and Artificial Intelligence in the Multi-Omics Approach to Gut Microbiota

Rozera, Tommaso;Ianiro, Gianluca
2025

Abstract

The gut microbiome is involved in human health and disease, and its comprehensive understanding is necessary to exploit it as a diagnostic or therapeutic tool. Multi-omics approaches, including metagenomics, metatranscriptomics, metabolomics, and metaproteomics, enable depiction of the gut microbial ecosystem's complexity. However, these tools generate a large data stream in which integration is needed to produce clinically useful readouts, but, in turn, might be difficult to carry out with conventional statistical methods. Artificial intelligence and machine learning have been increasingly applied to multi-omics datasets in several conditions associated with microbiome disruption, from chronic disorders to cancer. Such tools have potential for clinical implementation, including discovery of microbial biomarkers for disease classification or prediction, prediction of response to specific treatments, and fine-tuning of microbiome-modulating therapies. The state of the art, potential, and limits, of artificial intelligence and machine learning in the multi-omics approach to gut microbiome are discussed.
2025
Inglese
W.B. Saunders
Rozera, T., Pasolli, E., Segata, N., Ianiro, G., Recensione a "Rozera T, Pasolli E, Segata N, Ianiro G., Machine Learning and Artificial Intelligence in the Multi-Omics Approach to Gut Microbiota. Elsevier Inc., Gastroenterology 2025", <<GASTROENTEROLOGY>>, 2025; 169 (3):487-501. 10.1053/j.gastro.2025.02.035 [https://hdl.handle.net/10807/338240]
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