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Review
. 2024 Jan 19:10:1337373.
doi: 10.3389/fmolb.2023.1337373. eCollection 2023.

Multi-omics approaches to studying gastrointestinal microbiome in the context of precision medicine and machine learning

Affiliations
Review

Multi-omics approaches to studying gastrointestinal microbiome in the context of precision medicine and machine learning

Jingyue Wu et al. Front Mol Biosci. .

Abstract

The human gastrointestinal (gut) microbiome plays a critical role in maintaining host health and has been increasingly recognized as an important factor in precision medicine. High-throughput sequencing technologies have revolutionized -omics data generation, facilitating the characterization of the human gut microbiome with exceptional resolution. The analysis of various -omics data, including metatranscriptomics, metagenomics, glycomics, and metabolomics, holds potential for personalized therapies by revealing information about functional genes, microbial composition, glycans, and metabolites. This multi-omics approach has not only provided insights into the role of the gut microbiome in various diseases but has also facilitated the identification of microbial biomarkers for diagnosis, prognosis, and treatment. Machine learning algorithms have emerged as powerful tools for extracting meaningful insights from complex datasets, and more recently have been applied to metagenomics data via efficiently identifying microbial signatures, predicting disease states, and determining potential therapeutic targets. Despite these rapid advancements, several challenges remain, such as key knowledge gaps, algorithm selection, and bioinformatics software parametrization. In this mini-review, our primary focus is metagenomics, while recognizing that other -omics can enhance our understanding of the functional diversity of organisms and how they interact with the host. We aim to explore the current intersection of multi-omics, precision medicine, and machine learning in advancing our understanding of the gut microbiome. A multidisciplinary approach holds promise for improving patient outcomes in the era of precision medicine, as we unravel the intricate interactions between the microbiome and human health.

Keywords: biomarkers; gut microbiome; machine learning; metagenomics; multi-omics; precision medicine; sequencing.

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Conflict of interest statement

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Figures

FIGURE 1
FIGURE 1
Researchers and clinicians harness the power of big data for downstream machine learning (ML) and bioinformatics analysis. This integrated approach yields valuable insights into the diagnosis, prognosis, and therapeutic treatment aspects of precision medicine, ultimately leading to improved patient outcomes.

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