2023
DOI: 10.3389/fmicb.2023.1308363
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Unveiling microbial biomarkers of ruminant methane emission through machine learning

Chengyao Peng,
Ali May,
Thomas Abeel

Abstract: BackgroundEnteric methane from cow burps, which results from microbial fermentation of high-fiber feed in the rumen, is a significant contributor to greenhouse gas emissions. A promising strategy to address this problem is microbiome-based precision feed, which involves identifying key microorganisms for methane production. While machine learning algorithms have shown success in associating human gut microbiome with various human diseases, there have been limited efforts to employ these algorithms to establish… Show more

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