Machine learning reveals genes impacting oxidative stress resistance across yeasts
Katarina Aranguiz,
Linda C. Horianopoulos,
Logan Elkin
et al.
Abstract:Reactive oxygen species (ROS) are highly reactive molecules encountered by yeasts during routine metabolism and during interactions with other organisms, including host infection. Here, we characterized the variation in resistance to ROS across the ancient yeast subphylum Saccharomycotina and used machine learning (ML) to identify gene families whose sizes were predictive of ROS resistance. The most predictive features were enriched in gene families related to cell wall organization and included two reductase … Show more
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