酵母
鉴定(生物学)
半乳糖
计算生物学
生物化学
计算机科学
化学
生物
植物
作者
Marie-Claire Harrison,Emily J. Ubbelohde,Abigail LaBella,Dana A. Opulente,John F. Wolters,Xiaofan Zhou,Xing‐Xing Shen,Marizeth Groenewald,Chris Todd Hittinger,Antonis Rokas
标识
DOI:10.1073/pnas.2315314121
摘要
How genomic differences contribute to phenotypic differences is a major question in biology. The recently characterized genomes, isolation environments, and qualitative patterns of growth on 122 sources and conditions of 1,154 strains from 1,049 fungal species (nearly all known) in the yeast subphylum Saccharomycotina provide a powerful, yet complex, dataset for addressing this question. We used a random forest algorithm trained on these genomic, metabolic, and environmental data to predict growth on several carbon sources with high accuracy. Known structural genes involved in assimilation of these sources and presence/absence patterns of growth in other sources were important features contributing to prediction accuracy. By further examining growth on galactose, we found that it can be predicted with high accuracy from either genomic (92.2%) or growth data (82.6%) but not from isolation environment data (65.6%). Prediction accuracy was even higher (93.3%) when we combined genomic and growth data. After the
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