2023
DOI: 10.1101/2023.04.05.535764
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Broad functional profiling of fission yeast proteins using phenomics and machine learning

Abstract: Many proteins remain poorly characterized even in well-studied organisms, presenting a bottleneck for research. We applied phenomics and machine-learning approaches withSchizosaccharomycespombefor broad cues on protein functions.We assayed colony-growth phenotypes to measure the fitness of deletion mutants for all 3509 non-essential genes in 131 conditions with different nutrients, drugs, and stresses. These analyses exposed phenotypes for 3492 mutants, including 124 mutants of ‘priority unstudied’ proteins co… Show more

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