2019
DOI: 10.1101/761106
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KDML: a machine-learning framework for inference of multi-scale gene functions from genetic perturbation screens

Abstract: Characterising context-dependent gene functions is crucial for understanding the genetic bases of health and disease. To date, inference of gene functions from largescale genetic perturbation screens is based on ad-hoc analysis pipelines involving unsupervised clustering and functional enrichment. We present Knowledge-Driven Machine Learning (KDML), a framework that systematically predicts multiple functions for a given gene based on the similarity of its perturbation phenotype to those with known function. As… Show more

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