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Cross-species regulatory sequence activity prediction

David R. Kelley

2020PLoS Computational Biology246 citationsDOIOpen Access PDF

Abstract

Machine learning algorithms trained to predict the regulatory activity of nucleic acid sequences have revealed principles of gene regulation and guided genetic variation analysis. While the human genome has been extensively annotated and studied, model organisms have been less explored. Model organism genomes offer both additional training sequences and unique annotations describing tissue and cell states unavailable in humans. Here, we develop a strategy to train deep convolutional neural networks simultaneously on multiple genomes and apply it to learn sequence predictors for large compendia of human and mouse data. Training on both genomes improves gene expression prediction accuracy on held out and variant sequences. We further demonstrate a novel and powerful approach to apply mouse regulatory models to analyze human genetic variants associated with molecular phenotypes and disease. Together these techniques unleash thousands of non-human epigenetic and transcriptional profiles toward more effective investigation of how gene regulation affects human disease.

Topics & Concepts

Computational biologyGenomeHuman genomeRegulatory sequenceBiologyGeneSequence (biology)EpigeneticsConvolutional neural networkModel organismRegulation of gene expressionGeneticsMachine learningComputer scienceGenomics and Chromatin DynamicsRNA and protein synthesis mechanismsGenomics and Phylogenetic Studies
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