Publication | Open Access
Sequential regulatory activity prediction across chromosomes with convolutional neural networks
64
Citations
55
References
2017
Year
Unknown Venue
EngineeringGeneticsGenetic EpidemiologyGene Regulatory NetworkGenomicsGene Expression ProfilingRecurrent Neural NetworkGenome-wide Association StudyAbstract ModelsMachine-learning SystemBiostatisticsBiological Network VisualizationMolecular DiagnosticsVariant InterpretationStatistical GeneticsPathway AnalysisDeep LearningGene ExpressionBioinformaticsFunctional GenomicsComputational BiologyConvolutional Neural NetworksRegulatory Network ModellingSystems BiologyMedicine
Abstract Models for predicting phenotypic outcomes from genotypes have important applications to understanding genomic function and improving human health. Here, we develop a machine-learning system to predict cell type-specific epigenetic and transcriptional profiles in large mammalian genomes from DNA sequence alone. Using convolutional neural networks, this system identifies promoters and distal regulatory elements and synthesizes their content to make effective gene expression predictions. We show that model predictions for the influence of genomic variants on gene expression align well to causal variants underlying eQTLs in human populations and can be useful for generating mechanistic hypotheses to enable fine mapping of disease loci.
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