Learning Cell-Type-Specific Gene Regulation Mechanisms By Multi-Attention Based Deep Learning With Regulatory Latent Space

FRONTIERS IN GENETICS(2020)

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摘要
Epigenetic gene regulation is a major control mechanism of gene expression. Most existing methods for modeling control mechanisms of gene expression use only a single epigenetic marker and very few methods are successful in modeling complex mechanisms of gene regulations using multiple epigenetic markers on transcriptional regulation. In this paper, we propose a multi-attention based deep learning model that integrates multiple markers to characterize complex gene regulation mechanisms. In experiments with 18 cell line multi-omics data, our proposed model predicted the gene expression level more accurately than the state-of-the-art model. Moreover, the model successfully revealed cell-type-specific gene expression control mechanisms. Finally, the model was used to identify genes enriched for specific cell types in terms of their functions and epigenetic regulation.
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关键词
gene regulation mechanism, gene regulatory network, multi-omics, deep learning, cell-type-specific
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