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CREaTor: zero-shot cis-regulatory pattern modeling with attention mechanisms

Yongge Li, Fusong Ju, Zhiyuan Chen, Yiming Qu, Huanhuan Xia, Liang He, Lijun Wu, Jianwei Zhu, Bin Shao, Pan Deng

2023Genome biology10 citationsDOIOpen Access PDF

Abstract

Linking cis-regulatory sequences to target genes has been a long-standing challenge. In this study, we introduce CREaTor, an attention-based deep neural network designed to model cis-regulatory patterns for genomic elements up to 2 Mb from target genes. Coupled with a training strategy that predicts gene expression from flanking candidate cis-regulatory elements (cCREs), CREaTor can model cell type-specific cis-regulatory patterns in new cell types without prior knowledge of cCRE-gene interactions or additional training. The zero-shot modeling capability, combined with the use of only RNA-seq and ChIP-seq data, allows for the ready generalization of CREaTor to a broad range of cell types.

Topics & Concepts

BiologyComputational biologyGene regulatory networkGeneRegulatory sequenceGeneralizationGeneticsRegulation of gene expressionGene expressionMathematicsMathematical analysisGenomics and Chromatin DynamicsRNA and protein synthesis mechanismsRNA Research and Splicing
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