CREaTor: zero-shot cis-regulatory pattern modeling with attention mechanisms. Genome Biology
- Yongge Li ,
- Fusong Ju ,
- Zhiyuan Chen ,
- Yiming Qu ,
- Huanhuan Xia ,
- Liang He ,
- Jianwei Zhu ,
- Lijun Wu ,
- Bin Shao ,
- Pan Deng
Genome biology |
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 RNAseq and ChIP-seq data, allows for the ready generalization of CREaTor to a broad range of cell types.