2024
DOI: 10.1093/nar/gkae912
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A novel interpretable deep learning-based computational framework designed synthetic enhancers with broad cross-species activity

Zhaohong Li,
Yuanyuan Zhang,
Bo Peng
et al.

Abstract: Enhancers play a critical role in dynamically regulating spatial-temporal gene expression and establishing cell identity, underscoring the significance of designing them with specific properties for applications in biosynthetic engineering and gene therapy. Despite numerous high-throughput methods facilitating genome-wide enhancer identification, deciphering the sequence determinants of their activity remains challenging. Here, we present the DREAM (DNA cis-Regulatory Elements with controllable Activity design… Show more

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