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TRAPT: a multi-stage fused deep learning framework for predicting transcriptional regulators based on large-scale epigenomic data

Author

Listed:
  • Guorui Zhang

    (University of South China
    University of South China
    University of South China)

  • Chao Song

    (University of South China
    University of South China
    University of South China
    University of South China)

  • Mingxue Yin

    (University of South China
    University of South China
    University of South China)

  • Liyuan Liu

    (University of South China
    University of South China
    University of South China)

  • Yuexin Zhang

    (University of South China
    University of South China)

  • Ye Li

    (University of South China
    University of South China
    University of South China)

  • Jianing Zhang

    (University of South China
    University of South China)

  • Maozu Guo

    (Beijing University of Civil Engineering and Architecture)

  • Chunquan Li

    (University of South China
    University of South China
    University of South China
    University of South China)

Abstract

It is challenging to identify regulatory transcriptional regulators (TRs), which control gene expression via regulatory elements and epigenomic signals, in context-specific studies on the onset and progression of diseases. The use of large-scale multi-omics epigenomic data enables the representation of the complex epigenomic patterns of control of the regulatory elements and the regulators. Herein, we propose Transcription Regulator Activity Prediction Tool (TRAPT), a multi-modality deep learning framework, which infers regulator activity by learning and integrating the regulatory potentials of target gene cis-regulatory elements and genome-wide binding sites. The results of experiments on 570 TR-related datasets show that TRAPT outperformed state-of-the-art methods in predicting the TRs, especially in terms of forecasting transcription co-factors and chromatin regulators. Moreover, we successfully identify key TRs associated with diseases, genetic variations, cell-fate decisions, and tissues. Our method provides an innovative perspective on identifying TRs by using epigenomic data.

Suggested Citation

  • Guorui Zhang & Chao Song & Mingxue Yin & Liyuan Liu & Yuexin Zhang & Ye Li & Jianing Zhang & Maozu Guo & Chunquan Li, 2025. "TRAPT: a multi-stage fused deep learning framework for predicting transcriptional regulators based on large-scale epigenomic data," Nature Communications, Nature, vol. 16(1), pages 1-20, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-58921-0
    DOI: 10.1038/s41467-025-58921-0
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