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Epiregulon: Single-cell transcription factor activity inference to predict drug response and drivers of cell states

Author

Listed:
  • Tomasz Włodarczyk

    (Genentech Inc)

  • Aaron Lun

    (Genentech Inc)

  • Diana Wu

    (Genentech Inc)

  • Minyi Shi

    (Genentech Inc)

  • Xiaofen Ye

    (Genentech Inc)

  • Shreya Menon

    (Gladstone Institutes
    Gladstone Institutes
    University of California San Francisco)

  • Shushan Toneyan

    (Genentech Inc)

  • Kerstin Seidel

    (Genentech Inc)

  • Liang Wang

    (Genentech Inc)

  • Jenille Tan

    (Genentech Inc)

  • Shang-Yang Chen

    (Genentech Inc)

  • Timothy Keyes

    (Genentech Inc)

  • Aleksander Chlebowski

    (Genentech Inc)

  • Adrian Waddell

    (Genentech Inc)

  • Wei Zhou

    (Genentech Inc)

  • Yangmeng Wang

    (Genentech Inc)

  • Qiuyue Yuan

    (Clemson University)

  • Yu Guo

    (Genentech Inc
    Noetik lnc.)

  • Liang-Fu Chen

    (Genentech Inc)

  • Bence Daniel

    (Genentech Inc)

  • Antonina Hafner

    (Genentech Inc)

  • Meng He

    (Genentech Inc)

  • Alejandro Chibly

    (Genentech Inc
    Genentech Inc)

  • Yuxin Liang

    (Genentech Inc)

  • Zhana Duren

    (Clemson University
    Indiana University School of Medicine)

  • Ciara Metcalfe

    (Genentech Inc)

  • Marc Hafner

    (Genentech Inc
    Genentech Inc)

  • Christian W. Siebel

    (Genentech Inc
    Gilead Sciences)

  • M. Ryan Corces

    (Gladstone Institutes
    Gladstone Institutes
    University of California San Francisco)

  • Robert Yauch

    (Genentech Inc)

  • Shiqi Xie

    (Genentech Inc)

  • Xiaosai Yao

    (Genentech Inc
    Genentech Inc)

Abstract

Transcription factors (TFs) and transcriptional coregulators are emerging therapeutic targets. Gene regulatory networks (GRNs) can evaluate pharmacological agents and identify drivers of disease, but methods that rely solely on gene expression often neglect post-transcriptional modulation of TFs. We present Epiregulon, a method that constructs GRNs from single-cell ATAC-seq and RNA-seq data for accurate prediction of TF activity. This is achieved by considering the co-occurrence of TF expression and chromatin accessibility at TF binding sites in each cell. ChIP-seq data allows motif-agonistic activity inference of transcriptional coregulators or TF harboring neomorphic mutations. Epiregulon accurately predicted the effects of AR inhibition across different drug modalities including an AR antagonist and an AR degrader, delineated the mechanisms of a SMARCA4 degrader by identifying context-dependent interaction partners, and prioritized drivers of lineage reprogramming and tumorigenesis. By mapping gene regulation across various cellular contexts, Epiregulon can accelerate the discovery of therapeutics targeting transcriptional regulators.

Suggested Citation

  • Tomasz Włodarczyk & Aaron Lun & Diana Wu & Minyi Shi & Xiaofen Ye & Shreya Menon & Shushan Toneyan & Kerstin Seidel & Liang Wang & Jenille Tan & Shang-Yang Chen & Timothy Keyes & Aleksander Chlebowski, 2025. "Epiregulon: Single-cell transcription factor activity inference to predict drug response and drivers of cell states," Nature Communications, Nature, vol. 16(1), pages 1-19, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-62252-5
    DOI: 10.1038/s41467-025-62252-5
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