Nature Communications (Oct 2024)

Predicting transcriptional responses to novel chemical perturbations using deep generative model for drug discovery

  • Xiaoning Qi,
  • Lianhe Zhao,
  • Chenyu Tian,
  • Yueyue Li,
  • Zhen-Lin Chen,
  • Peipei Huo,
  • Runsheng Chen,
  • Xiaodong Liu,
  • Baoping Wan,
  • Shengyong Yang,
  • Yi Zhao

DOI
https://doi.org/10.1038/s41467-024-53457-1
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 19

Abstract

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Abstract Understanding transcriptional responses to chemical perturbations is central to drug discovery, but exhaustive experimental screening of disease-compound combinations is unfeasible. To overcome this limitation, here we introduce PRnet, a perturbation-conditioned deep generative model that predicts transcriptional responses to novel chemical perturbations that have never experimentally perturbed at bulk and single-cell levels. Evaluations indicate that PRnet outperforms alternative methods in predicting responses across novel compounds, pathways, and cell lines. PRnet enables gene-level response interpretation and in-silico drug screening for diseases based on gene signatures. PRnet further identifies and experimentally validates novel compound candidates against small cell lung cancer and colorectal cancer. Lastly, PRnet generates a large-scale integration atlas of perturbation profiles, covering 88 cell lines, 52 tissues, and various compound libraries. PRnet provides a robust and scalable candidate recommendation workflow and successfully recommends drug candidates for 233 diseases. Overall, PRnet is an effective and valuable tool for gene-based therapeutics screening.