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Evidential deep learning-based drug-target interaction prediction

Author

Listed:
  • Yanpeng Zhao

    (Academy of Military Medical Sciences
    Shanghai University)

  • Yuting Xing

    (Academy of Military Science)

  • Yixin Zhang

    (Academy of Military Medical Sciences)

  • Yifei Wang

    (Academy of Military Medical Sciences)

  • Mengxuan Wan

    (Academy of Military Medical Sciences
    Shanghai University)

  • Duoyun Yi

    (Academy of Military Medical Sciences
    Shanghai University)

  • Chengkun Wu

    (National University of Defense Technology
    National University of Defense Technology)

  • Shangze Li

    (Academy of Military Medical Sciences)

  • Huiyan Xu

    (Academy of Military Medical Sciences
    Shanghai University)

  • Hongyang Zhang

    (Academy of Military Medical Sciences
    Shanghai University)

  • Ziyi Liu

    (Academy of Military Medical Sciences
    Shanghai University)

  • Guowei Zhou

    (Academy of Military Medical Sciences
    Tianjin University)

  • Mengfan Li

    (Academy of Military Medical Sciences)

  • Xuanze Wang

    (Academy of Military Medical Sciences)

  • Zhengshan Chen

    (Academy of Military Medical Sciences)

  • Ruijiang Li

    (Academy of Military Medical Sciences)

  • Lianlian Wu

    (Academy of Military Medical Sciences
    Tianjin University)

  • Dongsheng Zhao

    (Academy of Military Medical Sciences)

  • Peng Zan

    (Shanghai University
    Shanghai University)

  • Song He

    (Academy of Military Medical Sciences)

  • Xiaochen Bo

    (Academy of Military Medical Sciences)

Abstract

Drug-target interaction (DTI) prediction is a crucial component of drug discovery. Recent deep learning methods show great potential in this field but also encounter substantial challenges. These include generating reliable confidence estimates for predictions, enhancing robustness when handling novel, unseen DTIs, and mitigating the tendency toward overconfident and incorrect predictions. To solve these problems, we propose EviDTI, a novel approach utilizing evidential deep learning (EDL) for uncertainty quantification in neural network-based DTI prediction. EviDTI integrates multiple data dimensions, including drug 2D topological graphs and 3D spatial structures, and target sequence features. Through EDL, EviDTI provides uncertainty estimates for its predictions. Experimental results on three benchmark datasets demonstrate the competitiveness of EviDTI against 11 baseline models. In addition, our study shows that EviDTI can calibrate prediction errors. More importantly, well-calibrated uncertainty information enhances the efficiency of drug discovery by prioritizing DTIs with higher confident predictions for experimental validation. In a case study focused on tyrosine kinase modulators, uncertainty-guided predictions identify novel potential modulators targeting tyrosine kinase FAK and FLT3. These results underscore the potential of evidential deep learning as a robust tool for uncertainty quantification in DTI prediction and its broader implications for accelerating drug discovery.

Suggested Citation

  • Yanpeng Zhao & Yuting Xing & Yixin Zhang & Yifei Wang & Mengxuan Wan & Duoyun Yi & Chengkun Wu & Shangze Li & Huiyan Xu & Hongyang Zhang & Ziyi Liu & Guowei Zhou & Mengfan Li & Xuanze Wang & Zhengshan, 2025. "Evidential deep learning-based drug-target interaction prediction," Nature Communications, Nature, vol. 16(1), pages 1-16, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-62235-6
    DOI: 10.1038/s41467-025-62235-6
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