Computational and Structural Biotechnology Journal (Dec 2024)

Improving compound-protein interaction prediction by focusing on intra-modality and inter-modality dynamics with a multimodal tensor fusion strategy

  • Meng Wang,
  • Jianmin Wang,
  • Jianxin Ji,
  • Chenjing Ma,
  • Hesong Wang,
  • Jia He,
  • Yongzhen Song,
  • Xuan Zhang,
  • Yong Cao,
  • Yanyan Dai,
  • Menglei Hua,
  • Ruihao Qin,
  • Kang Li,
  • Lei Cao

Journal volume & issue
Vol. 23
pp. 3714 – 3729

Abstract

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Identifying novel compound–protein interactions (CPIs) plays a pivotal role in target identification and drug discovery. Although the recent multimodal methods have achieved outstanding advances in CPI prediction, they fail to effectively learn both intra-modality and inter-modality dynamics, which limits their prediction performance. To address the limitation, we propose a novel multimodal tensor fusion CPI prediction framework, named MMTF-CPI, which contains three unimodal learning modules for structure, heterogeneous network and transcriptional profiling modalities, a tensor fusion module and a prediction module. MMTF-CPI is capable of focusing on both intra-modality and inter-modality dynamics with the tensor fusion module. We demonstrated that MMTF-CPI is superior to multiple state-of-the-art multimodal methods across seven datasets. The prediction performance of MMTF-CPI is significantly improved with the tensor fusion module compared to other fusion methods. Moreover, our case studies confirmed the practical value of MMTF-CPI in target identification. Via MMTF-CPI, we also discovered several candidate compounds for the therapy of breast cancer and non-small cell lung cancer.

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