iScience (Feb 2024)

Complementary feature learning across multiple heterogeneous networks and multimodal attribute learning for predicting disease-related miRNAs

  • Ping Xuan,
  • Jinshan Xiu,
  • Hui Cui,
  • Xiaowen Zhang,
  • Toshiya Nakaguchi,
  • Tiangang Zhang

Journal volume & issue
Vol. 27, no. 2
p. 108639

Abstract

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Summary: Inferring the latent disease-related miRNAs is helpful for providing a deep insight into observing the disease pathogenesis. We propose a method, CMMDA, to encode and integrate the context relationship among multiple heterogeneous networks, the complementary information across these networks, and the pairwise multimodal attributes. We first established multiple heterogeneous networks according to the diverse disease similarities. The feature representation embedding the context relationship is formulated for each miRNA (disease) node based on transformer. We designed a co-attention fusion mechanism to encode the complementary information among multiple networks. In terms of a pair of miRNA and disease nodes, the pairwise attributes from multiple networks form a multimodal attribute embedding. A module based on depthwise separable convolution is constructed to enhance the encoding of the specific features from each modality. The experimental results and the ablation studies show that CMMDA’s superior performance and the effectiveness of its major innovations.

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