4.7 Article

Dual Convolutional Neural Network Based Method for Predicting Disease-Related miRNAs

期刊

出版社

MDPI
DOI: 10.3390/ijms19123732

关键词

miRNA-disease association; convolutional neural network; random walk; network topology structure

资金

  1. Natural Science Foundation of Heilongjiang Province [F2015013, F2017024]
  2. Fundamental Research Foundation of Universities in Heilongjiang Province for Technology Innovation [KJCX201805]
  3. Fundamental Research Foundation of Universities in Heilongjiang Province for Youth Innovation Team [RCYJTD201805]
  4. Postdoctoral Science Foundation of Heilongjiang Province
  5. Young Innovative Talent Research Foundation of Harbin Science and Technology Bureau [2017RAQXJ094, 2015RAQXJ004, 2016RQQXJ135]

向作者/读者索取更多资源

Identification of disease-related microRNAs (disease miRNAs) is helpful for understanding and exploring the etiology and pathogenesis of diseases. Most of recent methods predict disease miRNAs by integrating the similarities and associations of miRNAs and diseases. However, these methods fail to learn the deep features of the miRNA similarities, the disease similarities, and the miRNA-disease associations. We propose a dual convolutional neural network-based method for predicting candidate disease miRNAs and refer to it as CNNDMP. CNNDMP not only exploits the similarities and associations of miRNAs and diseases, but also captures the topology structures of the miRNA and disease networks. An embedding layer is constructed by combining the biological premises about the miRNA-disease associations. A new framework based on the dual convolutional neural network is presented for extracting the deep feature representation of associations. The left part of the framework focuses on integrating the original similarities and associations of miRNAs and diseases. The novel miRNA and disease similarities which contain the topology structures are obtained by random walks on the miRNA and disease networks, and their deep features are learned by the right part of the framework. CNNDMP achieves the superior prediction performance than several state-of-the-art methods during the cross-validation process. Case studies on breast cancer, colorectal cancer and lung cancer further demonstrate CNNDMP's powerful ability of discovering potential disease miRNAs.

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