4.7 Article Proceedings Paper

iLncRNAdis-FB: Identify lncRNA-Disease Associations by Fusing Biological Feature Blocks Through Deep Neural Network

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TCBB.2020.2964221

Keywords

Diseases; Biology; Kernel; Semantics; Benchmark testing; Feature extraction; Matrix decomposition; lncRNA-disease association identification; Convolutional Neural Network; feature blocks

Funding

  1. Beijing Natural Science Foundation [JQ19019]
  2. National Natural Science Foundation of China [61822306, 61672184, 61732012]
  3. Fok Ying-Tung Education Foundation for Young Teachers in the Higher Education Institutions of China [161063]
  4. Scientific Research Foundation in Shenzhen [JCYJ20180306172207178, JCYJ20180306172156841, JCYJ20180507183608379]

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Identifying lncRNA-disease associations is crucial for exploring disease mechanisms and molecular drug discovery. However, current fusion strategies fail to remove noisy and irrelevant information, leading to low predictive performance. iLncRNAdis-FB proposes a new computational predictor based on CNN to integrate feature blocks from different data sources, achieving better prediction accuracy.
Identification of lncRNA-disease associations is not only important for exploring the disease mechanism, but will also facilitate the molecular targeting drug discovery. Fusing multiple biological information is able to generate a more comprehensive view of lncRNA-disease association feature. However, the existing fusion strategies in this field fail to remove the noisy and irrelevant information from each data source. As a result, their predictive performance is still too low to be applied to real world applications. In this regard, a novel computational predictor called iLncRNAdis-FB is proposed based on the Convolution Neural Network (CNN) to integrate different data sources by using the feature blocks in a supervised manner. The lncRNA similarity matrix and disease similarity matrix are constructed, based on which the three-dimensional feature blocks are generated. These feature blocks are then fed into CNN to train the model so as to predict unknown lncRNA-disease associations. Experimental results show that iLncRNAdis-FB achieves better performance compared with other state-of-the-art predictors. Furthermore, a web server of iLncRNAdis-FB has been established at http://bliulab.net/iLncRNAdis-FB/, by which users can submit lncRNA sequences to detect their potential associated diseases.

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