Computational and Structural Biotechnology Journal (Jan 2022)

LncRNA functional annotation with improved false discovery rate achieved by disease associations

  • Yongheng Wang,
  • Jincheng Zhai,
  • Xianglu Wu,
  • Enoch Appiah Adu-Gyamfi,
  • Lingping Yang,
  • Taihang Liu,
  • Meijiao Wang,
  • Yubin Ding,
  • Feng Zhu,
  • Yingxiong Wang,
  • Jing Tang

Journal volume & issue
Vol. 20
pp. 322 – 332

Abstract

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The long non‐coding RNAs (lncRNAs) play critical roles in various biological processes and are associated with many diseases. Functional annotation of lncRNAs in diseases attracts great attention in understanding their etiology. However, the traditional co-expression-based analysis usually produces a significant number of false positive function assignments. It is thus crucial to develop a new approach to obtain lower false discovery rate for functional annotation of lncRNAs. Here, a novel strategy termed DAnet which combining disease associations with cis-regulatory network between lncRNAs and neighboring protein-coding genes was developed, and the performance of DAnet was systematically compared with that of the traditional differential expression-based approach. Based on a gold standard analysis of the experimentally validated lncRNAs, the proposed strategy was found to perform better in identifying the experimentally validated lncRNAs compared with the other method. Moreover, the majority of biological pathways (40%∼100%) identified by DAnet were reported to be associated with the studied diseases. In sum, the DAnet is expected to be used to identify the function of specific lncRNAs in a particular disease or multiple diseases.

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