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Identification of miRNA-Mediated Core Gene Module for Glioma Patient Prediction by Integrating High-Throughput miRNA, mRNA Expression and Pathway Structure

Author

Listed:
  • Chunlong Zhang
  • Chunquan Li
  • Jing Li
  • Junwei Han
  • Desi Shang
  • Yunpeng Zhang
  • Wei Zhang
  • Qianlan Yao
  • Lei Han
  • Yanjun Xu
  • Wei Yan
  • Zhaoshi Bao
  • Gan You
  • Tao Jiang
  • Chunsheng Kang
  • Xia Li

Abstract

The prognosis of glioma patients is usually poor, especially in patients with glioblastoma (World Health Organization (WHO) grade IV). The regulatory functions of microRNA (miRNA) on genes have important implications in glioma cell survival. However, there are not many studies that have investigated glioma survival by integrating miRNAs and genes while also considering pathway structure. In this study, we performed sample-matched miRNA and mRNA expression profilings to systematically analyze glioma patient survival. During this analytical process, we developed pathway-based random walk to identify a glioma core miRNA-gene module, simultaneously considering pathway structure information and multi-level involvement of miRNAs and genes. The core miRNA-gene module we identified was comprised of four apparent sub-modules; all four sub-modules displayed a significant correlation with patient survival in the testing set (P-values≤0.001). Notably, one sub-module that consisted of 6 miRNAs and 26 genes also correlated with survival time in the high-grade subgroup (WHO grade III and IV), P-value = 0.0062. Furthermore, the 26-gene expression signature from this sub-module had robust predictive power in four independent, publicly available glioma datasets. Our findings suggested that the expression signatures, which were identified by integration of miRNA and gene level, were closely associated with overall survival among the glioma patients with various grades.

Suggested Citation

  • Chunlong Zhang & Chunquan Li & Jing Li & Junwei Han & Desi Shang & Yunpeng Zhang & Wei Zhang & Qianlan Yao & Lei Han & Yanjun Xu & Wei Yan & Zhaoshi Bao & Gan You & Tao Jiang & Chunsheng Kang & Xia Li, 2014. "Identification of miRNA-Mediated Core Gene Module for Glioma Patient Prediction by Integrating High-Throughput miRNA, mRNA Expression and Pathway Structure," PLOS ONE, Public Library of Science, vol. 9(5), pages 1-12, May.
  • Handle: RePEc:plo:pone00:0096908
    DOI: 10.1371/journal.pone.0096908
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    References listed on IDEAS

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    1. Sujaya Srinivasan & Irene Rosita Pia Patric & Kumaravel Somasundaram, 2011. "A Ten-microRNA Expression Signature Predicts Survival in Glioblastoma," PLOS ONE, Public Library of Science, vol. 6(3), pages 1-7, March.
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