PLoS ONE (Jan 2014)

Cancer-risk module identification and module-based disease risk evaluation: a case study on lung cancer.

  • Xu Jia,
  • Zhengqiang Miao,
  • Wan Li,
  • Liangcai Zhang,
  • Chenchen Feng,
  • Yuehan He,
  • Xiaoman Bi,
  • Liqiang Wang,
  • Youwen Du,
  • Min Hou,
  • Dapeng Hao,
  • Yun Xiao,
  • Lina Chen,
  • Kongning Li

DOI
https://doi.org/10.1371/journal.pone.0092395
Journal volume & issue
Vol. 9, no. 3
p. e92395

Abstract

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Gene expression profiles have drawn broad attention in deciphering the pathogenesis of human cancers. Cancer-related gene modules could be identified in co-expression networks and be applied to facilitate cancer research and clinical diagnosis. In this paper, a new method was proposed to identify lung cancer-risk modules and evaluate the module-based disease risks of samples. The results showed that thirty one cancer-risk modules were closely related to the lung cancer genes at the functional level and interactional level, indicating that these modules and genes might synergistically lead to the occurrence of lung cancer. Our method was proved to have good robustness by evaluating the disease risk of samples in eight cancer expression profiles (four for lung cancer and four for other cancers), and had better performance than the WGCNA method. This method could provide assistance to the diagnosis and treatment of cancers and a new clue for explaining cancer mechanisms.