Network-based identification of biomarkers coexpressed with multiple pathways.

Cancer Inform

Mary Babb Randolph Cancer Center/School of Public Health, West Virginia University, Morgantown, WV, USA.

Published: November 2014

AI Article Synopsis

  • Unraveling molecular interactions and networks, along with clinical data, could transform molecular medicine, particularly in cancer research.
  • The study reviews various computational methods for identifying biomarkers related to cancer susceptibility and metastasis, comparing their effectiveness.
  • Implication networks, particularly those using the Genet package, proved most effective in accurately predicting lung cancer risk and identified more relevant molecular interactions than other network models like Boolean, Bayesian, and Pearson’s correlation.

Article Abstract

Unraveling complex molecular interactions and networks and incorporating clinical information in modeling will present a paradigm shift in molecular medicine. Embedding biological relevance via modeling molecular networks and pathways has become increasingly important for biomarker identification in cancer susceptibility and metastasis studies. Here, we give a comprehensive overview of computational methods used for biomarker identification, and provide a performance comparison of several network models used in studies of cancer susceptibility, disease progression, and prognostication. Specifically, we evaluated implication networks, Boolean networks, Bayesian networks, and Pearson's correlation networks in constructing gene coexpression networks for identifying lung cancer diagnostic and prognostic biomarkers. The results show that implication networks, implemented in Genet package, identified sets of biomarkers that generated an accurate prediction of lung cancer risk and metastases; meanwhile, implication networks revealed more biologically relevant molecular interactions than Boolean networks, Bayesian networks, and Pearson's correlation networks when evaluated with MSigDB database.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4218687PMC
http://dx.doi.org/10.4137/CIN.S14054DOI Listing

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