4.1 Article

Predicting human microRNA-disease associations based on support vector machine

Journal

Publisher

INDERSCIENCE ENTERPRISES LTD
DOI: 10.1504/IJDMB.2013.056078

Keywords

microRNA-disease association prediction; SVM; support vector machine

Funding

  1. Fundamental Research Funds for the Central Universities [HIT NSRIF. 2010057]
  2. China Postdoctoral Science Foundation [20110490108]
  3. China Natural Science Foundation [61102149, 60973078, 60901075]
  4. Natural Science Foundation of Heilongjiang Province of China [LC2009C35]
  5. National Science & Technology Pillar Program during the Eleventh Five-Year Plan Period [2008BAI64B03]

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The identification of disease-related microRNAs is vital for understanding the pathogenesis of disease at the molecular level and may lead to the design of specific molecular tools for diagnosis, treatment and prevention. Experimental identification of disease-related microRNAs poses difficulties. Computational prediction of microRNA-disease associations is one of the complementary means. However, one major issue in microRNA studies is the lack of bioinformatics programs to accurately predict microRNA-disease associations. Herein, we present a machine-learning-based approach for distinguishing positive microRNA-disease associations from negative microRNA-disease associations. A set of features was extracted for each positive and negative microRNA-disease association, and a Support Vector Machine (SVM) classifier was trained, which achieved the area under the ROC curve of up to 0.8884 in 10-fold cross-validation procedure, indicating that the SVM-based approach described here can be used to predict potential microRNA-disease associations and formulate testable hypotheses to guide future biological experiments.

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