Predicting Candidate Genes Based on Combined Network Topological Features: A Case Study in Coronary Artery Disease
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https://figshare.com/articles/dataset/Predicting_Candidate_Genes_Based_on_Combined_Network_Topological_Features_A_Case_Study_in_Coronary_Artery_Disease/123648
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资源简介:
Predicting candidate genes using gene expression profiles and unbiased protein-protein interactions (PPI) contributes a lot in deciphering the pathogenesis of complex diseases. Recent studies showed that there are significant disparities in network topological features between non-disease and disease genes in protein-protein interaction settings. Integrated methods could consider their characteristics comprehensively in a biological network. In this study, we introduce a novel computational method, based on combined network topological features, to construct a combined classifier and then use it to predict candidate genes for coronary artery diseases (CAD). As a result, 276 novel candidate genes were predicted and were found to share similar functions to known disease genes. The majority of the candidate genes were cross-validated by other three methods. Our method will be useful in the search for candidate genes of other diseases.
创建时间:
2016-01-19



