| Literature DB >> 25758991 |
Jin Li1,2,3, Dongli Huang1, Maozu Guo1, Xiaoyan Liu1, Chunyu Wang1, Zhixia Teng1, Ruijie Zhang3, Yongshuai Jiang3, Hongchao Lv3, Limei Wang3,4.
Abstract
Currently, most methods for detecting gene-gene interactions (GGIs) in genome-wide association studies are divided into SNP-based methods and gene-based methods. Generally, the gene-based methods can be more powerful than SNP-based methods. Some gene-based entropy methods can only capture the linear relationship between genes. We therefore proposed a nonparametric gene-based information gain method (GBIGM) that can capture both linear relationship and nonlinear correlation between genes. Through simulation with different odds ratio, sample size and prevalence rate, GBIGM was shown to be valid and more powerful than classic KCCU method and SNP-based entropy method. In the analysis of data from 17 genes on rheumatoid arthritis, GBIGM was more effective than the other two methods as it obtains fewer significant results, which was important for biological verification. Therefore, GBIGM is a suitable and powerful tool for detecting GGIs in case-control studies.Entities:
Mesh:
Year: 2015 PMID: 25758991 PMCID: PMC4613483 DOI: 10.1038/ejhg.2015.16
Source DB: PubMed Journal: Eur J Hum Genet ISSN: 1018-4813 Impact factor: 4.246