Data analysis in the post-genome-wide association study era

被引:0
|
作者
Wang Qiao-Ling
Tan Wen-Le
Zhao Yan-Jie
Shao Ming-Ming
Chu Jia-Hui
Huang Xu-Dong
Li Jun
Luo Ying-Ying
Peng Lin-Na
Cui Qiong-Hua
Feng Ting
Yang Jie
Han Ya-Ling
机构
关键词
Genome-wide association study; Data mining; Integrative data analysis; Polymorphism; Copy number variation;
D O I
暂无
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Since the first report of a genome-wide association study (GWAS) on human age-related macular degeneration, GWAS has successfully been used to discover genetic variants for a variety of complex human diseases and/or traits, and thousands of associated loci have been identified. However, the underlying mechanisms for these loci remain largely unknown. To make these GWAS findings more useful, it is necessary to perform in-depth data mining. The data analysis in the post-GWAS era will include the following aspects: fine-mapping of susceptibility regions to identify susceptibility genes for elucidating the biological mechanism of action; joint analysis of susceptibility genes in different diseases; integration of GWAS, transcriptome, and epigenetic data to analyze expression and methylation quantitative trait loci at the whole-genome level, and find single-nucleotide polymorphisms that influence gene expression and DNA methylation; genome-wide association analysis of disease-related DNA copy number variations. Applying these strategies and methods will serve to strengthen GWAS data to enhance the utility and significance of GWAS in improving understanding of the genetics of complex diseases or traits and translate these findings for clinical applications.
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页码:231 / 232-233-234
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