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Statistical analysis for genome-wide association study
Author(s) -
Ping Zeng,
Yang Zhao,
Cheng Qian,
Zhang Li-wei,
Ruyang Zhang,
Jianwei Gou,
Jin Liu,
Liya Liu,
Feng Chen
Publication year - 2015
Publication title -
journal of biomedical research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.617
H-Index - 31
eISSN - 2352-4685
pISSN - 1674-8301
DOI - 10.7555/jbr.29.20140007
Subject(s) - genome wide association study , genetic association , missing heritability problem , heritability , association (psychology) , population , computational biology , data science , computer science , biology , genetics , medicine , genetic variants , single nucleotide polymorphism , psychology , gene , genotype , environmental health , psychotherapist
In the past few years, genome-wide association study (GWAS) has made great successes in identifying genetic susceptibility loci underlying many complex diseases and traits. The findings provide important genetic insights into understanding pathogenesis of diseases. In this paper, we present an overview of widely used approaches and strategies for analysis of GWAS, offered a general consideration to deal with GWAS data. The issues regarding data quality control, population structure, association analysis, multiple comparison and visual presentation of GWAS results are discussed; other advanced topics including the issue of missing heritability, meta-analysis, set-based association analysis, copy number variation analysis and GWAS cohort analysis are also briefly introduced.

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