De Rishika, Bush William S, Moore Jason H
Department of Genetics, Geisel School of Medicine, Dartmouth College, Hanover, NH, USA.
Methods Mol Biol. 2014;1168:63-81. doi: 10.1007/978-1-4939-0847-9_5.
Genome-wide association studies (GWAS) are a powerful tool for investigators to examine the human genome to detect genetic risk factors, reveal the genetic architecture of diseases and open up new opportunities for treatment and prevention. However, despite its successes, GWAS have not been able to identify genetic loci that are effective classifiers of disease, limiting their value for genetic testing. This chapter highlights the challenges that lie ahead for GWAS in better identifying disease risk predictors, and how we may address them. In this regard, we review basic concepts regarding GWAS, the technologies used for capturing genetic variation, the missing heritability problem, the need for efficient study design especially for replication efforts, reducing the bias introduced into a dataset, and how to utilize new resources available, such as electronic medical records. We also look to what lies ahead for the field, and the approaches that can be taken to realize the full potential of GWAS.
全基因组关联研究(GWAS)是研究人员检查人类基因组以检测遗传风险因素、揭示疾病遗传结构并为治疗和预防开辟新机会的有力工具。然而,尽管取得了成功,但GWAS尚未能够识别出作为疾病有效分类器的基因座,限制了它们在基因检测中的价值。本章重点介绍了GWAS在更好地识别疾病风险预测指标方面面临的挑战,以及我们如何应对这些挑战。在这方面,我们回顾了关于GWAS的基本概念、用于捕获遗传变异的技术、缺失遗传力问题、高效研究设计(特别是重复研究)的必要性、减少数据集中引入的偏差,以及如何利用可用的新资源,如电子病历。我们还展望了该领域的未来,以及为实现GWAS的全部潜力可采取的方法。