Department of Epidemiology, Emory University, Rollins School of Public Health, Atlanta, GA 30322, USA.
Hum Genet. 2012 Oct;131(10):1677-86. doi: 10.1007/s00439-012-1198-7. Epub 2012 Jul 10.
Millions of genetic variants have been assessed for their effects on the trait of interest in genome-wide association studies (GWAS). The complex traits are affected by a set of inter-related genes. However, the typical GWAS only examine the association of a single genetic variant at a time. The individual effects of a complex trait are usually small, and the simple sum of these individual effects may not reflect the holistic effect of the genetic system. High-throughput methods enable genomic studies to produce a large amount of data to expand the knowledge base of the biological systems. Biological networks and pathways are built to represent the functional or physical connectivity among genes. Integrated with GWAS data, the network- and pathway-based methods complement the approach of single genetic variant analysis, and may improve the power to identify trait-associated genes. Taking advantage of the biological knowledge, these approaches are valuable to interpret the functional role of the genetic variants, and to further understand the molecular mechanism influencing the traits. The network- and pathway-based methods have demonstrated their utilities, and will be increasingly important to address a number of challenges facing the mainstream GWAS.
在全基因组关联研究(GWAS)中,已经评估了数以百万计的遗传变异对感兴趣性状的影响。复杂性状受一组相互关联的基因影响。然而,典型的 GWAS 一次只检测单个遗传变异的关联。复杂性状的个体效应通常较小,这些个体效应的简单总和可能无法反映遗传系统的整体效应。高通量方法使基因组研究能够产生大量数据,从而扩展生物系统的知识库。生物网络和途径被构建来表示基因之间的功能或物理连接。与 GWAS 数据相结合,基于网络和途径的方法补充了单遗传变异分析的方法,并可能提高识别与性状相关的基因的能力。利用生物学知识,这些方法有助于解释遗传变异的功能作用,并进一步了解影响性状的分子机制。基于网络和途径的方法已经证明了它们的效用,并且对于解决主流 GWAS 面临的许多挑战将变得越来越重要。