Department of Genetics, Texas Biomedical Research Institute, San Antonio, TX 78245-0549, USA.
Hum Genet. 2012 Oct;131(10):1533-40. doi: 10.1007/s00439-012-1191-1. Epub 2012 Jun 22.
As whole genome sequence becomes a routine component of gene discovery studies in humans, we will have an exhaustive catalog of genetic variation and the challenge becomes understanding the phenotypic consequences of these variants. Statistical genetic methods and analytical approaches that are concerned with optimizing phenotypes for gene discovery for complex traits offer two general categories of advantages. They may increase power to localize genes of interest and also aid in interpreting associations between genetic variants and disease outcomes by suggesting potential mechanisms and pathways through which genes may affect outcomes. Such phenotype optimization approaches include use of allied phenotypes such as symptoms or ages of onset to reduce genetic heterogeneity within a set of cases, study of quantitative risk factors or endophenotypes, joint analyses of related phenotypes, and derivation of new phenotypes designed to extract independent measures underlying the correlations among a set of related phenotypes through approaches such as principal components. New opportunities are also presented by technological advances that permit efficient collection of hundreds or thousands of phenotypes on an individual, including phenotypes more proximal to the level of gene action such as levels of gene expression, microRNAs, or metabolic and proteomic profiles.
随着全基因组序列成为人类基因发现研究的常规组成部分,我们将拥有详尽的遗传变异目录,而挑战在于了解这些变异的表型后果。涉及优化复杂性状基因发现的表型的统计遗传方法和分析方法提供了两大类优势。它们可以提高定位感兴趣基因的能力,并且通过提出基因可能影响结果的潜在机制和途径,有助于解释遗传变异与疾病结果之间的关联。这种表型优化方法包括使用相关表型,如症状或发病年龄,以减少一组病例中的遗传异质性,研究定量风险因素或内表型,对相关表型进行联合分析,以及通过主成分等方法设计新的表型,以提取一组相关表型之间相关性的独立度量。技术进步也带来了新的机会,这些技术进步可以在个体上高效地收集数百或数千种表型,包括更接近基因作用水平的表型,如基因表达水平、microRNA 或代谢和蛋白质组学谱。