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首页> 外文期刊>Genetic epidemiology. >Phenotype harmonization and cross-study collaboration in GWAS consortia: the GENEVA experience.
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Phenotype harmonization and cross-study collaboration in GWAS consortia: the GENEVA experience.

机译:GWAS联盟中的表型协调和跨研究合作:GENEVA经验。

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Genome-wide association study (GWAS) consortia and collaborations formed to detect genetic loci for common phenotypes or investigate gene-environment (G*E) interactions are increasingly common. While these consortia effectively increase sample size, phenotype heterogeneity across studies represents a major obstacle that limits successful identification of these associations. Investigators are faced with the challenge of how to harmonize previously collected phenotype data obtained using different data collection instruments which cover topics in varying degrees of detail and over diverse time frames. This process has not been described in detail. We describe here some of the strategies and pitfalls associated with combining phenotype data from varying studies. Using the Gene Environment Association Studies (GENEVA) multi-site GWAS consortium as an example, this paper provides an illustration to guide GWAS consortia through the process of phenotype harmonization and describes key issues that arise when sharing data across disparate studies. GENEVA is unusual in the diversity of disease endpoints and so the issues it faces as its participating studies share data will be informative for many collaborations. Phenotype harmonization requires identifying common phenotypes, determining the feasibility of cross-study analysis for each, preparing common definitions, and applying appropriate algorithms. Other issues to be considered include genotyping timeframes, coordination of parallel efforts by other collaborative groups, analytic approaches, and imputation of genotype data. GENEVA's harmonization efforts and policy of promoting data sharing and collaboration, not only within GENEVA but also with outside collaborations, can provide important guidance to ongoing and new consortia.
机译:全基因组关联研究(GWAS)协会和合作以检测常见表型的遗传基因座或研究基因-环境(G * E)相互作用而形成的合作越来越普遍。尽管这些协会有效地增加了样本量,但研究之间的表型异质性仍是限制成功鉴定这些协会的主要障碍。研究人员面临着如何协调使用不同数据收集工具收集的先前收集的表型数据的挑战,这些数据收集工具涵盖了不同程度的细节和不同的时间框架。没有详细描述该过程。我们在这里描述了与各种研究的表型数据合并有关的一些策略和陷阱。以基因环境协会研究(GENEVA)多站点GWAS联盟为例,本文为指导GWAS联盟通过表型协调过程提供了例证,并描述了跨不同研究共享数据时出现的关键问题。 GENEVA在疾病终点的多样性方面是不同寻常的,因此参与研究共享数据所面临的问题将为许多合作提供信息。表型协调需要确定常见的表型,确定每种表型的交叉研究分析的可行性,准备通用的定义,并应用适当的算法。其他要考虑的问题包括基因分型时间表,其他协作小组对平行工作的协调,分析方法以及基因型数据的估算。 GENEVA的协调工作和促进数据共享与协作的政策,不仅在GENEVA内部,而且在与外部协作之间,都可以为正在进行的联盟和新联盟提供重要指导。

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