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A Method to Exploit the Structure of Genetic Ancestry Space to Enhance Case-Control Studies

机译:开发遗传祖先空间结构以增强病例对照研究的方法

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One goal of human genetics is to understand the genetic basis of disease, a challenge for diseases of complex inheritance because risk alleles are few relative to the vast set of benign variants. Risk variants are often sought by association studies in which allele frequencies in case subjects are contrasted with those from population-based samples used as control subjects. In an ideal world we would know population-level allele frequencies, releasing researchers to focus on case subjects. We argue this ideal is possible, at least theoretically, and we outline a path to achieving it in reality. If such a resource were to exist, it would yield ample savings and would facilitate the effective use of data repositories by removing administrative and technical barriers. We call this concept the Universal Control Repository Network (UNICORN), a means to perform association analyses without necessitating direct access to individual-level control data. Our approach to UNICORN uses existing genetic resources and various statistical tools to analyze these data, including hierarchical clustering with spectral analysis of ancestry; and empirical Bayesian analysis along with Gaussian spatial processes to estimate ancestry-specific allele frequencies. We demonstrate our approach using tens of thousands of control subjects from studies of Crohn disease, showing how it controls false positives, provides power similar to that achieved when all control data are directly accessible, and enhances power when control data are limiting or even imperfectly matched ancestrally. These results highlight how UNICORN can enable reliable, powerful, and convenient genetic association analyses without access to the individual-level data.
机译:人类遗传学的一个目标是了解疾病的遗传基础,这是复杂遗传疾病的挑战,因为相对于众多良性变异体而言,风险等位基因很少。通常通过关联研究寻求风险变异,其中将病例受试者的等位基因频率与用作对照受试者的人群样本的等位基因频率进行对比。在理想的世界中,我们会知道群体水平的等位基因频率,从而使研究人员可以将精力集中在病例上。我们认为,至少在理论上,这种理想是可能的,并且我们概述了在现实中实现这一理想的途径。如果存在这种资源,它将产生大量节省,并通过消除管理和技术障碍来促进有效使用数据存储库。我们将此概念称为通用控制存储库网络(UNICORN),这是一种执行关联分析而无需直接访问个人级别控制数据的方法。我们对UNICORN的研究方法是利用现有的遗传资源和各种统计工具来分析这些数据,包括对祖先进行谱分析的层次聚类;和经验贝叶斯分析以及高斯空间过程来估计祖先特定的等位基因频率。我们使用来自克罗恩病研究的成千上万的对照对象展示了我们的方法,展示了它如何控制假阳性,提供与直接访问所有对照数据时相似的功效,并在对照数据受限甚至不完全匹配时增强功效祖先。这些结果凸显了UNICORN如何能够在不访问个人级别数据的情况下实现可靠​​,强大且方便的遗传关联分析。

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