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首页> 外文期刊>Behavior Genetics: An International Journal Devoted to Research in the Inheritance of Behavior in Animals and Man >GW-SEM: A Statistical Package to Conduct Genome-Wide Structural Equation Modeling
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GW-SEM: A Statistical Package to Conduct Genome-Wide Structural Equation Modeling

机译:GW-SEM:进行基因组结构方程模型的统计包

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Improving the accuracy of phenotyping through the use of advanced psychometric tools will increase the power to find significant associations with genetic variants and expand the range of possible hypotheses that can be tested on a genome-wide scale. Multivariate methods, such as structural equation modeling (SEM), are valuable in the phenotypic analysis of psychiatric and substance use phenotypes, but these methods have not been integrated into standard genome-wide association analyses because fitting a SEM at each single nucleotide polymorphism (SNP) along the genome was hitherto considered to be too computationally demanding. By developing a method that can efficiently fit SEMs, it is possible to expand the set of models that can be tested. This is particularly necessary in psychiatric and behavioral genetics, where the statistical methods are often handicapped by phenotypes with large components of stochastic variance. Due to the enormous amount of data that genome-wide scans produce, the statistical methods used to analyze the data are relatively elementary and do not directly correspond with the rich theoretical development, and lack the potential to test more complex hypotheses about the measurement of, and interaction between, comorbid traits. In this paper, we present a method to test the association of a SNP with multiple phenotypes or a latent construct on a genome-wide basis using a diagonally weighted least squares (DWLS) estimator for four common SEMs: a one-factor model, a one-factor residuals model, a two-factor model, and a latent growth model. We demonstrate that the DWLS parameters and p-values strongly correspond with the more traditional full information maximum likelihood parameters and p-values. We also present the timing of simulations and power analyses and a comparison with and existing multivariate GWAS software package.
机译:通过使用先进的心理学工具提高表型的准确性将增加能够找到具有遗传变体的重要关联的力量,并扩大可以在基因组范围内测试的可能假假设的范围。诸如结构方程建模(SEM)的多变量方法是对精神审查和物质使用表型的表型分析有价值,但这些方法尚未纳入标准的基因组关联分析,因为在每种核苷酸多态性下拟合SEM(SNP )沿着该基因组被认为是过于计算的要求。通过开发可以有效地拟合SEM的方法,可以扩展可以测试的模型集。这在精神疾病和行为遗传学中是特别必要的,其中统计方法通常通过具有随机方差的大量成分的表型来障碍。由于基因组扫描产生的巨大数据,用于分析数据的统计方法是相对基本的,并且不直接与丰富的理论发展相对应,并且缺乏对测量测量来测试更复杂假设的可能性。和互动,合并性状。在本文中,我们介绍了一种方法来测试SNP与多种表型或潜在的构建体的关联,或者使用对角线加权最小二乘(DWLS)估计器进行四个常见的SEMS:一个因子模型,a单因素残差模型,双因子模型和潜在生长模型。我们证明DWLS参数和P值强烈对应于更传统的完整信息最大似然参数和P值。我们还介绍了模拟和功率分析的时间,以及与现有多元GWAS软件包的比较。

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