首页> 外文期刊>Behavior Genetics: An International Journal Devoted to Research in the Inheritance of Behavior in Animals and Man >Operating characteristics of alternative statistical methods for detecting gene-by-measured environment interaction in the presence of gene-environment correlation in twin and sibling studies
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Operating characteristics of alternative statistical methods for detecting gene-by-measured environment interaction in the presence of gene-environment correlation in twin and sibling studies

机译:在双胞胎和兄弟姐妹研究中,在存在基因与环境相关性的情况下,用于检测按基因测量的环境相互作用的替代统计方法的操作特性

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It is likely that all complex behaviors and diseases result from interactions between genetic vulnerabilities and environmental factors. Accurately identifying such gene-environment interactions is of critical importance for genetic research on health and behavior. In a previous article we proposed a set of models for testing alternative relationships between a phenotype (P) and a putative moderator (M) in twin studies. These include the traditional bivariate Cholesky model, an extension of that model that allows for interactions between M and the underling influences on P, and a model in which M has a non-linear main effect on P. Here we use simulations to evaluate the type I error rates, power, and performance of the Bayesian Information Criterion under a variety of data generating mechanisms and samples sizes (n = 2,000 and n = 500 twin pairs). In testing the extension of the Cholesky model, false positive rates consistently fell short of the nominal Type I error rates (α = 10,.05,.01). With adequate sample size (n = 2,000 pairs), the correct model had the lowest BIC value in nearly all simulated datasets. With lower sample sizes, models specifying non-linear main effects were more difficult to distinguish from models containing interaction effects. In addition, we provide an illustration of our approach by examining possible interactions between birthweight and the genetic and environmental influences on child and adolescent anxiety using previously collected data. We found a significant interaction between birthweight and the genetic and environmental influences on anxiety. However, the interaction was accounted for by non-linear main effects of birthweight on anxiety, verifying that interaction effects need to be tested against alternative models.
机译:所有复杂的行为和疾病都有可能是由遗传脆弱性和环境因素之间的相互作用引起的。准确识别此类基因与环境的相互作用对于健康和行为的遗传研究至关重要。在上一篇文章中,我们提出了一组模型,用于测试双胞胎研究中的表型(P)和假定的调节剂(M)之间的替代关系。其中包括传统的双变量Cholesky模型,该模型的扩展(允许M和P的基础影响之间的相互作用)以及M对P具有非线性主要影响的模型。在这里,我们使用仿真来评估类型在各种数据生成机制和样本大小(n = 2,000和n = 500对双胞胎对)下,贝叶斯信息准则的错误率,功率和性能。在测试Cholesky模型的扩展时,误报率始终低于标称的I型错误率(α= 10,.05,.01)。有了足够的样本量(n = 2,000对),正确的模型几乎在所有模拟数据集中都具有最低的BIC值。样本量较小时,指定非线性主效应的模型与包含交互效应的模型更难区分。此外,我们使用先前收集的数据,通过检查出生体重与遗传和环境因素对儿童和青少年焦虑的可能相互作用来说明我们的方法。我们发现出生体重与遗传和环境对焦虑的影响之间存在显着的相互作用。然而,相互作用是出生体重对焦虑的非线性主要影响,这证明需要对照替代模型测试相互作用的影响。

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