首页> 外文期刊>European journal of human genetics: EJHG >Covariate-based linkage analysis: application of a propensity score as the single covariate consistently improves power to detect linkage.
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Covariate-based linkage analysis: application of a propensity score as the single covariate consistently improves power to detect linkage.

机译:基于协变量的链接分析:由于单个协变量,倾向得分的应用不断提高了检测链接的能力。

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摘要

Successful identification of genetic risk loci for complex diseases has relied on the ability to minimize disease and genetic heterogeneity to increase the power to detect linkage. One means to account for disease heterogeneity is by incorporating covariate data. However, the inclusion of each covariate will add one degree of freedom to the allele sharing based linkage test, which may in fact decrease power. We explore the application of a propensity score, which is typically used in causal inference to combine multiple covariates into a single variable, as a means of allowing for multiple covariates with the addition of only one degree of freedom. In this study, binary trait data, simulated under various models involving genetic and environmental effects, were analyzed using a nonparametric linkage statistic implemented in LODPAL. Power and type I error rates were evaluated. Results suggest that the use of the propensity score to combine multiple covariates as a single covariate consistently improves the power compared to an analysis including no covariates, each covariate individually, or all covariates simultaneously. Type I error rates were inflated for analyses with covariates and increased with increasing number of covariates, but reduced to nominal rates with sample sizes of 1000 families. Therefore, we recommend using the propensity score as a single covariate in the linkage analysis of a trait suspected to be influenced by multiple covariates because of its potential to increase the power to detect linkage, while controlling for the increase in the type I error.
机译:成功鉴定复杂疾病的遗传风险位点取决于将疾病和遗传异质性降至最低的能力,以增加检测连锁的能力。解决疾病异质性的一种方法是合并协变量数据。但是,包含每个协变量将为基于等位基因共享的连锁测试增加一个自由度,实际上可能会降低功效。我们探索倾向评分的应用,该倾向评分通常用于因果推理中,以将多个协变量组合为一个变量,以此作为允许多个协变量并仅添加一个自由度的一种方法。在这项研究中,使用在LODPAL中实施的非参数连锁统计分析了在涉及遗传和环境影响的各种模型下模拟的二元性状数据。评估了功效和I类错误率。结果表明,与不包含协变量,每个协变量单独或同时包含所有协变量的分析相比,使用倾向得分将多个协变量作为一个协变量进行合并可不断提高功效。 I型错误率在协变量分析中被夸大,并随着协变量数量的增加而增加,但在1000个家庭的样本量下降低至名义率。因此,我们建议在倾向性分析的连锁分析中,将倾向性得分作为单个协变量使用,因为它可能会增加检测连锁的能力,同时又能控制I型错误的增加,因此有可能被多个协变量影响。

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