首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Semiparametric regression of multidimensional genetic pathway data: Least-squares kernel machines and linear mixed models
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Semiparametric regression of multidimensional genetic pathway data: Least-squares kernel machines and linear mixed models

机译:多维遗传途径数据的半参数回归:最小二乘核机和线性混合模型

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摘要

We consider a semiparametric regression model that relates a normal outcome to covariates and a genetic pathway, where the covariate effects are modeled parametrically and the pathway effect of multiple gene expressions is modeled parametrically or nonparametrically using least-squares kernel machines (LSKMs). This unified framework allows a flexible function for the joint effect of multiple genes within a pathway by specifying a kernel function and allows for the possibility that each gene expression effect might be nonlinear and the genes within the same pathway are likely to interact with each other in a complicated way. This semiparametric model also makes it possible to test for the overall genetic pathway effect. We show that the LSKM semiparametric regression can be formulated using a linear mixed model. Estimation and inference hence can proceed within the linear mixed model framework using standard mixed model software. Both the regression coefficients of the covariate effects and the LSKM estimator of the genetic pathway effect can be obtained using the best linear unbiased predictor in the corresponding linear mixed model formulation. The smoothing parameter and the kernel parameter can be estimated as variance components using restricted maximum likelihood. A score test is developed to test for the genetic pathway effect. Model/variable selection within the LSKM framework is discussed. The methods are illustrated using a prostate cancer data set and evaluated using simulations.
机译:我们考虑一个半参数回归模型,该模型将正常结果与协变量和遗传途径相关联,其中协变量效应是通过参数化建模的,而多个基因表达的途径效应是使用最小二乘核机(LSKM)进行参数化或非参数化建模的。这种统一的框架通过指定内核功能,为途径中的多个基因的联合效应提供了灵活的功能,并允许每种基因表达效应可能是非线性的,并且同一途径中的基因可能彼此相互作用。一种复杂的方法。该半参数模型还可以测试整个遗传途径的影响。我们表明,可以使用线性混合模型来制定LSKM半参数回归。因此,可以使用标准混合模型软件在线性混合模型框架内进行估计和推断。协变量效应的回归系数和遗传途径效应的LSKM估计器都可以在相应的线性混合模型公式中使用最佳线性无偏预测器来获得。可以使用限制的最大似然将平滑参数和核参数估计为方差分量。开发了分数测试来测试遗传途径效应。讨论了LSKM框架中的模型/变量选择。该方法使用前列腺癌数据集进行说明,并使用模拟进行评估。

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