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首页> 外文期刊>Biometrical Journal >Variable selection in Bayesian generalized linear-mixed models: An illustration using candidate gene case-control association studies
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Variable selection in Bayesian generalized linear-mixed models: An illustration using candidate gene case-control association studies

机译:贝叶斯广义线性混合模型中的变量选择:使用候选基因病例对照研究的图解

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摘要

The problem of variable selection in the generalized linear-mixed models (GLMMs) is pervasive in statistical practice. For the purpose of variable selection, many methodologies for determining the best subset of explanatory variables currently exist according to the model complexity and differences between applications. In this paper, we develop a higher posterior probability model with bootstrap (HPMB) approach to select explanatory variables without fitting all possible GLMMs involving a small or moderate number of explanatory variables. Furthermore, to save computational load, we propose an efficient approximation approach with Laplace's method and Taylor's expansion to approximate intractable integrals in GLMMs. Simulation studies and an application of HapMap data provide evidence that this selection approach is computationally feasible and reliable for exploring true candidate genes and gene-gene associations, after adjusting for complex structures among clusters.
机译:广义线性混合模型(GLMM)中的变量选择问题在统计实践中普遍存在。出于变量选择的目的,目前存在许多根据模型的复杂性和应用程序之间的差异来确定解释变量的最佳子集的方法。在本文中,我们使用引导程序(HPMB)方法开发了较高的后验概率模型,以选择解释变量,而无需拟合所有涉及少量或中等数量的解释变量的GLMM。此外,为节省计算量,我们提出了一种有效的近似方法,其中使用Laplace方法和泰勒展开法来近似GLMM中的难解积分。仿真研究和HapMap数据的应用提供了证据,证明该选择方法在调整簇之间的复杂结构后,对于探索真正的候选基因和基因-基因关联具有计算上的可行性和可靠性。

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