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Bayesian-frequentist hybrid approach for skew-normal nonlinear mixed-effects joint models in the presence of covariates measured with errors

机译:在存在误差的协变量存在下,偏态-正态非线性混合效应联合模型的贝叶斯-频率混合方法

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It is a common practice to analyze complex longitudinal data using nonlinear mixed-effects (NLME) models. Existing methods often assume a normal model for the errors, which is not realistic. To explain between- and within-subject variations, covariates are usually introduced in such models to partially explain inter-subject variations, but some covariates may often be measured with substantial errors. Moreover, although statistical methods for analyzing longitudinal data have been evolving substantially, existing methods are either frequentist or full Bayesian, not taking into account scenarios where only part of the parameters have sound prior information available. In an attempt to take full advantage of both approaches, we adopt a Bayesian-frequentist hybrid (BFH) approach to NLME models with a skew-normal distribution in the presence of covariate measurement errors and jointly model the response and covariate processes. We illustrate the proposed method in a real example from an AIDS clinical trial by modeling the viral dynamics to compare potential models with different inference methods. Simulation studies are conducted to assess the performance of the proposed model and method.
机译:使用非线性混合效应(NLME)模型分析复杂的纵向数据是一种常见的做法。现有方法通常假定错误的正常模型,这是不现实的。为了解释受试者之间和受试者内部的变异,通常在此类模型中引入协变量以部分解释受试者之间的变异,但是某些协变量通常可能存在重大误差。此外,尽管用于分析纵向数据的统计方法已经在不断发展,但是现有方法要么是频繁的,要么是完整的贝叶斯方法,没有考虑仅部分参数具有可靠的先验信息的情况。为了充分利用这两种方法,我们在存在协变量测量误差的情况下对具有正态正态分布的NLME模型采用贝叶斯-频繁混合(BFH)方法,并共同对响应和协变量过程进行建模。我们通过对病毒动力学建模以比较具有不同推断方法的潜在模型,在一个艾滋病临床试验的真实示例中说明了所提出的方法。进行仿真研究以评估所提出模型和方法的性能。

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