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A computationally efficient method for nonlinear mixed-effects models with nonignorable missing data in time-varying covariates

机译:时变协变量中具有不可忽略缺失数据的非线性混合效应模型的一种高效计算方法

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摘要

Nonlinear mixed-effects (NLME) models are widely used for longitudinal data analyses. Time-dependent covariates are often introduced to partially explain inter-individual variation. These covariates often have missing data, and the missingness may be nonignorable. Likelihood inference for NLME models with nonignorable missing data in time-varying covariates can be computationally very intensive and may even offer computational difficulties such as nonconvergence. We propose a computationally very efficient method for approximate likelihood inference. The method is illustrated using a real data example.
机译:非线性混合效应(NLME)模型被广泛用于纵向数据分析。通常引入时变协变量来部分解释个体间的变异。这些协变量通常缺少数据,并且缺失可能是不可忽略的。时变协变量中具有不可忽略的缺失数据的NLME模型的似然推断可能在计算上非常密集,甚至可能带来计算难题(例如不收敛)。我们提出了一种计算上非常有效的近似似然推断方法。使用实际数据示例说明了该方法。

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