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SNP_NLMM: A SAS Macro to Implement a Flexible Random Effects Density for Generalized Linear and Nonlinear Mixed Models

机译:SNP_NLMM:SAS宏可为广义线性和非线性混合模型实现灵活的随机效应密度

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摘要

Generalized linear and nonlinear mixed models (GMMMs and NLMMs) are commonly used to represent non-Gaussian or nonlinear longitudinal or clustered data. A common assumption is that the random effects are Gaussian. However, this assumption may be unrealistic in some applications, and misspecification of the random effects density may lead to maximum likelihood parameter estimators that are inconsistent, biased, and inefficient. Because testing if the random effects are Gaussian is difficult, previous research has recommended using a flexible random effects density. However, computational limitations have precluded widespread use of flexible random effects densities for GLMMs and NLMMs. We develop a SAS macro, SNP_NLMM, that overcomes the computational challenges to fit GLMMs and NLMMs where the random effects are assumed to follow a smooth density that can be represented by the seminonparametric formulation proposed by . The macro is flexible enough to allow for any density of the response conditional on the random effects and any nonlinear mean trajectory. We demonstrate the SNP_NLMM macro on a GLMM of the disease progression of toenail infection and on a NLMM of intravenous drug concentration over time.
机译:通用线性和非线性混合模型(GMMM和NLMM)通常用于表示非高斯或非线性纵向或聚类数据。通常的假设是随机效应是高斯效应。但是,此假设在某些应用中可能是不现实的,并且随机效应密度的错误指定可能会导致不一致,有偏倚和效率低下的最大似然参数估计量。由于很难测试随机效应是否为高斯,因此先前的研究建议使用灵活的随机效应密度。但是,由于计算上的局限性,无法广泛使用GLMM和NLMM的灵活随机效应密度。我们开发了SAS宏SNP_NLMM,它克服了计算难题,以适合GLMM和NLMM,在这些模型中,随机效应被假定为遵循可由提出的半非参数公式表示的平滑密度。宏足够灵活,可以根据随机效应和任何非线性平均轨迹来考虑响应的任何密度。我们在脚趾甲感染的疾病进展的GLMM和随时间推移的静脉内药物浓度的NLMM上证明了SNP_NLMM宏。

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