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A quick and accurate method for the estimation of covariate effects based on empirical Bayes estimates in mixed-effects modeling: Correction of bias due to shrinkage

机译:基于经验贝叶斯估计的混合效应建模估计的一种快速准确的方法:收缩由于收缩偏差的校正

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摘要

Nonlinear mixed-effects modeling is a popular approach to describe the temporal trajectory of repeated measurements of clinical endpoints collected over time in clinical trials, to distinguish the within-subject and the between-subject variabilities, and to investigate clinically important risk factors (covariates) that may partly explain the between-subject variability. Due to the complex computing algorithms involved in nonlinear mixed-effects modeling, estimation of covariate effects is often time-consuming and error-prone owing to local convergence. We develop a fast and accurate estimation method based on empirical Bayes estimates from the base mixed-effects model without covariates, and simple regressions outside of the nonlinear mixed-effect modeling framework. Application of the method is illustrated using a pharmacokinetic dataset from an anticoagulation drug for the prevention of major cardiovascular events in patients with acute coronary syndrome. Both the application and extensive simulations demonstrated that the performance of this high-throughput method is comparable to the commonly used maximum likelihood estimation in nonlinear mixed-effects modeling.
机译:非线性混合效应建模是一种流行的方法来描述在临床试验中收集的临床终点的重复测量的时间轨迹,以区分受试者内部和主题的可变性,并调查临床重要的风险因素(协变量)这可能部分解释对象之间的可变性。由于涉及非线性混合效果建模的复杂计算算法,由于局部收敛,协变量效应的估计通常是耗时和易于出错的。我们开发了基于基础混合效应模型的经验贝叶斯估计的快速准确的估计方法,无协调性,并且在非线性混合效应建模框架之外的简单回归。使用来自抗凝药物的药代动力学数据集来说明该方法的应用,用于预防急性冠状动脉综合征患者的主要心血管事件。应用和广泛的模拟都表明,这种高通量方法的性能与非线性混合效应建模中的常用最大似然估计相当。

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