协变量
混合模型
贝叶斯定理
计算机科学
计量经济学
估计
统计
非线性系统
贝叶斯概率
数学
机器学习
人工智能
量子力学
物理
经济
管理
作者
Min Yuan,Xu Steven Xu,Yaning Yang,Jinfeng Xu,Xiaohui Huang,Fangbiao Tao,Liang Zhao,Liping Zhang,José Pinheiro
标识
DOI:10.1177/0962280218812595
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.
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