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Implementation and Evaluation of the SAEM Algorithm for Longitudinal Ordered Categorical Data with an Illustration in Pharmacokinetics–Pharmacodynamics

机译:纵向有序分类数据的SAEM算法的实现和评估(以药代动力学-药效学为例)

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摘要

Analysis of longitudinal ordered categorical efficacy or safety data in clinical trials using mixed models is increasingly performed. However, algorithms available for maximum likelihood estimation using an approximation of the likelihood integral, including LAPLACE approach, may give rise to biased parameter estimates. The SAEM algorithm is an efficient and powerful tool in the analysis of continuous/count mixed models. The aim of this study was to implement and investigate the performance of the SAEM algorithm for longitudinal categorical data. The SAEM algorithm is extended for parameter estimation in ordered categorical mixed models together with an estimation of the Fisher information matrix and the likelihood. We used Monte Carlo simulations using previously published scenarios evaluated with NONMEM. Accuracy and precision in parameter estimation and standard error estimates were assessed in terms of relative bias and root mean square error. This algorithm was illustrated on the simultaneous analysis of pharmacokinetic and discretized efficacy data obtained after a single dose of warfarin in healthy volunteers. The new SAEM algorithm is implemented in MONOLIX 3.1 for discrete mixed models. The analyses show that for parameter estimation, the relative bias is low for both fixed effects and variance components in all models studied. Estimated and empirical standard errors are similar. The warfarin example illustrates how simple and rapid it is to analyze simultaneously continuous and discrete data with MONOLIX 3.1. The SAEM algorithm is extended for analysis of longitudinal categorical data. It provides accurate estimates parameters and standard errors. The estimation is fast and stable.
机译:在临床试验中使用混合模型对纵向排序的分类功效或安全性数据的分析越来越多。但是,使用似然积分的近似值可用于最大似然估计的算法(包括LAPLACE方法)可能会引起偏差参数估计。 SAEM算法是分析连续/计数混合模型的有效而强大的工具。这项研究的目的是实现和研究SAEM算法的纵向分类数据的性能。将SAEM算法扩展为用于有序分类混合模型中的参数估计以及Fisher信息矩阵和似然性的估计。我们使用了先前使用NONMEM评估的方案进行的蒙特卡洛模拟。根据相对偏差和均方根误差评估参数估计和标准误差估计的准确性和精确性。在健康志愿者中单次服用华法林后对药代动力学和离散功效数据进行同步分析,说明了该算法。新的SAEM算法在MONOLIX 3.1中针对离散混合模型实现。分析表明,对于参数估计而言,在所有研究的模型中,固定效应和方差分量的相对偏差均较低。估计和经验标准误差相似。华法林示例说明了使用MONOLIX 3.1同时分析连续数据和离散数据是多么简单和快速。 SAEM算法被扩展用于纵向分类数据的分析。它提供准确的估计参数和标准误差。该估计是快速且稳定的。

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