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Development of visual predictive checks accounting for multimodal parameter distributions in mixture models

机译:视觉预测检查的发展解决了混合模型中的多峰参数分布问题

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摘要

The assumption of interindividual variability being unimodally distributed in nonlinear mixed effects models does not hold when the population under study displays multimodal parameter distributions. Mixture models allow the identification of parameters characteristic to a subpopulation by describing these multimodalities. Visual predictive check (VPC) is a standard simulation based diagnostic tool, but not yet adapted to account for multimodal parameter distributions. Mixture model analysis provides the probability for an individual to belong to a subpopulation (IPmix) and the most likely subpopulation for an individual to belong to (MIXEST). Using simulated data examples, two implementation strategies were followed to split the data into subpopulations for the development of mixture model specific VPCs. The first strategy splits the observed and simulated data according to the MIXEST assignment. A shortcoming of the MIXEST-based allocation strategy was a biased allocation towards the dominating subpopulation. This shortcoming was avoided by splitting observed and simulated data according to the IPmix assignment. For illustration purpose, the approaches were also applied to an irinotecan mixture model demonstrating 36% lower clearance of irinotecan metabolite (SN-38) in individuals with UGT1A1 homo/heterozygote versus wild-type genotype. VPCs with segregated subpopulations were helpful in identifying model misspecifications which were not evident with standard VPCs. The new tool provides an enhanced power of evaluation of mixture models.Electronic supplementary materialThe online version of this article (10.1007/s10928-019-09632-9) contains supplementary material, which is available to authorized users.
机译:当所研究的种群显示多峰参数分布时,非线性混合效应模型中个体间变异性是单峰分布的假设不成立。混合物模型通过描述这些多模态,可以识别亚种群特征参数。视觉预测检查(VPC)是基于标准模拟的诊断工具,但尚未适应多模态参数分布的需要。混合物模型分析提供了一个人属于一个亚人群(IPmix)的可能性以及一个人最可能属于一个亚人群(MIXEST)的可能性。使用模拟数据示例,遵循了两种实施策略,将数据分为亚群,以开发特定于混合物模型的VPC。第一种策略根据MIXEST分配拆分观察和模拟的数据。基于MIXEST的分配策略的一个缺点是偏向主要子群体的分配。通过根据IPmix分配拆分观察到的数据和模拟数据可以避免此缺点。为了说明的目的,该方法还应用于伊立替康混合物模型,该模型表明具有UGT1A1同型/杂合子与野生型基因型的个体中,伊立替康代谢物(SN-38)的清除率降低了36%。具有分离的亚群的VPC有助于识别模型错误规格,而标准VPC则不明显。新工具提供了增强的混合模型评估功能。电子补充材料本文的在线版本(10.1007 / s10928-019-09632-9)包含补充材料,授权用户可以使用。

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