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Approaches for modeling within subject variability in pharmacometric count data analysis: dynamic inter-occasion variability and stochastic differential equations

机译:在药房计数数据分析中的受试者变异性内建模的方法:动态场合间变异性和随机微分方程

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摘要

Parameter variation in pharmacometric analysis studies can be characterized as within subject parameter variability (WSV) in pharmacometric models. WSV has previously been successfully modeled using inter-occasion variability (IOV), but also stochastic differential equations (SDEs). In this study, two approaches, dynamic inter-occasion variability (dIOV) and adapted stochastic differential equations, were proposed to investigate WSV in pharmacometric count data analysis. These approaches were applied to published count models for seizure counts and Likert pain scores. Both approaches improved the model fits significantly. In addition, stochastic simulation and estimation were used to explore further the capability of the two approaches to diagnose and improve models where existing WSV is not recognized. The results of simulations confirmed the gain in introducing WSV as dIOV and SDEs when parameters vary randomly over time. Further, the approaches were also informative as diagnostics of model misspecification, when parameters changed systematically over time but this was not recognized in the structural model. The proposed approaches in this study offer strategies to characterize WSV and are not restricted to count data.
机译:可以将药理学分析研究中的参数变化特征化为药理学模型中的受试者参数变异性(WSV)。先前已经使用场合间变异性(IOV)和随机微分方程(SDE)成功地对WSV进行了建模。在这项研究中,提出了两种方法,即动态每次使用间变异性(dIOV)和自适应随机微分方程,以研究药敏计数数据分析中的WSV。这些方法已应用于癫痫发作计数和李克特疼痛评分的公开计数模型。两种方法都显着改善了模型拟合。另外,随机模拟和估计被用来进一步探索这两种方法的能力,以诊断和改进无法识别现有WSV的模型。仿真结果证实了当参数随时间随机变化时,将WSV引入dIOV和SDE的好处。此外,当参数随时间而系统地更改但在结构模型中未识别出时,这些方法也可作为模型不正确的诊断方法。本研究中提出的方法提供了表征WSV的策略,并且不限于对数据进行计数。

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