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首页> 外文期刊>Mathematical Biosciences: An International Journal >Population modelling of patient responses in antidepressant studies: A stochastic approach
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Population modelling of patient responses in antidepressant studies: A stochastic approach

机译:抗抑郁研究中患者反应的总体模型:一种随机方法

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This paper addresses the problem of modelling longitudinal data describing patients' responses in clinical trials. In particular, a systematic approach relying on a system theoretic paradigm is proposed to deal with contexts where limited physiopathological knowledge is available on disease, drug response, and patients' characteristics. The model relies on the notion of patient's health state which summarizes the patient's condition. In order to cope with the limited number of clinical data usually available, the paper considers a very parsimonious realization where the two state variables are the clinical endpoint and its derivative. Within a population framework, the individual response is modelled as the sum of an individual shift and the average response of subjects belonging to the same study, both described as Markovian processes and identified by empirical Bayes techniques. The proposed approach is validated with experimental data from a Phase II, flexible-dose, depression trial. The dose changes due to the flexible-dose scheme are handled as perturbations on the state. The connection between inter-individual variability and model stability is evaluated showing that the introduction of stable poles helps to describe populations whose range of individual responses does not diverge with time. In this way, good individual fittings and visual predictive checks were obtained for the clinical data. The proposed analysis provides a systematic approach to semi-mechanistic modelling when a precise knowledge of the physiological mechanisms of the disease is incomplete or missing. (C) 2014 Elsevier Inc. All rights reserved.
机译:本文解决了对描述临床试验中患者反应的纵向数据建模的问题。特别是,提出了一种基于系统理论范式的系统方法来应对在疾病,药物反应和患者特征方面可获得的有限病理生理学知识的情况。该模型依赖于患者健康状况的概念,该概念概括了患者的状况。为了应对通常可用的有限数量的临床数据,本文考虑了非常简约的实现,其中两个状态变量是临床终点及其派生词。在总体框架内,将个体反应建模为属于同一研究的个体转移和平均反应的总和,二者均描述为马尔可夫过程,并通过经验贝叶斯技术进行识别。这项提议的方法已通过II期灵活剂量抑郁试验的实验数据进行了验证。由于灵活剂量方案而引起的剂量变化被视为对状态的扰动。个体间变异性与模型稳定性之间的联系得到了评估,表明稳定极点的引入有助于描述个体响应范围不随时间变化的人群。以这种方式,获得了良好的个体拟合和视觉预测检查的临床数据。当对疾病的生理机制的精确知识不完整或缺失时,所提出的分析为半机械建模提供了一种系统的方法。 (C)2014 Elsevier Inc.保留所有权利。

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