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非线性混合效应模型作为一种因果推断方法,用于预测在受试者内剂量滴定方案下的暴露情况。

Nonlinear mixed-effects modeling as a method for causal inference to predict exposures under desired within-subject dose titration schemes.

作者信息

Bartels Christian, Scauda Martina, Coello Neva, Dumortier Thomas, Bornkamp Björn, Moffa Giusi

机构信息

Novartis Pharma AG, Basel, Switzerland.

Department of Mathematics and Computer Science, University of Basel, Basel, Switzerland.

出版信息

CPT Pharmacometrics Syst Pharmacol. 2025 Jan;14(1):68-81. doi: 10.1002/psp4.13239. Epub 2024 Oct 24.

Abstract

The ICH E9 (R1) guidance and the related estimand framework propose to clearly define and separate the clinical question of interest formulated as estimand from the estimation method. With that it becomes important to assess the validity of the estimation method and the assumptions that must be made. When going beyond the intention to treat analyses that can rely on randomization, causal inference is usually used to discuss the validity of estimation methods for the estimand of interest. In pharmacometrics, mixed-effects models are routinely used to analyze longitudinal clinical trial data; however, they are rarely discussed as a method for causal inference. Here, we evaluate nonlinear mixed-effects modeling and simulation (NLME M&S) in the context of causal inference as a standardization method for longitudinal data in the presence of confounders. Standardization is a well-known method in causal inference to correct for confounding by analyzing and combining results from subgroups of patients. We show that nonlinear mixed-effects modeling is a particular implementation of standardization that conditions on individual parameters described by the random effects of the mixed-effects model. As an example, we use a simulated clinical trial with within-subject dose titration. Being interested in the outcome of the hypothetical situation that patients adhere to the planned treatment schedule, we put assumptions in a causal diagram. From the causal diagram, conditional independence assumptions are derived either by conditioning on the individual parameters or on earlier outcomes. With both conditional independencies unbiased estimates can be obtained.

摘要

国际人用药品注册技术协调会E9(R1)指南及相关估计量框架建议将作为估计量表述的感兴趣的临床问题与估计方法明确界定并区分开来。因此,评估估计方法及必须做出的假设的有效性就变得很重要。当超出可依赖随机化的意向性分析范畴时,通常会采用因果推断来讨论针对感兴趣的估计量的估计方法的有效性。在药物计量学中,混合效应模型常被用于分析纵向临床试验数据;然而,它们作为一种因果推断方法却很少被讨论。在此,我们在因果推断的背景下评估非线性混合效应建模与模拟(NLME M&S),将其作为存在混杂因素时纵向数据的一种标准化方法。标准化是因果推断中一种众所周知的方法,通过分析和合并患者亚组的结果来校正混杂因素。我们表明,非线性混合效应建模是标准化的一种特殊实现方式,它以混合效应模型随机效应所描述的个体参数为条件。作为一个例子,我们使用一个具有受试者内剂量滴定的模拟临床试验。由于我们感兴趣的是患者遵循计划治疗方案这一假设情况的结果,我们在因果图中设定假设。从因果图中,通过以个体参数或早期结果为条件可以推导出条件独立性假设。利用这两种条件独立性,均可获得无偏估计。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1dc9/11706430/3dade800c095/PSP4-14-68-g003.jpg

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