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基于模型的组合汇总和个体患者数据分析的线性化方法。

A linearization approach for the model-based analysis of combined aggregate and individual patient data.

机构信息

Pharmacometrics, Primary Care Business Unit, Pfizer Inc, Eastern Point Road, Groton, CT 06340, U.S.A.

出版信息

Stat Med. 2014 Apr 30;33(9):1460-76. doi: 10.1002/sim.6045. Epub 2014 Feb 2.

Abstract

The application of model-based meta-analysis in drug development has gained prominence recently, particularly for characterizing dose-response relationships and quantifying treatment effect sizes of competitor drugs. The models are typically nonlinear in nature and involve covariates to explain the heterogeneity in summary-level literature (or aggregate data (AD)). Inferring individual patient-level relationships from these nonlinear meta-analysis models leads to aggregation bias. Individual patient-level data (IPD) are indeed required to characterize patient-level relationships but too often this information is limited. Since combined analyses of AD and IPD allow advantage of the information they share to be taken, the models developed for AD must be derived from IPD models; in the case of linear models, the solution is a closed form, while for nonlinear models, closed form solutions do not exist. Here, we propose a linearization method based on a second order Taylor series approximation for fitting models to AD alone or combined AD and IPD. The application of this method is illustrated by an analysis of a continuous landmark endpoint, i.e., change from baseline in HbA1c at week 12, from 18 clinical trials evaluating the effects of DPP-4 inhibitors on hyperglycemia in diabetic patients. The performance of this method is demonstrated by a simulation study where the effects of varying the degree of nonlinearity and of heterogeneity in covariates (as assessed by the ratio of between-trial to within-trial variability) were studied. A dose-response relationship using an Emax model with linear and nonlinear effects of covariates on the emax parameter was used to simulate data. The simulation results showed that when an IPD model is simply used for modeling AD, the bias in the emax parameter estimate increased noticeably with an increasing degree of nonlinearity in the model, with respect to covariates. When using an appropriately derived AD model, the linearization method adequately corrected for bias. It was also noted that the bias in the model parameter estimates decreased as the ratio of between-trial to within-trial variability in covariate distribution increased. Taken together, the proposed linearization approach allows addressing the issue of aggregation bias in the particular case of nonlinear models of aggregate data.

摘要

基于模型的荟萃分析在药物开发中的应用最近受到了关注,特别是在描述剂量-反应关系和量化竞争药物的治疗效果大小方面。这些模型通常具有非线性的性质,并涉及协变量来解释汇总文献(或汇总数据(AD))中的异质性。从这些非线性荟萃分析模型推断个体患者水平的关系会导致聚合偏差。确实需要个体患者水平的数据(IPD)来描述患者水平的关系,但这种信息往往有限。由于联合分析 AD 和 IPD 可以利用它们共享的信息,因此为 AD 开发的模型必须从 IPD 模型中得出;在线性模型的情况下,解决方案是封闭形式的,而对于非线性模型,不存在封闭形式的解决方案。在这里,我们提出了一种基于二阶泰勒级数逼近的线性化方法,用于拟合仅 AD 或 AD 和 IPD 联合的模型。通过对 18 项临床试验的连续标志终点(即 12 周时 HbA1c 从基线的变化)的分析,说明了该方法的应用,这些试验评估了 DPP-4 抑制剂对糖尿病患者高血糖的影响。通过模拟研究证明了该方法的性能,其中研究了不同程度的非线性和协变量的异质性(通过试验间变异性与试验内变异性的比值来评估)对效应的影响。使用具有线性和非线性协变量对 emax 参数的影响的 Emax 模型的剂量-反应关系来模拟数据。模拟结果表明,当仅使用 IPD 模型对 AD 进行建模时,模型中协变量的非线性程度增加,emax 参数估计的偏差明显增加。当使用适当推导的 AD 模型时,线性化方法可以充分纠正偏差。还注意到,当协变量分布的试验间变异性与试验内变异性之比增加时,模型参数估计的偏差减小。总的来说,所提出的线性化方法允许在特定的汇总数据非线性模型情况下解决聚合偏差问题。

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