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Meta-analysis methods and models with applications in evaluation of cholesterol-lowering drugs

机译:荟萃分析方法和模型在降低胆固醇药物评估中的应用

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In this paper, we propose a class of multivariate random effects models allowing for the inclusion of study-level covariates to carry out meta-analyses. As existing algorithms for computing maximum likelihood estimates often converge poorly or may not converge at all when the random effects are multi-dimensional, we develop an efficient expectation-maximization algorithm for fitting multi-dimensional random effects regression models. In addition, we also develop a new methodology for carrying out variable selection with study-level covariates. We examine the performance of the proposed methodology via a simulation study. We apply the proposed methodology to analyze metadata from 26 studies involving statins as a monotherapy and in combination with ezetimibe. In particular, we compare the low-density lipoprotein cholesterol-lowering efficacy of monotherapy and combination therapy on two patient populations (na?ve and non-na?ve patients to statin monotherapy at baseline), controlling for aggregate covariates. The proposed methodology is quite general and can be applied in any meta-analysis setting for a wide range of scientific applications and therefore offers new analytic methods of clinical importance.
机译:在本文中,我们提出了一类多元随机效应模型,允许纳入研究水平的协变量来进行荟萃分析。由于当随机效应是多维时,用于计算最大似然估计的现有算法通常收敛性很差或根本不收敛,因此,我们开发了一种高效的期望最大化算法来拟合多维随机效应回归模型。此外,我们还开发了一种使用研究水平协变量进行变量选择的新方法。我们通过仿真研究来检验所提出方法的性能。我们应用提出的方法来分析来自26项涉及他汀类药物作为单一疗法并与依折麦布联合的研究的元数据。特别是,我们比较了在两个患者人群(基线时为初学者和非初次服用他汀类药物的患者)中单一疗法和联合疗法的低密度脂蛋白胆固醇降低效果,以控制总协变量。所提出的方法相当通用,可以在任何荟萃分析中用于广泛的科学应用,因此提供了具有临床重要性的新分析方法。

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