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首页> 外文期刊>Biostatistics >Bayesian inference for network meta-regression using multivariate random effects with applications to cholesterol lowering drugs
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Bayesian inference for network meta-regression using multivariate random effects with applications to cholesterol lowering drugs

机译:使用多元随机效应与应用到胆固醇降低药物的多变量随机效应的贝叶斯推断

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摘要

Low-density lipoprotein cholesterol (LDL-C) has been identified as a causative factor for atherosclerosis and related coronary heart disease, and as the main target for cholesterol- and lipid-lowering therapy. Statin drugs inhibit cholesterol synthesis in the liver and are typically the first line of therapy to lower elevated levels of LDL-C. On the other hand, a different drug, Ezetimibe, inhibits the absorption of cholesterol by the small intestine and provides a different mechanism of action. Many clinical trials have been carried out on safety and efficacy evaluation of cholesterol lowering drugs. To synthesize the results from different clinical trials, we examine treatment level (aggregate) network meta-data from 29 double-blind, randomized, active, or placebo-controlled statins +/- Ezetimibe clinical trials on adult treatment-naive patients with primary hypercholesterolemia. In this article, we propose a new approach to carry out Bayesian inference for arm-based network meta-regression. Specifically, we develop a new strategy of grouping the variances of random effects, in which we first formulate possible sets of the groups of the treatments based on their clinical mechanisms of action and then use Bayesian model comparison criteria to select the best set of groups. The proposed approach is especially useful when some treatment arms are involved in only a single trial. In addition, a Markov chain Monte Carlo sampling algorithm is developed to carry out the posterior computations. In particular, the correlation matrix is generated from its full conditional distribution via partial correlations. The proposed methodology is further applied to analyze the network meta-data from 29 trials with 11 treatment arms.
机译:低密度脂蛋白胆固醇(LDL-C)已被鉴定为动脉粥样硬化和相关冠心病的致病因素,以及作为胆固醇和脂质降低治疗的主要靶标。他汀类药物抑制肝脏中的胆固醇合成,通常是较低的LDL-C水平的第一线疗法。另一方面,不同的药物ezetimibe通过小肠抑制胆固醇的吸收,并提供不同的作用机制。已经对降低药物的胆固醇的安全性和疗效评估进行了许多临床试验。为了综合不同临床试验的结果,我们研究了来自29例双盲,随机,活性或安慰剂对照毒素+/- ezetimibe临床试验的治疗水平(骨料)网络Meta-Data ant-Eqetimibe临床试验,临床试验在成人治疗 - 天真的原发性高胆固醇血症患者。在本文中,我们提出了一种新的方法来开展基于ARM的网络元回归的贝叶斯推断。具体而言,我们开发了一种对随机效应差异进行分组的新策略,在其中我们首先根据其临床作用机制制定可能的群体组,然后使用贝叶斯模型比较标准来选择最佳组组。当一些治疗臂仅参与单一试验时,所提出的方法特别有用。此外,开发了Markov链蒙特卡罗采样算法以执行后部计算。特别地,通过部分相关性从其完全条件分布生成相关矩阵。所提出的方法进一步应用于分析来自29个治疗臂的29个试验的网络元数据。

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