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使用带有詹姆斯-斯坦因型收缩估计的贝叶斯逻辑回归挖掘药物警戒数据。

Mining pharmacovigilance data using Bayesian logistic regression with James-Stein type shrinkage estimation.

作者信息

An Lihua, Fung Karen Y, Krewski Daniel

机构信息

McLaughlin Centre for Population Health Risk Assessment, University of Ottawa, Ottawa, Ontario, Canada.

出版信息

J Biopharm Stat. 2010 Sep;20(5):998-1012. doi: 10.1080/10543401003619056.

Abstract

Spontaneous adverse event reporting systems are widely used to identify adverse reactions to drugs following their introduction into the marketplace. In this article, a James-Stein type shrinkage estimation strategy was developed in a Bayesian logistic regression model to analyze pharmacovigilance data. This method is effective in detecting signals as it combines information and borrows strength across medically related adverse events. Computer simulation demonstrated that the shrinkage estimator is uniformly better than the maximum likelihood estimator in terms of mean squared error. This method was used to investigate the possible association of a series of diabetic drugs and the risk of cardiovascular events using data from the Canada Vigilance Online Database.

摘要

自发不良事件报告系统被广泛用于识别药物进入市场后的不良反应。在本文中,在贝叶斯逻辑回归模型中开发了一种詹姆斯 - 斯坦因型收缩估计策略来分析药物警戒数据。该方法在检测信号方面很有效,因为它结合了信息并在医学相关不良事件之间借用了优势。计算机模拟表明,在均方误差方面,收缩估计器始终优于最大似然估计器。使用来自加拿大在线警戒数据库的数据,该方法被用于研究一系列糖尿病药物与心血管事件风险之间的可能关联。

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