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Extending the methods used to screen the WHO drug safety database towards analysis of complex associations and improved accuracy for rare events.

机译:扩展了用于筛选WHO药物安全性数据库的方法,以分析复杂的关联并提高罕见事件的准确性。

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摘要

Post-marketing drug safety data sets are often massive, and entail problems with heterogeneity and selection bias. Nevertheless, quantitative methods have proven a very useful aid to help clinical experts in screening for previously unknown associations in these data sets. The WHO international drug safety database is the world's largest data set of its kind with over three million reports on suspected adverse drug reaction incidents. Since 1998, an exploratory data analysis method has been in routine use to screen for quantitative associations in this data set. This method was originally based on large sample approximations and limited to pairwise associations, but in this article we propose more accurate credibility interval estimates and extend the method to allow for the analysis of more complex quantitative associations. The accuracy of the proposed credibility intervals is evaluated through comparison to precise Monte Carlo simulations. In addition, we propose a Mantel-Haenszel-type adjustment tocontrol for suspected confounders.
机译:上市后的药物安全性数据集通常非常庞大,并且存在异质性和选择偏见的问题。然而,定量方法已被证明是非常有用的帮助,可以帮助临床专家筛选这些数据集中以前未知的关联。世卫组织国际药物安全数据库是全球同类数据库中最大的数据库,针对可疑药物不良反应事件的报告超过300万。自1998年以来,一种探索性数据分析方法已被常规用于筛选该数据集中的定量关联。该方法最初基于大样本近似值,并且仅限于成对关联,但是在本文中,我们提出了更准确的可信区间估计,并扩展了该方法以允许分析更复杂的定量关联。通过与精确的蒙特卡洛模拟进行比较,评估了建议的可信区间的准确性。另外,我们提出了Mantel-Haenszel型调整来控制可疑的混杂因素。

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