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首页> 外文期刊>Statistics in medicine >Bayesian pharmacovigilance signal detection methods revisited in a multiple comparison setting.
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Bayesian pharmacovigilance signal detection methods revisited in a multiple comparison setting.

机译:在多重比较设置中重新探讨了贝叶斯药物警戒信号检测方法。

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Pharmacovigilance spontaneous reporting systems are primarily devoted to early detection of the adverse reactions of marketed drugs. They maintain large spontaneous reporting databases (SRD) for which several automatic signalling methods have been developed. A common limitation of these methods lies in the fact that they do not provide an auto-evaluation of the generated signals so that thresholds of alerts are arbitrarily chosen. In this paper, we propose to revisit the Gamma Poisson Shrinkage (GPS) model and the Bayesian Confidence Propagation Neural Network (BCPNN) model in the Bayesian general decision framework. This results in a new signal ranking procedure based on the posterior probability of null hypothesis of interest and makes it possible to derive with a non-mixture modelling approach Bayesian estimators of the false discovery rate (FDR), false negative rate, sensitivity and specificity. An original data generation process that can be suited to the features of the SRD under scrutiny is proposed and applied to the French SRD to perform a large simulation study. Results indicate better performances according to the FDR for the proposed ranking procedure in comparison with the current ones for the GPS model. They also reveal identical performances according to the four operating characteristics for the proposed ranking procedure with the BCPNN and GPS models but better estimates when using the GPS model. Finally, the proposed procedure is applied to the French data.
机译:药物警戒自发报告系统主要致力于早期发现市售药物的不良反应。他们维护着大型的自发报告数据库(SRD),为此已经开发了几种自动信令方法。这些方法的共同局限性在于它们不能提供所生成信号的自动评估,因此可以任意选择警报阈值。在本文中,我们建议在贝叶斯通用决策框架中重新研究Gamma泊松收缩(GPS)模型和贝叶斯置信传播神经网络(BCPNN)模型。这导致了基于感兴趣的零假设的后验概率的新信号排名程序,并使得可以使用非混合建模方法得出错误发现率(FDR),错误否定率,敏感性和特异性的贝叶斯估计量。提出了一种适用于SRD的经过审查的原始数据生成过程,并将其应用于法国SRD进行大型仿真研究。结果表明,与当前的GPS模型相比,根据FDR对拟议的排名程序的性能更好。对于BCPNN和GPS模型,他们还根据建议的排名程序的四个操作特性显示了相同的性能,但使用GPS模型时,它们的估算效果更好。最后,将建议的过程应用于法国数据。

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