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New Insights in Computational Methods for Pharmacovigilance: E-Synthesis , a Bayesian Framework for Causal Assessment

机译:药物警戒性计算方法的新见解:电子合成,贝叶斯因果评估框架

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摘要

Today’s surge of big data coming from multiple sources is raising the stakes that pharmacovigilance has to win, making evidence synthesis a more and more robust approach in the field. In this scenario, many scholars believe that new computational methods derived from data mining will effectively enhance the detection of early warning signals for adverse drug reactions, solving the gauntlets that post-marketing surveillance requires. This article highlights the need for a philosophical approach in order to fully realize a pharmacovigilance 2.0 revolution. A state of the art on evidence synthesis is presented, followed by the illustration of E-Synthesis , a Bayesian framework for causal assessment. Computational results regarding dose-response evidence are shown at the end of this article.
机译:如今,来自多个来源的大数据激增,药物警戒必胜之举,使证据合成成为该领域越来越强大的方法。在这种情况下,许多学者认为,从数据挖掘中获得的新的计算方法将有效地增强对药物不良反应的预警信号的检测,从而解决上市后监督所需要的挑战。本文强调了一种哲学方法的必要性,以全面实现药物警戒2.0革命。提出了关于证据综合的最新技术,然后说明了E-Synthesis(贝叶斯因果评估框架)。有关剂量反应证据的计算结果在本文末尾显示。

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