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Application of Augmented Intelligence for Pharmacovigilance Case Seriousness Determination

机译:增强智力对药物事实案件的认真决心的应用

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Introduction Identification of adverse events and determination of their seriousness ensures timely detection of potential patient safety concerns. Adverse event seriousness is a key factor in defining reporting timelines and is often performed manually by pharmacovigilance experts. The dramatic increase in the volume of safety reports necessitates exploration of scalable solutions that also meet reporting timeline requirements. Objective The aim of this study was to develop an augmented intelligence methodology for automatically identifying adverse event seriousness in spontaneous, solicited, and medical literature safety reports. Deep learning models were evaluated for accuracy and/or the F1 score against a ground truth labeled by pharmacovigilance experts. Methods Using a stratified random sample of safety reports received by Celgene, we developed three neural networks for addressing identification of adverse event seriousness: (1) a binary adverse-event level seriousness classifier; (2) a classifier for determining seriousness categorization at the adverse-event level; and (3) an annotator for identifying seriousness criteria terms to provide supporting evidence at the document level. Results The seriousness classifier achieved an accuracy of 83.0% in post-marketing reports, 92.9% in solicited reports, and 86.3% in medical literature reports. F1 scores for seriousness categorization were 77.7 for death, 78.9 for hospitalization, and 75.5 for important medical events. The seriousness annotator achieved an F1 score of 89.9 in solicited reports, and 75.2 in medical literature reports. Conclusions The results of this study indicate that a neural network approach can provide an accurate and scalable solution for potentially augmenting pharmacovigilance practitioner determination of adverse event seriousness in spontaneous, solicited, and medical literature reports.
机译:引入不良事件的识别和严重性的确定确保及时检测潜在的患者安全问题。不良事件严重是定义报告时间表的关键因素,通常由药物文理专家手动进行。安全报告数量的显着增加需要探索可扩展的解决方案,该解决方案也符合报告时间表要求。目的本研究的目的是制定增强智力方法,以自动识别自发,征求和医学文献安全报告中的不良事件严重性。评估深度学习模型的准确性和/或F1分数,反对由药物理论标记的地面真理。方法使用Celgene收到的分层随机样本的安全报告样本,我们开发了三个神经网络,用于解决不良事件严重性的识别:(1)二元不良事件水平严重分类机构; (2)用于在不利事件水平处确定严重性分类的分类器; (3)用于识别严重标准术语的注释者,以在文件层面提供支持证据。结果营销后报告中的严重性分类器达到了83.0%的准确性,征求报告中的92.9%,医学文献报告中的86.3%。 F1严重分类的分数为77.7,用于住院78.9,以及重要医疗活动的75.5。严肃的注释员在征集的报告中实现了89.9的F1得分,75.2在医学文献报告中。结论本研究的结果表明,神经网络方法可以提供准确和可扩展的解决方案,以便在自发,征求和医学文献报告中潜在地增强药种治疗者确定不良事件严重性的确定。

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