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Detecting and Filtering Immune-Related Adverse Events Signal Based on Text Mining and Observational Health Data Sciences and Informatics Common Data Model: Framework Development Study

机译:基于文本挖掘和观察卫生数据科学和信息学的检测和过滤免疫相关不良事件信号常见数据模型:框架开发研究

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Background Immune checkpoint inhibitors are associated with unique immune-related adverse events (irAEs). As most of the immune checkpoint inhibitors are new to the market, it is important to conduct studies using real-world data sources to investigate their safety profiles. Objective The aim of the study was to develop a framework for signal detection and filtration of novel irAEs for 6 Food and Drug Administration–approved immune checkpoint inhibitors. Methods In our framework, we first used the Food and Drug Administration’s Adverse Event Reporting System (FAERS) standardized in an Observational Health Data Sciences and Informatics (OHDSI) common data model (CDM) to collect immune checkpoint inhibitor-related event data and conducted irAE signal detection. OHDSI CDM is a standard-driven data model that focuses on transforming different databases into a common format and standardizing medical terms to a common representation. We then filtered those already known irAEs from drug labels and literature by using a customized text-mining pipeline based on clinical text analysis and knowledge extraction system with Medical Dictionary for Regulatory Activities (MedDRA) as a dictionary. Finally, we classified the irAE detection results into three different categories to discover potentially new irAE signals. Results By our text-mining pipeline, 490 irAE terms were identified from drug labels, and 918 terms were identified from the literature. In addition, of the 94 positive signals detected using CDM-based FAERS, 53 signals (56%) were labeled signals, 10 (11%) were unlabeled published signals, and 31 (33%) were potentially new signals. Conclusions We demonstrated that our approach is effective for irAE signal detection and filtration. Moreover, our CDM-based framework could facilitate adverse drug events detection and filtration toward the goal of next-generation pharmacovigilance that seamlessly integrates electronic health record data for improved signal detection.
机译:背景,免疫检查点抑制剂与独特的免疫相关不良事件(IRAE)有关。由于大多数免疫检查点抑制剂对市场来说是新的,因此必须使用现实世界数据来源进行研究来调查其安全概况。目的是该研究的目的是制定信号检测和过滤6种食物和药物管理批准的免疫检查点抑制剂的信号检测和过滤的框架。在我们的框架中,我们首先使用了食品和药物管理局的不良事件报告系统(陈),标准化在观察卫生数据科学和信息学(OHDSI)共同数据模型(CDM)中,以收集免疫检查点抑制剂相关的事件数据并进行IRAE信号检测。 OHDSI CDM是一个标准驱动的数据模型,侧重于将不同的数据库转换为常见的格式和标准化医学术语,以常见的表示。然后,我们通过根据临床文本分析和知识提取系统使用定制的文本挖掘管道从药物标签和文献中过滤了那些已知的IRAES,作为临床文本分析和具有医学词典的监管活动(MEDDRA)作为字典。最后,我们将IRAE检测结果分为三种不同的类别,以发现可能的新IRAE信号。通过我们的文本挖掘管道的结果,从药物标签中鉴定了490个IRAE术语,并从文献中鉴定了918个术语。另外,在使用基于CDM的派生体检测到的94个阳性信号中,标记信号的53个信号(56%)标记信号,10(11%)未标记出版的信号,31个(33%)是可能的新信号。结论我们证明我们的方法对于IRAE信号检测和过滤是有效的。此外,我们的CDM的框架可以促进不良药物事件检测和过滤朝着下一代药物检测的目标,这些药物无缝地集成了电子健康记录数据的改进的信号检测。

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