首页> 美国卫生研究院文献>AMIA Summits on Translational Science Proceedings >Integrating Electronic Health Record Data into the ADEpedia-on-OHDSI Platform for Improved Signal Detection: A Case Study of Immune-related Adverse Events
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Integrating Electronic Health Record Data into the ADEpedia-on-OHDSI Platform for Improved Signal Detection: A Case Study of Immune-related Adverse Events

机译:将电子病历数据集成到OHpedsi-on ADEpedia平台上以改善信号检测:免疫相关不良事件的案例研究

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摘要

With widespread adoption of electronic health records (EHRs), Real World Data and Real World Evidence (RWE) have been increasingly used by FDA for evaluating drug safety and effectiveness. However, integration of heterogeneous drug safety data sources and systems remains an impediment for effective pharmacovigilance studies. In an ongoing project, we have developed a next generation pharmacovigilance signal detection framework known as ADEpedia-on-OHDSI using the OMOP common data model (CDM). The objective of the study is to demonstrate the feasibility of the framework for integrating both spontaneous reporting data and EHR data for improved signal detection with a case study of immune-related adverse events. We first loaded the OMOP CDM with both recent and legacy FAERS (FDA Adverse Event Reporting System) data (from the time period between Jan. 2004 and Dec. 2018). We also integrated the clinical data from the Mayo Clinic EHR system for six oncological immunotherapy drugs. We implemented a signal detection algorithm and compared the timelines of positive signals detected from both FAERS and EHR data. We found that the signals detected from EHRs are 4 months earlier than signals detected from FAERS database (depending on the signal detection methods used) for the ipilimumab-induced hypopituitarism. Our CDM-based approach would be useful to provide a scalable solution to integrate both drug safety data and EHR data to generate RWE for improved signal detection.
机译:随着电子健康记录(EHR)的广泛采用,FDA已越来越多地使用“真实世界数据”和“真实世界证据”(RWE)来评估药物的安全性和有效性。但是,异构药物安全性数据源和系统的集成仍然是有效药物警戒性研究的障碍。在一个正在进行的项目中,我们使用OMOP通用数据模型(CDM)开发了下一代药物警戒信号检测框架,称为ADEpedia-on-OHDSI。这项研究的目的是通过免疫相关不良事件的案例研究,证明将自发报告数据和EHR数据整合以改善信号检测的框架的可行性。我们首先使用最近的和旧版的FAERS(FDA不良事件报告系统)数据(从2004年1月到2018年12月)加载了OMOP CDM。我们还整合了来自Mayo Clinic EHR系统的六种肿瘤免疫治疗药物的临床数据。我们实施了信号检测算法,并比较了从FAERS和EHR数据中检测到的阳性信号的时间轴。我们发现,对于依普利单抗引起的垂体机能减退,从EHRs检测到的信号比从FAERS数据库检测到的信号早4个月(取决于所用的信号检测方法)。我们基于CDM的方法将有助于提供可扩展的解决方案,以整合药物安全性数据和EHR数据以生成RWE以改善信号检测。

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