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Building a Knowledge Base of Severe Adverse Drug Events Based on AERS Reporting Data Using Semantic Web Technologies

机译:基于AARS报告数据使用语义Web技术构建严重不良药物事件的知识库

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A semantically coded knowledge base of adverse drug events (ADEs) with severity information is critical for clinical decision support systems and translational research applications. However it remains challenging to measure and identify the severity information of ADEs. The objective of the study is to develop and evaluate a semantic web based approach for building a knowledge base of severe ADEs based on the FDA Adverse Event Reporting System (AERS) reporting data. We utilized a normalized AERS reporting dataset and extracted putative drug-ADE pairs and their associated outcome codes in the domain of cardiac disorders. We validated the drug-ADE associations using ADE datasets from SIDe Effect Resource (SIDER) and the UMLS. We leveraged the Common Terminology Criteria for Adverse Event (CTCAE) grading system and classified the ADEs into the CTCAE in the Web Ontology Language (OWL). We identified and validated 2,444 unique Drug-ADE pairs in the domain of cardiac disorders, of which 760 pairs are in Grade 5, 775 pairs in Grade 4 and 2,196 pairs in Grade 3.
机译:具有严重性信息的语义编码的不良药物事件(ADES)的知识库对于临床决策支持系统和翻译研究应用至关重要。然而,衡量和识别ades的严重性信息仍然有挑战性。该研究的目的是通过基于FDA不良事件报告系统(AERS)报告数据,开发和评估基于语义的基于Web的基于Web的方法,用于构建严重广告的知识库。我们利用归一化的AARS报告数据集和提取的药物 - ade对及其在心脏病结构域中的药物ade对及其相关的结果代码。我们使用来自副作用资源(Sider)和UMLS的ADE数据集进行了验证了药物 - ADE关联。我们利用普通事件(CTCAE)分级系统的常见术语标准,并将ades分为Web本体语言(OWL)中的CTCAE。我们在心脏病域中鉴定并验证了2,444个独特的药物 - ade对,其中760对在4级和3级,2,196对中的775对。

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