基于关联规则学习的Stevens-Johnson综合征药物并发症信号检测

Yuko Shirakuni, Kousuke Okamoto, N. Kawashita, T. Yasunaga, T. Takagi
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引用次数: 7

摘要

当一个病人同时服用两种或两种以上的药物时,药物引起的不良反应是复杂的。我们选择了史蒂文斯-约翰逊综合征(SJS)作为研究对象,这是皮肤严重的表现之一。数据源是由美国食品和药物管理局(FDA)构建的数据库。FDA的上市后安全监测项目由不良事件报告系统(AERS)支持。AERS采用计算机信息库设计。为了分析并发用药与SJS之间的关系,我们采用了关联规则学习的方法。我们的目的是提出一种有效的程序,能够检测与不良事件相关的药物信号,而无需假设特定药物的参与。我们定义了新的值K来评估现有的信号检测。根据准则K值对关联规则进行评价。因此,建议通过联合使用两种药物来获得强信号。本研究的关联规则学习适用于不良事件与药物对的关系分析。
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Signal Detection of Drug Complications Applying Association Rule Learning for Stevens-Johnson Syndrome
The adverse events induced by drugs have been complicated, when two or more drugs are administrated for a patient. We selected "Stevens-Johnson Syndrome (SJS) " as a research object, which is one of the severe skin manifestations. The data source is a database constructed by the Food and Drug Administration (FDA). FDA's post-marketing safety surveillance program is supported by the Adverse Event Reporting System (AERS). AERS is designed with a computerized information database. To analyze the relationships between the concurrent medication and SJS in this study, we applied association rule learning. Our purpose is to propose an efficient procedure that enables the detection of signals for drugs related to an adverse event, without assuming the involvement of a specific drug. We defined new value K for the evaluation of existing signal detection. Association rule was evaluated according to criterion K value. As a result, it was suggested to obtain a strong signal by combining two concomitant drugs. Association rule learning in this study was applicable for the analysis of the relationships between adverse events and pairs of drugs.
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Journal of Computer Aided Chemistry
Journal of Computer Aided Chemistry CHEMISTRY, MULTIDISCIPLINARY-
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