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Detection of Adverse Drug Events Detection: Data Agregation and Data Mining

机译:不良药物事件检测的检测:数据聚合和数据挖掘

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摘要

Adverse drug events (ADEs) are a public health issue. The objective of this work is to data-mine electronic health records in order to automatically identify ADEs and generate alert rules to prevent those ADEs. The first step of data-mining is to transform native and complex data into a set of binary variables that can be used as causes and effects. The second step is to identify cause-to-effect relationships using statistical methods. After mining 10,500 hospitalizations from Denmark and France, we automatically obtain 250 rales, 75 have been validated till now. The article details the data aggregation and an example of decision tree that allows finding several rules in the field of vitamin K antagonists.
机译:药品不良事件(ADEs)是公共卫生问题。这项工作的目的是对电子健康记录进行数据挖掘,以便自动识别ADE并生成警报规则以防止这些ADE。数据挖掘的第一步是将本地和复杂数据转换为一组二进制变量,这些变量可用作因果关系。第二步是使用统计方法识别因果关系。在从丹麦和法国开采了10,500例住院治疗后,我们自动获得了250个规则,到目前为止,已经验证了75个规则。本文详细介绍了数据汇总和决策树示例,该示例树可以找到维生素K拮抗剂领域的一些规则。

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