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Cohort Amplification: An Associative Classification Framework for Identification of Disease Cohorts in the Electronic Health Record

机译:队列放大:用于在电子健康记录中识别疾病队列的关联分类框架

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摘要

With the growing national dissemination of the electronic health record (EHR), there are expectations that algorithms to identify disease-based cohorts for health services research will be deployable across health care organizations. Toward that goal, a novel associative classification framework was designed to generate prediction rules to identify cases similar to the exemplar cases on which it was trained. It processes exemplars for any medical condition without modification. The framework is distinguished by core candidate data attributes based on common EHR observation categories, application of associative classification methods to cull disease-specific attributes and predictive rules from the core attributes, and support for attribute concept hierarchies to manage the various layers of granularity in native EHR data. The framework processes and an evaluation of prediction rules generated to identify diabetes mellitus are presented.
机译:随着电子病历(EHR)在全国范围内的传播日益增长,人们期望用于识别基于疾病的健康服务研究队列的算法将可在整个卫生保健组织中部署。为了实现该目标,设计了一种新颖的关联分类框架,以生成预测规则,以识别与训练示例案例相似的案例。它无需修改即可处理任何医疗条件的示例。该框架的区别在于:基于常见EHR观察类别的核心候选数据属性,应用关联分类方法从核心属性中剔除疾病特定属性和预测规则,以及支持属性概念层次结构来管理本机中的各个粒度层EHR数据。介绍了框架过程和对识别糖尿病的预测规则的评估。

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