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A Framework of Rebalancing Imbalanced Healthcare Data for Rare Events Classification: A Case of Look-Alike Sound-Alike Mix-Up Incident Detection

机译:重新平衡罕见事件分类的不平衡医疗数据的框架:以相似声音相似混合事件检测为例

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摘要

Identifying rare but significant healthcare events in massive unstructured datasets has become a common task in healthcare data analytics. However, imbalanced class distribution in many practical datasets greatly hampers the detection of rare events, as most classification methods implicitly assume an equal occurrence of classes and are designed to maximize the overall classification accuracy. In this study, we develop a framework for learning healthcare data with imbalanced distribution via incorporating different rebalancing strategies. The evaluation results showed that the developed framework can significantly improve the detection accuracy of medical incidents due to look-alike sound-alike (LASA) mix-ups. Specifically, logistic regression combined with the synthetic minority oversampling technique (SMOTE) produces the best detection results, with a significant 45.3% increase in recall (recall = 75.7%) compared with pure logistic regression (recall = 52.1%).
机译:在庞大的非结构化数据集中识别罕见但重要的医疗事件已成为医疗数据分析中的常见任务。但是,由于大多数分类方法隐含地假定类的出现次数相等,并且旨在最大程度地提高总体分类精度,因此许多实际数据集中类分布的不平衡极大地阻碍了稀有事件的检测。在这项研究中,我们开发了一个框架,通过结合不同的重新平衡策略来学习分布不平衡的医疗数据。评估结果表明,由于外观相似声音(LASA)的混合,开发的框架可以显着提高医疗事故的检测准确性。具体而言,逻辑回归与合成少数族群过采样技术(SMOTE)结合可产生最佳检测结果,与纯逻辑回归(召回= 52.1%)相比,召回率(召回率= 75.7%)显着增加45.3%。

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