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Detecting hospital-acquired infections: A document classification approach using support vector machines and gradient tree boosting

机译:检测医院获得的感染:使用支持向量机和梯度树提升的文档分类方法

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Hospital-acquired infections pose a significant risk to patient health, while their surveillance is an additional workload for hospital staff. Our overall aim is to build a surveillance system that reliably detects all patient records that potentially include hospital-acquired infections. This is to reduce the burden of having the hospital staff manually check patient records. This study focuses on the application of text classification using support vector machines and gradient tree boosting to the problem. Support vector machines and gradient tree boosting have never been applied to the problem of detecting hospital-acquired infections in Swedish patient records, and according to our experiments, they lead to encouraging results. The best result is yielded by gradient tree boosting, at 93.7percent recall, 79.7percent precision and 85.7percent F1 score when using stemming. We can show that simple preprocessing techniques and parameter tuning can lead to high recall (which we aim for in screening patient records) with appropriate precision for this task.
机译:医院收购的感染对患者健康产生重大风险,而他们的监视是医院工作人员的额外工作量。我们的整体目标是建立一个监测系统,可靠地检测所有可能包括医院获得的感染的患者记录。这是为了减少手动检查病员员工的负担。本研究侧重于使用支持向量机和渐变树提升到问题的文本分类的应用。支持向量机和梯度树提升从未应用于检测瑞典患者记录中医院收养的感染的问题,并根据我们的实验,他们导致令人鼓舞的结果。最好的结果是通过梯度树提升,93.75.7次召回,79.7次精度和85.7分数使用茎。我们可以显示简单的预处理技术和参数调谐可以通过适当的精度来导致高召回(我们的目标是筛选患者记录)。

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