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Healthcare Data Mining: Predicting Hospital Length of Stay (PHLOS)

机译:医疗保健数据挖掘:预测医院住院时间(PHLOS)

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摘要

A model to predict the Length of Stay (LOS) for hospitalized patients can be an effective tool for measuring the consumption of hospital resources. Such a model will enable early interventions to prevent complications and prolonged LOS and also enable more efficient utilization of manpower and facilities in hospitals. In this paper, the authors propose an approach for Predicting Hospital Length of Stay (PHLOS) using a multi-tiered data mining approach. In their aproach, the authors form training sets, using groups of similar claims identified by k-means clustering and perfom classification using ten different classifiers. The authors provide a combined measure of performance to statistically evaluate and rank the classifiers for different levels of clustering. They consistently found that using clustering as a precursor to form the training set gives better prediction results as compared to non-clustering based training sets. The authors have also found the accuracies to be consistently higher than some reported in the current literature for predicting individual patient LOS. Binning the LOS to three groups of short, medium and long stays, their method identifies patients who need aggressive or moderate early interventions to prevent prolonged stays. The classification techniques used in this study are interpretable, enabling them to examine the details of the classification rules learned from the data. As a result, this study provides insight into the underlying factors that influence hospital length of stay. They also examine the authors 'prediction results for three randomly selected conditions with domain expert insights.
机译:预测住院患者住院时间(LOS)的模型可以成为衡量医院资源消耗的有效工具。这种模型将有助于早期干预,以防止并发症和长期服务水平下降,并使医院的人力和设施得到更有效的利用。在本文中,作者提出了一种使用多层数据挖掘方法来预测医院住院时间(PHLOS)的方法。在他们的方法中,作者使用通过k均值聚类和使用十种不同分类器进行的perfom分类所标识的相似声明组,来形成训练集。作者提供了一种综合的性能指标,可以对聚类的不同级别进行统计评估和分类。他们一致地发现,与基于非聚类的训练集相比,使用聚类作为前身来形成训练集可提供更好的预测结果。作者还发现准确度始终高于当前文献中预测个别患者LOS的准确度。将LOS分为短期,中期和长期住院三组,他们的方法可确定需要积极或中度的早期干预以防止长期住院的患者。本研究中使用的分类技术是可以解释的,使他们能够检查从数据中学到的分类规则的细节。结果,本研究提供了影响医院住院时间的潜在因素的见解。他们还利用领域专家的见解检查了作者针对三种随机选择条件的预测结果。

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