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Operationally-Informed Hospital-Wide Discharge Prediction Using Machine Learning

机译:使用机器学习可操作地通知的医院放电预测

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Accurate patient discharge time estimates are invaluable for hospital operations management. They are vital for efficient and effective scheduling of hospital resources including beds and staff. Unexpected discharges place strain on the patient families and care providers, in addition to causing hospital inefficiencies. Due to the increasing availability of electronic health record data, predictive models can be leveraged to not only offer clinical decision support, but also to optimize hospital operations. In this work, we incorporate clinical knowledge from operational leaders at Kaiser Perma-nente Northern California to design a predictive model for patient discharge using a novel dataset that contains hourly data from the electronic health records of 14 different Kaiser Permanente hospitals. We train and test several algorithms with varying complexity to predict patient-level discharges for the following day at operationally relevant times on the hospital-centric timescale. The highest AUC we achieve is 0.729 with a gradient boosted model, which significantly outperforms both the current estimates deployed in these 14 facilities and the baseline model without hourly data. A feature permutation importance assessment is performed and we conclude that the majority of the improvement is due to the inclusion of the detailed, hourly data.
机译:准确的患者放电时间估计对于医院运营管理非常宝贵。他们对医院资源的高效和有效安排至关重要,包括床和工作人员。意外放电在患者家庭和护理提供者身上的压力,除了导致医院效率低下。由于电子健康记录数据的可用性增加,可以利用预测模型,不仅提供临床决策支持,还可以优化医院运营。在这项工作中,我们将来自Kaiser Perma-Nente北加州的运营领导人的临床知识纳入了北加州的临床知识,用于使用含有14个不同Kaiser永久医院的电子健康记录的小型数据集设计患者放电的预测模型。我们培训并测试多种复杂性的几种算法,以预测在经医院为中心的少年期间在经营相关的时间的患者水平排放。我们达到的最高AUC是0.729,具有梯度提升模型,这显着优于这些14个设施中部署的当前估计和没有每小时数据的基线模型。进行特征置换重要性评估,我们得出结论,大多数改进是由于包含详细的,每小时数据。

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