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Accurate Emergency Department Wait Time Prediction

机译:准确的急诊科等待时间预测

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This paper proposes the Q-Lasso method for wait time prediction, which combines statistical learning with fluid model estimators. In historical data from four remarkably different hospitals, Q-Lasso predicts the emergency department (ED) wait time for low-acuity patients with greater accuracy than rolling average methods (currently used by hospitals), fluid model estimators (from the service operations management literature), and quantile regression methods (from the emergency medicine literature). Q-Lasso achieves greater accuracy largely by correcting errors of underestimation in which a patient waits for longer than predicted. Implemented on the external website and in the triage room of the San Mateo Medical Center (SMMC), Q-Lasso achieves over 30% lower mean squared prediction error than would occur with the best rolling average method. The paper describes challenges and insights from the implementation at SMMC.
机译:本文提出了一种Q-Lasso方法用于等待时间预测,该方法将统计学习与流体模型估计器相结合。在来自四家截然不同的医院的历史数据中,Q-Lasso预测急诊科(ED)的低敏患者等待时间要比滚动平均法(当前由医院使用),流体模型估计器(来自服务运营管理文献)更高的准确性。 )和分位数回归方法(来自急诊医学文献)。 Q-Lasso在很大程度上可以通过纠正低估误差来实现更高的准确性,在这种低估误差中,患者等待的时间比预期的要长。 Q-Lasso在外部网站上和圣马特奥医学中心(SMMC)的诊断室中实施,与最佳滚动平均方法相比,均方根预测误差降低了30%以上。本文描述了SMMC实施中的挑战和见解。

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