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Patient classification based on volume and case-mix in the emergency department and their association with performance

机译:根据急诊科的病例数和病例组合及其与表现的关联对患者进行分类

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摘要

Predicting daily patient volume is necessary for emergency department (ED) strategic and operational decisions, such as resource planning and workforce scheduling. For these purposes, forecast accuracy requires understanding the heterogeneity among patients with respect to their characteristics and reasons for visits. To capture the heterogeneity among ED patients (case-mix), we present a patient coding and classification scheme (PCCS) based on patient demographics and diagnostic information. The proposed PCCS allows us to mathematically formalize the arrival patterns of the patient population as well as each class of patients. We can then examine the volume and case-mix of patients presenting to an ED and investigate their relationship to the ED's quality and time-based performance metrics. We use data from five hospitals in February, July and November for the years of 2007, 2012, and 2017 in the city of Calgary, Alberta, Canada. We find meaningful arrival time patterns of the patient population as well as classes of patients in EDs. The regression results suggest that patient volume is the main predictor of time-based ED performance measures. Case-mix is, however, the key predictor of quality of care in EDs. We conclude that considering both patient volume and the mix of patients are necessary for more accurate strategic and operational planning in EDs.
机译:预测每日患者数量对于急诊科 (ED) 的战略和运营决策(例如资源规划和劳动力调度)是必要的。出于这些目的,预测准确性需要了解患者在特征和就诊原因方面的异质性。为了捕捉急诊患者(病例组合)之间的异质性,我们提出了一种基于患者人口统计学和诊断信息的患者编码和分类方案(PCCS)。拟议的 PCCS 使我们能够在数学上正式确定患者群体以及每类患者的到达模式。然后,我们可以检查到急诊室就诊的患者的数量和病例组合,并调查它们与急诊室质量和基于时间的性能指标的关系。我们使用了 2007 年、2012 年和 2017 年加拿大阿尔伯塔省卡尔加里市 2 月、7 月和 11 月五家医院的数据。我们发现了患者群体以及急诊室患者类别的有意义的到达时间模式。回归结果表明,患者数量是基于时间的急诊功能测量的主要预测因子。然而,病例组合是急诊科护理质量的关键预测指标。我们得出的结论是,考虑患者数量和患者组合对于急诊室更准确的战略和运营规划是必要的。

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