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Early detection of abnormal patient arrivals at hospital emergency department

机译:医院急诊部异常患者的早期检测

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Overcrowding is one of the most crucial issues confronting emergency departments (EDs) throughout the world. Efficient management of patient flows for ED services has become an urgent issue for most hospital administrations. Handling and detection of abnormal situations is a key challenge in EDs. Thus, the early detection of abnormal patient arrivals at EDs plays an important role from the point of view of improving management of the inspected EDs. It allows the EDs mangers to prepare for high levels of care activities, to optimize the internal resources and to predict enough hospitalization capacity in downstream care services. This study reports the development of statistical method for enhancing detection of abnormal daily patient arrivals at the ED, which able to provide early alert mechanisms in the event of abnormal situations. The autoregressive moving average (ARMA)-based exponentially weighted moving average (EWMA) anomaly detection scheme proposed was successfully applied to the practical data collected from the database of the pediatric emergency department (PED) at Lille regional hospital center, France.
机译:过度拥挤是全世界紧急部门(EDS)面临最重要的问题之一。高效管理ED服务的患者流量已成为大多数医院管理部门的紧急问题。处理和检测异常情况是EDS中的关键挑战。因此,从改善所检查的EDS管理的角度来看,EDS的异常患者到达的早期检测起到重要作用。它允许EDS管理员为高水平的护理活动做好准备,以优化内部资源,并预测下游护理服务的保证能力。本研究报告了在ED的统计方法中的发展,用于增强ED的异常患者到达的检测,能够在异常情况下提供早期警报机制。基于自由评数加权移动平均(EWMA)异常检测方案的自回归移动平均(ARMA)成功地应用于法国里尔地区医院中心的儿科急诊部(PED)数据库中收集的实际数据。

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