Au-Yeung S W M, Harder U, McCoy E J, Knottenbelt W J
Department of Computing, Imperial College London, London, UK.
Emerg Med J. 2009 Apr;26(4):241-4. doi: 10.1136/emj.2007.051656.
To characterise and forecast daily patient arrivals into an accident and emergency (A&E) department based on previous arrivals data.
Arrivals between 1 April 2002 and 31 March 2007 to a busy case study A&E department were allocated to one of two arrival streams (walk-in or ambulance) by mode of arrival and then aggregated by day. Using the first 4 years of patient arrival data as a "training" set, a structural time series (ST) model was fitted to characterise each arrival stream. These models were used to forecast walk-in and ambulance arrivals for 1-7 days ahead and then compared with the observed arrivals given by the remaining 1 year of "unseen" data.
Walk-in arrivals exhibited a strong 7-day (weekly) seasonality, with ambulance arrivals showing a distinct but much weaker 7-day seasonality. The model forecasts for walk-in arrivals showed reasonable predictive power (r = 0.6205). However, the ambulance arrivals were harder to characterise (r = 0.2951).
The two separate arrival streams exhibit different statistical characteristics and so require separate time series models. It was only possible to accurately characterise and forecast walk-in arrivals; however, these model forecasts will still assist hospital managers at the case study hospital to best use the resources available and anticipate periods of high demand since walk-in arrivals account for the majority of arrivals into the A&E department.
根据既往就诊数据,对急诊部门的每日患者就诊情况进行特征描述和预测。
将2002年4月1日至2007年3月31日期间一家繁忙的急诊部门案例研究中的就诊患者,按就诊方式分为两个就诊流(自行就诊或救护车送来),然后按日进行汇总。以患者就诊数据的前4年作为“训练”集,拟合一个结构时间序列(ST)模型来描述每个就诊流的特征。这些模型用于预测未来1 - 7天的自行就诊和救护车送来的患者数量,然后与剩余1年“未见过”的数据所观察到的就诊情况进行比较。
自行就诊患者呈现出强烈的7天(每周)季节性,而救护车送来的患者也呈现出明显但较弱的7天季节性。自行就诊患者数量的模型预测显示出合理的预测能力(r = 0.6205)。然而,救护车送来患者数量的情况较难描述(r = 0.2951)。
两个不同的就诊流呈现出不同的统计特征,因此需要单独的时间序列模型。仅能够准确描述和预测自行就诊患者数量;然而,这些模型预测仍将有助于案例研究医院的医院管理人员最佳地利用可用资源,并预测高需求时期,因为自行就诊患者占急诊部门就诊患者的大多数。