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Predicting emergency department visits in a large teaching hospital

机译:预测大型教学医院的急诊部门访问

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Emergency department (ED) visits show a high volatility over time. Therefore, EDs are likely to be crowded at peak-volume moments. ED crowding is a widely reported problem with negative consequences for patients as well as staff. Previous studies on the predictive value of weather variables on ED visits show conflicting results. Also, no such studies were performed in the Netherlands. Therefore, we evaluated prediction models for the number of ED visits in our large the Netherlands teaching hospital based on calendar and weather variables as potential predictors. Data on all ED visits from June 2016 until December 31, 2019, were extracted. The 2016–2018 data were used as training set, the 2019 data as test set. Weather data were extracted from three publicly available datasets from the Royal Netherlands Meteorological Institute. Weather observations in proximity of the hospital were used to predict the weather in the hospital’s catchment area by applying the inverse distance weighting interpolation method. The predictability of daily ED visits was examined by creating linear prediction models using stepwise selection; the mean absolute percentage error (MAPE) was used as measurement of fit. The number of daily ED visits shows a positive time trend and a large impact of calendar events (higher on Mondays and Fridays, lower on Saturdays and Sundays, higher at special times such as carnival, lower in holidays falling on Monday through Saturday, and summer vacation). The weather itself was a better predictor than weather volatility, but only showed a small effect; the calendar-only prediction model had very similar coefficients to the calendar+weather model for the days of the week, time trend, and special time periods (both MAPE’s were 8.7%). Because of this similar performance, and the inaccuracy caused by weather forecasts, we decided the calendar-only model would be most useful in our hospital; it can probably be transferred for use in EDs of the same size and in a similar region. However, the variability in ED visits is considerable. Therefore, one should always anticipate potential unforeseen spikes and dips in ED visits that are not shown by the model.
机译:紧急部门(ED)访问显示出高度波动。因此,EDS可能挤满了峰值素质。 ED拥挤是一个广泛报告的问题,对患者以及员工的负面影响。以前关于ED访问的天气变量预测值的研究表明了相互矛盾的结果。此外,没有在荷兰进行这样的研究。因此,我们根据日历和天气变量评估了我们大型荷兰教学医院的ED访问数量的预测模型,作为潜在的预测因子。从2016年6月到2019年12月31日的所有ED访问的数据被提取。 2016-2018数据被用作培训集,2019年数据作为测试集。天气数据是从荷兰皇家气象研究所的三个公共可用数据集中提取的。通过应用逆距离加权插值方法,使用医院附近的天气观测来预测医院集水区的天气。通过使用逐步选择创建线性预测模型来检查每日ED访问的可预测性;平均绝对百分比误差(MAPE)用作拟合的测量。日常访问的数量显示积极的时间趋势和日历事件的大量影响(周一和星期五更高,周六和星期日更低,在狂欢节等特殊时代更高,在周一至周六落下的假期下降,以及夏季假期)。天气本身比天气波动更好,但只表现出很小的效果;仅日历的预测模型对日历+天气模型的系数非常相似,是一周中的日期,时间趋势和特殊时间段(Mape都为8.7%)。由于这种类似的性能,以及天气预报造成的不准确性,我们决定在我们医院最有用的历时模型;它可能被转移用于相同尺寸和类似区域的EDS。但是,ED访问的可变性是相当大的。因此,应该始终预期潜在的无法预料的尖峰和模型未显示的ed访问中的垂直。

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