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Time-Series Approaches for Forecasting the Number of Hospital Daily Discharged Inpatients

机译:预测医院每日出院病人数量的时间序列方法

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For hospitals where decisions regarding acceptable rates of elective admissions are made in advance based on expected available bed capacity and emergency requests, accurate predictions of inpatient bed capacity are especially useful for capacity reservation purposes. As given, the remaining unoccupied beds at the end of each day, bed capacity of the next day can be obtained by examining the forecasts of the number of discharged patients during the next day. The features of fluctuations in daily discharges like trend, seasonal cycles, special-day effects, and autocorrelation complicate decision optimizing, while time-series models can capture these features well. This research compares three models: a model combining seasonal regression and ARIMA, a multiplicative seasonal ARIMA (MSARIMA) model, and a combinatorial model based on MSARIMA and weighted Markov Chain models in generating forecasts of daily discharges. The models are applied to three years of discharge data of an entire hospital. Several performance measures like the direction of the symmetry value, normalized mean squared error, and mean absolute percentage error are utilized to capture the under- and overprediction in model selection. The findings indicate that daily discharges can be forecast by using the proposed models. A number of important practical implications are discussed, such as the use of accurate forecasts in discharge planning, admission scheduling, and capacity reservation.
机译:对于根据预期的可用床位容量和紧急请求事先做出有关可接受的选择性入院率的决定的医院,对病床床位容量的准确预测对于保留容量特别有用。如给定的,在每天结束时剩余的未占用病床,第二天的病床容量可通过检查第二天出院患者人数的预测来获得。日排放量的波动特征(例如趋势,季节周期,特殊日子效应和自相关)使决策优化变得复杂,而时间序列模型可以很好地捕捉这些特征。本研究比较了三种模型:将季节性回归和ARIMA相结合的模型,乘性季节性ARIMA(MSARIMA)模型以及基于MSARIMA和加权马尔可夫链模型的组合模型来生成日排放量预测。该模型适用于整个医院的三年出院数据。诸如对称值方向,归一化均方误差和均值绝对百分比误差之类的几种性能度量可用于捕获模型选择中的预测不足和预测过度。研究结果表明,通过使用建议的模型可以预测日排放量。讨论了许多重要的实际含义,例如在排放计划,准入计划和容量保留中使用准确的预测。

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