病人中午前出院短期预测模型的选择:ARIMA模型的演练。

Q2 Nursing
Rolando A Berrios-Montero
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引用次数: 2

摘要

医院领导鼓励病人早上出院,以增加病人流量。这项工作提出了一个详细的过程,建立模型预测病人出院前中午应用Box-Jenkins方法使用每周历史数据。受日排放过程波动的影响,准确的预测对规划早期排放活动至关重要。目的是寻找一个合适的自回归综合移动平均(ARIMA)模型,通过应用平均绝对百分比误差,在统计预测中以最低误差为基础预测中午前的患者出院率。结果表明,分类为ARIMA(2,1,1)的非季节性ARIMA模型可以很好地拟合正午前的实际出院数据,并为医院领导提供短期预测,可以促进决策过程,这在不确定的医疗保健系统环境中很重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Choice of a Short-term Prediction Model for Patient Discharge Before Noon: A Walk-Through of ARIMA Model.

Hospital leaders encourage morning discharge of patients to boost patient flow. This work presents a detailed process of a building model for forecasting patient discharge before noon applying the Box-Jenkins methodology using weekly historic data. Accurately forecasting is of crucial importance to plan early discharge activities, influenced by the fluctuations in daily discharges process. The objective is to find an appropriate autoregressive integrated moving average (ARIMA) model for forecasting the rate of patients out by noon based on the lowest error in a statistical forecast by applying the mean absolute percentage error. The results obtained demonstrate that a nonseasonal ARIMA model classified as ARIMA(2,1,1) offers a good fit to actual discharge-before-noon data and proposes hospital leaders short-term prediction that could facilitate decision-making process, which is important in an uncertain health care system environment.

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来源期刊
Health Care Manager
Health Care Manager HEALTH POLICY & SERVICES-
自引率
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期刊介绍: The Health Care Manager (HCM), provides practical, applied management information for managers in institutional health care settings. It is a quarterly journal, horizontally integrated and cutting across all functional lines, written for every person who manages the work of others in any health care setting. This journal presents practical day-to-day management advice as well as research studies addressing current issues in health care management. Its intent is the strengthening management and supervisory skills of its readers and increasing their understanding of today"s health care environment. HCM is searchable through PubMed.
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