首页> 外文期刊>International Journal of Industrial Engineering >PLANNING THE FUTURE OF EMERGENCY DEPARTMENTS: FORECASTING ED PATIENT ARRIVALS BY USING REGRESSION AND NEURAL NETWORK MODELS
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PLANNING THE FUTURE OF EMERGENCY DEPARTMENTS: FORECASTING ED PATIENT ARRIVALS BY USING REGRESSION AND NEURAL NETWORK MODELS

机译:规划了急诊部门的未来:通过使用回归和神经网络模型预测ED患者到达

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摘要

Emergency departments (EDs) face high numbers of patient arrivals in comparison to other departments of hospitals because they provide non-stop service. Patient arrivals at these departments mostly do not appear in a steady state. Predicting existing uncertainty contributes to the future planning of these departments. Therefore, forecasting patient arrivals at emergency departments is crucial so as to make short and long term plans for physical capacity requirements, staffing, budgeting and arranging staff schedules. In this paper, variations in annual, monthly and daily ED arrivals are analyzed based on regression and neural network models with the aid of a collected data from a public hospital ED in Istanbul. The results show that ANN-based models have higher model accuracy values and lower values of absolute error in terms of forecasting the ED patient arrivals over the long and medium terms. The paper is also aimed to provide ED management and medical staff a useful guide for future planning of their emergency departments in the light of an accurate forecasting.
机译:与医院其他部门相比,紧急部门(EDS)面临大量患者到达,因为他们提供不间断的服务。这些部门的患者到来主要不会出现在稳定状态。预测现有的不确定性有助于这些部门的未来规划。因此,在急诊部门的预测患者到达是至关重要的,以便制定谨慎和长期的物理能力要求,人员配置,预算和安排员工时间表。在本文中,借助于伊斯坦布尔的公立医院ed的收集数据,分析了年度,月度和每日ED港数的变化。结果表明,基于ANN的模型具有更高的模型精度值,并且在通过长期和中等术语预测ED患者到达的方面具有更高的绝对误差值。本文还旨在根据准确的预测,向ED管理和医务人员提供未来急诊部门规划的有用指南。

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