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Data-driven analytics to support scheduling of multi-priority multi-class patients with wait time targets

机译:数据驱动的分析,支持调度的等待时间目标的多优先级多级患者

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Magnetic Resonance Image (MRI) uses powerful magnetic forces and radio frequencies to create detailed images of the organs and tissues within the body. In this paper, we first conduct descriptive analytics on MRI data of over 3.7 million patient records and determine the main factors affecting the waiting time and conduct predictive analytics to forecast the daily arrivals and the number of procedures performed at each hospital. It is the hospital's goal to serve 90% of patients within their wait time targets. Therefore, we prescribe two simple scheduling policies based on a balance between the FIFO (First-In First-Out) and strict priority policies; namely, weight accumulation and priority promotion to improve the wait time management. Under the weight accumulation policy, patients from different priority levels start with varying initial weights, which then accumulates as a linear function of their waiting time. Under the priority promotion policy, a strict priority policy is applied to priority levels where patients are promoted to a higher priority level after waiting for a predetermined threshold of time. We evaluate the proposed policies against two performance measures: total exceeding time (the number of days by which patients exceed their wait target), and overflow proportion (the percentage of patients that exceed the wait target). To investigate the value of information, we schedule patients at different points of time from their day of arrival. The results show that hospitals can enhance their wait time management by delaying patient scheduling. We demonstrate that effective scheduling policies may result in significant reduction in patient waiting time without any costly capacity expansion. Crown Copyright (C) 2018 Published by Elsevier B.V. All rights reserved.
机译:磁共振图像(MRI)使用强大的磁力和无线电频率来创建体内器官和组织的详细图像。在本文中,我们首先对超过370万患者记录的MRI数据进行描述性分析,并确定影响等待时间的主要因素,并进行预测分析以预测每家医院所表演的程序数量。它是医院的目标,在等待时间目标中为90%的患者提供服务。因此,我们根据FIFO(首先第一出)和严格的优先级策略之间的平衡规定了两个简单的调度策略;即重量累积和优先促销,以提高等待时间管理。在重量累积政策下,来自不同优先级的患者从不同的初始权重开始,然后累积为其等待时间的线性函数。在优先促进政策下,严格的优先级策略适用于在等待预定时间阈值后促使患者在较高优先级的优先级。我们评估拟议的两项绩效措施的政策:总超过时间(患者超过其等目标的天数),溢出比例(超过等待目标的患者的百分比)。为了调查信息的价值,我们从抵达时期的不同时间点安排患者。结果表明,医院可以通过延迟患者调度来增强他们的等待时间管理。我们证明有效的调度政策可能导致患者等待时间显着减少,而无需任何昂贵的容量扩张。 Crown版权(c)2018由elestvier b.v出版。保留所有权利。

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