利用优化医疗两阶段混合灰色模型预测医院门诊量

IF 3.2 3区 工程技术 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Grey Systems-Theory and Application Pub Date : 2024-05-30 DOI:10.1108/gs-01-2024-0005
Youyang Ren, Yuhong Wang, Lin Xia, Wei Liu, Ran Tao
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引用次数: 0

摘要

目的对重大安全危机期间的门诊量进行预测,可为医院管理者预防突发疫情、及时调度医疗资源提供合理的决策参考。本文以医院标准运行和冠状病毒病(COVID-19)时期为背景,构建了一种混合灰色模型来预测门诊量,为医院决策者提供前瞻性决策支持。在非 COVID-19 阶段,选择 Aquila 优化器(AO)来优化建模参数。傅立叶修正用于修正随机干扰。在 COVID-19 阶段,该模型添加了 COVID-19 影响因子,以改善基于虚拟变量的灰色模型预测结果。虚拟变量的周期会修改 COVID-19 因子。训练组的拟合 MAPE 为 2.48%,RMSE 为 16463.69。测试组的 MAPE 为 1.91%,RMSE 为 9354.93。原创性/价值两阶段混合灰色模型可以解决传统医院的季节性门诊量预测问题,为未来突发大规模疫情的政策制定提供参考。
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Forecasting hospital outpatient volume using an optimized medical two-stage hybrid grey model

Purpose

Forecasting outpatient volume during a significant security crisis can provide reasonable decision-making references for hospital managers to prevent sudden outbreaks and dispatch medical resources on time. Based on the background of standard hospital operation and Coronavirus disease (COVID-19) periods, this paper constructs a hybrid grey model to forecast the outpatient volume to provide foresight decision support for hospital decision-makers.

Design/methodology/approach

This paper proposes an improved hybrid grey model for two stages. In the non-COVID-19 stage, the Aquila Optimizer (AO) is selected to optimize the modeling parameters. Fourier correction is applied to revise the stochastic disturbance. In the COVID-19 stage, this model adds the COVID-19 impact factor to improve the grey model forecasting results based on the dummy variables. The cycle of the dummy variables modifies the COVID-19 factor.

Findings

This paper tests the hybrid grey model on a large Chinese hospital in Jiangsu. The fitting MAPE is 2.48%, and the RMSE is 16463.69 in the training group. The test MAPE is 1.91%, and the RMSE is 9354.93 in the test group. The results of both groups are better than those of the comparative models.

Originality/value

The two-stage hybrid grey model can solve traditional hospitals' seasonal outpatient volume forecasting and provide future policy formulation references for sudden large-scale epidemics.

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来源期刊
Grey Systems-Theory and Application
Grey Systems-Theory and Application MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
CiteScore
4.80
自引率
13.80%
发文量
22
期刊最新文献
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