A mixed integer linear programming model for quarantine-based home healthcare scheduling under uncertainty

Najmeh Nabavizadeh , Vahid Kayvanfar , Majid Rafiee
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Abstract

Home healthcare companies (HHC) have emerged as vital alternatives to traditional hospitals, particularly in meeting the healthcare needs of individuals within the comfort of their homes. The COVID-19 pandemic has amplified the significance of HHC services, offering a crucial alternative for patients and the elderly to follow quarantine protocols while receiving essential healthcare at home. Consequently, HHC companies must align their planning strategies with the World Health Organization (WHO) health guidelines. This research introduces a Mixed Integer Linear Programming (MILP) model tailored for home healthcare services during COVID-19, aiming to ensure strict adherence to quarantine protocols while enhancing service efficiency and quality. The proposed vehicle routing problem with pickup/delivery and time window formulation incorporates critical elements such as patient and caregiver classification, work and break regulations adherence, workload balancing, and multi-depot capabilities. The model addresses uncertain demand and service times through a stochastic programming approach to enhance practicality. K-means clustering is applied to streamline scenarios, with a sensitivity analysis determining the optimal number of clusters. Additionally, measures intrinsic to stochastic programming, such as the Expected Value of Perfect Information (EVPI) and Value of Stochastic Solution (VSS), are computed for comprehensive analysis.

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不确定情况下基于检疫的家庭医疗保健调度的混合整数线性规划模型
家庭医疗保健公司(HHC)已成为传统医院的重要替代方案,尤其是在满足个人在家中舒适环境下的医疗保健需求方面。COVID-19 大流行凸显了家庭医疗保健服务的重要性,它为病人和老人提供了一个重要的替代方案,使他们在家中接受基本医疗保健的同时还能遵守隔离协议。因此,家庭保健公司必须将其规划战略与世界卫生组织(WHO)的健康指南保持一致。本研究针对 COVID-19 期间的居家医疗服务引入了混合整数线性规划(MILP)模型,旨在确保严格遵守检疫协议,同时提高服务效率和质量。所提出的车辆路由问题包括取货/送货和时间窗口表述,其中包含病人和护理人员分类、遵守工作和休息规定、工作量平衡和多地点能力等关键要素。该模型通过随机编程方法解决了不确定的需求和服务时间问题,从而提高了实用性。K-means 聚类法用于简化方案,并通过敏感性分析确定最佳聚类数量。此外,还计算了随机编程的固有指标,如完美信息预期值(EVPI)和随机解决方案值(VSS),以进行综合分析。
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来源期刊
Healthcare analytics (New York, N.Y.)
Healthcare analytics (New York, N.Y.) Applied Mathematics, Modelling and Simulation, Nursing and Health Professions (General)
CiteScore
4.40
自引率
0.00%
发文量
0
审稿时长
79 days
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