Department of Industrial Engineering, Cukurova University, Adana, Turkey.
J Med Syst. 2010 Feb;34(1):61-70. doi: 10.1007/s10916-008-9216-y.
Pandemic influenza has been considered as a serious international health risk by many health authorities in the world. In mitigating pandemic influenza, effective allocation of limited health resources also plays a critical role along with effective use of medical prevention and treatment procedures. A national resource allocation program for prevention and treatment must be supported with the right allocation decisions for all regions and population risk groups. In this study, we develop a multi-objective mathematical programming model for optimal resource allocation decisions in a country where a serious risk of pandemic influenza may exist. These resources include monetary budget for antivirals and preventive vaccinations, intensive care unit (ICU) beds, ventilators, and non-intensive care unit (non-ICU) beds. The mathematical model has three objectives: minimization of number of deaths, number of cases and total morbidity days during a pandemic influenza. This model can be used as a decision support tool by decision makers to assess the impact of different scenarios such as attack rates, hospitalization and death ratios. These factors are found to be very influential on the allocation of the total budget among preventive vaccination, antiviral treatment and fixed resources. The data set collected from various sources for Turkey is used and analyzed in detail as a case study.
世界上许多卫生当局都认为大流行性流感是一种严重的国际卫生风险。在减轻大流行性流感的影响方面,除了有效使用医疗预防和治疗程序外,有效分配有限的卫生资源也起着至关重要的作用。国家预防和治疗资源分配计划必须以正确的分配决策为所有地区和人口风险群体提供支持。在这项研究中,我们针对可能存在大流行性流感严重风险的国家,开发了一种用于最佳资源分配决策的多目标数学规划模型。这些资源包括抗病毒药物和预防接种的货币预算、重症监护病房 (ICU) 床位、呼吸机和非重症监护病房 (非 ICU) 床位。数学模型有三个目标:最大限度地减少大流行性流感期间的死亡人数、病例数和总发病天数。该模型可用作决策者的决策支持工具,以评估不同情景(例如攻击率、住院和死亡率)的影响。这些因素对于在预防接种、抗病毒治疗和固定资源之间分配总预算的影响非常大。我们从各种来源收集了土耳其的数据,并详细分析了该数据集作为案例研究。