Epidemics are a serious public health threat, and the resources for mitigating their effects are typically limited. Decision-makers face challenges in forecasting the supply and demand for these resources as prior information about the disease is often not available, the behaviour of the disease can periodically change (either naturally or as a result of public health policies) and can differ by geographical region. Randomized controlled trials (RCTs) using scarce resources such as blood products as a randomized intervention are affected by epidemics. In this work, we discuss a model that is suitable for short-term real-time supply and demand forecasting during emerging outbreaks. We consider a case study of demand forecasting and allocating scarce quantities of COVID-19 Convalescent Plasma (CCP) in an international multi-site RCT involving multiple hospital hubs across Canada (excluding Qu\'ebec). We propose a data-driven mixed-integer programming (MIP) resource allocation model that assigns available resources to maximize a notion of fairness among the resource-demanding entities. Numerical results from applying our MIP model to the case study suggest that our approach can help balance the supply and demand of limited products such as CCP and minimize the unmet demand ratios of the demand entities. We analyze the sensitivity of our model to different allocation settings and show that our model assigns equitable allocations across the entities.
翻译:流行病是一种严重的公共卫生威胁,减轻其影响的资源通常有限,决策者在预测这些资源的供求方面面临着挑战,因为以前关于该疾病的信息往往得不到,疾病的行为可以定期改变(自然或由于公共卫生政策),而且可能因地理区域而异。使用血液制品等稀有资源随机干预的随机控制试验受到流行病的影响。在这项工作中,我们讨论了适合在爆发新爆发期间进行短期实时供需预测的模式。我们认为,在涉及加拿大多个医院中心的多点RCT(不包括魁北克省)国际多点RCT中,需求预测和分配稀缺数量的COVID-19康復白白白等值(CP)的案例研究。我们建议采用以数据驱动的混合因数规划(RCTs)资源分配模式,为资源需求实体之间最公平的模式分配现有资源。我们采用MIP模型的量化结果表明,我们的方法可以帮助平衡加拿大多个医院中心(不包括魁北克省)中心(Quu\ebebec)中心(C)中心(Central)中心(Central develop sass developmentment)的供需分配比例。