论文标题
基于价值的COVID-19热点的医疗资源分配的优化
Value-based optimization of healthcare resource allocation for COVID-19 hot spots
论文作者
论文摘要
随着新兴的COVID-19危机,公共卫生官员和政策制定者的一项关键任务是决定如何优先级,定位和分配稀缺资源。为了回答这些问题,决策者需要能够根据新兴的热点地点确定所需资源的位置。热点被定义为在Covid19病例中急剧增加的集中区域。热点对现有的医疗保健资源压力压力,从而导致对资源的需求可能超过当前能力。这项研究将描述一种基于价值的资源分配方法,该方法试图协调需求,这是由不确定的流行病学预测所定义的,其价值是增加医院病床等其他资源。值是构建的,这是预期使用边缘资源(床,呼吸机等)的函数。受某些限制的约束,分配决策将使用非线性编程模型进行操作,并随着时间的流逝和许多地理位置分配新的医院病床。研究结果表明,有必要采用基于价值的方法,以帮助各级决策者在当前高度不确定和动态的共同环境中做出最佳决策。
With the emerging COVID-19 crisis, a critical task for public health officials and policy makers is to decide how to prioritize, locate, and allocate scarce resources. To answer these questions, decision makers need to be able to determine the location of the required resources over time based on emerging hot spot locations. Hot spots are defined as concentrated areas with sharp increases in COVID19 cases. Hot spots place stress on existing healthcare resources, resulting in demand for resources potentially exceeding current capacity. This research will describe a value based resource allocation approach that seeks to coordinate demand, as defined by uncertain epidemiological forecasts, with the value of adding additional resources such as hospital beds. Value is framed as a function of the expected usage of a marginal resource (bed, ventilator, etc). Subject to certain constraints, allocation decisions are operationalized using a nonlinear programming model, allocating new hospital beds over time and across a number of geographical locations. The results of the research show a need for a value based approach to assist decision makers at all levels in making the best possible decisions in the current highly uncertain and dynamic COVID environment.