Gerding Aaron, Reich Nicholas G, Rogers Benjamin, Ray Evan L
Department of Biostatistics and Epidemiology, School of Public Health and Health Sciences, University of Massachusetts at Amherst, Amherst, Massachusetts, USA.
J R Stat Soc Ser A Stat Soc. 2024 Dec 18. doi: 10.1093/jrsssa/qnae136.
Recent years have seen increasing efforts to forecast infectious disease burdens, with a primary goal being to help public health workers make informed policy decisions. However, there has been only limited discussion of how predominant forecast evaluation metrics might indicate the success of policies based in part on those forecasts. We explore one possible tether between forecasts and policy: the allocation of limited medical resources so as to minimize unmet need. We use probabilistic forecasts of disease burden in each of several regions to determine optimal resource allocations, and then we score forecasts according to how much unmet need their associated allocations would have allowed. We illustrate with forecasts of COVID-19 hospitalizations in the U.S., and we find that the forecast skill ranking given by this allocation scoring rule can vary substantially from the ranking given by the weighted interval score. We see this as evidence that the allocation scoring rule detects forecast value that is missed by traditional accuracy measures and that the general strategy of designing scoring rules that are directly linked to policy performance is a promising direction for epidemic forecast evaluation.
近年来,人们越来越努力地预测传染病负担,主要目标是帮助公共卫生工作者做出明智的政策决策。然而,对于主要的预测评估指标如何部分基于这些预测来表明政策的成功,讨论却很有限。我们探讨了预测与政策之间一种可能的关联:有限医疗资源的分配,以便将未满足的需求降至最低。我们使用几个地区中每个地区疾病负担的概率预测来确定最优资源分配,然后根据其相关分配会允许的未满足需求的程度对预测进行评分。我们以美国新冠肺炎住院人数的预测为例进行说明,发现这种分配评分规则给出的预测技能排名可能与加权区间评分给出的排名有很大差异。我们认为这表明分配评分规则能检测到传统准确性度量所遗漏的预测价值,并且设计与政策绩效直接相关的评分规则的总体策略是传染病预测评估的一个有前景的方向。