School of Global Public Health, New York University, New York, New York.
Department of Public Health and Clinical Medicine, Epidemiology and Global Health & Umeå Centre for Global Health Research, Umeå University, Umeå, Sweden.
Am J Trop Med Hyg. 2023 Jan 16;108(3):627-633. doi: 10.4269/ajtmh.22-0471. Print 2023 Mar 1.
Despite significant advances in improving the predictive models for vector-borne diseases, only a few countries have integrated an early warning system (EWS) with predictive and response capabilities into their disease surveillance systems. The limited understanding of forecast performance and uncertainties by decision-makers is one of the primary factors that precludes its operationalization in preparedness and response planning. Further, predictive models exhibit a decrease in forecast skill with longer lead times, a trade-off between forecast accuracy and timeliness and effectiveness of action. This study presents a methodological framework to evaluate the economic value of EWS-triggered responses from the health system perspective. Assuming an operational EWS in place, the framework makes explicit the trade-offs between forecast accuracy, timeliness of action, effectiveness of response, and costs, and uses the net benefit analysis, which measures the benefits of taking action minus the associated costs. Uncertainty in disease forecasts and other parameters is accounted for through probabilistic sensitivity analysis. The output is the probability distribution of the net benefit estimates at given forecast lead times. A non-negative net benefit and the probability of yielding such are considered a general signal that the EWS-triggered response at a given lead time is economically viable. In summary, the proposed framework translates uncertainties associated with disease forecasts and other parameters into decision uncertainty by quantifying the economic risk associated with operational response to vector-borne disease events of potential importance predicted by an EWS. The goal is to facilitate a more informed and transparent public health decision-making under uncertainty.
尽管在改进虫媒传染病预测模型方面取得了重大进展,但只有少数几个国家将具有预测和响应能力的早期预警系统 (EWS) 纳入其疾病监测系统。决策者对预测性能和不确定性的理解有限,是妨碍其在防范和应对规划中付诸实施的主要因素之一。此外,预测模型的预测技巧会随着提前期的延长而降低,这是预测准确性与及时性以及行动有效性之间的权衡。本研究提出了一种从卫生系统角度评估 EWS 触发响应经济价值的方法框架。假设已建立一个可运行的 EWS,该框架明确了预测准确性、行动及时性、响应有效性和成本之间的权衡,并利用净收益分析,该分析衡量采取行动的收益减去相关成本。通过概率敏感性分析考虑了疾病预测和其他参数的不确定性。输出结果是在给定预测提前期下净收益估计的概率分布。非负净收益及其产生的概率被视为一般信号,表明在给定提前期内,EWS 触发的响应在经济上是可行的。总之,所提出的框架通过量化与 EWS 预测的潜在重要虫媒传染病事件相关的运营响应相关的经济风险,将与疾病预测和其他参数相关的不确定性转化为决策不确定性。目标是在不确定情况下促进更明智和透明的公共卫生决策。