Shea Katriona, Tildesley Michael J, Runge Michael C, Fonnesbeck Christopher J, Ferrari Matthew J
Department of Biology and Center for Infectious Disease Dynamics, The Pennsylvania State University, University Park, Pennsylvania, United States of America.
School of Veterinary Medicine and Science, University of Nottingham, Leicestershire, United Kingdom.
PLoS Biol. 2014 Oct 21;12(10):e1001970. doi: 10.1371/journal.pbio.1001970. eCollection 2014 Oct.
Optimal intervention for disease outbreaks is often impeded by severe scientific uncertainty. Adaptive management (AM), long-used in natural resource management, is a structured decision-making approach to solving dynamic problems that accounts for the value of resolving uncertainty via real-time evaluation of alternative models. We propose an AM approach to design and evaluate intervention strategies in epidemiology, using real-time surveillance to resolve model uncertainty as management proceeds, with foot-and-mouth disease (FMD) culling and measles vaccination as case studies. We use simulations of alternative intervention strategies under competing models to quantify the effect of model uncertainty on decision making, in terms of the value of information, and quantify the benefit of adaptive versus static intervention strategies. Culling decisions during the 2001 UK FMD outbreak were contentious due to uncertainty about the spatial scale of transmission. The expected benefit of resolving this uncertainty prior to a new outbreak on a UK-like landscape would be £45-£60 million relative to the strategy that minimizes livestock losses averaged over alternate transmission models. AM during the outbreak would be expected to recover up to £20.1 million of this expected benefit. AM would also recommend a more conservative initial approach (culling of infected premises and dangerous contact farms) than would a fixed strategy (which would additionally require culling of contiguous premises). For optimal targeting of measles vaccination, based on an outbreak in Malawi in 2010, AM allows better distribution of resources across the affected region; its utility depends on uncertainty about both the at-risk population and logistical capacity. When daily vaccination rates are highly constrained, the optimal initial strategy is to conduct a small, quick campaign; a reduction in expected burden of approximately 10,000 cases could result if campaign targets can be updated on the basis of the true susceptible population. Formal incorporation of a policy to update future management actions in response to information gained in the course of an outbreak can change the optimal initial response and result in significant cost savings. AM provides a framework for using multiple models to facilitate public-health decision making and an objective basis for updating management actions in response to improved scientific understanding.
疾病爆发的最佳干预措施常常受到严重科学不确定性的阻碍。适应性管理(AM)长期应用于自然资源管理,是一种结构化决策方法,用于解决动态问题,该方法通过对替代模型的实时评估来考量解决不确定性的价值。我们提出一种适应性管理方法,用于设计和评估流行病学中的干预策略,在管理过程中利用实时监测来解决模型不确定性问题,并以口蹄疫(FMD)扑杀和麻疹疫苗接种作为案例研究。我们在相互竞争的模型下模拟替代干预策略,从信息价值的角度量化模型不确定性对决策的影响,并量化适应性干预策略与静态干预策略的效益。2001年英国口蹄疫爆发期间,由于传播空间尺度的不确定性,扑杀决策颇具争议。相对于在替代传播模型上平均计算使牲畜损失最小化的策略,在类似英国的地区爆发新疫情之前解决这种不确定性的预期效益为4500万至6000万英镑。疫情期间采用适应性管理预计可挽回高达2010万英镑的预期效益。与固定策略(额外要求扑杀相邻场所)相比,适应性管理还会建议采用更保守的初始方法(扑杀感染场所和危险接触农场)。对于基于2010年马拉维疫情进行的麻疹疫苗接种最佳目标设定,适应性管理能使资源在受影响地区得到更好分配;其效用取决于高危人群和后勤能力两方面的不确定性。当日疫苗接种率受到严格限制时,最佳初始策略是开展小规模快速接种活动;如果能根据真实易感人群更新接种目标,预计可减少约10000例病例的负担。正式纳入一项政策,以便根据疫情期间获得的信息更新未来管理行动,这可能会改变最佳初始应对措施并带来显著成本节约。适应性管理提供了一个利用多种模型促进公共卫生决策的框架,以及一个根据科学认识的提高更新管理行动的客观依据。