Moss Robert, Hickson Roslyn I, McVernon Jodie, McCaw James M, Hort Krishna, Black Jim, Madden John R, Tran Nhi H, McBryde Emma S, Geard Nicholas
Centre for Epidemiology and Biostatistics, Melbourne School of Population Health, The University of Melbourne, Melbourne, Australia.
IBM Research - Australia, Melbourne, Australia.
PLoS Negl Trop Dis. 2016 Sep 23;10(9):e0005018. doi: 10.1371/journal.pntd.0005018. eCollection 2016 Sep.
Effective response to emerging infectious disease (EID) threats relies on health care systems that can detect and contain localised outbreaks before they reach a national or international scale. The Asia-Pacific region contains low and middle income countries in which the risk of EID outbreaks is elevated and whose health care systems may require international support to effectively detect and respond to such events. The absence of comprehensive data on populations, health care systems and disease characteristics in this region makes risk assessment and decisions about the provision of such support challenging.
METHODOLOGY/PRINCIPAL FINDINGS: We describe a mathematical modelling framework that can inform this process by integrating available data sources, systematically explore the effects of uncertainty, and provide estimates of outbreak risk under a range of intervention scenarios. We illustrate the use of this framework in the context of a potential importation of Ebola Virus Disease into the Asia-Pacific region. Results suggest that, across a wide range of plausible scenarios, preemptive interventions supporting the timely detection of early cases provide substantially greater reductions in the probability of large outbreaks than interventions that support health care system capacity after an outbreak has commenced.
CONCLUSIONS/SIGNIFICANCE: Our study demonstrates how, in the presence of substantial uncertainty about health care system infrastructure and other relevant aspects of disease control, mathematical models can be used to assess the constraints that limited resources place upon the ability of local health care systems to detect and respond to EID outbreaks in a timely and effective fashion. Our framework can help evaluate the relative impact of these constraints to identify resourcing priorities for health care system support, in order to inform principled and quantifiable decision making.
对新发传染病(EID)威胁做出有效应对,依赖于能够在局部疫情扩散至国家或国际范围之前进行检测和控制的卫生保健系统。亚太地区包含一些低收入和中等收入国家,这些国家爆发新发传染病的风险较高,其卫生保健系统可能需要国际支持才能有效检测和应对此类事件。该地区缺乏关于人口、卫生保健系统和疾病特征的全面数据,这使得风险评估以及关于提供此类支持的决策颇具挑战性。
方法/主要发现:我们描述了一个数学建模框架,该框架可通过整合现有数据源为这一过程提供信息,系统地探究不确定性的影响,并在一系列干预情景下提供疫情爆发风险的估计值。我们以埃博拉病毒病可能输入亚太地区为例,说明了该框架的应用。结果表明,在各种合理情景下,支持及时发现早期病例的先发制人干预措施,相比于疫情开始后支持卫生保健系统能力的干预措施,能大幅降低大规模疫情爆发的概率。
结论/意义:我们的研究表明,在卫生保健系统基础设施以及疾病控制的其他相关方面存在大量不确定性的情况下,数学模型可用于评估有限资源对当地卫生保健系统及时、有效检测和应对新发传染病疫情能力的限制。我们的框架有助于评估这些限制的相对影响,以确定卫生保健系统支持的资源配置优先级,从而为有原则且可量化的决策提供依据。