Suen Sze-Chuan, Goldhaber-Fiebert Jeremy D, Brandeau Margaret L
Daniel J. Epstein Department of Industrial and Systems Engineering, University of Southern California, Los Angeles, CA, USA.
Stanford Health Policy, Centers for Health Policy and Primary Care and Outcomes Research, Stanford University, Stanford, CA, USA.
J Theor Biol. 2017 Sep 7;428:1-17. doi: 10.1016/j.jtbi.2017.06.004. Epub 2017 Jun 9.
Economic evaluations of infectious disease control interventions frequently use dynamic compartmental epidemic models. Such models capture heterogeneity in risk of infection by stratifying the population into discrete risk groups, thus approximating what is typically continuous variation in risk. An important open question is whether and how different risk stratification choices influence model predictions of intervention effects. We develop equivalent Susceptible-Infected-Susceptible (SIS) dynamic transmission models: an unstratified model, a model stratified into a high-risk and low-risk group, and a model with an arbitrary number of risk groups. Absent intervention, the models produce the same overall prevalence of infected individuals in steady state. We consider an intervention that either reduces the contact rate or increases the disease clearance rate. We develop analytical and numerical results characterizing the models and the effects of the intervention. We find that there exist multiple feasible choices of risk stratification, contact distribution, and within- and between-group contact rates for models that stratify risk. We show analytically and empirically that these choices can generate different estimates of intervention effectiveness, and that these differences can be significant enough to alter conclusions from cost-effectiveness analyses and change policy recommendations. We conclude that the choice of how to discretize risk in compartmental epidemic models can influence predicted effectiveness of interventions. Therefore, analysts should examine multiple alternatives and report the range of results.
传染病控制干预措施的经济评估经常使用动态 compartments 流行病模型。此类模型通过将人群划分为离散的风险组来捕捉感染风险的异质性,从而近似于通常连续变化的风险。一个重要的开放性问题是不同的风险分层选择是否以及如何影响干预效果的模型预测。我们开发了等效的易感-感染-易感(SIS)动态传播模型:一个未分层的模型、一个分为高风险和低风险组的模型以及一个具有任意数量风险组的模型。在没有干预的情况下,这些模型在稳态下产生相同的总体感染个体患病率。我们考虑一种要么降低接触率要么提高疾病清除率的干预措施。我们开发了表征模型和干预效果的分析和数值结果。我们发现,对于分层风险的模型,存在多种可行的风险分层、接触分布以及组内和组间接触率选择。我们通过分析和实证表明,这些选择可以产生不同的干预效果估计值,并且这些差异可能大到足以改变成本效益分析的结论并改变政策建议。我们得出结论,在 compartments 流行病模型中如何离散化风险的选择会影响干预的预测效果。因此,分析人员应研究多种替代方案并报告结果范围。