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Perfect counterfactuals for epidemic simulations

机译:流行病模拟的完美反应性

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Simulation studies are often used to predict the expected impact of control measures in infectious disease outbreaks. Typically, two independent sets of simulations are conducted, one with the intervention, and one without, and epidemic sizes (or some related metric) are compared to estimate the effect of the intervention. Since it is possible that controlled epidemics are larger than uncontrolled ones if there is substantial stochastic variation between epidemics, uncertainty intervals from this approach can include a negative effect even for an effective intervention. To more precisely estimate the number of cases an intervention will prevent within a single epidemic, here we develop a 'single-world' approach to matching simulations of controlled epidemics to their exact uncontrolled counterfactual. Our method borrows concepts from percolation approaches, prunes out possible epidemic histories and creates potential epidemic graphs (i.e. a mathematical representation of all consistent epidemics) that can be 'realized' to create perfectly matched controlled and uncontrolled epidemics. We present an implementation of this method for a common class of compartmental models (e.g. SIR models), and its application in a simple SIR model. Results illustrate how, at the cost of some computation time, this method substantially narrows confidence intervals and avoids nonsensical inferences.
机译:仿真研究通常用于预测控制措施对传染病爆发的预期影响。通常,将两个独立的模拟集进行,其中一个有干预,并且将一个没有,并且流行尺寸(或某些相关度量)来估计干预的效果。由于流行病之间存在大量随机变化,因此,如果流行物之间存在大量随机变化,则来自这种方法的不确定性间隔甚至可以包括负效应,所以即使是有效的干预,则可能包括负效应。更精确地估计案件的数量,干预将阻止在一个流行病中,在这里,我们开发了一个“单世界”的方法,以匹配受控流行病的模拟到他们的确切不受控制的反事实。我们的方法借用渗滤方法的概念,提出了可能的疫情历史并创造了潜在的流行性图(即所有一致性流行病的数学表示),可以“实现”创建完全匹配的受控和不受控制的流行病。我们展示了这种方法的实现,用于常见的单亲模型(例如SIR模型),其在简单的SIR模型中的应用。结果说明了如何以某种计算时间的成本,这种方法大大缩小了置信区间并避免了荒谬的推论。

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