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An operational epidemiological model for calibrating agent-based simulations of pandemic influenza outbreaks

机译:一种用于校准基于大流行性流感爆发的病原体模拟的操作流行病学模型

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Uncertainty of pandemic influenza viruses continue to cause major preparedness challenges for public health policymakers. Decisions to mitigate influenza outbreaks often involve tradeoff between the social costs of interventions (e.g., school closure) and the cost of uncontrolled spread of the virus. To achieve a balance, policymakers must assess the impact of mitigation strategies once an outbreak begins and the virus characteristics are known. Agent-based (AB) simulation is a useful tool for building highly granular disease spread models incorporating the epidemiological features of the virus as well as the demographic and social behavioral attributes of tens of millions of affected people. Such disease spread models provide excellent basis on which various mitigation strategies can be tested, before they are adopted and implemented by the policymakers. However, to serve as a testbed for the mitigation strategies, the AB simulation models must be operational. A critical requirement for operational AB models is that they are amenable for quick and simple calibration. The calibration process works as follows: the AB model accepts information available from the field and uses those to update its parameters such that some of its outputs in turn replicate the field data. In this paper, we present our epidemiological model based calibration methodology that has a low computational complexity and is easy to interpret. Our model accepts a field estimate of the basic reproduction number, and then uses it to update (calibrate) the infection probabilities in a way that its effect combined with the effects of the given virus epidemiology, demographics, and social behavior results in an infection pattern yielding a similar value of the basic reproduction number. We evaluate the accuracy of the calibration methodology by applying it for an AB simulation model mimicking a regional outbreak in the US. The calibrated model is shown to yield infection patterns closely replicating the input estimates of the basic reproduction number. The calibration method is also tested to replicate an initial infection incidence trend for a H1N1 outbreak like that of 2009.
机译:大流行性流感病毒的不确定性继续给公共卫生决策者带来重大的准备挑战。减轻流感爆发的决策通常需要在干预的社会成本(例如学校停课)与病毒不受控制的传播成本之间进行权衡。为了达到平衡,一旦爆发爆发并且已知病毒特征,决策者必须评估缓解策略的影响。基于代理的(AB)模拟是构建包含病毒的流行病学特征以及成千上万受影响人群的人口统计和社会行为属性的高度粒度疾病传播模型的有用工具。这种疾病传播模型为决策者采用和实施各种缓解策略提供了极好的基础。但是,要用作缓解策略的测试平台,AB模拟模型必须可操作。操作AB模型的关键要求是它们适合快速和简单的校准。校准过程如下:AB模型接受现场可用的信息,并使用这些信息更新其参数,以便其某些输出反过来复制现场数据。在本文中,我们介绍了基于流行病学模型的校准方法,该方法具有较低的计算复杂度且易于解释。我们的模型接受基本繁殖数量的现场估计,然后使用它来更新(校准)感染可能性,以使其影响与给定病毒流行病学,人口统计学和社会行为的影响相结合的方式得出感染模式产生与基本再现数相似的值。我们通过将其应用于模拟美国区域性暴发的AB模拟模型来评估校准方法的准确性。校准后的模型显示出产生的感染模式,与基本繁殖数量的输入估计值非常接近。还测试了校准方法,以复制H1N1暴发的初始感染发生趋势,类似于2009年的趋势。

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