Real-time characterization of partially observed epidemics using surrogate models.

C. Safta, J. Ray, S. Lefantzi, D. Crary, K. Sargsyan, K. Cheng
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引用次数: 4

Abstract

We present a statistical method, predicated on the use of surrogate models, for the 'real-time' characterization of partially observed epidemics. Observations consist of counts of symptomatic patients, diagnosed with the disease, that may be available in the early epoch of an ongoing outbreak. Characterization, in this context, refers to estimation of epidemiological parameters that can be used to provide short-term forecasts of the ongoing epidemic, as well as to provide gross information on the dynamics of the etiologic agent in the affected population e.g., the time-dependent infection rate. The characterization problem is formulated as a Bayesian inverse problem, and epidemiological parameters are estimated as distributions using a Markov chain Monte Carlo (MCMC) method, thus quantifying the uncertainty in the estimates. In some cases, the inverse problem can be computationally expensive, primarily due to the epidemic simulator used inside the inversion algorithm. We present a method, based on replacing the epidemiological model with computationally inexpensive surrogates, that can reduce the computational time to minutes, without a significant loss of accuracy. The surrogates are created by projecting the output of an epidemiological model on a set of polynomial chaos bases; thereafter, computations involving the surrogate model reduce to evaluations of a polynomial. We find that the epidemic characterizations obtained with the surrogate models is very close to that obtained with the original model. We also find that the number of projections required to construct a surrogate model is O(10)-O(10{sup 2}) less than the number of samples required by the MCMC to construct a stationary posterior distribution; thus, depending upon the epidemiological models in question, it may be possible to omit the offline creation and caching of surrogate models, prior to their use in an inverse problem. The technique is demonstrated on synthetic data as well as observations from the 1918 influenza pandemic collected at Camp Custer, Michigan.
使用替代模型对部分观测到的流行病进行实时表征。
我们提出了一种基于使用替代模型的统计方法,用于“实时”表征部分观察到的流行病。观察结果包括在持续暴发的早期可能获得的诊断为该病的有症状患者的计数。在这种情况下,表征指的是对流行病学参数的估计,这些参数可用于对正在发生的流行病进行短期预测,并提供有关病原在受影响人群中的动态的总体信息,例如,随时间变化的感染率。将表征问题表述为贝叶斯反问题,并利用马尔可夫链蒙特卡罗(MCMC)方法将流行病学参数估计为分布,从而量化了估计中的不确定性。在某些情况下,逆问题的计算成本可能很高,这主要是由于在反演算法中使用了流行病模拟器。我们提出了一种方法,基于用计算成本低廉的替代品取代流行病学模型,可以将计算时间减少到分钟,而不会显着损失准确性。通过将流行病学模型的输出投影到一组多项式混沌基上来创建代理;此后,涉及代理模型的计算减少为多项式的评估。我们发现用替代模型得到的流行病特征与用原始模型得到的特征非常接近。我们还发现,构建代理模型所需的投影数比构建平稳后验分布所需的样本数少O(10)-O(10{sup 2});因此,根据所讨论的流行病学模型,在反问题中使用代理模型之前,可以省略代理模型的离线创建和缓存。该技术在合成数据以及在密歇根州卡斯特营收集的1918年流感大流行的观察结果上得到了证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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