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引用次数: 0
摘要
控制疾病传播的动力学很难建模,因为感染既是潜在病原体的函数,也是人类或动物行为的函数。在模拟疾病如何在不同空间地点之间传播时,这一挑战就更大了。许多建议的空间流行病学模型需要权衡利弊才能拟合,要么抽象出理论传播动态,要么拟合确定性模型,要么需要大量计算资源进行多次模拟。我们提出了一种用高斯过程近似复杂空间传播动态的方法。我们首先对著名的 SIR 随机过程提出了灵活的空间扩展,然后推导出这一随机过程的时刻闭合近似值。这种时刻闭合近似得到了易感因子和感染因子的均值和协方差随时间演变的常微分方程。由于这些常微分方程是用 MCMC 拟合模型的瓶颈,因此我们使用低阶仿真器对其进行近似。这一近似值为我们的分层模型奠定了基础,该模型可用于按空间位置和时间计算有噪声的、未充分报告的新感染人数。我们演示了如何使用我们的模型,根据真实的空间 SIR 跳跃过程对模拟感染进行推断。然后,我们将我们的方法应用于巴西 2015 年末至 2016 年初的寨卡新发感染人数建模。
A Gaussian-process approximation to a spatial SIR process using moment closures and emulators.
The dynamics that govern disease spread are hard to model because infections are functions of both the underlying pathogen as well as human or animal behavior. This challenge is increased when modeling how diseases spread between different spatial locations. Many proposed spatial epidemiological models require trade-offs to fit, either by abstracting away theoretical spread dynamics, fitting a deterministic model, or by requiring large computational resources for many simulations. We propose an approach that approximates the complex spatial spread dynamics with a Gaussian process. We first propose a flexible spatial extension to the well-known SIR stochastic process, and then we derive a moment-closure approximation to this stochastic process. This moment-closure approximation yields ordinary differential equations for the evolution of the means and covariances of the susceptibles and infectious through time. Because these ODEs are a bottleneck to fitting our model by MCMC, we approximate them using a low-rank emulator. This approximation serves as the basis for our hierarchical model for noisy, underreported counts of new infections by spatial location and time. We demonstrate using our model to conduct inference on simulated infections from the underlying, true spatial SIR jump process. We then apply our method to model counts of new Zika infections in Brazil from late 2015 through early 2016.
期刊介绍:
The International Biometric Society is an international society promoting the development and application of statistical and mathematical theory and methods in the biosciences, including agriculture, biomedical science and public health, ecology, environmental sciences, forestry, and allied disciplines. The Society welcomes as members statisticians, mathematicians, biological scientists, and others devoted to interdisciplinary efforts in advancing the collection and interpretation of information in the biosciences. The Society sponsors the biennial International Biometric Conference, held in sites throughout the world; through its National Groups and Regions, it also Society sponsors regional and local meetings.