A Gaussian-process approximation to a spatial SIR process using moment closures and emulators

Author:

Trostle Parker1,Guinness Joseph2ORCID,Reich Brian J1ORCID

Affiliation:

1. Department of Statistics, North Carolina State University , Raleigh, NC, 27607 , United States

2. Department of Statistics and Data Science, Cornell University , Ithaca, NY, 14853 , United States

Abstract

ABSTRACT 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.

Funder

National Science Foundation

National Institutes of Health

Publisher

Oxford University Press (OUP)

Reference48 articles.

1. Compartmental models of the Covid-19 pandemic for physicians and physicians-scientists;Abou-Ismail,2020

2. An introduction to stochastic epidemic models;Allen,2008

3. Fast event-based epidemiological simulations on national scales;Bauer;The International Journal of High Performance Computing Applications,2016

4. Computer model validation with functional output;Bayarri;The Annals of Statistics,2007

5. Approximate Bayesian computation in evolution and ecology;Beaumont;Annual Review of Ecology, Evolution, and Systematics,2010

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