2018 AIChE Annual Meeting
(456d) A Nonlinear Programming Framework for Estimating Spatial Coupling and Seasonal Transmission Parameters in Disease Transmission
We address the issue of estimating disease transmission parameters using a flexible, scalable modeling framework. Spatial coupling parameters are a measure of the level of mixing of individuals between regional subpopulations [1]. Seasonal transmission parameters describe the impact of seasonal variation due to effects like degree of interaction [2]. This work focuses on estimating both spatial coupling and seasonal transmission parameters with a nonlinear programming approach for a network of subpopulations.
A framework is presented for efficient estimation of city-to-city spatial transmission rates by inferring transport information from localized disease case data using a statistical, hazard-based SIR model [3]. The estimation is demonstrated using records of measles outbreaks in 954 cities across England and Wales between 1944 and 1964. First, a stochastic model is constructed to predict spatio-temporal disease dynamics and accurately match existing datasets. A statistical hazard-based approach focusing on disease fade-out periods provides the basis for the estimation. Then, the model is extended to simultaneously estimate the city-to-city spatial transmission parameters, as well as seasonal transmission parameters. The proposed approach for this large-scale estimation accurately reproduces existing parameter estimates from [1,4], is readily scalable to larger problem sizes, and substantially reduces solution times.
References:
[1] Bjørnstad, O. N. and Grenfell, B. T. (2008). Hazards, spatial transmission and timing of outbreaks in epidemic metapopulations. Environmental and Ecological Statistics, 15:265â277.
[2] Word, D. P., Cummings, D. a. T., Burke, D. S., Iamsirithaworn, S., and Laird, C. D. (2012). A nonlinear programming approach for estimation of transmission parameters in childhood infectious disease using a continuous time model. Journal of the Royal Society, Interface / the Royal Society, 9:1983â97.
[3] Grenfell, B. T. (2000). Time series modelling of childhood diseases: a dynamical systems approach. Appl. Statist.
[4] Xia, Y., Bjørnstad, O. N., and Grenfell, B. T. (2004). Measles metapopulation dynamics: a gravity model for epidemiological coupling and dynamics. The American naturalist, 164(2):267â281.