A nonlinear programming approach for estimation of transmission parameters in childhood infectious disease using a continuous time model |
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Authors: | Daniel P. Word Derek A. T. Cummings Donald S. Burke Sopon Iamsirithaworn Carl D. Laird |
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Affiliation: | 1Artie McFerrin Department of Chemical Engineering, Texas A&M University, College Station, TX 77843, USA;2Faculty of Johns Hopkins Bloomberg School of Public Health, 615 N. Wolfe Street, Baltimore, MD 21205, USA;3Graduate School of Public Health, University of Pittsburgh, 130 DeSoto Street, A624 Crabtree Hall, Pittsburgh, PA 15261, USA;4Bureau of Epidemiology, Ministry of Public Health, Thailand |
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Abstract: | Mathematical models can enhance our understanding of childhood infectious disease dynamics, but these models depend on appropriate parameter values that are often unknown and must be estimated from disease case data. In this paper, we develop a framework for efficient estimation of childhood infectious disease models with seasonal transmission parameters using continuous differential equations containing model and measurement noise. The problem is formulated using the simultaneous approach where all state variables are discretized, and the discretized differential equations are included as constraints, giving a large-scale algebraic nonlinear programming problem that is solved using a nonlinear primal–dual interior-point solver. The technique is demonstrated using measles case data from three different locations having different school holiday schedules, and our estimates of the seasonality of the transmission parameter show strong correlation to school term holidays. Our approach gives dramatic efficiency gains, showing a 40–400-fold reduction in solution time over other published methods. While our approach has an increased susceptibility to bias over techniques that integrate over the entire unknown state-space, a detailed simulation study shows no evidence of bias. Furthermore, the computational efficiency of our approach allows for investigation of a large model space compared with more computationally intensive approaches. |
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Keywords: | nonlinear optimization measles infectious diseases mathematical programming Gauss–Lobatto collocation |
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