posterior estimates of dynamic constants in hiv transmission modeling

posterior estimates of dynamic constants in hiv transmission modeling

;Yingqing Chen;Renee Dale;Hongyu He;Quoc-Anh T. Le
advanced functional materials 2017 Vol. 2017 pp. -
112
chen2017computationalposterior

Abstract

In this paper, we construct a linear differential system in both continuous time and discrete time to model HIV transmission on the population level. The main question is the determination of parameters based on the posterior information obtained from statistical analysis of the HIV population. We call these parameters dynamic constants in the sense that these constants determine the behavior of the system in various models. There is a long history of using linear or nonlinear dynamic systems to study the HIV population dynamics or other infectious diseases. Nevertheless, the question of determining the dynamic constants in the system has not received much attention. In this paper, we take some initial steps to bridge such a gap. We study the dynamic constants that appear in the linear differential system model in both continuous and discrete time. Our computations are mostly carried out in Matlab.

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249490
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10.1155/2017/1093045
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