The benefits of transmission dynamics models in understanding emerging infectious diseases

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Abstract

Factors associated with the emergence and transmission of infectious diseases often do not follow the assumptions of traditional statistical models such as linearity and independence of outcomes. Transmission dynamics models are well suited to address infectious disease scenarios that do not conform to these assumptions. For example, these models easily account for changes in the incidence rates of infection as the proportions of susceptible and infectious persons change in the population. Fundamental concepts relating to these methods, such as the basic reproductive number, the effective reproductive number and the susceptible-infected-recovered compartmental models, are reviewed. In addition, comparisons and contrasts are made between the following concepts: microparasites and macroparasites, deterministic and stochastic models, difference and differential equations and homogeneous and heterogeneous mixing patterns. Finally, examples of how transmission dynamics models are being applied to factors associated with emerging infectious diseases, such as zoonotic origins, microbial adaption and change, human susceptibility and climate change, are reviewed. © 2010 Lippincott Williams & Wilkins.

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APA

Wendelboe, A. M., Grafe, C., & Carabin, H. (2010). The benefits of transmission dynamics models in understanding emerging infectious diseases. In American Journal of the Medical Sciences (Vol. 340, pp. 181–186). Lippincott Williams and Wilkins. https://doi.org/10.1097/MAJ.0b013e3181e937ca

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