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Breaking beta: deconstructing the parasite transmission function.

Hamish McCallumAndy FentonPeter J HudsonBrian LeeBeth LevickRachel NormanSarah Elizabeth PerkinsMark E VineyAnthony James WilsonJoanne Lello
Published in: Philosophical transactions of the Royal Society of London. Series B, Biological sciences (2017)
Transmission is a fundamental step in the life cycle of every parasite but it is also one of the most challenging processes to model and quantify. In most host-parasite models, the transmission process is encapsulated by a single parameter β Many different biological processes and interactions, acting on both hosts and infectious organisms, are subsumed in this single term. There are, however, at least two undesirable consequences of this high level of abstraction. First, nonlinearities and heterogeneities that can be critical to the dynamic behaviour of infections are poorly represented; second, estimating the transmission coefficient β from field data is often very difficult. In this paper, we present a conceptual model, which breaks the transmission process into its component parts. This deconstruction enables us to identify circumstances that generate nonlinearities in transmission, with potential implications for emergent transmission behaviour at individual and population scales. Such behaviour cannot be explained by the traditional linear transmission frameworks. The deconstruction also provides a clearer link to the empirical estimation of key components of transmission and enables the construction of flexible models that produce a unified understanding of the spread of both micro- and macro-parasite infectious disease agents.This article is part of the themed issue 'Opening the black box: re-examining the ecology and evolution of parasite transmission'.
Keyphrases
  • life cycle
  • plasmodium falciparum
  • magnetic resonance imaging
  • toxoplasma gondii
  • preterm infants
  • computed tomography
  • climate change
  • infectious diseases
  • risk assessment
  • gram negative
  • artificial intelligence