4.6 Article

nosoi: A stochastic agent-based transmission chain simulation framework inr

Journal

METHODS IN ECOLOGY AND EVOLUTION
Volume 11, Issue 8, Pages 1002-1007

Publisher

WILEY
DOI: 10.1111/2041-210X.13422

Keywords

agent-based simulation; infectious disease; pathogen; rpackage; simulator; stochastic model; transmission chain

Categories

Funding

  1. KU Leuven [C14/18/094]
  2. European Research Council [725422-ReservoirDOCS]
  3. Wellcome Trust [206298/Z/17/Z]
  4. Fonds Wetenschappelijk Onderzoek [G066215N, G0B9317N, G0D5117N, G0E1420N]

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The transmission process of an infectious agent creates a connected chain of hosts linked by transmission events, known as a transmission chain. Reconstructing transmission chains remains a challenging endeavour, except in rare cases characterized by intense surveillance and epidemiological inquiry. Inference frameworks attempt to estimate or approximate these transmission chains but the accuracy and validity of such methods generally lack formal assessment on datasets for which the actual transmission chain was observed. We here introducenosoi, an open-sourcerpackage that offers a complete, tunable and expandable agent-based framework to simulate transmission chains under a wide range of epidemiological scenarios for single-host and dual-host epidemics.nosoiis accessible through GitHub and CRAN, and is accompanied by extensive documentation, providing help and practical examples to assist users in setting up their own simulations. Once infected, each host or agent can undergo a series of events during each time step, such as moving (between locations) or transmitting the infection, all of these being driven by user-specified rules or data, such as travel patterns between locations. nosoiis able to generate a multitude of epidemic scenarios, that can-for example-be used to validate a wide range of reconstruction methods, including epidemic modelling and phylodynamic analyses.nosoialso offers a comprehensive framework to leverage empirically acquired data, allowing the user to explore how variations in parameters can affect epidemic potential. Aside from research questions,nosoican provide lecturers with a complete teaching tool to offer students a hands-on exploration of the dynamics of epidemiological processes and the factors that impact it. Because the package does not rely on mathematical formalism but uses a more intuitive algorithmic approach, even extensive changes of the entire model can be easily and quickly implemented.

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