PLoS Computational Biology (Oct 2017)

A mechanistic spatio-temporal framework for modelling individual-to-individual transmission-With an application to the 2014-2015 West Africa Ebola outbreak.

  • Max S Y Lau,
  • Max S Y Lau,
  • Gavin J Gibson,
  • Hola Adrakey,
  • Amanda McClelland,
  • Steven Riley,
  • Jon Zelner,
  • George Streftaris,
  • Sebastian Funk,
  • Jessica Metcalf,
  • Benjamin D Dalziel,
  • Bryan T Grenfell

DOI
https://doi.org/10.1371/journal.pcbi.1005798
Journal volume & issue
Vol. 13, no. 10
p. e1005798

Abstract

Read online

In recent years there has been growing availability of individual-level spatio-temporal disease data, particularly due to the use of modern communicating devices with GPS tracking functionality. These detailed data have been proven useful for inferring disease transmission to a more refined level than previously. However, there remains a lack of statistically sound frameworks to model the underlying transmission dynamic in a mechanistic manner. Such a development is particularly crucial for enabling a general epidemic predictive framework at the individual level. In this paper we propose a new statistical framework for mechanistically modelling individual-to-individual disease transmission in a landscape with heterogeneous population density. Our methodology is first tested using simulated datasets, validating our inferential machinery. The methodology is subsequently applied to data that describes a regional Ebola outbreak in Western Africa (2014-2015). Our results show that the methods are able to obtain estimates of key epidemiological parameters that are broadly consistent with the literature, while revealing a significantly shorter distance of transmission. More importantly, in contrast to existing approaches, we are able to perform a more general model prediction that takes into account the susceptible population. Finally, our results show that, given reasonable scenarios, the framework can be an effective surrogate for susceptible-explicit individual models which are often computationally challenging.