The role of geospatial hotspots in the spatial spread of tuberculosis in rural Ethiopia: A mathematical model

Debebe Shaweno, James M. Trauer, Justin T. Denholm, Emma S. McBryde

Research output: Contribution to journalArticleResearchpeer-review

10 Citations (Scopus)

Abstract

Geospatial tuberculosis (TB) hotspots are hubs of TB transmission both within and across community groups. We aimed to quantify the extent to which these hotspots account for the spatial spread of TB in a high-burden setting. We developed spatially coupled models to quantify the spread of TB from geographical hotspots to distant regions in rural Ethiopia. The population was divided into three 'patches' based on their proximity to transmission hotspots, namely hotspots, adjacent regions and remote regions. The models were fitted to 5-year notification data aggregated by the metapopulation structure. Model fitting was achieved with a Metropolis-Hastings algorithm using a Poisson likelihood to compare model-estimated notification rate with observed notification rates. A cross-coupled metapopulation model with assortative mixing by region closely fit to notification data as assessed by the deviance information criterion. We estimated 45 hotspot-to-adjacent regions transmission events and 2 hotspot-to-remote regions transmission events occurred for every 1000 hotspot-to-hotspot transmission events. Although the degree of spatial coupling was weak, the proportion of infections in the adjacent region that resulted from mixing with hotspots was high due to the high prevalence of TB cases in a hotspot region, with approximately 75% of infections attributable to hotspot contact. Our results suggest that the role of hotspots in the geospatial spread of TB in rural Ethiopia is limited, implying that TB transmission is primarily locally driven.

Original languageEnglish
Article number180887
Number of pages11
JournalRoyal Society Open Science
Volume5
Issue number9
DOIs
Publication statusPublished - 1 Sept 2018

Keywords

  • Hotspots
  • Metapopulation models
  • Spatial analysis
  • Transmission
  • Tuberculosis

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