Scientific Reports (Mar 2017)

Big-data-driven modeling unveils country-wide drivers of endemic schistosomiasis

  • Lorenzo Mari,
  • Marino Gatto,
  • Manuela Ciddio,
  • Elhadji D. Dia,
  • Susanne H. Sokolow,
  • Giulio A. De Leo,
  • Renato Casagrandi

DOI
https://doi.org/10.1038/s41598-017-00493-1
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 11

Abstract

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Abstract Schistosomiasis is a parasitic infection that is widespread in sub-Saharan Africa, where it represents a major health problem. We study the drivers of its geographical distribution in Senegal via a spatially explicit network model accounting for epidemiological dynamics driven by local socioeconomic and environmental conditions, and human mobility. The model is parameterized by tapping several available geodatabases and a large dataset of mobile phone traces. It reliably reproduces the observed spatial patterns of regional schistosomiasis prevalence throughout the country, provided that spatial heterogeneity and human mobility are suitably accounted for. Specifically, a fine-grained description of the socioeconomic and environmental heterogeneities involved in local disease transmission is crucial to capturing the spatial variability of disease prevalence, while the inclusion of human mobility significantly improves the explanatory power of the model. Concerning human movement, we find that moderate mobility may reduce disease prevalence, whereas either high or low mobility may result in increased prevalence of infection. The effects of control strategies based on exposure and contamination reduction via improved access to safe water or educational campaigns are also analyzed. To our knowledge, this represents the first application of an integrative schistosomiasis transmission model at a whole-country scale.