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Author Notes:

Correspondence: E-mail: tom.wilke@allzool.bio.uni-giessen.de

Author contributions: Conceived and designed the experiments: TW GMD JVR MS.

Performed the experiments: TW MS TH ZZ.

Analyzed the data: TW MS TH.

Contributed reagents/materials/analysis tools: JMD FJ.

Wrote the paper: TW MS.

The authors thank the employees of the Institute of Parasitic Diseases, Chinese National Center of Systematic Medical Malacology in Shanghai for their assistance with the collection of field samples.

Silvia Nachtigall (Justus Liebig University) is gratefully acknowledged for her help with the molecular work.

Roland Schultheiß (Justus Liebig University) and three anonymous referees provided useful comments on a previous version of this paper.

The authors have declared that no competing interests exist.

The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

Subjects:

Research Funding:

This work was supported in part by the US NIH/NSF Ecology of Infectious Disease Program (http://www.fic.nih.gov) through grant no. 0622743 (JVR) and by the NIAID Tropical Medicine Research Centers Program (http://www.niaid.nih.gov) through grant no. AI 39461 (GMD).

Keywords:

  • Animals
  • China
  • Climate
  • Disease Vectors
  • Ecology
  • Humans
  • Models, Statistical
  • Molecular Sequence Data
  • Risk Assessment
  • Schistosoma japonicum
  • Schistosomiasis japonica
  • Sequence Analysis, DNA
  • Snails
  • Topography, Medical
  • Schistosomiasis
  • Snails
  • Lakes
  • Population genetics
  • Flooding
  • Parasitic diseases
  • infectious disease control
  • Genetics of disease

Spatially Explicit Modeling of Schistosomiasis Risk in Eastern China Based on a Synthesis of Epidemiological, Environmental and Intermediate Host Genetic Data

Tools:

Journal Title:

PLoS Neglected Tropical Diseases

Volume:

Volume 7, Number 7

Publisher:

, Pages e2327-e2327

Type of Work:

Article | Final Publisher PDF

Abstract:

Schistosomiasis japonica is a major parasitic disease threatening millions of people in China. Though overall prevalence was greatly reduced during the second half of the past century, continued persistence in some areas and cases of re-emergence in others remain major concerns. As many regions in China are approaching disease elimination, obtaining quantitative data on Schistosoma japonicum parasites is increasingly difficult. This study examines the distribution of schistosomiasis in eastern China, taking advantage of the fact that the single intermediate host serves as a major transmission bottleneck. Epidemiological, population-genetic and high-resolution ecological data are combined to construct a predictive model capable of estimating the probability that schistosomiasis occurs in a target area ("spatially explicit schistosomiasis risk"). Results show that intermediate host genetic parameters are correlated with the distribution of endemic disease areas, and that five explanatory variables-altitude, minimum temperature, annual precipitation, genetic distance, and haplotype diversity-discriminate between endemic and non-endemic zones. Model predictions are correlated with human infection rates observed at the county level. Visualization of the model indicates that the highest risks of disease occur in the Dongting and Poyang lake regions, as expected, as well as in some floodplain areas of the Yangtze River. High risk areas are interconnected, suggesting the complex hydrological interplay of Dongting and Poyang lakes with the Yangtze River may be important for maintaining schistosomiasis in eastern China. Results demonstrate the value of genetic parameters for risk modeling, and particularly for reducing model prediction error. The findings have important consequences both for understanding the determinants of the current distribution of S. japonicum infections, and for designing future schistosomiasis surveillance and control strategies. The results also highlight how genetic information on taxa that constitute bottlenecks to disease transmission can be of value for risk modeling.

Copyright information:

© 2013 Schrader et al.

This is an Open Access work distributed under the terms of the Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/).
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