Geospatial Health (Jun 2015)

Sandwich mapping of schistosomiasis risk in Anhui Province, China

  • Yi Hu,
  • Robert Bergquist,
  • Henry Lynn,
  • Fenghua Gao,
  • Qizhi Wang,
  • Shiqing Zhang,
  • Rui Li,
  • Liqian Sun,
  • Congcong Xia,
  • Chenglong Xiong,
  • Zhijie Zhang,
  • Qingwu Jiang

DOI
https://doi.org/10.4081/gh.2015.324
Journal volume & issue
Vol. 10, no. 1

Abstract

Read online

Schistosomiasis mapping using data obtained from parasitological surveys is frequently used in planning and evaluation of disease control strategies. The available geostatistical approaches are, however, subject to the assumption of stationarity, a stochastic process whose joint probability distribution does not change when shifted in time. As this is impractical for large areas, we introduce here the sandwich method, the basic idea of which is to divide the study area (with its attributes) into homogeneous subareas and estimate the values for the reporting units using spatial stratified sampling. The sandwich method was applied to map the county-level prevalence of schistosomiasis japonica in Anhui Province, China based on parasitological data collected from sample villages and land use data. We first mapped the county-level prevalence using the sandwich method, then compared our findings with block Kriging. The sandwich estimates ranged from 0.17 to 0.21% with a lower level of uncertainty, while the Kriging estimates varied from 0 to 0.97% with a higher level of uncertainty, indicating that the former is more smoothed and stable compared to latter. Aside from various forms of reporting units, the sandwich method has the particular merit of simple model assumption coupled with full utilization of sample data. It performs well when a disease presents stratified heterogeneity over space.

Keywords