Repository logo
Log In
  1. Home
  2. Unibas
  3. Publications
  4. Modelling the geographical distribution of co-infection risk from single-disease surveys
 
  • Details

Modelling the geographical distribution of co-infection risk from single-disease surveys

Date Issued
2011-01-01
Author(s)
Schur, Nadine  
Gosoniu, L
Raso, G  
Utzinger, J  
Vounatsou, P  
DOI
10.1002/sim.4243
Abstract
Background: The need to deliver interventions targeting multiple diseases in a cost-effective manner calls for integrated disease control efforts. Consequently, maps are required that show where the risk of co-infection is particularly high. Co-infection risk is preferably estimated via Bayesian geostatistical multinomial modelling, using data from surveys screening for multiple infections simultaneously. However, only few surveys have collected this type of data. Methods: Bayesian geostatistical shared component models (allowing for covariates, disease-specific and shared spatial and non-spatial random effects) are proposed to model the geographical distribution and burden of co-infection risk from single-disease surveys. The ability of the models to capture co-infection risk is assessed on simulated data sets based on multinomial distributions assuming light- and heavy-dependent diseases, and a real data set of Schistosoma mansoni-hookworm co-infection in the region of Man, Cote d'Ivoire. The data were restructured as if obtained from single-disease surveys. The estimated results of co-infection risk, together with independent and multinomial model results, were compared via different validation techniques. Results: The results showed that shared component models result in more accurate estimates of co-infection risk than models assuming independence in settings of heavy-dependent diseases. The shared spatial random effects are similar to the spatial co-infection random effects of the multinomial model for heavy-dependent data. Conclusions: In the absence of true co-infection data geostatistical shared component models are able to estimate the spatial patterns and burden of co-infection risk from single-disease survey data, especially in settings of heavy-dependent diseases. Copyright (c) 2011 John Wiley & Sons, Ltd
University of Basel

edoc
Open Access Repository University of Basel

  • About edoc
  • About Open Access at the University of Basel
  • edoc Policy

Built with DSpace-CRIS software - Extension maintained and optimized by 4Science

  • Privacy policy
  • End User Agreement