Use of Bayesian geostatistical prediction to estimate local variations in Schistosoma haematobium infection in western Africa


Autoria(s): Clements, Archie; Firth, Sonja; Dembele, Robert; Garba, Amadou; Toure, Seydou; Sacko, Moussa; Landoure, Aly; Bosque-Oliva, Elisa; Barnett, Adrian G.; Brooker, Simon; Fenwick, Alan
Data(s)

01/12/2009

Resumo

Objective We aimed to predict sub-national spatial variation in numbers of people infected with Schistosoma haematobium, and associated uncertainties, in Burkina Faso, Mali and Niger, prior to implementation of national control programmes. Methods We used national field survey datasets covering a contiguous area 2,750 × 850 km, from 26,790 school-aged children (5–14 years) in 418 schools. Bayesian geostatistical models were used to predict prevalence of high and low intensity infections and associated 95% credible intervals (CrI). Numbers infected were determined by multiplying predicted prevalence by numbers of school-aged children in 1 km2 pixels covering the study area. Findings Numbers of school-aged children with low-intensity infections were: 433,268 in Burkina Faso, 872,328 in Mali and 580,286 in Niger. Numbers with high-intensity infections were: 416,009 in Burkina Faso, 511,845 in Mali and 254,150 in Niger. 95% CrIs (indicative of uncertainty) were wide; e.g. the mean number of boys aged 10–14 years infected in Mali was 140,200 (95% CrI 6200, 512,100). Conclusion National aggregate estimates for numbers infected mask important local variation, e.g. most S. haematobium infections in Niger occur in the Niger River valley. Prevalence of high-intensity infections was strongly clustered in foci in western and central Mali, north-eastern and northwestern Burkina Faso and the Niger River valley in Niger. Populations in these foci are likely to carry the bulk of the urinary schistosomiasis burden and should receive priority for schistosomiasis control. Uncertainties in predicted prevalence and numbers infected should be acknowledged and taken into consideration by control programme planners.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/29917/

Publicador

World Health Organisation

Relação

http://eprints.qut.edu.au/29917/1/29917.pdf

DOI:10.2471/BLT.08.058933

Clements, Archie, Firth, Sonja, Dembele, Robert, Garba, Amadou, Toure, Seydou, Sacko, Moussa, Landoure, Aly, Bosque-Oliva, Elisa, Barnett, Adrian G., Brooker, Simon, & Fenwick, Alan (2009) Use of Bayesian geostatistical prediction to estimate local variations in Schistosoma haematobium infection in western Africa. World Health Organisation. Bulletin, 87(12), pp. 921-929.

Direitos

Copyright 2009 World Health Organisation

Fonte

Faculty of Health; Institute of Health and Biomedical Innovation; School of Public Health & Social Work

Palavras-Chave #111706 Epidemiology #110309 Infectious Diseases #Schistosomiasis #Schistosoma Haematobium #Spatial Analysis #Bayesian Methods #Burden of Disease
Tipo

Journal Article