Application of Poisson kriging to the mapping of cholera and dysentery incidence in an endemic area of Bangladesh

被引:24
作者
Ali M. [1 ]
Goovaerts P. [2 ]
Nazia N. [3 ]
Haq M.Z. [4 ]
Yunus M. [4 ]
Emch M. [5 ]
机构
[1] International Vaccine Institute, SNU Research Park, Seoul, San 4-8 Bongcheon-7 dong, Kwanak-gu
[2] BioMedware Inc., Ann Arbor, MI
[3] University of Texas, Dallas, TX
[4] ICDDR, B: Centre for Health and Population Research, Dhaka
[5] University of North Carolina, Chapel Hill, NC
关键词
Cholera; Dysentery; Semivariogram Model; Acute Watery Diarrhea; Cholera Incidence;
D O I
10.1186/1476-072X-5-45
中图分类号
学科分类号
摘要
Background: Disease maps can serve to display incidence rates geographically, to inform on public health provision about the success or failure of interventions, and to make hypothesis or to provide evidences concerning disease etiology. Poisson kriging was recently introduced to filter the noise attached to rates recorded over sparsely populated administrative units. Its benefit over simple population-weighted averages and empirical Bayesian smoothers was demonstrated by simulation studies using county-level cancer mortality rates. This paper presents the first application of Poisson kriging to the spatial interpolation of local disease rates, resulting in continuous maps of disease rate estimates and the associated prediction variance. The methodology is illustrated using cholera and dysentery data collected in a cholera endemic area (Matlab) of Bangladesh. Results: The spatial analysis was confined to patrilineally-related clusters of households, known as baris, located within 9 kilometers from the Matlab hospital to avoid underestimating the risk of disease incidence, since patients far away from the medical facilities are less likely to travel. Semivariogram models reveal a range of autocorrelation of 1.1 km for dysentery and 0.37 km for cholera. This result translates into a cholera risk map that is patchier than the dysentery map that shows a large zone of high incidence in the south-central part of the study area, which is quasi-urban. On both maps, lower risk values are found in the Northern part of the study area, which is also the most distant from the Matlab hospital. The weaker spatial continuity of cholera versus dysentery incidence rates resulted in larger kriging variance across the study area. Conclusion: The approach presented in this paper enables researchers to incorporate the pattern of spatial dependence of incidence rates into the mapping of risk values and the quantification of the associated uncertainty. Differences in spatial patterns, in particular the range of spatial autocorrelation, reflect differences in the mode of transmission of cholera and dysentery. Our risk maps for cholera and dysentery incidences should help identifying putative factors of increased disease incidence, leading to more effective prevention and remedial actions in endemic areas. © 2006 Ali et al; licensee BioMed Central Ltd.
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共 30 条
[1]  
Kelsall J., Wakefield J., Modeling spatial variation in disease risk: Geostatistical approach, Journal of the American Statistical Association, 97, 459, pp. 692-701, (2002)
[2]  
Kulldroff M., A spatial scan statistics, Communications in Statistics: Theory and Methods, 26, pp. 1481-1496, (1997)
[3]  
Bithell J.F., A classification of disease mapping methods, Stat Med, 19, 17-18, pp. 2203-2215, (2000)
[4]  
Diggle P.J., Overview of statistical methods for disease mapping and its relationship to cluster detection, Spatial Epidemiology: Methods and Applications, (2000)
[5]  
Lawson A.B., Disease map reconstruction, Stat Med, 20, 14, pp. 2183-2204, (2001)
[6]  
Lawson A.B., Clark A., Spatial mixture relative risk models applied to disease mapping, Stat Med, 21, 3, pp. 359-370, (2002)
[7]  
Wakefield J., Salway R., A statistical framework for ecological and aggregate studies, Journal of Royal Statistical Society, Series A, 164, pp. 119-137, (2001)
[8]  
Gunnlaugsson G., Angulo F.J., Einarsdottir J., Passa A., Tauxe R.V., Epidemic cholera in Guinea-Bissau: The challenge of preventing deaths in rural West Africa, Int J Infect Dis, 4, 1, pp. 8-13, (2000)
[9]  
La Raja M., Cholera-like diarrhoeal disease and rivers in rural Mozambique, Trop Doct, 30, 1, pp. 53-54, (2000)
[10]  
Germani Y., Quilici M.L., Glaziou P., Mattera D., Morvan J., Fournier J.M., Emergence of cholera in the Central African Republic, Eur J Clin Microbiol Infect Dis, 17, 12, pp. 888-890, (1998)