Journal
INTERNATIONAL JOURNAL FOR PARASITOLOGY
Volume 35, Issue 2, Pages 155-162Publisher
ELSEVIER SCI LTD
DOI: 10.1016/j.ijpara.2004.11.002
Keywords
Bayesian statistics; conditional autoregressive model; geographic information system; remote sensing; Schistosoma japonicum; China
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Spatio-temporal variations of Schistosoma japonicum infection risk in Jiangsu province, China, were examined and the relationships between key climatic factors and infection prevalence at the county level were determined. The parasitological data were collected annually by means of cross-sectional surveys carried out in 47 counties from 1990 to 1998. Climatic factors, namely land surface temperature (LST) and normalized difference vegetation index (NDVI), were obtained from remote sensing satellite sensors. Bayesian spatio-temporal models were employed to analyze the data. The best fitting model showed that spatial autocorrelation in Jiangsu province decreased dramatically from 1990 to 1992 and increased gradually thereafter. A likely explanation of this finding arises from the large-scale administration of praziquantel for morbidity control of schistosomiasis. Our analysis suggested a negative association between NDVI and risk of S. japonicum infection. On the other hand, an increase in LST contributed to a significant increase in S. japonicum infection prevalence. We conclude that combining geographic information system, remote sensing and Bayesian-based statistical approaches facilitate integrated risk modeling of S. japonicum. which in turn is of relevance for allocation of scarce resources for control of schistosomiasis Japonica in Jiangsu province and elsewhere in China, where the disease remains of public health and economic significance. (C) 2004 Australian Society for Parasitology Inc. Published by Elsevier Ltd. All rights reserved.
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