Monitoring schistosomiasis risk in East China over space and time using a Bayesian hierarchical modeling approach

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作者
Yi Hu
Michael P. Ward
Congcong Xia
Rui Li
Liqian Sun
Henry Lynn
Fenghua Gao
Qizhi Wang
Shiqing Zhang
Chenglong Xiong
Zhijie Zhang
Qingwu Jiang
机构
[1] School of Public Health,Department of Epidemiology and Biostatistics
[2] Fudan University,undefined
[3] Key Laboratory of Public Health Safety,undefined
[4] Ministry of Education,undefined
[5] Laboratory for Spatial Analysis and Modeling,undefined
[6] School of Public Health,undefined
[7] Fudan University,undefined
[8] Collaborative Innovation Center of Social Risks Governance in Health,undefined
[9] School of Public Health,undefined
[10] Fudan University,undefined
[11] University of Sydney Faculty of Veterinary Science,undefined
[12] Anhui Institute of Parasitic Diseases,undefined
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摘要
Schistosomiasis remains a major public health problem and causes substantial economic impact in east China, particularly along the Yangtze River Basin. Disease forecasting and surveillance can assist in the development and implementation of more effective intervention measures to control disease. In this study, we applied a Bayesian hierarchical spatio-temporal model to describe trends in schistosomiasis risk in Anhui Province, China, using annual parasitological and environmental data for the period 1997–2010. A computationally efficient approach–Integrated Nested Laplace Approximation–was used for model inference. A zero-inflated, negative binomial model best described the spatio-temporal dynamics of schistosomiasis risk. It predicted that the disease risk would generally be low and stable except for some specific, local areas during the period 2011–2014. High-risk counties were identified in the forecasting maps: three in which the risk remained high, and two in which risk would become high. The results indicated that schistosomiasis risk has been reduced to consistently low levels throughout much of this region of China; however, some counties were identified in which progress in schistosomiasis control was less than satisfactory. Whilst maintaining overall control, specific interventions in the future should focus on these refractive counties as part of a strategy to eliminate schistosomiasis from this region.
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