Spatial-Temporal Epidemiology of Tuberculosis in Mainland China: An Analysis Based on Bayesian Theory

Kai Cao(Beijing Tongren Hospital), Kun Yang(Capital Medical University), Chao Wang(Capital Medical University), Jin Guo(Capital Medical University), Lixin Tao(Capital Medical University), Qing‐Rong Liu(Capital Medical University), Gehendra Mahara(Capital Medical University), Yingjie Zhang(Chinese Center For Disease Control and Prevention), Xiuhua Guo(Capital Medical University)
International Journal of Environmental Research and Public Health
May 5, 2016
Cited by 73Open Access
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Abstract

OBJECTIVE: To explore the spatial-temporal interaction effect within a Bayesian framework and to probe the ecological influential factors for tuberculosis. METHODS: Six different statistical models containing parameters of time, space, spatial-temporal interaction and their combination were constructed based on a Bayesian framework. The optimum model was selected according to the deviance information criterion (DIC) value. Coefficients of climate variables were then estimated using the best fitting model. RESULTS: The model containing spatial-temporal interaction parameter was the best fitting one, with the smallest DIC value (-4,508,660). Ecological analysis results showed the relative risks (RRs) of average temperature, rainfall, wind speed, humidity, and air pressure were 1.00324 (95% CI, 1.00150-1.00550), 1.01010 (95% CI, 1.01007-1.01013), 0.83518 (95% CI, 0.93732-0.96138), 0.97496 (95% CI, 0.97181-1.01386), and 1.01007 (95% CI, 1.01003-1.01011), respectively. CONCLUSIONS: The spatial-temporal interaction was statistically meaningful and the prevalence of tuberculosis was influenced by the time and space interaction effect. Average temperature, rainfall, wind speed, and air pressure influenced tuberculosis. Average humidity had no influence on tuberculosis.


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