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Predictive Study of Tuberculosis Incidence by ARMA Model Combined with Air Pollution Variables

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  • Yanling Zheng

Abstract

China has the second largest number of tuberculosis (TB) cases in the world, and the Xinjiang province has the highest TB incidence in China. Urumqi is the capital city of Xinjiang; good TB prevention and control in Urumqi can provide an example for other parts of Xinjiang, considering that predicting the TB incidence is the prerequisite of prevention and control; therefore, it is necessary to do a prediction study on TB incidence in Urumqi. In this paper, based on the data of TB incidence and air pollution variables (PM 2.5 , PM 10 , SO 2 , CO, NO 2 , O 3 ) in Urumqi, the ARMA (1, (1, 3)) + model was established by time series ARMA model method, cross-correlation analysis, and principal component regression method, and its predictive performance was superior to that of the ARMA (1, (1, 3)) model based on TB historical data. The research idea of this paper was good, which can provide a reference for other researchers. The prediction of the ARMA (1, (1, 3)) + model can provide scientific help for TB prevention and control in Urumqi, China. During the analysis, it was found that the higher the concentration of O 3 , the higher the incidence of TB. This study suggests that people in Urumqi should pay more attention to the hazards of O 3 and do a good job of personal protection.

Suggested Citation

  • Yanling Zheng, 2020. "Predictive Study of Tuberculosis Incidence by ARMA Model Combined with Air Pollution Variables," Complexity, Hindawi, vol. 2020, pages 1-11, May.
  • Handle: RePEc:hin:complx:3619063
    DOI: 10.1155/2020/3619063
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