Volume 3 Issue 2
Apr.  2023
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Xinrui Wei, Rui Jiang, Yue Liu, Guangna Zhao, Youyuan Li, Yongchen Wang. The effects of cold region meteorology and specific environment on the number of hospital admissions for chronic kidney disease: An investigate with a distributed lag nonlinear model[J]. Frigid Zone Medicine, 2023, 3(2): 65-76. doi: 10.2478/fzm-2023-0009
Citation: Xinrui Wei, Rui Jiang, Yue Liu, Guangna Zhao, Youyuan Li, Yongchen Wang. The effects of cold region meteorology and specific environment on the number of hospital admissions for chronic kidney disease: An investigate with a distributed lag nonlinear model[J]. Frigid Zone Medicine, 2023, 3(2): 65-76. doi: 10.2478/fzm-2023-0009

The effects of cold region meteorology and specific environment on the number of hospital admissions for chronic kidney disease: An investigate with a distributed lag nonlinear model

doi: 10.2478/fzm-2023-0009
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  • Corresponding author: Yongchen Wang, E-mail: yongchenwang@163.com
  • Received Date: 2023-02-14
  • Accepted Date: 2023-03-01
  • Available Online: 2023-04-25
  •   Objective  To explore the effects of daily mean temperature (℃), average daily air pressure (hPa), humidity (%), wind speed (m/s), particulate matter (PM) 2.5 (μg/m3) and PM10 (μg/m3) on the admission rate of chronic kidney disease (CKD) patients admitted to the Second Affiliated Hospital of Harbin Medical University in Harbin and to identify the indexes and lag days that impose the most critical influence.  Methods  The R language Distributed Lag Nonlinear Model (DLNM), Excel, and SPSS were used to analyze the disease and meteorological data of Harbin from 01 January 2010 to 31 December 2019 according to the inclusion and exclusion criteria.  Results  Meteorological factors and air pollution influence the number of hospitalizations of CKD to vary degrees in cold regions, and differ in persistence or delay. Non-optimal temperature increases the risk of admission of CKD, high temperature increases the risk of obstructive kidney disease, and low temperature increases the risk of other major types of chronic kidney disease. The greater the temperature difference is, the higher its contribution is to the risk. The non-optimal wind speed and non-optimal atmospheric pressure are associated with increased hospital admissions. PM2.5 concentrations above 40 μg/m3 have a negative impact on the results.  Conclusion  Cold region meteorology and specific environment do have an impact on the number of hospital admissions for chronic kidney disease, and we can apply DLMN to describe the analysis.

     

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