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Spatio-temporal Pattern and Associate Meteorological Factors of Airborne Diseases in Bangladesh Using Geospatial Mapping and Spatial Regression Model

Overview
Journal Health Sci Rep
Specialty General Medicine
Date 2024 Jun 20
PMID 38899002
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Abstract

Background And Aims: Airborne diseases due to climate change pose significant public health challenges in Bangladesh. Little was known about the spatio-temporal pattern of airborne diseases at the district level in the country. Therefore, this study aimed to investigate the spatio-temporal pattern and associated meteorological factors of airborne diseases in Bangladesh using exploratory analysis and spatial regression models.

Methods: This study used district-level reported cases of airborne diseases (meningococcal, measles, mumps, influenza, tuberculosis, and encephalitis) and meteorological data (temperature, relative humidity, wind speed, and precipitation) from 2017 to 2020. Geospatial mapping and spatial error regression models were utilized to analyze the data.

Results: From 2017 to 2020, a total of 315 meningococcal, 5159 measles, 1341 mumps, 346 influenza, 4664 tuberculosis, and 229 encephalitis cases were reported in Bangladesh. Among airborne diseases, measles demonstrated the highest prevalence, featuring a higher incidence rate in the coastal Bangladeshi districts of Lakshmipur, Patuakhali, and Cox's Bazar, as well as in Maulvibazar and Bandarban districts from 2017 to 2020. In contrast, tuberculosis (TB) emerged as the second most prevalent disease, with a higher incidence rate observed in districts such as Khagrachhari, Rajshahi, Tangail, Bogra, and Sherpur. The spatial error regression model revealed that among climate variables, mean ( = 9.56, standard error [SE]: 3.48) and maximum temperature ( = 1.19, SE: 0.40) were significant risk factors for airborne diseases in Bangladesh. Maximum temperature positively influenced measles ( = 2.74, SE: 1.39), whereas mean temperature positively influenced both meningococcal ( = 5.57, SE: 2.50) and mumps ( = 11.99, SE: 3.13) diseases.

Conclusion: The findings from the study provide insights for planning early warning, prevention, and control strategies to combat airborne diseases in Bangladesh and similar endemic countries. Preventive measures and enhanced monitoring should be taken in some high-risk districts for airborne diseases in the country.

Citing Articles

Machine learning and spatio-temporal analysis of meteorological factors on waterborne diseases in Bangladesh.

Chowdhury A, Rahman M PLoS Negl Trop Dis. 2025; 19(1):e0012800.

PMID: 39820842 PMC: 11737758. DOI: 10.1371/journal.pntd.0012800.

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