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Temperature and humidity associated with increases in tuberculosis notifications: a time-series study in Hong Kong

M. Xu, Yannan Li, B. Liu, Ruoling Chen, Lu Sheng, Siyu Yan, HM Chen, Jian Hou, Lili Yuan, Li Ke, Min Fan, Ping Hu

2020Epidemiology and Infection56 citationsDOIOpen Access PDF

Abstract

Previous studies have revealed associations of meteorological factors with tuberculosis (TB) cases. However, few studies have examined their lag effects on TB cases. This study was aimed to analyse nonlinear lag effects of meteorological factors on the number of TB notifications in Hong Kong. Using a 22-year consecutive surveillance data in Hong Kong, we examined the association of monthly average temperature and relative humidity with temporal dynamics of the monthly number of TB notifications using a distributed lag nonlinear models combined with a Poisson regression. The relative risks (RRs) of TB notifications were >1.15 as monthly average temperatures were between 16.3 and 17.3 °C at lagged 13-15 months, reaching the peak risk of 1.18 (95% confidence interval (CI) 1.02-1.35) when it was 16.8 °C at lagged 14 months. The RRs of TB notifications were >1.05 as relative humidities of 60.0-63.6% at lagged 9-11 months expanded to 68.0-71.0% at lagged 12-17 months, reaching the highest risk of 1.06 (95% CI 1.01-1.11) when it was 69.0% at lagged 13 months. The nonlinear and delayed effects of average temperature and relative humidity on TB epidemic were identified, which may provide a practical reference for improving the TB warning system.

Topics & Concepts

Relative humidityConfidence intervalDistributed lagRelative riskPoisson regressionMedicineDemographyTime lagLagTuberculosisApparent temperatureEnvironmental healthStatisticsMathematicsGeographyMeteorologyInternal medicinePopulationPathologyComputer networkSociologyComputer scienceClimate Change and Health ImpactsAsthma and respiratory diseasesCOVID-19 epidemiological studies