학술논문

Time series analysis of meteorological factors and air pollutants and their association with hospital admissions for acute myocardial infarction in Korea.
Document Type
Article
Source
International Journal of Cardiology. Jan2021, Vol. 322, p220-226. 7p.
Subject
*TIME series analysis
*AIR pollutants
*FACTOR analysis
*HOSPITAL admission & discharge
*IMPULSE response
Language
ISSN
0167-5273
Abstract
We assessed the association between multiple meteorological factors and air pollutants and the number of acute myocardial infarction (AMI) cases using a multi-step process. Daily AMI hospitalizations matched with 16 meteorological factors and air pollutants in 7 metropolitan provinces of the Republic of Korea from 2002 to 2017 were analyzed. We chose the best fit model after conducting the Granger causality (GC) test and examined the daily lag time effect on the orthogonalized impulse response functions. To define dose-response relationships, we performed a time series analysis using multiple generalized additive lag models based on seasons. A total of 196,762 cases of AMI in patients older than 20 years admitted for hospitalization were identified. The distribution of meteorological factors and air pollutants showed characteristics of a temperate climate. The GC test revealed a complex interaction between meteorological factors, including air pollutants, and AMI. The final selected factors were NO 2 and temperature; these increased the incidence of AMI on lag day 4 during summer (NO 2 : population-attributable fraction [PAF], 3.9%; 95% confidence interval [CI], 3.6–4.0; mean temperature: PAF, 3.3%; 95% CI, 2.7–3.9). This multi-step time series analysis found that average temperature and NO 2 are the most important factors impacting AMI hospitalizations, specifically during summer. Based on the model, we were able to visualize the effect-time association of meteorological factors and air pollutants and AMI. • Meteorological factors and air pollutants affecting acute myocardial infarction show complex interplay. • Simple linear regression dose not accurately explain for the effect of these risk factors. • This multi-step time series analysis found that average temperature and NO2 are the most important factors, impacting AMI. [ABSTRACT FROM AUTHOR]