Publications

Land surface temperature predicts mortality due to chronic obstructive pulmonary disease : a study based on climate variables and impact machine learning

Mohammadi, Alireza; Mashhoodi, Bardia; Shamsoddini, Ali; Pishgar, Elahe; Bergquist, Robert

Summary

Chronic Obstructive Pulmonary Disease (COPD) has been the focus of scientists and policymakers in the past decade with regard to mortality rates and global warming. The long-term shift in temperature and weather patterns, commonly called climate change, is an important public health issue, especially concerning COPD. Using the most recent county-level age-adjusted COPD mortality rates among adults older than 25 years, this study aimed to investigate the spatial trajectory of COPD in the United States between 2001 and 2020. Global Moran’s I was used to investigate spatial relationships utilising data from Terra satellite for night-time Land Surface Temperatures (LSTnt), which served as an indicator of warming within the same time period across the United States. The Forest-based Classification and Regression model (FCR) was applied to predict mortality rates. It was found that COPD mortality over the study period was spatially clustered in certain counties. Moran’s I statistic (0.18) showed that the COPD mortality rates increased with LSTnt, with the strongest spatial association in the eastern and south-eastern counties. The FCR model successfully predicted mortality rates in the study area using LSTnt values, achieving an R² value of 0.68, which accounted for COPD mortality rates independently. Policymakers in the United States could use the findings of this study to develop long-term spatial and health-related strategies to reduce the vulnerability to global warming of patients with acute respiratory symptoms.