Global, regional, and national burden of mortality associated with short-term temperature variability from 2000–19: a three-stage modelling study
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WU, Yao, LI, Shanshan, NOI, Autori, ZHAO, Qi, OVERCENCO, Ala. Global, regional, and national burden of mortality associated with short-term temperature variability from 2000–19: a three-stage modelling study. In: The Lancet Planetary Health, 2022, vol. 6, pp. 410-421. ISSN 2542-5196. DOI: https://doi.org/10.1016/S2542-5196(22)00073-0
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The Lancet Planetary Health
Volumul 6 / 2022 / ISSN 2542-5196 /ISSNe 2542-5196

Global, regional, and national burden of mortality associated with short-term temperature variability from 2000–19: a three-stage modelling study

DOI:https://doi.org/10.1016/S2542-5196(22)00073-0

Pag. 410-421

Wu Yao1, Li Shanshan1, Noi Autori, Zhao Qi1, Overcenco Ala2
 
1 Monash University, Melbourne,
2 National Agency for Public Health
 
 
Disponibil în IBN: 24 mai 2022


Rezumat

Background: Increased mortality risk is associated with short-term temperature variability. However, to our knowledge, there has been no comprehensive assessment of the temperature variability-related mortality burden worldwide. In this study, using data from the MCC Collaborative Research Network, we first explored the association between temperature variability and mortality across 43 countries or regions. Then, to provide a more comprehensive picture of the global burden of mortality associated with temperature variability, global gridded temperature data with a resolution of 0·5° × 0·5° were used to assess the temperature variability-related mortality burden at the global, regional, and national levels. Furthermore, temporal trends in temperature variability-related mortality burden were also explored from 2000–19. Methods: In this modelling study, we applied a three-stage meta-analytical approach to assess the global temperature variability-related mortality burden at a spatial resolution of 0·5° × 0·5° from 2000–19. Temperature variability was calculated as the SD of the average of the same and previous days’ minimum and maximum temperatures. We first obtained location-specific temperature variability related-mortality associations based on a daily time series of 750 locations from the Multi-country Multi-city Collaborative Research Network. We subsequently constructed a multivariable meta-regression model with five predictors to estimate grid-specific temperature variability related-mortality associations across the globe. Finally, percentage excess in mortality and excess mortality rate were calculated to quantify the temperature variability-related mortality burden and to further explore its temporal trend over two decades. Findings: An increasing trend in temperature variability was identified at the global level from 2000 to 2019. Globally, 1 753 392 deaths (95% CI 1 159 901–2 357 718) were associated with temperature variability per year, accounting for 3·4% (2·2–4·6) of all deaths. Most of Asia, Australia, and New Zealand were observed to have a higher percentage excess in mortality than the global mean. Globally, the percentage excess in mortality increased by about 4·6% (3·7–5·3) per decade. The largest increase occurred in Australia and New Zealand (7·3%, 95% CI 4·3–10·4), followed by Europe (4·4%, 2·2–5·6) and Africa (3·3, 1·9–4·6). Interpretation: Globally, a substantial mortality burden was associated with temperature variability, showing geographical heterogeneity and a slightly increasing temporal trend. Our findings could assist in raising public awareness and improving the understanding of the health impacts of temperature variability. Funding: Australian Research Council, Australian National Health & Medical Research Council. 

Cuvinte-cheie
Africa, article, Asia, Australia and New Zealand, awareness, controlled study, Europe, excess mortality, human, major clinical study, medical research, mortality, public health, regression model, time series analysis