Projections of excess mortality related to diurnal temperature range under climate change scenarios: a multi-country modelling study
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LEE, Whanhee, KIM, Yoonhee, SERA, Francesco, GASPARRINI, Antonio, PARK, Rokjin, CHOI, Hayon Michelle, PRIFTI, Kristi, BELL, Michelle L., ABRUTZKY, Rosana, GUO, Yuming, OVERCENCO, Ala. Projections of excess mortality related to diurnal temperature range under climate change scenarios: a multi-country modelling study. In: The Lancet Planetary Health, 2020, vol. 4, p. 0. ISSN 2542-5196. DOI: https://doi.org/10.1016/S2542-5196(20)30222-9
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The Lancet Planetary Health
Volumul 4 / 2020 / ISSN 2542-5196 /ISSNe 2542-5196

Projections of excess mortality related to diurnal temperature range under climate change scenarios: a multi-country modelling study

DOI:https://doi.org/10.1016/S2542-5196(20)30222-9

Pag. 0-0

Lee Whanhee1, Kim Yoonhee2, Sera Francesco3, Gasparrini Antonio3, Park Rokjin1, Choi Hayon Michelle4, Prifti Kristi1, Bell Michelle L.4, Abrutzky Rosana5, Guo Yuming6, Overcenco Ala7
 
1 Seoul National University,
2 University of Tokyo,
3 London School of Hygiene and Tropical Medicine,
4 Yale University, Connecticut,
5 University of Buenos Aires,
6 Monash University, Melbourne,
7 National Agency for Public Health
 
 
Disponibil în IBN: 15 noiembrie 2020


Rezumat

Background: Various retrospective studies have reported on the increase of mortality risk due to higher diurnal temperature range (DTR). This study projects the effect of DTR on future mortality across 445 communities in 20 countries and regions. Methods: DTR-related mortality risk was estimated on the basis of the historical daily time-series of mortality and weather factors from Jan 1, 1985, to Dec 31, 2015, with data for 445 communities across 20 countries and regions, from the Multi-Country Multi-City Collaborative Research Network. We obtained daily projected temperature series associated with four climate change scenarios, using the four representative concentration pathways (RCPs) described by the Intergovernmental Panel on Climate Change, from the lowest to the highest emission scenarios (RCP 2.6, RCP 4.5, RCP 6.0, and RCP 8.5). Excess deaths attributable to the DTR during the current (1985–2015) and future (2020–99) periods were projected using daily DTR series under the four scenarios. Future excess deaths were calculated on the basis of assumptions that warmer long-term average temperatures affect or do not affect the DTR-related mortality risk. Findings: The time-series analyses results showed that DTR was associated with excess mortality. Under the unmitigated climate change scenario (RCP 8.5), the future average DTR is projected to increase in most countries and regions (by −0·4 to 1·6°C), particularly in the USA, south-central Europe, Mexico, and South Africa. The excess deaths currently attributable to DTR were estimated to be 0·2–7·4%. Furthermore, the DTR-related mortality risk increased as the long-term average temperature increased; in the linear mixed model with the assumption of an interactive effect with long-term average temperature, we estimated 0·05% additional DTR mortality risk per 1°C increase in average temperature. Based on the interaction with long-term average temperature, the DTR-related excess deaths are projected to increase in all countries or regions by 1·4–10·3% in 2090–99. Interpretation: This study suggests that globally, DTR-related excess mortality might increase under climate change, and this increasing pattern is likely to vary between countries and regions. Considering climatic changes, our findings could contribute to public health interventions aimed at reducing the impact of DTR on human health. Funding: Korea Ministry of Environment. 

Cuvinte-cheie
article, climate change, Europe, human, Korea, Mexico, mortality risk, public health, retrospective study, risk assessment, South Africa, time series analysis, weather