| Literature DB >> 30405277 |
Ana Maria Vicedo-Cabrera1, Yuming Guo2,3, Francesco Sera1, Veronika Huber4,5, Carl-Friedrich Schleussner4,6, Dann Mitchell7, Shilu Tong8,9,10, Micheline de Sousa Zanotti Stagliorio Coelho11, Paulo Hilario Nascimento Saldiva11, Eric Lavigne12,13, Patricia Matus Correa14, Nicolas Valdes Ortega14, Haidong Kan15, Samuel Osorio16, Jan Kyselý17,18, Aleš Urban17, Jouni J K Jaakkola19, Niilo R I Ryti19, Mathilde Pascal20, Patrick G Goodman21, Ariana Zeka22, Paola Michelozzi23, Matteo Scortichini23, Masahiro Hashizume24, Yasushi Honda25, Magali Hurtado-Diaz26, Julio Cruz26, Xerxes Seposo27,28, Ho Kim29, Aurelio Tobias30, Carmen Íñiguez31, Bertil Forsberg32, Daniel Oudin Åström32, Martina S Ragettli33,34, Martin Röösli33,34, Yue Leon Guo35, Chang-Fu Wu36, Antonella Zanobetti37, Joel Schwartz37, Michelle L Bell38, Tran Ngoc Dang39,40, Dung Do Van39, Clare Heaviside1,41, Sotiris Vardoulakis1,42, Shakoor Hajat1, Andy Haines1, Ben Armstrong1, Kristie L Ebi43, Antonio Gasparrini1.
Abstract
The Paris Agreement binds all nations to undertake ambitious efforts to combat climate change, with the commitment to Bhold warming well below 2 °C in global mean temperature (GMT), relative to pre-industrial levels, and to pursue efforts to limit warming to 1.5 °C". The 1.5 °C limit constitutes an ambitious goal for which greater evidence on its benefits for health would help guide policy and potentially increase the motivation for action. Here we contribute to this gap with an assessment on the potential health benefits, in terms of reductions in temperature-related mortality, derived from the compliance to the agreed temperature targets, compared to more extreme warming scenarios. We performed a multi-region analysis in 451 locations in 23 countries with different climate zones, and evaluated changes in heat and cold-related mortality under scenarios consistent with the Paris Agreement targets (1.5 and 2 °C) and more extreme GMT increases (3 and 4 °C), and under the assumption of no changes in demographic distribution and vulnerability. Our results suggest that limiting warming below 2 °C could prevent large increases in temperature-related mortality in most regions worldwide. The comparison between 1.5 and 2 °C is more complex and characterized by higher uncertainty, with geographical differences that indicate potential benefits limited to areas located in warmer climates, where direct climate change impacts will be more discernible.Entities:
Keywords: Climate change; Mortality; Projections; Temperature
Year: 2018 PMID: 30405277 PMCID: PMC6217994 DOI: 10.1007/s10584-018-2274-3
Source DB: PubMed Journal: Clim Change ISSN: 0165-0009 Impact factor: 4.743
Description of the countries included in the study, listed by geographic region, with the number of locations, average and range of the mean temperatures modeled in the baseline period (1986–2005), the average difference between the projected mean temperatures between 2 and 1.5 °C increases in GMT, and classification of the locations in each country per climate zone
| Geographic region | Country | Number of locations | Average [range]a daily mean temp. baseline | Difference in average daily mean temp. 2 vs 1.5 °C scen. | ||||
|---|---|---|---|---|---|---|---|---|
| Equatorial | Dry | Warm temperate | Snow | |||||
| North America | Canada | 26 | 6.6 [10.5; 2.6] | 0.87 | 0 [0%] | 0 [0%] | 3 [11.5%] | 23 [88.5%] |
| USA | 135 | 14.9 [25.5; 8.0] | 0.74 | 5 [3.7%] | 11 [8.1%] | 85 [63%] | 34 [25.2%] | |
| Central America | Mexico | 10 | 18.5 [23.0; 13.5] | 0.69 | 0 [0%] | 5 [50%] | 5 [50%] | 0 [0%] |
| South America | Brazil | 18 | 24.3 [27.2; 17.5] | 0.55 | 14 [77.8%] | 0 [0%] | 4 [22.2%] | 0 [0%] |
| Chile | 4 | 13.2 [14.8; 11.3] | 0.32 | 0 [0%] | 0 [0%] | 4 [100%] | 0 [0%] | |
| North Europe | Finland | 1 | 5.7 [5.7; 5.7] | 0.72 | 0 [0%] | 0 [0%] | 0 [0%] | 1 [100%] |
| Ireland | 6 | 9.8 [10.6; 9.1] | 0.51 | 0 [0%] | 0 [0%] | 6 [100%] | 0 [0%] | |
| Sweden | 1 | 7.6 [7.6; 7.6] | 0.66 | 0 [0%] | 0 [0%] | 0 [0%] | 1 [100%] | |
| UK | 10 | 10.0 [11.3; 9.2] | 0.60 | 0 [0%] | 0 [0%] | 10 [100%] | 0 [0%] | |
| Central Europe | Czech Republic | 4 | 8.5 [9.3; 7.8] | 0.63 | 0 [0%] | 0 [0%] | 4 [100%] | 0 [0%] |
| France | 18 | 12.2 [15.9; 10.3] | 0.63 | 0 [0%] | 0 [0%] | 18 [100%] | 0 [0%] | |
| Moldova | 4 | 10.0 [10.5; 9.5] | 0.61 | 0 [0%] | 0 [0%] | 3 [75%] | 1 [25%] | |
| Switzerland | 8 | 10.0 [12.5; 8.1] | 0.61 | 0 [0%] | 0 [0%] | 7 [87.5%] | 1 [12.5%] | |
| South Europe | Italy | 11 | 15.2 [18.2; 12.3] | 0.60 | 0 [0%] | 0 [0%] | 11 [100%] | 0 [0%] |
| Spain | 52 | 15.3 [21.6; 10.8] | 0.69 | 0 [0%] | 7 [13.5%] | 45 [86.5%] | 0 [0%] | |
| East Asia | China | 15 | 14.9 [23.6; 7.0] | 0.75 | 0 [0%] | 2 [13.3%] | 8 [53.3%] | 5 [33.3%] |
| Japan | 47 | 15.3 [23.1; 9.0] | 0.72 | 0 [0%] | 0 [0%] | 41 [87.2%] | 6 [12.8%] | |
| South Korea | 7 | 13.7 [14.9; 12.4] | 0.72 | 0 [0%] | 0 [0%] | 5 [71.4%] | 2 [28.6%] | |
| South-East Asia | Philippines | 4 | 27.9 [28.5; 27.6] | 0.48 | 4 [100%] | 0 [0%] | 0 [0%] | 0 [0%] |
| Taiwan | 3 | 24.0 [25.2; 23.2] | 0.50 | 1 [33.3%] | 0 [0%] | 2 [66.7%] | 0 [0%] | |
| Thailand | 62 | 27.4 [29.0; 24.9] | 0.65 | 62 [100%] | 0 [0%] | 0 [0%] | 0 [0%] | |
| Vietnam | 2 | 26.6 [28.0; 25.3] | 0.59 | 2 [100%] | 0 [0%] | 0 [0%] | 0 [0%] | |
| Australia | Australia | 3 | 18.0 [20.2; 15.6] | 0.45 | 0 [0%] | 0 [0%] | 3 [100%] | 0 [0%] |
aRange corresponds to the maximum and minimum average value of the daily mean temperatures of the baseline period estimated across locations
bClimate zone defined according to Köppen-Geiger classification (Kottek et al. 2006), using the first letter: A, equatorial; B, dry; C, warm temperate; D, snow. Any location included in the study was classified as E, polar, so this category was omitted
Fig. 1Change in excess mortality from 1.5- to 2-°C scenario by country, geographic region and climate zone. Red and blue bars represent changes in heat (above minimum mortality temperature) and cold (below minimum mortality temperature) excess mortality, respectively, and black diamond and bar correspond to net excess mortality (heat+cold) and 95% confidence interval.
Fig. 2Trends in changes in excess mortality projected for warming in 2, 3 and 4 °C, relative to 1.5 °C, by geographic region and climate zone. Red and blue bars represent changes in heat (above minimum mortality temperature) and cold (below minimum mortality temperature) excess mortality, respectively, while black squares correspond to net excess mortality (heat+cold) and its 95% confidence interval.
Fig. 3Map showing the geographical distribution of the location-specific total excess mortality change between 1.5 and 2 °C scenarios