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DOI10.1186/s12940-015-0071-2
Projections of temperature-attributable premature deaths in 209 US cities using a cluster-based Poisson approach
Schwartz, Joel D.1,2; Lee, Mihye1,2; Kinney, Patrick L.3; Yang, Suijia3; Mills, David4; Sarofim, Marcus C.5; Jones, Russell4; Streeter, Richard4; St Juliana, Alexis4; Peers, Jennifer4; Horton, Radley M.6
发表日期2015-11-04
ISSN1476-069X
卷号14
英文摘要

Background: A warming climate will affect future temperature-attributable premature deaths. This analysis is the first to project these deaths at a near national scale for the United States using city and month-specific temperature-mortality relationships.


Methods: We used Poisson regressions to model temperature-attributable premature mortality as a function of daily average temperature in 209 U.S. cities by month. We used climate data to group cities into clusters and applied an Empirical Bayes adjustment to improve model stability and calculate cluster-based month-specific temperature-mortality functions. Using data from two climate models, we calculated future daily average temperatures in each city under Representative Concentration Pathway 6.0. Holding population constant at 2010 levels, we combined the temperature data and cluster-based temperature-mortality functions to project city-specific temperature-attributable premature deaths for multiple future years which correspond to a single reporting year.


Results within the reporting periods are then averaged to account for potential climate variability and reported as a change from a 1990 baseline in the future reporting years of 2030, 2050 and 2100. Results: We found temperature-mortality relationships that vary by location and time of year. In general, the largest mortality response during hotter months (April -September) was in July in cities with cooler average conditions. The largest mortality response during colder months (October-March) was at the beginning (October) and end (March) of the period. Using data from two global climate models, we projected a net increase in premature deaths, aggregated across all 209 cities, in all future periods compared to 1990. However, the magnitude and sign of the change varied by cluster and city.


Conclusions: We found increasing future premature deaths across the 209 modeled U.S. cities using two climate model projections, based on constant temperature-mortality relationships from 1997 to 2006 without any future adaptation. However, results varied by location, with some locations showing net reductions in premature temperature-attributable deaths with climate change.


英文关键词Temperature-attributable premature mortality;United States;Climate change
语种英语
WOS记录号WOS:000364117600001
来源期刊ENVIRONMENTAL HEALTH
来源机构美国环保署
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/60031
作者单位1.Harvard Univ, Sch Publ Hlth, Dept Environm Hlth, Boston, MA 02115 USA;
2.Harvard Univ, Dept Epidemiol, Boston, MA 02115 USA;
3.Columbia Univ, Mailman Sch Publ Hlth, Columbia Climate & Hlth Program, New York, NY USA;
4.Abt Associates Inc, Boulder, CO 80302 USA;
5.US EPA, Climate Change Div, Washington, DC 20460 USA;
6.Columbia Univ, Ctr Climate Syst Res, New York, NY USA
推荐引用方式
GB/T 7714
Schwartz, Joel D.,Lee, Mihye,Kinney, Patrick L.,et al. Projections of temperature-attributable premature deaths in 209 US cities using a cluster-based Poisson approach[J]. 美国环保署,2015,14.
APA Schwartz, Joel D..,Lee, Mihye.,Kinney, Patrick L..,Yang, Suijia.,Mills, David.,...&Horton, Radley M..(2015).Projections of temperature-attributable premature deaths in 209 US cities using a cluster-based Poisson approach.ENVIRONMENTAL HEALTH,14.
MLA Schwartz, Joel D.,et al."Projections of temperature-attributable premature deaths in 209 US cities using a cluster-based Poisson approach".ENVIRONMENTAL HEALTH 14(2015).
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