Extensions of the distributed lag non-linear model (DLNM) to account for cumulative mortality

被引:0
作者
Chao-Yu Guo
Xing-Yi Huang
Pei-Cheng Kuo
Yi-Hau Chen
机构
[1] National Yang-Ming University,Institute of Public Health, School of Medicine
[2] National Yang Ming Chiao Tung University,Institute of Public Health, School of Medicine
[3] National Yang-Ming University,Department of Medicine, School of Medicine
[4] Academia Sinica,Institute of Statistical Science
来源
Environmental Science and Pollution Research | 2021年 / 28卷
关键词
Distributed lag non-linear model; Multivariate analysis; Temperature; Mortality; Delayed effects;
D O I
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中图分类号
学科分类号
摘要
The effects of meteorological factors on health outcomes have gained popularity due to climate change, resulting in a general rise in temperature and abnormal climatic extremes. Instead of the conventional cross-sectional analysis that focuses on the association between a predictor and the single dependent variable, the distributed lag non-linear model (DLNM) has been widely adopted to examine the effect of multiple lag environmental factors health outcome. We propose several novel strategies to model mortality with the effects of distributed lag temperature measures and the delayed effect of mortality. Several attempts are derived by various statistical concepts, such as summation, autoregressive, principal component analysis, baseline adjustment, and modeling the offset in the DLNM. Five strategies are evaluated by simulation studies based on permutation techniques. The longitudinal climate and daily mortality data in Taipei, Taiwan, from 2012 to 2016 were implemented to generate the null distribution. According to simulation results, only one strategy, named MVDLNM, could yield valid type I errors, while the other four strategies demonstrated much more inflated type I errors. With a real-life application, the MVDLNM that incorporates both the current and lag mortalities revealed a more significant association than the conventional model that only fits the current mortality. The results suggest that, in public health or environmental research, not only the exposure may post a delayed effect but also the outcome of interest could provide the lag association signals. The joint modeling of the lag exposure and the delayed outcome enhances the power to discover such a complex association structure. The new approach MVDLNM models lag outcomes within 10 days and lag exposures up to 1 month and provide valid results.
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页码:38679 / 38688
页数:9
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  • [1] Baccini M(2008)Heat effects on mortality in 15 European cities Epidemiology 19 711-719
  • [2] Biggeri A(2009)High ambient temperature and mortality: a review of epidemiologic studies from 2001 to 2008 Environ Health 8 40-1195
  • [3] Accetta G(2013)Time series regression studies in environmental epidemiology Int J Epidemiol 42 1187-27
  • [4] Kosatsky T(2000)Transitional regression models, with application to environmental time series J Am Stat Assoc 95 16-262
  • [5] Katsouyanni K(2018)The association between ambient temperature and acute diarrhea incidence in Hong Kong, Taiwan, and Japan Sustainability 10 1417-87
  • [6] Analitis A(2015)Mortality related to extreme temperature for 15 cities in northeast Asia Epidemiology 26 255-297
  • [7] Anderson HR(2002)Temperature and mortality in 11 cities of the eastern United States Am J Epidemiol 155 80-2234
  • [8] Bisanti L(2004)Study on relationship between ambient PM10, PM2. 5 pollution and daily mortality in a district in Shanghai. Wei sheng yan jiu= J Hygiene Res 33 293-26
  • [9] D'Ippoliti D(2010)Distributed lag non-linear models Stat Med 29 2224-95
  • [10] Danova J(2014)When are we most vulnerable to temperature variations in a day? PLoS One 9 20-293