Hwashin H Shin1, Sabit Cakmak2, Orly Brion2, Paul Villeneuve3, Michelle C Turner4, Mark S Goldberg5, Michael Jerrett6, Hong Chen7, Dan Crouse2, Paul Peters8, C Arden Pope9, Richard T Burnett10. 1. Population Studies Division, Health Canada, Ottawa, Canada; Department of Mathematics and Statistics, Queen's University, Kingston, Canada. 2. Population Studies Division, Health Canada, Ottawa, Canada. 3. Population Studies Division, Health Canada, Ottawa, Canada; Division of Occupational and Environmental Health, Dalla Lama School of Public Health, University of Toronto, Toronto, Canada. 4. Institute of Population Health, University of Ottawa, Ottawa, Canada. 5. Department of Medicine, McGill University, Montreal, Canada. 6. School of Public Health, University of California, Berkeley, CA, USA. 7. Public Health Ontario, Toronto, Ontario, Canada. 8. Statistics Canada, Ottawa, Canada. 9. Department of Economics, Brigham Young University, Provo, USA. 10. Population Studies Division, Health Canada, Ottawa, Canada. Electronic address: rick.burnett@hc-sc.gc.ca.
Abstract
OBJECTIVES: Develop statistical methods for survival models to indirectly adjust hazard ratios of environmental exposures for missing risk factors. METHODS: A partitioned regression approach for linear models is applied to time to event survival analyses of cohort study data. Information on the correlation between observed and missing risk factors is obtained from ancillary data sources such as national health surveys. The relationship between the missing risk factors and survival is obtained from previously published studies. We first evaluated the methodology using simulations, by considering the Weibull survival distribution for a proportional hazards regression model with varied baseline functions, correlations between an adjusted variable and an adjustment variable as well as selected censoring rates. Then we illustrate the method in a large, representative Canadian cohort of the association between concentrations of ambient fine particulate matter and mortality from ischemic heart disease. RESULTS: Indirect adjustment for cigarette smoking habits and obesity increased the fine particulate matter-ischemic heart disease association by 3%-123%, depending on the number of variables considered in the adjustment model due to the negative correlation between these two risk factors and ambient air pollution concentrations in Canada. The simulations suggested that the method yielded small relative bias (<40%) for most cohort designs encountered in environmental epidemiology. CONCLUSIONS: This method can accommodate adjustment for multiple missing risk factors simultaneously while accounting for the associations between observed and missing risk factors and between missing risk factors and health endpoints. Crown
OBJECTIVES: Develop statistical methods for survival models to indirectly adjust hazard ratios of environmental exposures for missing risk factors. METHODS: A partitioned regression approach for linear models is applied to time to event survival analyses of cohort study data. Information on the correlation between observed and missing risk factors is obtained from ancillary data sources such as national health surveys. The relationship between the missing risk factors and survival is obtained from previously published studies. We first evaluated the methodology using simulations, by considering the Weibull survival distribution for a proportional hazards regression model with varied baseline functions, correlations between an adjusted variable and an adjustment variable as well as selected censoring rates. Then we illustrate the method in a large, representative Canadian cohort of the association between concentrations of ambient fine particulate matter and mortality from ischemic heart disease. RESULTS: Indirect adjustment for cigarette smoking habits and obesity increased the fine particulate matter-ischemic heart disease association by 3%-123%, depending on the number of variables considered in the adjustment model due to the negative correlation between these two risk factors and ambient air pollution concentrations in Canada. The simulations suggested that the method yielded small relative bias (<40%) for most cohort designs encountered in environmental epidemiology. CONCLUSIONS: This method can accommodate adjustment for multiple missing risk factors simultaneously while accounting for the associations between observed and missing risk factors and between missing risk factors and health endpoints. Crown
Authors: Hong Chen; Jeffrey C Kwong; Ray Copes; Paul J Villeneuve; Mark S Goldberg; Sherry L Ally; Scott Weichenthal; Aaron van Donkelaar; Michael Jerrett; Randall V Martin; Jeffrey R Brook; Alexander Kopp; Richard T Burnett Journal: Int J Epidemiol Date: 2017-04-01 Impact factor: 7.196
Authors: Dan L Crouse; Paul A Peters; Paul J Villeneuve; Marc-Olivier Proux; Hwashin H Shin; Mark S Goldberg; Markey Johnson; Amanda J Wheeler; Ryan W Allen; Dominic Odwa Atari; Michael Jerrett; Michael Brauer; Jeffrey R Brook; Sabit Cakmak; Richard T Burnett Journal: J Expo Sci Environ Epidemiol Date: 2015-01-21 Impact factor: 5.563
Authors: Lauren Pinault; Michael Tjepkema; Daniel L Crouse; Scott Weichenthal; Aaron van Donkelaar; Randall V Martin; Michael Brauer; Hong Chen; Richard T Burnett Journal: Environ Health Date: 2016-02-11 Impact factor: 5.984
Authors: Scott Weichenthal; Li Bai; Marianne Hatzopoulou; Keith Van Ryswyk; Jeffrey C Kwong; Michael Jerrett; Aaron van Donkelaar; Randall V Martin; Richard T Burnett; Hong Lu; Hong Chen Journal: Environ Health Date: 2017-06-19 Impact factor: 5.984
Authors: Dan L Crouse; Paul A Peters; Perry Hystad; Jeffrey R Brook; Aaron van Donkelaar; Randall V Martin; Paul J Villeneuve; Michael Jerrett; Mark S Goldberg; C Arden Pope; Michael Brauer; Robert D Brook; Alain Robichaud; Richard Menard; Richard T Burnett Journal: Environ Health Perspect Date: 2015-11-01 Impact factor: 9.031
Authors: Saeha Shin; Li Bai; Tor H Oiamo; Richard T Burnett; Scott Weichenthal; Michael Jerrett; Jeffrey C Kwong; Mark S Goldberg; Ray Copes; Alexander Kopp; Hong Chen Journal: J Am Heart Assoc Date: 2020-03-09 Impact factor: 5.501
Authors: Li Bai; Saeha Shin; Tor H Oiamo; Richard T Burnett; Scott Weichenthal; Michael Jerrett; Jeffrey C Kwong; Ray Copes; Alexander Kopp; Hong Chen Journal: Environ Health Perspect Date: 2020-08-12 Impact factor: 9.031