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Modeling multi-level survival data in multi-center epidemiological cohort studies: applications from the ELAPSE project
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 4646133
Author(s) Samoli, E.; Rodopoulou, S.; Hvidtfeldt, U. A.; Wolf, K.; Stafoggia, M.; Brunekreef, B.; Strak, M.; Chen, J.; Andersen, Z. J.; Atkinson, R.; Bauwelinck, M.; Bellander, T.; Brandt, J.; Cesaroni, G.; Forastiere, F.; Fecht, D.; Gulliver, J.; Hertel, O.; Hoffmann, B.; de Hoogh, K.; Janssen, N. A. H.; Ketzel, M.; Klompmaker, J. O.; Liu, S.; Ljungman, P.; Nagel, G.; Oftedal, B.; Pershagen, G.; Peters, A.; Raaschou-Nielsen, O.; Renzi, M.; Kristoffersen, D. T.; Severi, G.; Sigsgaard, T.; Vienneau, D.; Weinmayr, G.; Hoek, G.; Katsouyanni, K.
Author(s) at UniBasel de Hoogh, Kees
Vienneau, Danielle
Year 2021
Title Modeling multi-level survival data in multi-center epidemiological cohort studies: applications from the ELAPSE project
Journal Environment international
Volume 147
Pages / Article-Number 106371
Keywords Air pollution; Cox model; Frailty models; Health effects; Mixed models; Multi-level analysis
Mesh terms Air Pollutants, analysis; Air Pollution, analysis; Cohort Studies; Environmental Exposure, analysis; Humans; Particulate Matter, analysis
Abstract BACKGROUND: We evaluated methods for the analysis of multi-level survival data using a pooled dataset of 14 cohorts participating in the ELAPSE project investigating associations between residential exposure to low levels of air pollution (PM2.5 and NO2) and health (natural-cause mortality and cerebrovascular, coronary and lung cancer incidence). METHODS: We applied five approaches in a multivariable Cox model to account for the first level of clustering corresponding to cohort specification: (1) not accounting for the cohort or using (2) indicator variables, (3) strata, (4) a frailty term in frailty Cox models, (5) a random intercept under a mixed Cox, for cohort identification. We accounted for the second level of clustering due to common characteristics in the residential area by (1) a random intercept per small area or (2) applying variance correction. We assessed the stratified, frailty and mixed Cox approach through simulations under different scenarios for heterogeneity in the underlying hazards and the air pollution effects. RESULTS: Effect estimates were stable under approaches used to adjust for cohort but substantially differed when no adjustment was applied. Further adjustment for the small area grouping increased the effect estimates' standard errors. Simulations confirmed identical results between the stratified and frailty models. In ELAPSE we selected a stratified multivariable Cox model to account for between-cohort heterogeneity without adjustment for small area level, due to the small number of subjects and events in the latter. CONCLUSIONS: Our study supports the need to account for between-cohort heterogeneity in multi-center collaborations using pooled individual level data.
ISSN/ISBN 0160-4120
URL https://doi.org/10.1016/j.envint.2020.106371
edoc-URL https://edoc.unibas.ch/89366/
Full Text on edoc Available
Digital Object Identifier DOI 10.1016/j.envint.2020.106371
PubMed ID http://www.ncbi.nlm.nih.gov/pubmed/33422970
ISI-Number WOS:000613514200005
Document type (ISI) Journal Article
 
   

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