On the equivalence of case-crossover and time series methods in environmental epidemiology

Citation
Lu, Yun et L. Zeger, Scott, On the equivalence of case-crossover and time series methods in environmental epidemiology, Biostatistics (Oxford. Print) , 8(2), 2007, pp. 337-344
ISSN journal
14654644
Volume
8
Issue
2
Year of publication
2007
Pages
337 - 344
Database
ACNP
SICI code
Abstract
The case-crossover design was introduced in epidemiology 15 years ago as a method for studying the effects of a risk factor on a health event using only cases.The idea is to compare a case's exposure immediately prior to or during the case-defining event with that same person's exposure at otherwise similar 'reference' times.An alternative approach to the analysis of daily exposure and case-only data is time series analysis.Here, log-linear regression models express the expected total number of events on each day as a function of the exposure level and potential confounding variables. In time series analyses of air pollution, smooth functions of time and weather are the main confounders.Time series and case-crossover methods are often viewed as competing methods.In this paper, we show that case-crossover using conditional logistic regression is a special case of time series analysis when there is a common exposure such as in air pollution studies.This equivalence provides computational convenience for case-crossover analyses and a better understanding of time series models.Time series log-linear regression accounts for overdispersion of the Poisson variance, while case-crossover analyses typically do not.This equivalence also permits model checking for case-crossover data using standard log-linear model diagnostics.