Bayesian Distributed Lag Interaction Model for Multiple Modifiers
Abstract Number:
3234
Submission Type:
Contributed Abstract
Contributed Abstract Type:
Paper
Participants:
Danielle Demateis (1), Kayleigh Keller (1), Ander Wilson (1)
Institutions:
(1) Colorado State University, Fort Collins, CO
Co-Author(s):
First Author:
Presenting Author:
Abstract Text:
Epidemiological evidence supports an association between maternal exposure to air pollution and birth and child health outcomes. Typically, such associations are estimated by regressing a scalar outcome on daily or weekly measures of exposure during pregnancy using a distributed lag model. However, these associations may be modified by area- or individual-level factors. We propose a Bayesian distributed lag interaction model that allows for a continuous index, a weighted average of multiple modifiers, to modify the association between repeated measures of exposure and an outcome. We estimate our model with a spline cross-basis in a Bayesian hierarchical model. Our model framework allows for simultaneous estimation of index weights and the exposure-time-response function. The index parameterization regularizes the model when modifiers are correlated. Through simulations, we showed that our model out-performs competing methods when there are multiple modifiers of unknown importance. We applied our proposed method to a Colorado birth cohort and estimated the association between birth weight and air pollution modified by a continuous index comprising area- and individual-level factors.
Keywords:
distributed lag models|bayesian hierarchical models|splines|effect modification|environmental epidemiology|fine particulate matter
Sponsors:
Section on Statistics in Epidemiology
Tracks:
Statistical Issues in Environmental Epidemiology
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