A Quantile-Based g-Computation Approach to Addressing the Effects of Exposure Mixtures
University of North Carolina at Chapel Hill · National Institutes of Health · +2 more institutions
Abstract
Exposure mixtures frequently occur in data across many domains, particularly in the fields of environmental and nutritional epidemiology. Various strategies have arisen to answer questions about exposure mixtures, including methods such as weighted quantile sum (WQS) regression that estimate a joint effect of the mixture components.
We demonstrate a new approach to estimating the joint effects of a mixture: quantile g-computation. This approach combines the inferential simplicity of WQS regression with the flexibility of g-computation, a method of causal effect estimation. We use simulations to examine whether quantile g-computation and WQS regression can accurately and precisely estimate the effects of mixtures in a variety of common scenarios.
Citation impact
- FWCI
- 55.81
- Percentile
- 100%
- References
- 49
Authors
6- APAlexander P. KeilCorresponding
University of North Carolina at Chapel Hill, National Institutes of Health, National Institute of Environmental Health Sciences
- JPJessie P. Buckley
Johns Hopkins University
- KMKatie M. O’Brien
National Institutes of Health, National Institute of Environmental Health Sciences
- KKKelly K. Ferguson
National Institutes of Health, National Institute of Environmental Health Sciences
- SZShanshan Zhao
National Institutes of Health, National Institute of Environmental Health Sciences
Topics & keywords
- Quantile
- Quantile regression
- Statistics
- Econometrics
- Inference
- Regression
- Confounding
- Causal inference