A Partial Linear Model in the Outcome‐Dependent Sampling Setting to Evaluate the Effect of Prenatal PCB Exposure on Cognitive Function in Children
Abstract
Summary: Outcome‐dependent sampling (ODS) has been widely used in biomedical studies because it is a cost‐effective way to improve study efficiency. However, in the setting of a continuous outcome, the representation of the exposure variable has been limited to the framework of linear models, due to the challenge in terms of both theory and computation. Partial linear models (PLM) are a powerful inference tool to nonparametrically model the relation between an outcome and the exposure variable. In this article, we consider a case study of a PLM for data from an ODS design. We propose a semiparametric maximum likelihood method to make inferences with a PLM. We develop the asymptotic properties and conduct simulation studies to show that the proposed ODS estimator can produce a more efficient estimate than that from a traditional simple random sampling design with the same sample size. Using this newly developed method, we were able to explore an open question in epidemiology: whether in utero exposure to background levels of polychlorinated biphenyls (PCBs) is associated with children's intellectual impairment. Our model provides further insights into the relation between low‐level PCB exposure and children's cognitive function. The results shed new light on a body of inconsistent epidemiologic findings.
Citing Literature
Number of times cited according to CrossRef: 9
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- Ziwen Tan, Guoyou Qin, Haibo Zhou, Estimation of a partially linear additive model for data from an outcome-dependent sampling design with a continuous outcome, Biostatistics, 10.1093/biostatistics/kxw015, 17, 4, (663-676), (2016).
- Jichang Yu, Yanyan Liu, Dale P. Sandler, Haibo Zhou, Statistical inference for the additive hazards model under outcome‐dependent sampling, Canadian Journal of Statistics, 10.1002/cjs.11257, 43, 3, (436-453), (2015).
- Paul W. Stewart, Jacqueline Reihman, Edward Lonky, James Pagano, Issues in the interpretation of associations of PCBs and IQ, Neurotoxicology and Teratology, 10.1016/j.ntt.2011.11.003, 34, 1, (96-107), (2012).
- Jieli Ding, Yanyan Liu, David B. Peden, Steven R. Kleeberger, Haibo Zhou, Regression analysis for a summed missing data problem under an outcome‐dependent sampling scheme, Canadian Journal of Statistics, 10.1002/cjs.11131, 40, 2, (282-303), (2012).




