Title of article :
Marginal Analysis of A Population-Based Genetic Association Study of Quantitative Traits with Incomplete Longitudinal Data
Author/Authors :
Baojiang, Chen University of Nebraska Medical Center - Department of Biostatitics, U.S.A. , Zhijian, Chen Mount Sinai Hospital - Samuel Lunenfeld Research Institute, Canada , Longyang, Wu University of Waterloo - Department of Statistics and Actuarial Science, Canada , Lihua, Wang Cancer Care Ontario, Canada , Grace, Y. Yi University of Waterloo - Department of Statistics and Actuarial Science, Canada
From page :
109
To page :
123
Abstract :
A common study to investigate gene-environment interaction is designed to be longitudinal and population-based. Data arising from longitudinal association studies often contain missing responses. Naive analysis without taking missingness into account may produce invalid inference, especially when the missing data mechanism depends on the response process. To address this issue in the analysis concerning gene-environment interaction effects, in this paper, we adopt an inverse probability weighted generalized estimating equations (IPWGEE) approach to conduct statistical inference. This approach is attractive because it does not require full model specification yet it can provide consistent estimates under the missing at random (MAR) mechanism. We utilize this method to analyze data arising from a cardiovascular disease study
Keywords :
Generalized estimating equations , genetic association , longitudinal data , missing at random
Journal title :
Journal of the Iranian Statistical Society (JIRSS)
Journal title :
Journal of the Iranian Statistical Society (JIRSS)
Record number :
2578547
Link To Document :
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