A measure of partial association for generalized estimating equations

STATISTICAL MODELLING(2007)

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摘要
in a regression setting, the partial correlation coefficient is often used as a measure of 'standardized' partial association between the outcome y and each of the covariates in x' = [x(1),...,xk]. a linear regression model estimated using ordinary least squares, with y as the response, the estimated partial correlation coefficient between y and x(k) can be shown to be a monotone function, denoted f(z), of the Z-statistic for testing if the regression coefficient Of x(k) is 0. When y is non-normal and the data are clustered so that y and x are obtained from each member of a cluster, generalized estimating equations are often used to estimate the regression parameters of the model for y given x. In this paper, when using generalized estimating equations, we propose using the above transformation f (z) of the GEE Z-statistic as a measure of partial association. Further, we also propose a coefficient of determination to measure the strength of association between the outcome variable and all of the covariates. To illustrate the method, we use a longitudinal study of the binary outcome heart toxicity from chemotherapy in children with leukaemia or sarcoma.
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关键词
coefficient of determination,longitudinal data,repeated measures
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