Multivariate Adaptive Splines for Analysis of Longitudinal Data |
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Authors: | Heping Zhang |
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Affiliation: | Department of Epidemiology and Public Health , Yale University School of Medicine , New Haven , CT , 06520 , USA |
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Abstract: | Abstract An essential feature of longitudinal data is the existence of autocorrelation among the observations from the same unit or subject. Two-stage random-effects linear models are commonly used to analyze longitudinal data. These models are not flexible enough, however, for exploring the underlying data structures and, especially, for describing time trends. Semi-parametric models have been proposed recently to accommodate general time trends. But these semi-parametric models do not provide a convenient way to explore interactions among time and other covariates although such interactions exist in many applications. Moreover, semi-parametric models require specifying the design matrix of the covariates (time excluded). We propose nonparametric models to resolve these issues. To fit nonparametric models, we use the novel technique of the multivariate adaptive regression splines for the estimation of mean curve and then apply an EM-like iterative procedure for covariance estimation. After giving a general algorithm of model building, we show how to design a fast algorithm. We use both simulated and published data to illustrate the use of our proposed method. |
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Keywords: | Adaptive splines Model selection Recursive partitioning Repeated measurements Time-dependent covariates |
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