Fitting the Fractional Polynomial Model to Non-Gaussian Longitudinal Data

نویسندگان

  • Ji Hoon Ryoo
  • Jeffrey D. Long
  • Greg W. Welch
  • Arthur Reynolds
  • Susan M. Swearer
چکیده

As in cross sectional studies, longitudinal studies involve non-Gaussian data such as binomial, Poisson, gamma, and inverse-Gaussian distributions, and multivariate exponential families. A number of statistical tools have thus been developed to deal with non-Gaussian longitudinal data, including analytic techniques to estimate parameters in both fixed and random effects models. However, as yet growth modeling with non-Gaussian data is somewhat limited when considering the transformed expectation of the response via a linear predictor as a functional form of explanatory variables. In this study, we introduce a fractional polynomial model (FPM) that can be applied to model non-linear growth with non-Gaussian longitudinal data and demonstrate its use by fitting two empirical binary and count data models. The results clearly show the efficiency and flexibility of the FPM for such applications.

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عنوان ژورنال:

دوره 8  شماره 

صفحات  -

تاریخ انتشار 2017