Handling drop-out in longitudinal studies.

@article{Hogan2004HandlingDI,
  title={Handling drop-out in longitudinal studies.},
  author={Joseph W. Hogan and Jason A Roy and Christina Korkontzelou},
  journal={Statistics in medicine},
  year={2004},
  volume={23 9},
  pages={
          1455-97
        }
}
Drop-out is a prevalent complication in the analysis of data from longitudinal studies, and remains an active area of research for statisticians and other quantitative methodologists. [] Key Method The majority of the tutorial is devoted to detailed analysis of two studies with substantial rates of drop-out, designed to illustrate the use of effective methods that are relatively easy to apply: in the first example, we use both semi-parametric and fully parametric models to analyse repeated binary responses…
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