Efficient Statistical Algorithms
for Dropout Data
RES840 NIH Drop Out
Missing and dropout data are common features in longitudinal
studies. In many cases, the dropout process is related to
the outcome process. This situation creates tremendous difficulties
in analyzing such data. No commercial software currently considers
the dropout mechanisms in dealing with non-random dropout.
Consequently, the results are biased and misleading. The ultimate
objective of our research is the development of S+Dropout:
a software package for handling various dropout mechanisms.
The research will simultaneously consider the dropout and
the response processes. We will develop model-based approaches
and hierarchical structures for testing the dropout mechanisms.
Efficient EM algorithms and Gibbs sampling will be developed
for fitting various models. Since these algorithms are relying
heavily on the modeling assumptions of the uncollected data,
the validity of the assumptions has to be verified in data
analysis. To perform this investigation, we provide an analytic
and graphic suite for sensitivity analysis. The S+Dropout
module will be implemented as a module in the S-Plus language.
A comprehensive case study guidebook will also be developed
using real problems involving dropout data..
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