Search
Notification
Most popular papers
COBRA Notification
Most Popular Papers
Institutions: Join COBRA
About COBRA
- Multiple imputation - Review of theory, implementation and software
-
-
Download the Paper
Forward to a colleague
- Abstract:
- Missing data is a common complication in data analysis. In many
medical settings missing data can cause difficulties in estimation,
precision and inference. Multiple imputation (MI) \cite{Rubin87} is
a simulation based approach to deal with incomplete data. Although
there are many different methods to deal with incomplete data, MI
has become one of the leading methods. Since the late 80's we
observed a constant increase in the use and publication of MI
related research. This tutorial does not attempt to cover all the
material concerning MI, but rather provides an overview and combines
together the theory behind MI, the implementation of MI, and
discusses increasing possibilities of the use of MI using commercial
and free software. We illustrate some of the major points using an
example from an Alzheimer disease (AD) study. In this AD study,
while clinical data are available for all subjects, postmortem data
are only available for the subset of those who died and underwent an
autopsy. Analysis of incomplete data requires making unverifiable
assumptions. These assumptions are discussed in detail in the text.
Relevant S-Plus code is provided.
- Subject Area:
- General Biostatistics
- Suggested Citation:
- Ofer Harel and Xiao-Hua Zhou,
"Multiple imputation - Review of theory, implementation and software"
(September 7, 2006).
UW Biostatistics Working Paper Series.
Working Paper 297.
http://www.bepress.com/uwbiostat/paper297