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Multiple Imputation in mice/norm

Folks:

A comment ... subject to vigorous refutation, since it's jmui (just my
uninformed opinon).

It strikes me that this is a case where one may need own up to the
limitations of the data and be transparent about the tentativeness of the
statistical approaches. I say this because the statistical literature and
popular perception often seem to be that statistical methodology can
overcome these limitations and produce definitive answers in spite of them.
And, of course, statistical researchers tend to be enamored with their
clever methodology and gloss over the inevitable fact that their proofs
begin with "assume that ... " (reminding me of the old saw that "assume" can
make an ass out of u and me). 

Perhaps a useful approach is sensitivity analysis: try several quite
different approaches, each consistent with one reasonable set of
assumptions, and see how they compare. Not a new idea, of course, but
perhaps one worth being reminded of in such situations.

As always, thanks for **your** knowledgeable summary of exactly these
matters, Frank.

-- Bert Gunter
Genetech

-----Original Message-----
From: r-help-bounces at r-project.org [mailto:r-help-bounces at r-project.org] On
Behalf Of Frank E Harrell Jr
Sent: Saturday, April 25, 2009 3:38 PM
To: David Winsemius
Cc: Emmanuel Charpentier; r-help at stat.math.ethz.ch
Subject: Re: [R] Multiple Imputation in mice/norm
David Winsemius wrote:
Yes it's easier to handle in the dependent variable.  For independent 
variables below the limit of detection we are left with model-based 
extrapolation for multiple imputation, with no way to check the 
imputation model's regression assumption.  Predictive mean matching 
can't be used.

Frank