Hello everyone,
These are some questions about the 'pec' function in R. These questions
deal with prediction error curves and their derivation. Prediction error curves
are documented in, for example, "Efron-type measures of prediction error
for survival analysis" by Gerds and Schumacher.
I have detailed some syntax that I have used at the bottom of this email. The
associated data is available upon request.
In the 'pec' function I have
formula=Surv(OVS,dead)~1
...apparently "for right censored data, the RH side of the formula is used
to specify conditional censoring models".... when there are no covariates
(as in our case)...I understand that we are assuming that censoring occurs
totally at random (for all models).
Say we have a data set containing potential predictor variables X1,X2....Xp.
Our "survival time" variable (time) is measured in months and our
status variable (status) has 0=alive and 1=dead.
Firstly, I would like to ask about how to derive conditional censoring models.
From past conversations it seems that to establish the form of our censoring
model(s), we would use status=event=alive =1 and status=event=death=0. Is this
correct?..
Now, say we are assuming that the model for censoring is of the cox regression
type, do we assess the model for censoring using the usual variable selection
procedures where candidate variables for variable selection are X1,X2....Xp and
we code *alive=1 and dead=0*?
Say we found that X1 and X5 should be included in our cox regression model for
censoring, then we would enter:
formula=Surv(time,status)~X1+X5 and cens.model=cox in function pec.
Am I thinking about this correctly? I think it could be more difficult than
this, so I'd appreciate some guidance.
Replan is the method for estimating prediction error curves. I understand that
replan=none would be used when we don't cross validate i.e. we would create
a model using a specific bootstrap sample and then evaluate its performance on
the same sample.
If we are looking at "bootstrap crossvalidation" (OutOfBag)
method...say we have 500 patients.....it says in the paper - Gerds and
Schumacher - that bootstrap samples Q*_1....Q*_B each of size n are drawn with
replacement from the original data (we have chosen 100 bootstrap samples i.e.
B=100 in our work).
So here I assume that n is equal to the total number of patients i.e. 500 in
this example?
When we decide to sample with replacement, as here,...I am assuming that, for
each of the bootstrap samples, there are 500 patients but some of these patients
could occur in this bootstrap sample more than once.
The documentation says "M is the size of the bootstrap samples for sampling
*without* replacement".
Hence am I correct in thinking that for sampling *with* replacement, M is equal
to n ? i.e. M=n by default. However, if we choose M<n then each of our
bootstrap samples will have 'sampling without replacement' i.e. the
training set would be comprised of n-M patients. Am I correct?
[Each of the bootstrap samples acts as a 'training data set' to generate
a model....the model is then validated using the patients which weren't in
the bootstrap sample. ]
In a study I did using a 286 case data set, I noticed that my prediction error
curves seem to terminate at around 35 months when the actual last survival time
was 248 months. I checked the survival times and corresponding
"alive/dead" for this data set and noticed that the number of
'deaths' gets very sparse after month 35....but I'm still a bit
puzzled as to why the curves end at around 35 months. Perhaps the small number
of cases in the original data set leads to small training data sets and hence to
a termination of the curves at low times? Has anybody else encountered this?
In our study, we wanted to develop a model on a specific bootstrap sample and
then test it out using observations which aren't in the bootstrap sample
(this would be repeated B times)...we chose the 0.632+ bootstrap estimator.
There are many types of estimators for prediction error curves. How should we
decide which is 'best'?
Thanks for any advice on these questions,
Kindest Regards,
Kim
Dr Kim Pearce CStat
Industrial Statistics Research Unit (ISRU)
School of Mathematics and Statistics
Herschel Building
University of Newcastle
Newcastle upon Tyne
United Kingdom
NE1 7RU
Tel. 0044 (0)191 222 6244 (direct)
Fax. 0044 (0)191 222 8020
Email: K.F.Pearce at ncl.ac.uk