Displaying 20 results from an estimated 1000 matches similar to: "[R-pkgs] Major Update to rms package"
2013 Apr 19
2
NAMESPACE and imports
I am cleaning up the rms package to not export functions not to be called
directly by users. rms uses generic functions defined in other packages.
For example there is a latex method in the Hmisc package, and rms has a
latex method for objects of class "anova.rms" so there are anova.rms and
latex.anova.rms functions in rms. I use:
2010 Nov 09
1
Bootstrap confidence intervals using bootcov from the rms package
Hello,
I am using R.12.2.0. I am trying to generate bootstrap confidence intervals
using bootcov from the rms package. I am able to impute the missing data
using aregImpute and to perform a linear regression on the imputed datasets
using fit.mult.impute, but I am unable to use bootcov to generate the
confidence intervals for the R-squared. Here is a small example that should
duplicate the
2010 Feb 12
1
validate (rms package) using step instead of fastbw
Dear All,
For logistic regression models: is it possible to use validate (rms
package) to compute bias-corrected AUC, but have variable selection
with AIC use step (or stepAIC, from MASS), instead of fastbw?
More details:
I've been using the validate function (in the rms package, by Frank
Harrell) to obtain, among other things, bootstrap bias-corrected
estimates of the AUC, when variable
2011 Mar 01
0
Major update to rms package
A new version of rms is now available on CRAN for Linux and Windows (Mac
will probably be available very soon). Largest changes include latex
methods for validate.* and adding the capability to force a subset of
variables to be included in all backwards stepdown models (single model or
validation by resampling).
Recent updates:
* In survplot.rms, fixed bug (curves were undefined if
2011 Mar 01
0
Major update to rms package
A new version of rms is now available on CRAN for Linux and Windows (Mac
will probably be available very soon). Largest changes include latex
methods for validate.* and adding the capability to force a subset of
variables to be included in all backwards stepdown models (single model or
validation by resampling).
Recent updates:
* In survplot.rms, fixed bug (curves were undefined if
2003 Apr 24
1
"Missing links": Hmisc and Design docs
Hi folks,
Using R Version 1.6.2 (2003-01-10)
on SuSE Linux 7.2,
I just installed Hmisc_1.5-3.tar.gz and Design_1.1-5.tar.gz
These were taken from
http://hesweb1.med.virginia.edu/biostat/s/library/r
Checked the dependencies:
Hmisc: grid, lattice, mva, acepack -- all already installed
Design: Hmisc, survival -- survival already installed, so
installed Hmisc first
All seems to go
2012 Nov 29
0
bootstrapped cox regression in rms package (non html!)
Hi,
I am trying to convert a colleague from using SPSS to R, but am having
trouble generating a result that is similar enough to a bootstrapped
cox regression analysis that was run in SPSS. I tried unsuccessfully
with bootcens, but have had some success with the bootcov function in
the rms package, which at least generates confidence intervals similar
to what is observed in SPSS. However, the
2011 Feb 17
0
New version of rms package on CRAN
A new version of rms is now available on CRAN for Linux/UNIX. I expect
Mac and Windows versions to be available in a day or so. This version
works with and requires the newest version of Therneau's survival package.
More information is at http://biostat.mc.vanderbilt.edu/Rrms
Changes in version 3.2-0 (2011-02-14)
* Changed to be compatible with survival 2.36-3 which is now required
2011 Feb 17
0
New version of rms package on CRAN
A new version of rms is now available on CRAN for Linux/UNIX. I expect
Mac and Windows versions to be available in a day or so. This version
works with and requires the newest version of Therneau's survival package.
More information is at http://biostat.mc.vanderbilt.edu/Rrms
Changes in version 3.2-0 (2011-02-14)
* Changed to be compatible with survival 2.36-3 which is now required
2011 Apr 30
0
bootcov or robcov for odds ratio?
Dear list,
I made a logistic regression model (MyModel) using lrm and penalization
by pentrace for data of 104 patients, which consists of 5 explanatory
variables and one binary outcome (poor/good). Then, I found bootcov and
robcov function in rms package for calculation of confidence range of
coefficients and odds ratio by bootstrap covariance matrix and
Huber-White sandwich method,
2010 Jun 20
1
"Unable to fit" error message from the lrm function in the rms library
Hi all,
I have another question about the lrm function (from the rms library) that I cannot find the answer to.
I get an error message when I try to fit a model, and I don't know what to make of it. Please forgive me for not having a toy example, but it appears the size and complexity of my data is somehow causing the error. The best I can do is show you what I type and what errors I get.
2012 Apr 08
0
Need help interpreting output from rcorrp.cens with Cox regression
Dear R-listers,
I am an MD and clinical epidemiologist developing a measure of comorbidity severity for patients with liver disease. Having developed my comorbidity score as the linear predictor from a Cox regression model I want to compare the discriminative ability of my comorbidity measure with the "old" comorbidity measure, Charlson's Comorbidity Index. I have nearly 10,000
2011 May 15
5
Question on approximations of full logistic regression model
Hi,
I am trying to construct a logistic regression model from my data (104
patients and 25 events). I build a full model consisting of five
predictors with the use of penalization by rms package (lrm, pentrace
etc) because of events per variable issue. Then, I tried to approximate
the full model by step-down technique predicting L from all of the
componet variables using ordinary least squares
2011 Jun 03
0
New version of rms package on CRAN
rms version 3.3-1 has been installed on CRAN. New features/bug fixes are
below.
* Added new example for anova.rms for making dot plots of partial R^2
of predictors
* Defined logLik.ols (calls logLik.lm)
* Fixed and cleaned up logLik.rms, AIC.rms
* Fixed residuals.psm to allow other type= values used by
residuals.survreg
* Fixed Predict and survplot.rms to allow for case
2012 Nov 29
5
bootstrapped cox regression (rms package)
Hi,
I am trying to convert a colleague from using SPSS to R, but am having
trouble generating a result that is similar enough to a bootstrapped cox
regression analysis that was run in SPSS. I tried unsuccessfully with
bootcens, but have had some success with the bootcov function in the rms
package, which at least generates confidence intervals similar to what is
observed in SPSS. However, the
2011 May 03
0
Bootstrapping confidence intervals
Hi,
Sorry for repeated question.
I performed logistic regression using lrm and penalized it with pentrace
function. I wanted to get confidence intervals of odds ratio of each
predictor and summary(MyModel) gave them. I also tried to get
bootstrapping standard errors in the logistic regression. bootcov
function in rms package provided them. Then, I found that the confidence
intervals provided by
2011 May 22
1
How to calculate confidence interval of C statistic by rcorr.cens
Hi,
I'm trying to calculate 95% confidence interval of C statistic of
logistic regression model using rcorr.cens in rms package. I wrote a
brief function for this purpose as the followings;
CstatisticCI <- function(x) # x is object of rcorr.cens.
{
se <- x["S.D."]/sqrt(x["n"])
Low95 <- x["C Index"] - 1.96*se
Upper95 <- x["C
2012 Feb 08
1
Discrimination and calibration of Cox model
I have been working on fitting Cox model for prediction by using rms package.
I want to measure model's calibartion and discrimination. Discrimination was
measured by using validate() in rms, Dxy can be transferred to Harrell's c
index. But in this way, I cannot get 95%CI of c index. How can I do this in
R? And by the way, what value should be in c index to present the model's
well?
2009 Jul 24
1
Making rq and bootcov play nice
I have a quick question, and I apologize in advance if, in asking, I
expose my woeful ignorance of R and its packages. I am trying to use
the bootcov function to estimate the standard errors for some
regression quantiles using a cluster bootstrap. However, it seems that
bootcov passes arguments that rq.fit doesn't like, preventing the
command from executing. Here is an example:
2006 Apr 21
1
rcorrp.cens
Hi R-users,
I'm having some problems in using the Hmisc package.
I'm estimating a cox ph model and want to test whether the drop in
concordance index due to omitting one covariate is significant. I think (but
I'm not sure) here are two ways to do that:
1) predict two cox model (the full model and model without the covariate of
interest) and estimate the concordance index (i.e. area