[R] changes in coxph in "survival" from older version?
Frank Harrell
f.harrell at vanderbilt.edu
Mon May 16 20:25:20 CEST 2011
Please don't be serious about doing variable selection with this dataset.
Frank
Shi, Tao wrote:
>
> Hi Terry,
>
> Really appreciate your help! Sorry for my late reply.
>
> I did realize that there are way more predictors in the model. My initial
> thinking was use that as an initial model for stepwise model selection.
> Now I
> wonder if the model selection result is still valid if the initial model
> didn't
> even converge?
>
> Thanks!
>
> ...Tao
>
>
>
>
> ----- Original Message ----
>> From: Terry Therneau <therneau at mayo.edu>
>> To: "Shi, Tao" <shidaxia at yahoo.com>
>> Cc: r-help at r-project.org
>> Sent: Thu, May 12, 2011 6:42:09 AM
>> Subject: Re: changes in coxph in "survival" from older version?
>>
>>
>> On Wed, 2011-05-11 at 16:11 -0700, Shi, Tao wrote:
>> > Hi all,
>> >
>> > I found that the two different versions of "survival" packages, namely
>>2.36-5
>>
>> > vs. 2.36-8 or later, give different results for coxph function.
>> Please see
>
>> > below and the data is attached. The second one was done on Linux, but
>>Windows
>>
>> > gave the same results. Could you please let me know which one I
>> should
>>trust?
>> >
>> > Thanks,
>>
>> In your case, neither. Your data set has 22 events and 17 predictors;
>> the rule of thumb for a reliable Cox model is 10-20 events per predictor
>> which implies no more than 2 for your data set. As a result, the
>> coefficients of your model have very wide confidence intervals, the coef
>> for Male for instance has se of 3.26, meaning the CI goes from 1/26 to
>> 26 times the estimate; i.e., there is no biological meaning to the
>> estimate.
>>
>> Nevertheless, why did coxph give a different answer? The later
>> version 2.36-9 failed to converge (20 iterations) with a final
>> log-likelihood of -19.94, the earlier code converges in 10 iterations to
>> -19.91. In version 2.36-6 an extra check was put into the maximizer for
>> coxph in response to an exceptional data set which caused the routine to
>> fail due to overflow of the exp function; the Newton-Raphson iteration
>> algorithm had made a terrible guess in it's iteration path, which can
>> happen with all NR based search methods.
>> I put a limit on the size the linear predictor in the Cox model of
>> 21. The basic argument is that exp(linear-predictor) = relative risk
>> for a subject, and that there is not much biological meaning for risks
>> to be less than exp(-21) ~ 1/(population of the earh). There is more to
>> the reasoning, interested parties should look at the comments in
>> src/coxsafe.c, a 5 line routine with 25 lines of discussion. I will
>> happily accept input the "best" value for the constant.
>>
>> I never expected to see a data set with both convergence of the LL
>> and linear predictors larger than +-15. Looking at the fit (older code)
>> > round(fit2$linear.predictor, 2)
>> [1] 2.26 0.89 4.96 -19.09 -12.10 1.39 2.82 3.10
>> [9] 18.57 -25.25 22.94 8.75 5.52 -27.64 14.88 -23.41
>> [17] 13.70 -28.45 -1.84 10.04 12.62 2.54 6.33 -8.76
>> [25] 9.68 4.39 2.92 3.51 6.02 -17.24 5.97
>>
>> This says that, if the model is to be believed, you have several near
>> immortals in the data set. (Everyone else on earth will perish first).
>>
>> Terry Therneau
>>
>>
>>
>>
>
> ______________________________________________
> R-help at r-project.org mailing list
> https://stat.ethz.ch/mailman/listinfo/r-help
> PLEASE do read the posting guide
> http://www.R-project.org/posting-guide.html
> and provide commented, minimal, self-contained, reproducible code.
>
-----
Frank Harrell
Department of Biostatistics, Vanderbilt University
--
View this message in context: http://r.789695.n4.nabble.com/changes-in-coxph-in-survival-from-older-version-tp3516101p3527017.html
Sent from the R help mailing list archive at Nabble.com.
More information about the R-help
mailing list