competing risk model with time dependent covariates under R or Splus

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competing risk model with time dependent covariates under R or Splus

BXC (Bendix Carstensen)
This message was also sent to the MEDSTATS mailing list, so here is the reply I posted to that:

Philippe,

The machinery to use is to split follow-up time so finely that you can safely assume that rates are constant in each interval, and then just stuff it all into a Poisson model. This allows you to use any kind of time-dependent variables as well as accommodating competing risks.

In the Epi package (http://staff.pubhealth.ku.dk/~bxc/Epi/) on CRAN there is a machinery for representation and manipulation of multistate data (of which competing risks are a special case), see the function Lexis().
It also has a time-splitting function there, splitLexis().

If you take a look at practical 14 from this year's SPE course:
http://staff.pubhealth.ku.dk/~bxc/SPE/2008/pracs.pdf
there is an example that addresses the problem you are having, practical no. 14.
If go to the folder
http://staff.pubhealth.ku.dk/~bxc/SPE/2008/R
you will find the R-code that runs the solution to the practical. The data used is a part of the Epi-package, so you just have to load the Epi package first.

It is however not using the Fine/Gray approach, but is directly modelling the cause-specific rates taking time dependent covariates into account.

Best regards,
Bendix
______________________________________________

Bendix Carstensen
Senior Statistician
Steno Diabetes Center
Niels Steensens Vej 2-4
DK-2820 Gentofte
Denmark
+45 44 43 87 38 (direct)
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[hidden email]   http://www.biostat.ku.dk/~bxc


> -----Original Message-----
> From: [hidden email]
> [mailto:[hidden email]] On Behalf Of pguardio
> Sent: 26. juli 2008 22:47
> To: MedStats
> Subject: {MEDSTATS} competing risk model with time dependent
> covariates under R or Splus
>
>
>
> Dear members,
>
> is there a way to perform a competing risk model which can
> handle time dependent covariates under either R ou SPlus ?
>
> my main covariate (additional treatment to patients) violates
> the proportional hazards assumption, its effect being
> observed after one year of the main treatment, not before
> (this is expected / makes sense on a clinical point of view).
> So I was planning to use a time dependent Cox model with 2
> time intervals for patients: < > 1 year etc...
>
> However, I need to use a competing risk model because a large
> number of patients dies from early toxicity from main
> treatment (not related to the additional treatment I m
> evaluating the effect) or from events unrelated to the
> disease or the treatments (elderly patients).
> Therefore, to analyze the effect of my covariate of interest
> on disease free survival and relapse incidence, I d like to
> use a competing risk model such as the Gray CMPRSK.
>
> However, I cannot have multiple "lines" for the same patient
> (cluster function is not allowed in CMPRSK) with this package
> (for time dep covariates I need 1 or 2 lines with same Id /UPN).
>
> Does anyone knows how can I manage this in CMPRSK ?
>
> Any help will be greatly appreciated
> Thanks
> Yours sincerely
>
> Philippe Guardiola
>

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