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 deaths and 36 
candidate comorbidities.

I wish to compare the discrimination of the two comorbidity measures, i.e. I 
have two non-nested Cox models. I get the following output with

> rcorrp.cens(myscore.lp, charlson.lp, Surv(time, dead), method=1):

x1 = My comorbidity score, x2 = Charlson
                   [,1]
Dxy                "-0.0605"
S.D.               "0.00648"
x1 more concordant "0.4697"
x2 more concordant "0.5302"
n                  "1.369e+04"
missing            "0"
uncensored         "9411"
Relevant Pairs     "1.587e+08"
Uncertain          "2.861e+07"
C X1               "0.395"
C X2               "0.401"
Dxy X1             "-0.21"
Dxy X2             "-0.198"

I am aware that because a high hazard means short survival I must subtract C X1 
and C X2 from 1, so my comorbidity score has marginally better discrimination 
than the Charlson score (C = 0.605 vs. 0.599; with correction for optimism bias 
using the rms package my model's C falls to 0.602).
Question: Is it true that my score is more discriminative than the Charlson 
score in 53% of patient pairs?

I have done the same analysis with 'method = 2', i.e.
> rcorrp.cens(myscore.lp, charlson.lp, Surv(time, dead), method=2):

x1 = My comorbidity score, x2 = Charlson
                   [,1]
Dxy                "-0.006002"
S.D.               "0.001102"
x1 more concordant "0.04018"
x2 more concordant "0.04618"
n                  "1.369e+04"
missing            "0"
uncensored         "9411"
Relevant Pairs     "1.587e+08"
Uncertain          "2.861e+07"
C X1               "0.395"
C X2               "0.401"
Dxy X1             "-0.21"
Dxy X2             "-0.198"

Question: How do I interpret the 'x1/x2 more concordant' numbers in a Cox 
regression setting? My guess: My comorbidity score concordant in 4.6% of pairs 
but Charlson's score is not. And Charlson's score is concordant in 4.0% of 
pairs but my comorbidity score is not.

Thank you in advance for your insight and help.

Best regards,
Peter Jepsen
Aarhus, Denmark

        [[alternative HTML version deleted]]

______________________________________________
R-help@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.

Reply via email to