Here is the problem that I'm trying to solve. I'm using `burn`

dataset from `KMsurv`

library and I'm trying to fit a simple survival model with two simple covariates. One of these predictors is an ordered factor. Perhaps my question is a naive question, When I look at the result, I see the words `L`

and `Q`

in front of my estimated coefficients. Do `L`

and `Q`

refer to linear and quadratic? I expected to see the same number of estimated coefficients but with different estimates when I adjusted an ordered factor compared to adjusting the same factor which is not ordered. Could you guide me on what the result of my fit means (those coeff with `Q`

and `L`

) and how they should be interpreted? I appreciate if you could also refer me to a reference to learn more about adjusting ordered factors.
Here is my code:

```
library(KMsurv)
data(burn)
names(burn) <- c("Obs", "TRT", "Female", "White", "SurfBurned", "HeadBurned",
"buttBurned", "TrunkBurned", "UpperLegBurned", "LowerLegBurned", "resp",
"BurnType", "ExcisionTime", "ExcisionDelta", "prophylacticTime",
"ProphylacticDelta", "straphylInfTime", "straphylInfDelta")
burn$SurfBurned_cat <- factor(cut(burn$SurfBurned, c(0, 10, 25, 100),
labels = c("low", "medium", "high")),
levels = c("low", "medium", "high"), ordered = TRUE)
Q4PcCoxModel <- coxph(Surv(straphylInfTime, straphylInfDelta) ~
TRT*SurfBurned_cat,
data = burn)
summary(Q4PcCoxModel)
```

Thanks for your help.

`burn$SurfBurned`

. The column does not appear to exist, actually, none of the columns you refer to exist in`burn`

– mnel Oct 30 '12 at 3:53`contr.poly`

. L and Q do indeed refer to "linear" and "quadratic" ... – Ben Bolker Oct 30 '12 at 4:10