I have a dataset with survival data and a few missing covariates. I've successfully applied the mice-package to imputate m-numbers of datasets using the `mice()`

function, created an `imputationList`

object and applied a Cox PH model on each m-dataset. Subsequently I'ved pooled the results using the `MIcombine()`

function. This leads to my question:

How can I get a p-value for the pooled estimates for each covariate? Are they hidden somewhere within the `MIcombine`

object?

I understand that p-values isn't everything, but reporting estimates and confidence intervals without corresponding p-values seems weird to me. I'm able to calculate an aprox. p-value from the confidence intervals using e.g. the formula provided by Altman, but this seems overly complicated. I've searched around for an answer, but I can't find anyone even mentioning this problem. Am I overlooking something obvious?

E.g.:

```
library(survival)
library(mice)
library(mitools)
test1 <- as.data.frame(list(time=c(4,3,1,1,2,2,3,5,2,4,5,1),
status=c(1,1,1,0,1,1,0,0,1,1,0,0),
x=c(0,2,1,1,NA,NA,0,1,1,2,0,1),
sex=c(0,0,0,0,1,1,1,1,NA,1,0,0)))
dat <- mice(test1,m=10)
mit <- imputationList(lapply(1:10,complete,x=dat))
models <- with(mit,coxph(Surv(time, status) ~ x + strata(sex)))
summary(MIcombine(models))
```

I've tried to sort through the structure of the MIcombine object, but as of yet no luck in finding a p-value.

`str`

to examine your object? Perhaps you could see`str(summary(your.object))`

to see if there's a p-value in there. In any case, could you post a minimal reproducible example that shows how the result looks like (for example of function`MIcombine`

)? stackoverflow.com/questions/5963269/… – Roman Luštrik Jan 3 '13 at 14:14