Hello everyone, I am a very new user of R and I have a query about the cuminc function in the package cmprsk. In particular I would like to verify that I am interpreting the output correctly when we have a stratification variable. Hypothetical example: group : fair hair, dark hair fstatus: 1=Relapse, 2=TRM, 0=censored strata: sex (M or F) Our data would be split into: Fair, male, relapse Dark,male, relapse Fair, female, relapse Dark, female, relapse Fair, male, TRM Dark,male, TRM Fair, female, TRM Dark, female, TRM Fair, male, censored Dark,male, censored Fair, female, censored Dark, female, censored Am I correct in thinking that the 2 "(Gray's) Tests" which will be printed by R tell us (i) if there are significant differences between those with fair hair and those with dark hair as regards cumulative incidence of relapse [taking into account sex differences] (ii) if there are significant differences between those with fair hair and those with dark hair as regards cumulative incidence of TRM [taking into account sex differences] ? The 'est'and 'var'values are the same regardless of whether we include a stratification variable or not. If we do not include a stratification variable the '(Gray's)tests' results will be different to those when a stratification variable is included and they test (i) if there are significant differences between those with fair hair and those with dark hair as regards cumulative incidence of relapse (ii) if there are significant differences between those with fair hair and those with dark hair as regards cumulative incidence of TRM. Can I ask.....what happens when the "group" variable has say 3 levels? I guess that the "(Gray's) Tests" output in R for each 'cause' (in our case TRM and Relapse) would tell us the significance *overall* three-way comparison of the groups? What if I wanted to determine the significance of pairwise comparisons i.e. so that we were comparing groups (i) 1&2, (ii) 2&3 (iii) 1&3? Many thanks for your help on this matter, Kind Regards, Kim