I have ~4500 exposed people (exposed to drug A) and ~2000 non-exposed people. There is quite a bit of imbalance between the groups, so I have made a propensity score from ~30 variables which cover comorbidities, other drugs, health service utilisation, demographics etc. There is good overlap between the distribution of the PS for both groups.
Now, I want to use this score to match the exposed and the non-exposed. I'm using psmatch2 in stata. I want to do 1:1 matching, with replacement.
psmatch2 exp, outcome(primary) pscore(PS) neighbor(1) caliper(0.22)
Where "primary" is the primary outcome of stroke, "PS" is my pre-calculated propensity score and the value of 0.22 is (0.2*logit of sd of PS).
This approach uses every single person in my dataset. But because I have so many more exposed than non-exposed, the non-exposed people are being used up to 52 times in matches. I'm not too concerned about this. The approach has given good balance on a selection of some variables; see below.
My question is; I now want to run an stcox model. How do I tell the stcox model who the matches are? For example, for the person who is used 52 times to match onto an exposed person.... stcox has no way of knowing this unless I tell it I'm using a matched dataset. Does anyone know how to do this? I suspect some of the variables generated from psmatch2 may be the answer? Am just unsure of how to use.