Hi,
After I've done a nearest neigbor propensity score matching, I have made an comparisons between the 2 treatment subgroups based on their matched variables. With the exception of the difference in gender, the differences in all matched variables (15 variables) were successfully reduced (no significant P-value between both treatment groups).
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Now I want to do an subanalysis of only male patients by difference in treatment to see if they are associated with higher rates my outcomes.
Would you reckon this is a good solution to include gender in my study? Do I need to do a Bonferroni adjustment because of multiple comparisons?
Thank you in advance,
Reinout
After I've done a nearest neigbor propensity score matching, I have made an comparisons between the 2 treatment subgroups based on their matched variables. With the exception of the difference in gender, the differences in all matched variables (15 variables) were successfully reduced (no significant P-value between both treatment groups).
Now I want to do an subanalysis of only male patients by difference in treatment to see if they are associated with higher rates my outcomes.
Would you reckon this is a good solution to include gender in my study? Do I need to do a Bonferroni adjustment because of multiple comparisons?
Thank you in advance,
Reinout
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