I have the model below, for which I run a logistic regression including the interaction term (NSAID*Diuretic) ------------------------ fit1=glm(resp ~ nsaid+diuretic+I(nsaid*diuretic), family= binomial,data=w) NSAID Diuretic Present Absent 0 0 185 6527 0 1 53 1444 1 0 42 1293 1 1 25 253 Coefficients Std. Error z value Pr(>|z|) (Intercept) -3.56335 0.07456 -47.794 < 2e-16 *** NSAID 0.13630 0.17361 0.785 0.43242 Diuretic 0.25847 0.15849 1.631 0.10293 I(NSAID*Diuretic) 0.85407 0.30603 2.791 0.00526 ** --- Signif. Codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1 Odds ratio is 2.35 [ln(0.85407)] times higher when NSAID is present in addition to Diuretic. ------------------------------- Odds ratio of Nausea when on Diuretic is exp(0.25847)= 1.29 and the odds ratio of Nausea when on NSAID is exp(0.13630)=1.14 Normally when we want to see the odds ratio of Nausea when a patient is on both drugs we multiply 1.29*1.14= 1.48 (is this correct? do we multiply or do we add?) But since the interaction term is significant then we take that into account? Does that mean that the odds ratio of the interaction is exp(0.25847)*exp(0.13630)*exp(0.85407)=3.486297 ? Or do we use additions? Thanks. -- View this message in context: http://www.nabble.com/Logistic-regression-for-drugs-Interactions-tf3404506.html#a9482343 Sent from the R help mailing list archive at Nabble.com.