# # Fit the models found in Wei et. al. # options(contrasts='contr.treatment') wfit <- coxph(Surv(stop, event) ~ (rx + size + number)* strata(enum) + cluster(id), bladder, method='breslow') wfit # Check the rx coefs versus Wei, et al, JASA 1989 rx <- c(1,4,5,6) # the treatment coefs above cmat <- diag(4); cmat[1,] <- 1; #contrast matrix wfit$coef[rx] %*% cmat # the coefs in their paper (table 5) t(cmat) %*% wfit$var[rx,rx] %*% cmat # var matrix (eqn 3.2) # Anderson-Gill fit fita <- coxph(Surv(start, stop, event) ~ rx + size + number + cluster(id), bladder2, method='breslow') fita # Prentice fits. Their model 1 a and b are the same fit1p <- coxph(Surv(stop, event) ~ rx + size + number, bladder2, subset=(enum==1), method='breslow') fit2pa <- coxph(Surv(stop, event) ~ rx + size + number, bladder2, subset=(enum==2), method='breslow') fit2pb <- coxph(Surv(stop-start, event) ~ rx + size + number, bladder2, subset=(enum==2), method='breslow') fit3pa <- coxph(Surv(stop, event) ~ rx + size + number, bladder2, subset=(enum==3), method='breslow') #and etc. fit1p fit2pa fit2pb fit3pa