## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, warning = FALSE, eval=FALSE ) ## ----warning=FALSE, message=FALSE--------------------------------------------- # library(RaCE.NMA) # library(ggplot2) # library(dplyr) # library(cowplot) # library(gridExtra) # library(reshape2) ## ----fig.asp=0.35------------------------------------------------------------- # s <- 0.1 # g1a<-ggplot()+scale_x_continuous(limits=c(-3*s,1+3*s))+ # stat_function(fun = dnorm, args = list(mean = 0, sd =s))+ # stat_function(fun = dnorm, args = list(mean = 1, sd =s))+ # theme_bw()+labs(x=" ",y="Density",subtitle=expression(hat(sigma)~"=0.1"))+ # theme(panel.grid.minor = element_blank(),panel.grid.major.y = element_blank()) # s <- 0.3 # g1b<-ggplot()+scale_x_continuous(limits=c(-3*s,1+3*s))+ # stat_function(fun = dnorm, args = list(mean = 0, sd =s))+ # stat_function(fun = dnorm, args = list(mean = 1, sd =s))+ # theme_bw()+labs(x="Posterior Intervention Effects",y=NULL,subtitle=expression(hat(sigma)~"=0.3"))+ # theme(panel.grid.minor = element_blank(),panel.grid.major.y = element_blank()) # s <- 0.5 # g1c<-ggplot()+scale_x_continuous(limits=c(-3*s,1+3*s))+ # stat_function(fun = dnorm, args = list(mean = 0, sd =s))+ # stat_function(fun = dnorm, args = list(mean = 1, sd =s))+ # theme_bw()+labs(x=" ",y=NULL,subtitle=expression(hat(sigma)~"=0.5"))+ # theme(panel.grid.minor = element_blank(),panel.grid.major.y = element_blank()) # grid.arrange(g1a,g1b,g1c,nrow=1) ## ----cache=TRUE--------------------------------------------------------------- # ## Perform simulation study # set.seed(1) # results <- matrix(NA,nrow=0,ncol=6) # for(iter in 1:20){ # for(J in c(6,12,18)){ # for(K in c(J/3,2*J/3,J)){ # for(s in c(0.1,0.3,0.5)){ # if(K==J){ # mu_hat <- 1:K # }else{ # mu_hat <- sample(1:K,J,replace=T) # while(length(unique(mu_hat))0.4,"white","black")) # # g4b<-ggplot(melt(race_ranks_probs), # aes(x=Var1,y=factor(Var2,levels=paste0("mu",1:J), # labels=paste0(1:J)),fill=value))+ # geom_tile() + theme_minimal() + # scale_y_discrete(limits=rev) + # scale_x_continuous(breaks=1:4,limits=c(.5,4.5)) + # scale_fill_gradient(low="white",high="black",limits=c(0,1)) + # labs(x="Rank",y="Treatment",fill="Probability")+ # theme(panel.grid = element_blank(),legend.position = "bottom")+ # geom_text(aes(x=Var1,y=factor(Var2,levels=paste0("mu",1:J),labels=paste0(1:J)), # label=round(value,2)), # color=ifelse(melt(race_ranks_probs)$value>0.4,"white","black")) # # plot_grid(plot_grid(g4a+theme(legend.position = "none"), # g4b+theme(legend.position = "none"), # labels = c('A', 'B'), label_size = 12), # get_plot_component(g4a, 'guide-box-bottom', return_all = TRUE), # nrow=2,rel_heights = c(.9,.1) ) ## ----------------------------------------------------------------------------- # data("wang_posterior") # loads posterior of non-baseline treatments # # # define assumed mean and variance for baseline treatment (R-CHOP) # mu_hat_baseline <- 0 # var_baseline <- min(apply(wang_posterior,2,var))/10 # # # calculate summary statistics, mu_hat and cov, for all treatments # mu_hat <- c( mu_hat_baseline, apply(wang_posterior,2,mean) ) # cov <- cbind( c(var_baseline, rep(0, 10) ), # rbind(0, cov(wang_posterior)) ) # # # store treatment names # treatments <- c("R-CHOP", names(wang_posterior)) ## ----fig.asp = 0.4, warning=FALSE--------------------------------------------- # forestplot_muhat(data=wang_posterior,names=treatments[-1]) ## ----------------------------------------------------------------------------- # mcmc <- mcmc_raceNMA(mu_hat = mu_hat, cov = cov, # mu0 = mean(mu_hat), sigma0 = sqrt(10*var(mu_hat)), # iter = 50000, nu_iter = 5, chains = 4, # seed = 1, verbose = FALSE) ## ----fig.asp=0.45------------------------------------------------------------- # # Figure 6 # g9a <- clusterplot_ranks(data=cbind(0,wang_posterior), # names=treatments,label_ranks=1)+ # theme(legend.position = "bottom") # g9b <- clusterplot_ranks(mcmc=mcmc,names=treatments,label_ranks = 1) # plot_grid(plot_grid(g9a+theme(legend.position = "none"), # g9b+theme(legend.position = "none"), # labels = c('A', 'B'), label_size = 12), # get_plot_component(g9a, 'guide-box-bottom', return_all = TRUE), # nrow=2,rel_heights = c(.9,.1)) # # Figure 7 # g10a <- cumulativeprobplot_ranks(data=cbind(0,wang_posterior),names=treatments)+ # theme(legend.position = "bottom") + # guides(color = guide_legend(nrow = 2)) # g10b <- cumulativeprobplot_ranks(mcmc=mcmc,names=treatments) # plot_grid(plot_grid(g10a+theme(legend.position = "none"), g10b+theme(legend.position = "none"), # labels = c('A', 'B'), label_size = 12), # get_plot_component(g10a, 'guide-box-bottom', return_all = TRUE), # nrow=2,rel_heights = c(.85,.15) ) # # Table 2 # res_WANG <- calculate_SUCRA_MNBT(data = cbind(0,wang_posterior), # level = 0.50, names = treatments) # res_RaCENMA <- calculate_SUCRA_MNBT(mcmc = mcmc, level = 0.50, names = treatments) # table2 <- left_join(res_WANG,res_RaCENMA,by="Treatment")[,c(1,2,4,3,5)] # names(table2) <- c("Treatment","SUCRA (Wang)","SUCRA (RaCE)","MNBT (Wang)","MNBT (RaCE)") # print(table2) ## ----fig.asp=0.4-------------------------------------------------------------- # traceplot_K(mcmc)+ # scale_x_continuous(breaks=seq(125000,250000,by=25000), # labels=paste0(seq(125,250,by=25),"k")) # traceplot_mu(mcmc,names=treatments)+ # scale_x_continuous(breaks=seq(125000,250000,by=25000), # labels=paste0(seq(125,250,by=25),"k")) # forestplot_muhat(mcmc=mcmc,names=treatments)