library(ggplot2) combined = read.csv("data/combined-test-predictions.csv",header=T) test <- read.csv("data/test.csv",header=T) n = c("SMILES","LOAEL","Source") data = data.frame(factor(test$SMILES),test$LOAEL,factor(test$Dataset)) names(data) = n data$Type = "experimental" comb = data.frame(factor(combined$SMILES),combined$LOAEL_predicted,factor(combined$Dataset)) names(comb) = n comb$Type = "predicted" data = rbind(data,comb) data$LOAEL = -log(data$LOAEL) data$SMILES <- reorder(data$SMILES,data$LOAEL) #img <- ggplot(data, aes(SMILES,LOAEL,ymin = min(LOAEL), ymax=max(LOAEL),shape=Source,color=Type)) img <- ggplot(data, aes(SMILES,LOAEL,ymin = min(LOAEL), ymax=max(LOAEL),color=Type)) img <- img + ylab('-log(LOAEL mg/kg_bw/day)') + xlab('Compound') + theme(axis.text.x = element_blank()) img <- img + geom_point() ggsave(file='figure/test-prediction.pdf', plot=img,width=12, height=8)