Heat map and clustering are used frequently in expression analysis studies for data visualization and quality control. Simple clustering and heat map can be produced from the “heatmap” function package in R. However, the “heatmap” function lacks functionality and customizability, preventing it from generating advanced heat maps and dendrograms. To tackle the limitations of “heatmap” function, we have developed an R package “heatmap3” which significantly improves the original “heatmap” function by adding several more powerful and convenient features. “heatmap3” packages allows user to produce highly customizable state of art heatmap and dendrogram. The heatmap3 package is developed based on the “heatmap” function in R language and it is completely compatible with it. And the new features of “heatmap3” include highly customizable legend and side annotation, a wider range of color selections, new labeling features which allow user to define multiple layers of phenotype variables and automatically conduct association test based on the phenotypes provided. Additional features such as different agglomeration methods for estimating distance between two samples are also added for clustering.
After you have installed heatmap3 package. You can enter R and use following R codes to see the examples for it.
#Load heatmap3 package library(heatmap3) #View help files ?heatmap3 #The examples of heatmap3 and other functions example(heatmap3) example(showLegend) example(showAnn) example(colByValue)
We used the TCGA BRCA data to generate two example figures, which were used in our paper.
First you will need to download the count data. We generate the count data based on the TCGA BRCA samples. You can use the following codes in Linux system to download the count data. Or you can download it in github release page.
wget https://github.com/slzhao/heatmap3/releases/download/example/allSample_edgeR_result.csv wget https://github.com/slzhao/heatmap3/releases/download/example/BRCA_30Samples.csv wget https://github.com/slzhao/heatmap3/releases/download/example/BRCA_30Samples_clinic.csv
Here are the R codes to generate the figures.
#Assume you have already installed heatmap3 package. And the 3 example file were download in current working directory. You can use the following codes in R to generate the figures. #Prepare expression data counts<-read.csv("BRCA_30Samples.csv",header=T,row.names=1) #Prepare column side annotation clinic<-read.csv("BRCA_30Samples_clinic.csv",header=T,row.names=1) #Prepare row side color bar annotation edgeR_result<-read.csv("allSample_edgeR_result.csv",header=T,row.names=1) temp1<-(edgeR_result$logFC) temp2<--log10(edgeR_result$FDR) temp1<-colByValue(as.matrix(temp1),range=c(-4,4),col=colorRampPalette(c('chartreuse4','white','firebrick'))(1024)) temp2<-colByValue(as.matrix(temp2),range=c(0,5),col=heat.colors(1024)) colGene<-cbind(temp1,temp2) row.names(colGene)<-row.names(edgeR_result) colnames(colGene)<-c("log2FC","-Log10P") #Generate Figure1 #counts, colGene and clinic were read throught the csv file ##Assume counts has counts information for each gene, colGene has the colors for each gene, clinic has the clinic information for each sample temp<-apply(counts,1,sd) selectedGenes<-rev(order(temp))[1:500] heatmap3(counts[selectedGenes,],labRow="",margin=c(7,0),RowSideColors=colGene[selectedGenes,],ColSideCut=0.85,ColSideAnn=clinic,ColSideFun=function(x) showAnn(x),ColSideWidth=1.2,balanceColor=T) #Generate Figure2 heatmap3(counts,topN=c(500,3000,nrow(counts)),Rowv=NA,labRow="",margin=c(7,0),RowSideColors=colGene,ColSideCut=0.85,ColSideAnn=clinic,ColSideFun=function(x) showAnn(x),ColSideWidth=1.2,balanceColor=T)
Here is the environment (including the version of packages).
R version 3.0.2 (2013-09-25) Platform: x86_64-w64-mingw32/x64 (64-bit) locale:  LC_COLLATE=English_United States.1252  LC_CTYPE=English_United States.1252  LC_MONETARY=English_United States.1252  LC_NUMERIC=C  LC_TIME=English_United States.1252 attached base packages:  stats graphics grDevices utils datasets methods base other attached packages:  heatmap3_1.0.3 loaded via a namespace (and not attached):  fastcluster_1.1.13 tools_3.0.2
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