inst/scripts/SCATE.R

## -----------------------------------------------------------------------------
# load in SCATE
options(warn=-1)
suppressMessages(library(SCATE))
set.seed(12345)
# set up locations to bam files
bamlist <- list.files(paste0(system.file(package="SCATEData"),
                             "/extdata/example"),
                      full.names = TRUE)
head(bamlist)

## -----------------------------------------------------------------------------
satac <- satacprocess(input=bamlist,type='bam',libsizefilter=1000)
# Number of elements in satac
length(satac)
# Content in the first element as an example
satac[[1]]

## -----------------------------------------------------------------------------
names(satac) <- sub('.*/','',names(satac))

## -----------------------------------------------------------------------------
clusterres <- cellcluster(satac,genome="hg19",clunum=2,perplexity=5)

## -----------------------------------------------------------------------------
# tSNE results
tsne <- clusterres[[1]]
head(tsne)
# clustering results
cluster <- clusterres[[2]]
cluster
# cell 'GSM1596840.bam' belongs to cluster 1, and cell 'SRR1779746.bam' belongs to cluster 2.
# aggregated signal for CRE cluster
aggsig <- clusterres[[3]]
aggsig[seq(1,3),seq(1,3)]

## -----------------------------------------------------------------------------
library(ggplot2)
plotdata <- data.frame(tSNE1=tsne[,1],
                       tSNE2=tsne[,2],
                       Cluster=as.factor(cluster))
ggplot(plotdata,aes(x=tSNE1,y=tSNE2,col=Cluster)) + 
  geom_point()

## -----------------------------------------------------------------------------
res <- SCATE(satac,genome="hg19",cluster=cluster,clusterid=NULL,clunum=5000,ncores=1,verbose=TRUE)
# check the 10000-10005th row of the matrix
res[seq(10000, 10005),]

## -----------------------------------------------------------------------------
# use similar ways to construct the cluster
usercellcluster <- rep(seq(1,2),each=9)
names(usercellcluster) <- names(satac)
# check the contents of the cluster
usercellcluster

## ----eval=FALSE---------------------------------------------------------------
#  userclusterres <- SCATE(satac,genome="hg19",cluster=usercellcluster,clunum=5000,ncores=1,verbose=TRUE)

## -----------------------------------------------------------------------------
region <- data.frame(chr=c('chr5','chr5'),start=c(50000,50700),end=c(50300,51000))
region

## -----------------------------------------------------------------------------
extractres <- extractfeature(res,region,mode='overlap')
extractres

## ----eval=FALSE---------------------------------------------------------------
#  extractres <- extractfeature(res,region,mode='overlap',folder='destination folder')

## -----------------------------------------------------------------------------
peakres <- peakcall(res)
# check the result for the first cluster
head(peakres[[1]])

## ----eval=FALSE---------------------------------------------------------------
#  write.table(peakres[[1]],file='your file.bed',sep='\t',quote=FALSE,col.names = FALSE,row.names = FALSE)

## ----eval=FALSE---------------------------------------------------------------
#  piperes <- SCATEpipeline(bamlist,genome="hg19",cellclunum=2,CREclunum=5000,perplexity=5,ncores=1)
#  # get the cell cluster results, same as calling 'cellcluster' function.
#  cluster <- piperes[['cellcluster']]
#  # get the SCATE outputs, same as calling 'SCATE' function.
#  SCATEres <- piperes[['SCATE']]
#  # get the peak calling results, same as calling 'peakcall' function.
#  peakres <- piperes[['peak']]

## ----eval=FALSE---------------------------------------------------------------
#  extractres <- extractfeature(piperes[['SCATE']],region,mode='overlap',folder='destination folder')

## ----eval=FALSE---------------------------------------------------------------
#  makedatabase(datapath,savepath,bamfile=bamfile,cre=cre,genome='hg19')

## ----eval=FALSE---------------------------------------------------------------
#  makedatabase(datapath=NULL,savepath,bamfile=bamfile,cre=cre,genomerange=genomerange)

## ----eval=FALSE---------------------------------------------------------------
#  piperes <- SCATEpipeline(bamlist,datapath='path to new database')

## ----eval=FALSE---------------------------------------------------------------
#  clusterres <- cellcluster(satac,datapath='path to new database',clunum=2,perplexity=5)
#  cluster <- clusterres[[2]]
#  res <- SCATE(satac,datapath='path to new database',cluster=cluster,clusterid=NULL)

## ----eval=FALSE---------------------------------------------------------------
#  sessionInfo()

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SCATE documentation built on Nov. 8, 2020, 5:56 p.m.