## ----style-knitr, eval=TRUE, echo=FALSE, results="asis"--------------------------------- BiocStyle::latex() ## ----chunk0.1, echo=TRUE , eval=FALSE , results="hide" , message=FALSE , warning=FALSE---- # #Given a LowMACA object 'lm' # lm <- newLowMACA(genes=c("TP53" , "TP63" , "TP73")) # lmParams(lm)$clustal_cmd <- "/your/path/to/clustalo" ## ----firstchunk, echo=TRUE , eval=TRUE,results="hide" , message=FALSE , warning=FALSE---- library(LowMACA) #User Input Genes <- c("ADNP","ALX1","ALX4","ARGFX","CDX4","CRX" ,"CUX1","CUX2","DBX2","DLX5","DMBX1","DRGX" ,"DUXA","ESX1","EVX2","HDX","HLX","HNF1A" ,"HOXA1","HOXA2","HOXA3","HOXA5","HOXB1","HOXB3" ,"HOXD3","ISL1","ISX","LHX8") Pfam <- "PF00046" ## ----secondchunk, echo=TRUE------------------------------------------------------------- #Construct the object lm <- newLowMACA(genes=Genes, pfam=Pfam) str(lm , max.level=3) ## ----thirdchunk, echo=TRUE-------------------------------------------------------------- #See default parameters lmParams(lm) #Change some parameters #Accept sequences even with no mutations lmParams(lm)$min_mutation_number <- 0 #Changing selected tumor types #Check the available tumor types in cBioPortal available_tumor_types <- showTumorType() head(available_tumor_types) #Select melanoma, stomach adenocarcinoma, uterine cancer, lung adenocarcinoma, #lung squamous cell carcinoma, colon rectum adenocarcinoma and breast cancer lmParams(lm)$tumor_type <- c("skcm" , "stad" , "ucec" , "luad" , "lusc" , "coadread" , "brca") ## ----fourthchunk, echo=TRUE , eval=TRUE------------------------------------------------- lm <- alignSequences(lm) ## ----fourthchunkBis, echo=TRUE , eval=TRUE , message=FALSE , warning=FALSE------------- lm <- alignSequences(lm , mail="lowmaca@gmail.com") ## ----fifthchunck, echo=TRUE, eval=TRUE-------------------------------------------------- #Access to the slot alignment myAlignment <- lmAlignment(lm) str(myAlignment , max.level=2 , vec.len=2) ## ----sixthchunk, echo=TRUE , eval=TRUE-------------------------------------------------- lm <- getMutations(lm) lm <- mapMutations(lm) ## ----seventhchunk2, echo=TRUE,eval=TRUE------------------------------------------------- #Access to the slot mutations myMutations <- lmMutations(lm) str(myMutations , vec.len=3 , max.level=1) ## ----seventhchunk, echo=TRUE,eval=TRUE-------------------------------------------------- myMutationFreqs <- myMutations$freq #Showing the first genes myMutationFreqs[ , 1:10] ## ----eighthchunk, echo=TRUE , eval=FALSE , message=FALSE , warning=FALSE---------------- # #Local Installation of clustalo # lm <- setup(lm) # #Web Service # lm <- setup(lm , mail="lowmaca@gmail.com") ## ----ninthchunk_pre , echo=TRUE , eval=TRUE--------------------------------------------- #Reuse the downloaded data as a toy example myOwnData <- myMutations$data #How myOwnData should look like for the argument repos str(myMutations$data , vec.len=1) #Read the mutation data repository instead of using cgdsr package #Following the process step by step lm <- getMutations(lm , repos=myOwnData) #Setup in one shot lm <- setup(lm , repos=myOwnData) ## ----tenthchunk, echo=TRUE , eval=TRUE-------------------------------------------------- lm <- entropy(lm) #Global Score myEntropy <- lmEntropy(lm) str(myEntropy) #Per position score head(myAlignment$df) ## ----eleventhchunk, echo=TRUE----------------------------------------------------------- significant_muts <- lfm(lm) #Display original mutations that formed significant clusters (column Multiple_Aln_pos) head(significant_muts) #What are the genes mutated in position 4 in the consensus? genes_mutated_in_pos4 <- significant_muts[ significant_muts$Multiple_Aln_pos==4 , 'Gene_Symbol'] ## ----eleventh_2chunck , echo=TRUE------------------------------------------------------- sort(table(genes_mutated_in_pos4)) ## ----echo=TRUE, eval=TRUE, results="hide"----------------------------------------------- bpAll(lm) ## ----echo=TRUE, eval=TRUE, results="hide"----------------------------------------------- lmPlot(lm) ## ----protterChunk, echo=TRUE, eval=TRUE, message=FALSE, warning=FALSE------------------- #This plot is saved as a png image protter(lm , filename="homeobox.png") ## ----allPfamAnalysis, eval=TRUE--------------------------------------------------------- #Load Homeobox example data(lmObj) #Extract the data inside the object as a toy example myData <- lmMutations(lmObj)$data #Run allPfamAnalysis on every mutations significant_muts <- allPfamAnalysis(repos=myData) #Show the result of alignment based analysis head(significant_muts$AlignedSequence) #Show all the genes that harbor significant mutations unique(significant_muts$AlignedSequence$Gene_Symbol) #Show the result of the Single Gene based analysis head(significant_muts$SingleSequence) #Show all the genes that harbor significant mutations unique(significant_muts$SingleSequence$Gene_Symbol) ## ----summary, eval=FALSE , echo=TRUE---------------------------------------------------- # library(LowMACA) # Genes <- c("ADNP","ALX1","ALX4","ARGFX","CDX4","CRX" # ,"CUX1","CUX2","DBX2","DLX5","DMBX1","DRGX" # ,"DUXA","ESX1","EVX2","HDX","HLX","HNF1A" # ,"HOXA1","HOXA2","HOXA3","HOXA5","HOXB1","HOXB3" # ,"HOXD3","ISL1","ISX","LHX8") # Pfam <- "PF00046" # lm <- newLowMACA(genes=Genes , pfam=Pfam) # lmParams(lm)$tumor_type <- c("skcm" , "stad" , "ucec" , "luad" # , "lusc" , "coadread" , "brca") # lmParams(lm)$min_mutation_number <- 0 # lm <- setup(lm , mail="lowmaca@gmail.com") # lm <- entropy(lm) # lfm(lm) # bpAll(lm) # lmPlot(lm) # protter(lm) ## ----info,echo=TRUE--------------------------------------------------------------------- sessionInfo()