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本篇内容主要讲解“R语言怎么使用cgdsr包获取TCGA数据”,感兴趣的朋友不妨来看看。本文介绍的方法操作简单快捷,实用性强。下面就让小编来带大家学习“R语言怎么使用cgdsr包获取TCGA数据”吧!
众所周知,TCGA数据库是目前最综合全面的癌症病人相关组学数据库,包括的测序数据有:
DNA Sequencing
miRNA Sequencing
Protein Expression
mRNA Sequencing
Total RNA Sequencing
Array-based Expression
DNA Methylation
Copy Number
知名的肿瘤研究机构都有着自己的TCGA数据库探索工具,比如:
Broad Institute FireBrowse portal, The Broad Institute
cBioPortal for Cancer Genomics, Memorial Sloan-Kettering Cancer Center
TCGA Batch Effects, MD Anderson Cancer Center
Regulome Explorer, Institute for Systems Biology
Next-Generation Clustered Heat Maps, MD Anderson Cancer Center
其中cBioPortal更是被包装到R包里面
这里介绍如何使用R语言的cgdsr包来获取任意TCGA数据。
cgdsr包:R语言工具包,可以下载TCGA数据。
DT包:data.table包,简称DT包,是R语言中的数据可视化工具包。DT包可以将Javascript中的方法运用到R中,也能将矩阵或者数据表在网页中可视化为表格,以及其它的一些功能。
> setwd("C:/Users/YLAB/Documents/R/win-library/4.1/") > install.packages("R.methodsS3_1.8.1.zip",repos=NULL)#安装 > install.packages("R.oo_1.24.0.zip",repos=NULL)#安装 > install.packages("data.table") > BiocManager::install("cgdsr", force = TRUE)#安装 > library(cgdsr) > library(DT) #创建一个cgdsr对象 > mycgds <- CGDS("http://www.cbioportal.org/") #检查下载是否成功,如果是FAILED就是没成功。 > test(mycgds) getCancerStudies... OK getCaseLists (1/2) ... OK getCaseLists (2/2) ... OK getGeneticProfiles (1/2) ... OK getGeneticProfiles (2/2) ... OK getClinicalData (1/1) ... OK getProfileData (1/6) ... OK getProfileData (2/6) ... OK getProfileData (3/6) ... OK getProfileData (4/6) ... OK getProfileData (5/6) ... OK getProfileData (6/6) ... OK all_TCGA_studies <- getCancerStudies(mycgds) > DT::datatable(all_TCGA_studies)
上表的cancer_study_id其实就是数据集的名字,我们任意选择一个数据集,比如stad_tcga_pub ,可以查看它里面有多少种样本列表方式。
stad2014 <- "stad_tcga_pub" ## 获取在stad2014数据集中有哪些表格(每个表格都是一个样本列表) all_tables <- getCaseLists(mycgds, stad2014) dim(all_tables) ## 共6种样本列表方式 [1] 6 5 DT::datatable(all_tables[,1:3])
查看任意数据集的数据形式
## 而后获取可以下载哪几种数据,一般是mutation,CNV和表达量数据 all_dataset <- getGeneticProfiles(mycgds, stad2014) DT::datatable(all_dataset, extensions = 'FixedColumns', options = list( #dom = 't', scrollX = TRUE, fixedColumns = TRUE ))
一般来说,TCGA的一个项目数据就几种,如下:
my_dataset <- 'stad_tcga_pub_rna_seq_v2_mrna' my_table <- "stad_tcga_pub_rna_seq_v2_mrna" BRCA1 <- getProfileData(mycgds, "BRCA1", my_dataset, my_table) dim(BRCA1) [1] 265 1
样本个数差异很大,不同癌症热度不一样。
## 如果我们需要绘制survival curve,那么需要获取clinical数据 clinicaldata <- getClinicalData(mycgds, my_table) DT::datatable(clinicaldata, extensions = 'FixedColumns', options = list( #dom = 't', scrollX = TRUE, fixedColumns = TRUE ))
只需要根据癌症列表选择自己感兴趣的研究数据集即可,然后选择好感兴趣的数据形式及对应的样本量。就可以获取对应的信息:
library(cgdsr) library(DT) mycgds <- CGDS("http://www.cbioportal.org") ##mycancerstudy = getCancerStudies(mycgds)[25,1] mycancerstudy = 'brca_tcga' getCaseLists(mycgds,mycancerstudy)[,1] ## [1] "brca_tcga_3way_complete" "brca_tcga_all" ## [3] "brca_tcga_protein_quantification" "brca_tcga_sequenced" ## [5] "brca_tcga_cna" "brca_tcga_methylation_hm27" ## [7] "brca_tcga_methylation_hm450" "brca_tcga_mrna" ## [9] "brca_tcga_rna_seq_v2_mrna" "brca_tcga_rppa" ## [11] "brca_tcga_cnaseq"
getGeneticProfiles(mycgds,mycancerstudy)[,1] ## [1] "brca_tcga_rppa" ## [2] "brca_tcga_rppa_Zscores" ## [3] "brca_tcga_protein_quantification" ## [4] "brca_tcga_protein_quantification_zscores" ## [5] "brca_tcga_gistic" ## [6] "brca_tcga_mrna" ## [7] "brca_tcga_mrna_median_Zscores" ## [8] "brca_tcga_rna_seq_v2_mrna" ## [9] "brca_tcga_rna_seq_v2_mrna_median_Zscores" ## [10] "brca_tcga_linear_CNA" ## [11] "brca_tcga_methylation_hm450" ## [12] "brca_tcga_mutations"
mycaselist ='brca_tcga_rna_seq_v2_mrna' mygeneticprofile = 'brca_tcga_rna_seq_v2_mrna' # Get data slices for a specified list of genes, genetic profile and case list expr=getProfileData(mycgds,c('BRCA1','BRCA2'),mygeneticprofile,mycaselist) DT::datatable(expr)
很简单就得到了指定基因在指定癌症的表达量
myclinicaldata = getClinicalData(mycgds,mycaselist) DT::datatable(myclinicaldata, extensions = 'FixedColumns', options = list( #dom = 't', scrollX = TRUE, fixedColumns = TRUE )) ## Warning in instance$preRenderHook(instance): It seems your data is too ## big for client-side DataTables. You may consider server-side processing: ## http://rstudio.github.io/DT/server.html
#突变基因名称集合 mutGene=c("EGFR", "PTEN", "TP53", "ATRX") #检索基因和遗传图谱的基因组图谱数据 mut_df <- getProfileData(mycgds, caseList ="gbm_tcga_sequenced", geneticProfile = "gbm_tcga_mutations", genes = mutGene ) mut_df <- apply(mut_df,2,as.factor) mut_df[mut_df == "NaN"] = "" mut_df[is.na(mut_df)] = "" mut_df[mut_df != ''] = "MUT" DT::datatable(mut_df)
mutGene=c("TP53","UGT2B7","CYP3A4") cna<-getProfileData(mycgds,mutGene,"gbm_tcga_gistic","gbm_tcga_sequenced") cna<-apply(cna,2,function(x) as.character(factor(x,levels = c(-2:2),labels = c("HOMDEL","HETLOSS","DIPLOID","GAIN","AMP")))) cna[is.na(cna)]="" cna[cna=="DIPLOID"]="" DT::datatable(cna)
下面的函数,主要是配色比较复杂,其实原理很简单,就是一个热图。
library(ComplexHeatmap) library(grid) conb <- data.frame(matrix(paste(as.matrix(cna),as.matrix(mut_df),sep = ";"), nrow=nrow(cna),ncol=ncol(cna), dimnames=list(row.names(mut_df),colnames(cna)))) mat <- as.matrix(t(conb)) DT::datatable((mat)) alt <- apply(mat,1,function(x)strsplit(x,";")) alt <- unique(unlist(alt)) alt <- alt[which(alt !="")] alt <-c("background",alt) alter_fun = list( background = function(x,y,w,h){ grid.rect(x,y,w-unit(0.5,"mm"),h-unit(0.5,"mm"), gp=gpar(fill="#CCCCCC",col=NA)) }, HOMDEL = function(x,y,w,h){ grid.rect(x,y,w-unit(0.5,"mm"),h-unit(0.5,"mm"), gp=gpar(fill="blue3",col=NA)) }, HETLOSS = function(x,y,w,h){ grid.rect(x,y,w-unit(0.5,"mm"),h-unit(0.5,"mm"), gp=gpar(fill="cadetblue1",col=NA)) }, GAIN = function(x,y,w,h){ grid.rect(x,y,w-unit(0.5,"mm"),h-unit(0.5,"mm"), gp=gpar(fill="pink",col=NA)) }, AMP = function(x,y,w,h){ grid.rect(x,y,w-unit(0.5,"mm"),h-unit(0.5,"mm"), gp=gpar(fill="red",col=NA)) }, MUT = function(x,y,w,h){ grid.rect(x,y,w-unit(0.5,"mm"),h-unit(0.5,"mm"), gp=gpar(fill="#008000",col=NA)) }) col <- c("MUT"="#008000","AMP"="red","HOMDEL"="blue3", "HETLOSS"="cadetblue1","GAIN"="pink") alt = intersect(names(alter_fun),alt) alt_fun_list <- alter_fun[alt] col <- col[alt] oncoPrint(mat=mat,alter_fun = alt_fun_list, get_type = function(x) strsplit(x,";")[[1]], col = col)
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