TCGA 02 不同数据DEG结果取交集火山图及韦恩图展示

1. 三个数据集差异基因火山图(每10个肿瘤和正常组织样本)

导入表达矩阵,选择NT组的前10和TP组的前10个样本进行差异分析

library(TCGAbiolinks)
# 导入dataFilt表达矩阵
load("dataFilt.RData")

# selection of normal samples "NT"
samplesNT <- TCGAquery_SampleTypes(barcode = colnames(dataFilt),
                                   typesample = c("NT"))
# selection of tumor samples "TP"
samplesTP <- TCGAquery_SampleTypes(barcode = colnames(dataFilt), 
                                   typesample = c("TP"))
# Diff.expr.analysis (DEA)
DEG.LUAD.edgeR <- TCGAanalyze_DEA(mat1 = dataFilt[,samplesNT[1:10]],
                                  mat2 = dataFilt[,samplesTP[1:10]],
                                  pipeline="edgeR",
                                  batch.factors = c("TSS"),
                                  Cond1type = "Normal",
                                  Cond2type = "Tumor",
                                  voom =FALSE, 
                                  method = "glmLRT",
                                  # fdr.cut = 0.01,  #保留FDR<0.01的基因
                                  # logFC.cut = 1 #保留logFC>1的基因
)
# ----------------------- DEA -------------------------------
#   there are Cond1 type Normal in  10 samples
# there are Cond2 type Tumor in  10 samples
# there are  12980 features as miRNA or genes 
# I Need about  8.7 seconds for this DEA. [Processing 30k elements /s]  
# ----------------------- END DEA -------------------------------

绘制第一个火山图

valcano_data <- data.frame(genes=rownames(DEG.LUAD.edgeR), 
                           logFC=DEG.LUAD.edgeR$logFC, 
                           FDR=DEG.LUAD.edgeR$FDR,
                           group=rep("NotSignificant", 
                                     nrow(DEG.LUAD.edgeR)),
                           stringsAsFactors = F)

valcano_data[which(valcano_data['FDR'] < 0.05 & 
                     valcano_data['logFC'] > 1.5),"group"] <- "Increased"
valcano_data[which(valcano_data['FDR'] < 0.05 &
                     valcano_data['logFC'] < -1.5),"group"] <- "Decreased"

cols = c("darkgrey","#00B2FF","orange")
names(cols) = c("NotSignificant","Increased","Decreased")

library(ggplot2)
vol1 <- ggplot(valcano_data, aes(x = logFC, y = -log10(FDR), color = group))+
  scale_colour_manual(values = cols) +
  ggtitle(label = "Volcano Plot 1", subtitle = "LUAD 1-10 samples volcano plot") +
  geom_point(size = 2.5, alpha = 1, na.rm = T) +
  theme_bw(base_size = 14) + 
  theme(legend.position = "right") + 
  xlab(expression(log[2]("logFC"))) + 
  ylab(expression(-log[10]("FDR"))) +
  geom_hline(yintercept = 1.30102, colour="#990000", linetype="dashed") + 
  geom_vline(xintercept = 1.5849, colour="#990000", linetype="dashed") + 
  geom_vline(xintercept = -1.5849, colour="#990000", linetype="dashed")+ 
  scale_y_continuous(trans = "log1p")

选择NT组的11-20和TP组的11-20样本进行差异分析

# Diff.expr.analysis (DEA)
DEG.LUAD.edgeR2 <- TCGAanalyze_DEA(mat1 = dataFilt[,samplesNT[11:20]],
                                  mat2 = dataFilt[,samplesTP[11:20]],
                                  pipeline="edgeR",
                                  batch.factors = c("TSS"),
                                  Cond1type = "Normal",
                                  Cond2type = "Tumor",
                                  voom =FALSE, 
                                  method = "glmLRT",
                                  # fdr.cut = 0.01,  #保留FDR<0.01的基因
                                  # logFC.cut = 1 #保留logFC>1的基因
)
# ----------------------- DEA -------------------------------
#   there are Cond1 type Normal in  10 samples
# there are Cond2 type Tumor in  10 samples
# there are  12980 features as miRNA or genes 
# I Need about  8.7 seconds for this DEA. [Processing 30k elements /s]  
# ----------------------- END DEA -------------------------------

绘制第2个火山图

valcano_data2 <- data.frame(genes=rownames(DEG.LUAD.edgeR2), 
                           logFC=DEG.LUAD.edgeR2$logFC, 
                           FDR=DEG.LUAD.edgeR2$FDR,
                           group=rep("NotSignificant", 
                                     nrow(DEG.LUAD.edgeR2)),
                           stringsAsFactors = F)

valcano_data2[which(valcano_data2['FDR'] < 0.05 & 
                     valcano_data2['logFC'] > 1.5),"group"] <- "Increased"
valcano_data2[which(valcano_data2['FDR'] < 0.05 &
                     valcano_data2['logFC'] < -1.5),"group"] <- "Decreased"

cols = c("darkgrey","#00B2FF","orange")
names(cols) = c("NotSignificant","Increased","Decreased")

library(ggplot2)
vol2 <- ggplot(valcano_data2, aes(x = logFC, y = -log10(FDR), color = group))+
  scale_colour_manual(values = cols) +
  ggtitle(label = "Volcano Plot 2", subtitle = "LUAD 11-20 volcano plot") +
  geom_point(size = 2.5, alpha = 1, na.rm = T) +
  theme_bw(base_size = 14) + 
  theme(legend.position = "right") + 
  xlab(expression(log[2]("logFC"))) + 
  ylab(expression(-log[10]("FDR"))) +
  geom_hline(yintercept = 1.30102, colour="#990000", linetype="dashed") + 
  geom_vline(xintercept = 1.5849, colour="#990000", linetype="dashed") + 
  geom_vline(xintercept = -1.5849, colour="#990000", linetype="dashed")+ 
  scale_y_continuous(trans = "log1p")

选择NT组的21-30和TP组的21-30样本进行差异分析

# Diff.expr.analysis (DEA)
DEG.LUAD.edgeR3 <- TCGAanalyze_DEA(mat1 = dataFilt[,samplesNT[21:30]],
                                  mat2 = dataFilt[,samplesTP[21:30]],
                                  pipeline="edgeR",
                                  batch.factors = c("TSS"),
                                  Cond1type = "Normal",
                                  Cond2type = "Tumor",
                                  voom =FALSE, 
                                  method = "glmLRT",
                                  # fdr.cut = 0.01,  #保留FDR<0.01的基因
                                  # logFC.cut = 1 #保留logFC>1的基因
)
# ----------------------- DEA -------------------------------
#   there are Cond1 type Normal in  10 samples
# there are Cond2 type Tumor in  10 samples
# there are  12980 features as miRNA or genes 
# I Need about  8.7 seconds for this DEA. [Processing 30k elements /s]  
# ----------------------- END DEA -------------------------------

绘制第3个火山图

valcano_data3 <- data.frame(genes=rownames(DEG.LUAD.edgeR3), 
                            logFC=DEG.LUAD.edgeR3$logFC, 
                            FDR=DEG.LUAD.edgeR3$FDR,
                            group=rep("NotSignificant", 
                                      nrow(DEG.LUAD.edgeR3)),
                            stringsAsFactors = F)

valcano_data3[which(valcano_data3['FDR'] < 0.05 & 
                     valcano_data3['logFC'] > 1.5),"group"] <- "Increased"
valcano_data3[which(valcano_data3['FDR'] < 0.05 &
                     valcano_data3['logFC'] < -1.5),"group"] <- "Decreased"

cols = c("darkgrey","#00B2FF","orange")
names(cols) = c("NotSignificant","Increased","Decreased")

library(ggplot2)
vol3 <- ggplot(valcano_data3, aes(x = logFC, y = -log10(FDR), color = group))+
  scale_colour_manual(values = cols) +
  ggtitle(label = "Volcano Plot 3", subtitle = "LUAD 21-30 volcano plot") +
  geom_point(size = 2.5, alpha = 1, na.rm = T) +
  theme_bw(base_size = 14) + 
  theme(legend.position = "right") + 
  xlab(expression(log[2]("logFC"))) + 
  ylab(expression(-log[10]("FDR"))) +
  geom_hline(yintercept = 1.30102, colour="#990000", linetype="dashed") + 
  geom_vline(xintercept = 1.5849, colour="#990000", linetype="dashed") + 
  geom_vline(xintercept = -1.5849, colour="#990000", linetype="dashed")+ 
  scale_y_continuous(trans = "log1p")
library(cowplot)
library(patchwork)
vol1+vol2+vol3
3个火山图合并

2. upset图和韦恩图分析

提取3个数据的差异基因列表

DEG1_up <- valcano_data[valcano_data$group=="Increased", "genes"]
DEG1_down <- valcano_data[valcano_data$group=="Decreased", "genes"]

DEG2_up <- valcano_data[valcano_data2$group=="Increased", "genes"]
DEG2_down <- valcano_data[valcano_data2$group=="Decreased", "genes"]

DEG3_up <- valcano_data[valcano_data3$group=="Increased", "genes"]
DEG3_down <- valcano_data[valcano_data3$group=="Decreased", "genes"]

用Y叔开发的ggupset做Upset图

# devtools::install_github("GuangchuangYu/yyplot")
# devtools::install_github("GuangchuangYu/UpSetR")
# install.packages("venneuler")
# remove.packages("ggplot2")
# install.packages("ggimage")
# if (!requireNamespace("BiocManager", quietly = TRUE))
#     install.packages("BiocManager")
# BiocManager::install("ComplexHeatmap")

# 上调基因
lt_up = list(TCGA_1 = DEG1_up,
             TCGA_2 = DEG2_up,
             TCGA_3 = DEG3_up)
dat_up<- ComplexHeatmap::list_to_matrix(lt_up)
dat_plot_up <-  data.frame(dat_up)

require(UpSetR)
p1 <- upset(dat_plot_up, sets=c("TCGA_3", "TCGA_2", "TCGA_1"),
  keep.order = TRUE)
require(ggplotify)
g1 <- as.ggplot(p1) + ggtitle("Up regulated")


# 下调基因
lt_down = list(TCGA_1 = DEG1_down,
               TCGA_2 = DEG2_down,
               TCGA_3 = DEG3_down)
dat_down<- ComplexHeatmap::list_to_matrix(lt_down)
dat_plot_down <-  data.frame(dat_down)

require(UpSetR)
p2 <- upset(dat_plot_down, , sets=c("TCGA_3", "TCGA_2", "TCGA_1"),
            keep.order = TRUE)
require(ggplotify)
g2 <- as.ggplot(p2) + ggtitle("Down regulated")

# 拼图
library(cowplot)
library(patchwork)
g1+g2
upset图合并

做韦恩图

require(yyplot)
library("ggsci")
g3 <- ggvenn(dat_plot_up) + theme_void() +  
  scale_fill_jco() + ggtitle("Up regulated genes")
g4 <- ggvenn(dat_plot_down) + theme_void() +  
  scale_fill_jco() + ggtitle("Down regulated genes")
g3 + g4
韦恩图合并

upset和韦恩图拼接

require(ggimage)
g1_3 <- g1 + geom_subview(subview=g3+theme_void(), x=.78, y=.8, w=.5, h=.5)
g2_4 <- g2 + geom_subview(subview=g4+theme_void(), x=.78, y=.8, w=.5, h=.5)

g1_3+g2_4

upset和韦恩图合并

3. 火山图、upset图+韦恩图合并

(vol1|vol2|vol3)/
  (g1_3|g2_4)
火山图-韦恩图-upset图合并

挑选出三个数据集中共同上调或下调的基因

up_common <- Reduce(intersect, list(DEG1_up, DEG2_up, DEG3_up))
down_common <- Reduce(intersect, list(DEG1_down, DEG2_down, DEG3_down))
background_genes <- Reduce(union, list(DEG1_up, DEG2_up, DEG3_up,
                                       DEG1_down, DEG2_down, DEG3_down))
up_common_df <- data.frame(gene=up_common, 
                           logFC=valcano_data[valcano_data$genes %in% 
                                                up_common, 
                                              "logFC"])
down_common_df <- data.frame(gene=down_common, 
                             logFC=valcano_data[valcano_data$genes %in% 
                                                  down_common, 
                                                "logFC"])
background_genes_df <- data.frame(gene=background_genes, 
                              logFC=valcano_data[valcano_data$genes %in% 
                                                   background_genes, 
                                                 "logFC"], stringsAsFactors = F)
all_gene_df <- valcano_data[, c("genes", "logFC")]
save(list=c("up_common_df", "down_common_df", "background_genes_df", "all_gene_df"), 
     file="filtered_genes.RData")
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