Last updated: 2020-06-04
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Knit directory: Comparative_APA/analysis/
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File | Version | Author | Date | Message |
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Rmd | a276deb | brimittleman | 2020-06-04 | add robust to unlift |
In a previous analysis I found 300 genes that may be affected by unlifted PAS. I will use this analysis to check if my results are consistent if we are conservative and remove these genes.
library(ggpubr)
Loading required package: ggplot2
Loading required package: magrittr
library(workflowr)
This is workflowr version 1.6.0
Run ?workflowr for help getting started
library(tidyverse)
── Attaching packages ───────────────────────────── tidyverse 1.2.1 ──
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library(cowplot)
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UnfliftGenes=read.table("../data/UnliftedSites/GeneswUnliftedandPassingPAS.txt", header = T,stringsAsFactors = F)
-Effect size relationships
-enrichment for DE/TE
-same diff dominant
Meta=read.table("../data/PAS_doubleFilter/PAS_5perc_either_HumanCoord_BothUsage_meta_doubleFilter.txt", header = T, stringsAsFactors = F) %>% dplyr::select(PAS, chr, start,end, loc)
DiffIso= read.table("../data/DiffIso_Nuclear_DF/AllPAS_withGeneSig.txt", header = T,stringsAsFactors = F) %>% inner_join(Meta, by=c("chr", 'start','end')) %>% filter(loc %in% c("intron","utr3"))
DiffIsoTop=DiffIso %>% mutate(AvgUsageBoth=(Human+Chimp)/2) %>% group_by(gene) %>% arrange(p.adjust,desc(AvgUsageBoth)) %>% slice(1) %>% ungroup()
nameID=read.table("../../genome_anotation_data/ensemble_to_genename.txt",sep="\t", header = T, stringsAsFactors = F) %>% dplyr::select(Gene_stable_ID, Gene.name)
DE=read.table("../data/DiffExpression/DEtested_allres.txt",stringsAsFactors = F,header = F, col.names = c("Gene_stable_ID" ,"logFC" ,"AveExpr" , "t" , "P.Value" , "adj.P.Val", "B" )) %>% inner_join(nameID,by="Gene_stable_ID") %>% dplyr::rename('gene'=Gene.name) %>% dplyr::select(-Gene_stable_ID) %>% mutate(CorrectedlogFC=-1*logFC)
DeandAPA= DiffIsoTop %>% inner_join(DE, by="gene") %>%anti_join(UnfliftGenes,by="gene")
DE_all=ggplot(DeandAPA,aes(y=deltaPAU, x=CorrectedlogFC)) + geom_point(alpha=.3) + geom_smooth(method="lm") + labs(title="APA v DE \n Remove 353 unlifted", x="DE log effect size", y="Difference in PAS Usage") + scale_color_brewer(palette = "Set1",name="", labels=c("Intronic", "3' UTR"))+ stat_cor(label.x = -8,label.y = -1) +theme_classic(base_size = 12)
DE_all
DE_split=ggplot(DeandAPA,aes(y=deltaPAU, x=CorrectedlogFC, col=loc)) + geom_point(alpha=.3) + geom_smooth(aes(col=loc),method="lm") + labs(title="APA v DE \n Remove 353 unlifted", x="DE log effect size", y="Difference in PAS Usage") + scale_color_brewer(palette = "Set1",name="", labels=c("Intronic", "3' UTR"))+ stat_cor(aes(col=loc),label.x = c(-8,0),label.y = -1) +theme_classic(base_size = 12)
DE_split
DeandAPASig= DeandAPA %>% filter(SigPAU2=="Yes", adj.P.Val<=0.05)
nrow(DeandAPASig)
[1] 393
DE_sig_all=ggplot(DeandAPASig,aes(y=deltaPAU, x=CorrectedlogFC)) + geom_point(alpha=.3) + geom_smooth(method="lm") + labs(title="Significant differences in APA and expression\n Remove 353 unlifted", x="DE log effect size", y="Difference in PAS Usage") + scale_color_brewer(palette = "Set1",name="", labels=c("Intronic", "3' UTR"))+ stat_cor(label.x = -8,label.y = -1) +theme_classic(base_size = 12)
DE_sig_all
DE_sig_split=ggplot(DeandAPASig,aes(y=deltaPAU, x=CorrectedlogFC, col=loc)) + geom_point(alpha=.3) + geom_smooth(aes(col=loc),method="lm") + labs(title="Significant differences in APA and expression\n Remove 353 unlifted", x="DE log effect size", y="Difference in PAS Usage") + scale_color_brewer(palette = "Set1",name="", labels=c("Intronic", "3' UTR"))+ stat_cor(aes(col=loc),label.x = c(-8,0),label.y = -1) +theme_classic(base_size = 12)
DE_sig_split
Meta=read.table("../data/PAS_doubleFilter/PAS_5perc_either_HumanCoord_BothUsage_meta_doubleFilter.txt", header = T, stringsAsFactors = F)
Meta_genes= Meta %>% select(gene) %>% unique()
Meta_PAS=Meta %>% select(PAS,gene)
dAPAGenes=read.table("../data/DiffIso_Nuclear_DF/SignifianceEitherGENES_Nuclear.txt", header = T, stringsAsFactors = F)
dAPAPAS=read.table("../data/DiffIso_Nuclear_DF/AllPAS_withGeneSig.txt", header = T, stringsAsFactors = F) %>% inner_join(Meta, by=c("chr","start", "end","gene")) %>% select(PAS,gene,SigPAU2 )
dAPAPAS_genes= dAPAPAS %>% select(gene) %>% unique()
dAPATestedGenes= dAPAPAS %>% select(gene) %>% unique() %>% mutate(dAPA=ifelse(gene %in% dAPAGenes$gene,"Yes", "No"))
dICdata= read.table("../data/IndInfoContent/SimpsonMedianSignificance.txt", header = T, stringsAsFactors = F)%>% select(sIC,gene)
dICdata_sig= dICdata %>% filter(sIC=="Yes")
dAPAandDic= dICdata %>% inner_join(dAPATestedGenes,by="gene") %>% mutate(Both=ifelse(sIC=="Yes" & dAPA=="Yes", "Yes","No"),OnlyIC=ifelse(sIC=="Yes" & dAPA=="No", "Yes","No"),OnlyAPA=ifelse(sIC=="No" & dAPA=="Yes", "Yes","No"))
DiffExp=read.table("../data/DiffExpression/DEtested_allres.txt",stringsAsFactors = F,header = F, col.names = c("Gene_stable_ID" ,"logFC" ,"AveExpr" , "t" , "P.Value" , "adj.P.Val", "B" )) %>% inner_join(nameID,by="Gene_stable_ID") %>% dplyr::rename('gene'=Gene.name) %>% dplyr::select(-Gene_stable_ID) %>% mutate(DE=ifelse(adj.P.Val<.05, "Yes", "No")) %>% select(gene,DE)
Join DE:
DEandAPA=DiffExp %>% inner_join(dAPAandDic,by="gene") %>% anti_join(UnfliftGenes,by="gene")
Expression enrichments:
sets=c("OnlyAPA", "OnlyIC", "Both")
DE_pval=c()
DE_enrich=c()
x=nrow(DEandAPA %>% filter(OnlyAPA=="Yes", DE=="Yes"))
m=nrow(DEandAPA %>% filter(DE=="Yes"))
n=nrow(DEandAPA %>% filter(DE=="No"))
k=nrow(DEandAPA %>% filter(OnlyAPA=="Yes"))
N=nrow(DEandAPA)
phyper(x-1,m,n,k,lower.tail=F)
[1] 0.0006534149
DE_pval=c(DE_pval, phyper(x-1,m,n,k,lower.tail=F))
DE_enrich=c(DE_enrich, (x/k)/(m/N))
x=nrow(DEandAPA %>% filter(OnlyIC=="Yes", DE=="Yes"))
m=nrow(DEandAPA %>% filter(DE=="Yes"))
n=nrow(DEandAPA %>% filter(DE=="No"))
k=nrow(DEandAPA %>% filter(OnlyIC=="Yes"))
N=nrow(DEandAPA)
phyper(x-1,m,n,k,lower.tail=F)
[1] 0.2234779
DE_pval=c(DE_pval, phyper(x-1,m,n,k,lower.tail=F))
DE_enrich=c(DE_enrich, (x/k)/(m/N))
x=nrow(DEandAPA %>% filter(Both=="Yes", DE=="Yes"))
m=nrow(DEandAPA %>% filter(DE=="Yes"))
n=nrow(DEandAPA %>% filter(DE=="No"))
k=nrow(DEandAPA %>% filter(Both=="Yes"))
N=nrow(DEandAPA)
phyper(x-1,m,n,k,lower.tail=F)
[1] 0.0162844
DE_pval=c(DE_pval, phyper(x-1,m,n,k,lower.tail=F))
DE_enrich=c(DE_enrich, (x/k)/(m/N))
DEdf=as.data.frame(cbind(sets,DE_pval, DE_enrich)) %>% rename(Pval=DE_pval, Enrichment=DE_enrich) %>% mutate(Pheno="Expression")
DEdf
sets Pval Enrichment Pheno
1 OnlyAPA 0.000653414923024692 1.12256754451574 Expression
2 OnlyIC 0.223477911524423 1.05270145258434 Expression
3 Both 0.0162844040325435 1.14539262950798 Expression
Ribo=read.table("../data/Wang_ribo/Additionaltable5_translationComparisons.txt",header = T, stringsAsFactors = F) %>% rename("Gene_stable_ID"= ENSG) %>% inner_join(nameID,by="Gene_stable_ID") %>% dplyr::select(Gene.name, HvC.beta, HvC.pvalue, HvC.FDR) %>% rename("gene"=Gene.name) %>% mutate(dTE=ifelse(HvC.FDR <0.05, "Yes","No"))
RiboSmall= Ribo %>% select(gene,dTE)
DTandAPA=Ribo %>% inner_join(dAPAandDic,by="gene") %>% anti_join(UnfliftGenes,by="gene")
DT_pval=c()
DT_enrich=c()
x=nrow(DTandAPA %>% filter(OnlyAPA=="Yes", dTE=="Yes"))
m=nrow(DTandAPA %>% filter(dTE=="Yes"))
n=nrow(DTandAPA %>% filter(dTE=="No"))
k=nrow(DTandAPA %>% filter(OnlyAPA=="Yes"))
N=nrow(DTandAPA)
phyper(x-1,m,n,k,lower.tail=F)
[1] 0.04848155
DT_pval=c(DT_pval, phyper(x-1,m,n,k,lower.tail=F))
DT_enrich=c(DT_enrich, (x/k)/(m/N))
x=nrow(DTandAPA %>% filter(OnlyIC=="Yes", dTE=="Yes"))
m=nrow(DTandAPA %>% filter(dTE=="Yes"))
n=nrow(DTandAPA %>% filter(dTE=="No"))
k=nrow(DTandAPA %>% filter(OnlyIC=="Yes"))
N=nrow(DTandAPA)
phyper(x-1,m,n,k,lower.tail=F)
[1] 0.02402838
DT_pval=c(DT_pval, phyper(x-1,m,n,k,lower.tail=F))
DT_enrich=c(DT_enrich, (x/k)/(m/N))
x=nrow(DTandAPA %>% filter(Both=="Yes", dTE=="Yes"))
m=nrow(DTandAPA %>% filter(dTE=="Yes"))
n=nrow(DTandAPA %>% filter(dTE=="No"))
k=nrow(DTandAPA %>% filter(Both=="Yes"))
N=nrow(DTandAPA)
phyper(x-1,m,n,k,lower.tail=F)
[1] 0.02586374
DT_pval=c(DT_pval, phyper(x-1,m,n,k,lower.tail=F))
DT_enrich=c(DT_enrich, (x/k)/(m/N))
DTdf=as.data.frame(cbind(sets,DT_pval, DT_enrich)) %>% rename(Pval=DT_pval, Enrichment=DT_enrich) %>% mutate(Pheno="Translation")
DTdf
sets Pval Enrichment Pheno
1 OnlyAPA 0.0484815452167291 1.10358865436524 Translation
2 OnlyIC 0.0240283752892615 1.20480789240106 Translation
3 Both 0.0258637425077943 1.21130122254139 Translation
AllDF= DEdf %>% bind_rows(DTdf)
Warning in bind_rows_(x, .id): Unequal factor levels: coercing to character
Warning in bind_rows_(x, .id): binding character and factor vector,
coercing into character vector
Warning in bind_rows_(x, .id): binding character and factor vector,
coercing into character vector
Warning in bind_rows_(x, .id): Unequal factor levels: coercing to character
Warning in bind_rows_(x, .id): binding character and factor vector,
coercing into character vector
Warning in bind_rows_(x, .id): binding character and factor vector,
coercing into character vector
AllDF$Pval=as.numeric(AllDF$Pval)
AllDF$Enrichment=as.numeric(AllDF$Enrichment)
AllDF$Pheno=factor(AllDF$Pheno, levels=c("Expression", "Translation", "Protein"))
useCOl <- c("#d73027", "#4575b4","#fee090")
enrichpoint=ggplot(AllDF,aes(x=sets,col=sets,y=Enrichment,label = round(Enrichment,3)))+ geom_bar(stat="identity",color="grey",aes(y=AllDF$Enrichment),width=.01)+geom_point(size=10) + coord_flip() + geom_hline(yintercept = 1) + facet_grid(~Pheno)+scale_color_manual(values=useCOl)+ labs( title="Enrichment for APA phenotype differences in other regulatory phenotypes \n Remove 353 unlifted",x="Set", y="Enrichment")+geom_text(color = "black", size = 3) + theme(legend.position = "none")
pvalplot=ggplot(AllDF,aes(x=Pheno, by=sets, y=-log10(Pval),fill=sets)) +geom_bar(stat = "identity",position = "dodge") +geom_hline(yintercept =1.3)+ scale_fill_manual(values=useCOl)+ theme(legend.position = "bottom")
plot_grid(enrichpoint,pvalplot, nrow=2)
HumanRes=read.table("../data/DomDefGreaterX/Human_AllGenes_DiffTop.txt", col.names = c("Human_PAS", "gene","Human_DiffDom"),stringsAsFactors = F)
ChimpRes=read.table("../data/DomDefGreaterX/Chimp_AllGenes_DiffTop.txt", col.names = c("Chimp_PAS", "gene","Chimp_DiffDom"),stringsAsFactors = F)
BothRes=HumanRes %>% inner_join(ChimpRes,by="gene")%>% anti_join(UnfliftGenes,by="gene")
BothRes_10=BothRes %>% filter(Chimp_DiffDom >=0.1 | Human_DiffDom>=0.1) %>% mutate(Set= ifelse(Human_PAS==Chimp_PAS,"Same", "Different"),cut=10)
BothRes_20=BothRes %>% filter(Chimp_DiffDom >=0.2 | Human_DiffDom>=0.2) %>% mutate(Set= ifelse(Human_PAS==Chimp_PAS,"Same", "Different"),cut=20)
BothRes_30=BothRes %>% filter(Chimp_DiffDom >=0.3 | Human_DiffDom>=0.3) %>% mutate(Set= ifelse(Human_PAS==Chimp_PAS,"Same", "Different"),cut=30)
BothRes_40=BothRes %>% filter(Chimp_DiffDom >=0.4 | Human_DiffDom>=0.4) %>% mutate(Set= ifelse(Human_PAS==Chimp_PAS,"Same", "Different"),cut=40)
BothRes_50=BothRes %>% filter(Chimp_DiffDom >=0.5 | Human_DiffDom>=0.5) %>% mutate(Set= ifelse(Human_PAS==Chimp_PAS,"Same", "Different"),cut=50)
BothRes_60=BothRes %>% filter(Chimp_DiffDom >=0.6 | Human_DiffDom>=0.6) %>% mutate(Set= ifelse(Human_PAS==Chimp_PAS,"Same", "Different"),cut=60)
BothRes_70=BothRes %>% filter(Chimp_DiffDom >=0.7 | Human_DiffDom>=0.7) %>% mutate(Set= ifelse(Human_PAS==Chimp_PAS,"Same", "Different"),cut=70)
BothRes_80=BothRes %>% filter(Chimp_DiffDom >=0.8 | Human_DiffDom>=0.8) %>% mutate(Set= ifelse(Human_PAS==Chimp_PAS,"Same", "Different"),cut=80)
BothRes_90=BothRes %>% filter(Chimp_DiffDom >=0.9 | Human_DiffDom>=0.9) %>% mutate(Set= ifelse(Human_PAS==Chimp_PAS,"Same", "Different"),cut=90)
BothResAll=BothRes_10 %>% bind_rows(BothRes_20) %>% bind_rows(BothRes_30) %>% bind_rows(BothRes_40) %>% bind_rows(BothRes_50) %>% bind_rows(BothRes_60) %>% bind_rows(BothRes_70) %>% bind_rows(BothRes_80) %>% bind_rows(BothRes_90)
Pval=c()
Enrich=c()
set=c(10,20,30,40,50,60,70,80,90)
expected=c()
actual=c()
nameID=read.table("../../genome_anotation_data/ensemble_to_genename.txt",sep="\t", header = T, stringsAsFactors = F)
DE= read.table("../data/DiffExpression/DEtested_allres.txt",header=F, stringsAsFactors = F,col.names = c('Gene_stable_ID', 'logFC' ,'AveExpr', 't', 'P.Value', 'adj.P.Val', 'B')) %>% inner_join(nameID, by="Gene_stable_ID") %>% dplyr::select(-Gene_stable_ID, -Source_of_gene_name) %>% rename("gene"=Gene.name) %>% mutate(DE=ifelse(adj.P.Val<=.05, "Yes","No")) %>% select(gene,DE)
DE_yes= DE %>% filter(DE=="Yes")
All4= BothResAll %>% select(gene,cut,Set) %>% inner_join(DE, by="gene")
for (i in set){
x=nrow(All4 %>% filter(cut==i, Set=="Different", DE=="Yes"))
actual=c(actual, x)
m=nrow(All4 %>% filter(cut==i, DE=="Yes"))
n=nrow(All4 %>% filter(cut==i, DE=="No"))
k=nrow(All4 %>% filter(cut==i, Set=="Different"))
N=nrow(All4 %>% filter(cut==i))
val=phyper(x-1,m,n,k,lower.tail=F)
Pval= c(Pval, val)
en=(x/k)/(m/N)
Enrich=c(Enrich, en)
#ex=which(grepl(max(dhyper(1:x, m, n, k)), dhyper(1:x, m, n, k)))
ex=k*(m/N)
expected=c(expected,ex)
}
ResDF=as.data.frame(cbind(set,Pval,Enrich, actual, expected))
ResDF$set=as.factor(ResDF$set)
ResDF$Pval=as.numeric(as.character(ResDF$Pval))
ResDF$Enrich=as.numeric(as.character(ResDF$Enrich))
diffP=ggplot(ResDF,aes(x=set, y=-log10(Pval),fill=set)) + geom_bar(stat="identity") +labs(title="Enrichment pvalues for DE and different dominant \n Remove 353 unlifted",x="Dominance Cutoff")+ scale_fill_brewer(palette = "RdYlBu") + theme(legend.position = "none")+ geom_hline(yintercept = 1.30103)
diffE=ggplot(ResDF,aes(x=set, y=Enrich,fill=set)) + geom_bar(stat="identity") + geom_hline(yintercept = 1)+labs(title="Enrichment for DE and different dominant \n Remove 353 unlifted",x="Dominance Cutoff")+ scale_fill_brewer(palette = "RdYlBu") + theme(legend.position = "none")
PvalSame=c()
EnrichSame=c()
expectedSame=c()
actualSame=c()
for (i in set){
x=nrow(All4 %>% filter(cut==i, Set=="Same", DE=="Yes"))
actualSame=c(actualSame, x)
m=nrow(All4 %>% filter(cut==i, DE=="Yes"))
n=nrow(All4 %>% filter(cut==i, DE=="No"))
k=nrow(All4 %>% filter(cut==i, Set=="Same"))
N=nrow(All4 %>% filter(cut==i))
val=phyper(x-1,m,n,k,lower.tail=F)
PvalSame= c(PvalSame, val)
en=(x/k)/(m/N)
EnrichSame=c(EnrichSame, en)
#ex=which(grepl(max(dhyper(1:x, m, n, k)), dhyper(1:x, m, n, k)))
ex=k*(m/N)
expectedSame=c(expectedSame,ex)
}
ResDFSame=as.data.frame(cbind(set,PvalSame,EnrichSame, actualSame,expectedSame))
ResDFSame$set=as.factor(ResDFSame$set)
ResDFSame$PvalSame=as.numeric(as.character(ResDFSame$PvalSame))
ResDFSame$EnrichSame=as.numeric(as.character(ResDFSame$EnrichSame))
Samep=ggplot(ResDFSame,aes(x=set, y=-log10(PvalSame),fill=set)) + geom_bar(stat="identity") +labs(title="Enrichment pvalues for DE and same dominant \n Remove 353 unlifted",x="Dominance Cutoff")+ scale_fill_brewer(palette = "RdYlBu") + theme(legend.position = "none")+ geom_hline(yintercept = 1.30103)
SameE=ggplot(ResDFSame,aes(x=set, y=EnrichSame,fill=set)) + geom_bar(stat="identity") + geom_hline(yintercept = 1)+labs(title="Enrichment for DE and same dominant \n Remove 353 unlifted",x="Dominance Cutoff")+ scale_fill_brewer(palette = "RdYlBu") + theme(legend.position = "none")
plot_grid(diffE, SameE, diffP, Samep)
plot_grid( diffP, Samep)
Meta=read.table("../data/PAS_doubleFilter/PAS_5perc_either_HumanCoord_BothUsage_meta_doubleFilter.txt", header = T, stringsAsFactors = F)
Meta_genes= Meta %>% select(gene) %>% unique()
Meta_PAS=Meta %>% select(PAS,gene)
dAPAGenes=read.table("../data/DiffIso_Nuclear_DF/SignifianceEitherGENES_Nuclear.txt", header = T, stringsAsFactors = F) %>% anti_join(UnfliftGenes,by="gene")
dAPAPAS=read.table("../data/DiffIso_Nuclear_DF/AllPAS_withGeneSig.txt", header = T, stringsAsFactors = F) %>% inner_join(Meta, by=c("chr","start", "end","gene")) %>% select(PAS,gene,SigPAU2 ) %>% anti_join(UnfliftGenes,by="gene")
dAPAPAS_genes= dAPAPAS %>% select(gene) %>% unique()
dAPATestedGenes= dAPAPAS %>% select(gene) %>% unique() %>% mutate(dAPA=ifelse(gene %in% dAPAGenes$gene,"Yes", "No"))
dICdata= read.table("../data/IndInfoContent/SimpsonMedianSignificance.txt", header = T, stringsAsFactors = F)%>% select(sIC,gene)%>% anti_join(UnfliftGenes,by="gene")
dAPAandDic= dICdata %>% inner_join(dAPATestedGenes,by="gene") %>% mutate(Both=ifelse(sIC=="Yes" & dAPA=="Yes", "Yes","No"),OnlyIC=ifelse(sIC=="Yes" & dAPA=="No", "Yes","No"),OnlyAPA=ifelse(sIC=="No" & dAPA=="Yes", "Yes","No"))
dIConly=dAPAandDic %>%filter(OnlyIC=="Yes")
Both=dAPAandDic %>%filter(Both=="Yes")
dAPAonly=dAPAandDic %>%filter(OnlyAPA=="Yes")
nameID=read.table("../../genome_anotation_data/ensemble_to_genename.txt",sep="\t", header = T, stringsAsFactors = F) %>% dplyr::select(Gene_stable_ID, Gene.name)
DiffExp=read.table("../data/DiffExpression/DEtested_allres.txt",stringsAsFactors = F,header = F, col.names = c("Gene_stable_ID" ,"logFC" ,"AveExpr" , "t" , "P.Value" , "adj.P.Val", "B" )) %>% inner_join(nameID,by="Gene_stable_ID") %>% dplyr::rename('gene'=Gene.name) %>% dplyr::select(-Gene_stable_ID) %>% mutate(DE=ifelse(adj.P.Val<.05, "Yes", "No")) %>% select(gene,DE) %>% filter(DE=="Yes")
Prot= read.table("../data/Khan_prot/ProtData_effectSize.txt",header = T,stringsAsFactors = F) %>% mutate(dP=ifelse(pval<0.05, "Yes", "No")) %>% filter(dP=="Yes")
Ribo=read.table("../data/Wang_ribo/Additionaltable5_translationComparisons.txt",header = T, stringsAsFactors = F) %>% rename("Gene_stable_ID"= ENSG) %>% inner_join(nameID,by="Gene_stable_ID") %>% dplyr::select(Gene.name, HvC.beta, HvC.pvalue, HvC.FDR) %>% rename("gene"=Gene.name) %>% mutate(dTE=ifelse(HvC.FDR <0.05, "Yes","No")) %>% filter(dTE=="Yes")
RiboAll=read.table("../data/Wang_ribo/Additionaltable5_translationComparisons.txt",header = T, stringsAsFactors = F) %>% rename("Gene_stable_ID"= ENSG) %>% inner_join(nameID,by="Gene_stable_ID") %>% dplyr::select(Gene.name, HvC.beta, HvC.pvalue, HvC.FDR) %>% rename("gene"=Gene.name) %>% mutate(dTE=ifelse(HvC.FDR <0.05, "Yes","No"))
Set=c("OnlydIC", "Both", "OnlyAPA")
Number=c(40, 33,76)
SetSize=c(nrow(dIConly),nrow(Both),nrow(dAPAonly) )
useCOl <- c("#d73027", "#4575b4","#fee090")
DFres=data.frame(cbind(Set,Number,SetSize))
DFres$Number=as.numeric(as.character(DFres$Number))
DFres$SetSize=as.numeric(as.character(DFres$SetSize))
DFres_prop=DFres %>% mutate(Prop=Number/SetSize)
numberPlot=ggplot(DFres_prop,aes(x=Set, fill=Set, y=Number))+ geom_bar(stat="identity")+ scale_fill_manual(values=useCOl)+geom_text(aes(label=Number), position=position_dodge(width=0.9), vjust=2)+ theme(legend.position = "none") + labs(title="Number of dP not DE genes", y="Number of Genes",x="")+scale_x_discrete(labels=c(Both="Both", OnlyAPA="PAS\nLevel",OnlydIC= "Isoform\n Diversity"))
propPlot=ggplot(DFres_prop,aes(x=Set, fill=Set, y=Prop))+ geom_bar(stat="identity")+ scale_fill_manual(values=useCOl) + labs(title="Proportion of APA set that are dP not DE", y="Proportion of APA set",x="")+geom_text(aes(label=round(Prop,3)), position=position_dodge(width=0.9), vjust=2) + theme(legend.position = "none")+scale_x_discrete(labels=c(Both="Both", OnlyAPA="PAS\nLevel",OnlydIC= "Isoform\n Diversity"))
numberprop=plot_grid(numberPlot,propPlot)
numberprop
ProtInfo=read.table("../data/PTM/ProtLength.txt", sep = "\t",stringsAsFactors = F,header = T,col.names = c("entry","organism", "nAA", "gene")) %>% select(nAA, gene)
Interactions=read.table("../data/bioGRID/GeneswInteractions.txt",stringsAsFactors = F, header = T) %>% inner_join(ProtInfo, by="gene")%>% mutate(NormInter=nInt/nAA)
#DiffExp$gene, DT=Ribo$gene, DP=Prot$gene
dAPAandDic_wP=dAPAandDic %>% mutate(dE=ifelse(gene %in%DiffExp$gene, "Yes", "No" ), dP=ifelse(gene %in%Prot$gene,"Yes","No" ), dPnotDE=ifelse(dE=="No"&dP=="Yes", "Yes","No")) %>% inner_join(Interactions, by="gene")
dAPAandDic_wP_dAPA= dAPAandDic_wP %>% filter(dAPA=="Yes")
dAPAandDic_wP_both= dAPAandDic_wP %>% filter(Both=="Yes")
dAPAandDic_wP_IC= dAPAandDic_wP %>% filter(OnlyIC=="Yes")
dapaProt=ggplot(dAPAandDic_wP_dAPA,aes(x=dPnotDE, y=log10(NormInter),fill=dPnotDE)) + geom_boxplot(notch = T) + stat_compare_means() + scale_fill_manual(values = c("grey", "#4575b4"))+theme(axis.text.x=element_text(angle=90, hjust=0), text= element_text(size=10), legend.position = "false") + labs(x="Expression independent set", y="log10(Normalized Interaction)", title="Protein Interactions \ngenes with site level differences")
bothProt=ggplot(dAPAandDic_wP_both,aes(x=dPnotDE, y=log10(NormInter),fill=dPnotDE)) + geom_boxplot(notch = T) + stat_compare_means() + scale_fill_manual(values = c("grey", "#d73027"))+ theme(axis.text.x=element_text(angle=90, hjust=0), text= element_text(size=10), legend.position = "false") + labs(x="Expression independent set", y="log10(Normalized Interaction)", title="Protein Interactions \n with difference in both levles")
dicProt=ggplot(dAPAandDic_wP_IC,aes(x=dPnotDE, y=log10(NormInter),fill=dPnotDE)) + geom_boxplot(notch = T) + stat_compare_means() + scale_fill_manual(values = c("grey", "#fee090"))+theme(axis.text.x=element_text(angle=90, hjust=0), text= element_text(size=10), legend.position = "false") + labs(x="Expression independent set", y="log10(Normalized Interaction)", title="Protein Interactions \n genes with isoform diversity differences")
interactionplots=plot_grid(bothProt,dapaProt,dicProt, nrow=1)
dAPAandDic_wP_trans= dAPAandDic_wP %>% inner_join(RiboAll,by="gene")
dAPAandDic_wP_trans_dpnote= dAPAandDic_wP_trans %>% filter(dPnotDE=="Yes") %>% select(gene,Both, OnlyIC, OnlyAPA,dTE)
dAPAandDic_wP_trans_dpnoteOnlyAPA=dAPAandDic_wP_trans_dpnote %>% filter(OnlyAPA=="Yes") %>% group_by(dTE) %>% summarise(ndTE=n()) %>% mutate(set="OnlyAPA")
dAPAandDic_wP_trans_dpnoteBoth=dAPAandDic_wP_trans_dpnote %>% filter(Both=="Yes") %>% group_by(dTE) %>% summarise(ndTE=n()) %>% mutate(set="Both")
dAPAandDic_wP_trans_dpnoteIC=dAPAandDic_wP_trans_dpnote %>% filter(OnlyIC=="Yes") %>% group_by(dTE) %>% summarise(ndTE=n()) %>% mutate(set="OnlyIC")
AllTenum= dAPAandDic_wP_trans_dpnoteOnlyAPA %>% bind_rows(dAPAandDic_wP_trans_dpnoteBoth) %>% bind_rows(dAPAandDic_wP_trans_dpnoteIC)
numTE=ggplot(AllTenum, aes(x=set,by=dTE, y=ndTE,fill=set, alpha=dTE)) +geom_bar(stat="identity", position = "dodge") + labs(title="Most dP not dE genes are not dTE", y="Number of Genes",x="") + scale_fill_manual(values = useCOl ) + scale_alpha_manual(values=c(.6, 1)) + theme(legend.position = "bottom") + geom_text(aes(label=ndTE), position=position_dodge(width=0.9), vjust=1)+guides(fill = FALSE)+scale_x_discrete(labels=c(Both="Both", OnlyAPA="PAS\nLevel",OnlyIC= "Isoform\n Diversity"))
numTE
propTe=ggplot(AllTenum, aes(x=set,by=dTE, y=ndTE,fill=set, alpha=dTE)) +geom_bar(stat="identity", position = "fill") + labs(title="Most dP not dE genes are not dTE", y="Proportion",x="") + scale_fill_manual(values = useCOl ) + scale_alpha_manual(values=c(.4, 1)) + theme(legend.position = "bottom")+guides(fill = FALSE)+scale_x_discrete(labels=c(Both="Both", OnlyAPA="PAS\nLevel",OnlyIC= "Isoform\n Diversity"))
propTe
teplots=plot_grid(numTE, propTe, nrow =1)
teplots
fullplot=plot_grid(numberprop, teplots,interactionplots, nrow = 3)
fullplot
sessionInfo()
R version 3.5.1 (2018-07-02)
Platform: x86_64-pc-linux-gnu (64-bit)
Running under: Scientific Linux 7.4 (Nitrogen)
Matrix products: default
BLAS/LAPACK: /software/openblas-0.2.19-el7-x86_64/lib/libopenblas_haswellp-r0.2.19.so
locale:
[1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C
[3] LC_TIME=en_US.UTF-8 LC_COLLATE=en_US.UTF-8
[5] LC_MONETARY=en_US.UTF-8 LC_MESSAGES=en_US.UTF-8
[7] LC_PAPER=en_US.UTF-8 LC_NAME=C
[9] LC_ADDRESS=C LC_TELEPHONE=C
[11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C
attached base packages:
[1] stats graphics grDevices utils datasets methods base
other attached packages:
[1] cowplot_0.9.4 forcats_0.3.0 stringr_1.3.1 dplyr_0.8.0.1
[5] purrr_0.3.2 readr_1.3.1 tidyr_0.8.3 tibble_2.1.1
[9] tidyverse_1.2.1 workflowr_1.6.0 ggpubr_0.2 magrittr_1.5
[13] ggplot2_3.1.1
loaded via a namespace (and not attached):
[1] tidyselect_0.2.5 reshape2_1.4.3 haven_1.1.2
[4] lattice_0.20-38 colorspace_1.3-2 generics_0.0.2
[7] htmltools_0.3.6 yaml_2.2.0 rlang_0.4.0
[10] later_0.7.5 pillar_1.3.1 glue_1.3.0
[13] withr_2.1.2 RColorBrewer_1.1-2 modelr_0.1.2
[16] readxl_1.1.0 plyr_1.8.4 munsell_0.5.0
[19] gtable_0.2.0 cellranger_1.1.0 rvest_0.3.2
[22] evaluate_0.12 labeling_0.3 knitr_1.20
[25] httpuv_1.4.5 broom_0.5.1 Rcpp_1.0.4.6
[28] promises_1.0.1 scales_1.0.0 backports_1.1.2
[31] jsonlite_1.6 fs_1.3.1 hms_0.4.2
[34] digest_0.6.18 stringi_1.2.4 grid_3.5.1
[37] rprojroot_1.3-2 cli_1.1.0 tools_3.5.1
[40] lazyeval_0.2.1 crayon_1.3.4 whisker_0.3-2
[43] pkgconfig_2.0.2 xml2_1.2.0 lubridate_1.7.4
[46] assertthat_0.2.0 rmarkdown_1.10 httr_1.3.1
[49] rstudioapi_0.10 R6_2.3.0 nlme_3.1-137
[52] git2r_0.26.1 compiler_3.5.1