My class work for bimm143 at UC San Diego
Cecilia Wang (PID:18625854)
scp -r -i “~/Downloads/bimm143_cecilia.pem ubuntu@ec2-35-92-121-123.us-west-2.compute.amazonaws.com:~/*_quant .
library(tximport)
library(rhdf5)
# setup the folder and file-names to read
folders <- dir(pattern="SRR21568*")
samples <- sub("_quant", "", folders)
files <- file.path( folders, "abundance.h5" )
names(files) <- samples
txi.kallisto <- tximport(files, type = "kallisto", txOut = TRUE)
1 2 3 4
head(txi.kallisto$counts)
SRR2156848 SRR2156849 SRR2156850 SRR2156851
ENST00000539570 0 0 0.00000 0
ENST00000576455 0 0 2.62037 0
ENST00000510508 0 0 0.00000 0
ENST00000474471 0 1 1.00000 0
ENST00000381700 0 0 0.00000 0
ENST00000445946 0 0 0.00000 0
colSums(txi.kallisto$counts)
SRR2156848 SRR2156849 SRR2156850 SRR2156851
2563611 2600800 2372309 2111474
sum(rowSums(txi.kallisto$counts)>0)
[1] 94561
to.keep <- rowSums(txi.kallisto$counts) > 0
kset.nonzero <- txi.kallisto$counts[to.keep,]
keep2 <- apply(kset.nonzero,1,sd)>0
x <- kset.nonzero[keep2,]
pca <- prcomp(t(x), scale=TRUE)
summary(pca)
Importance of components:
PC1 PC2 PC3 PC4
Standard deviation 183.6379 177.3605 171.3020 1e+00
Proportion of Variance 0.3568 0.3328 0.3104 1e-05
Cumulative Proportion 0.3568 0.6895 1.0000 1e+00
Plot of PC1 vs. PC2
plot(pca$x[,1], pca$x[,2],
col=c("blue","blue","red","red"),
xlab="PC1", ylab="PC2", pch=16)

library(ggplot2)
library(ggrepel)
mycols <- c("blue","blue","red","red")
ggplot(pca$x) +
aes(PC1, PC2, label=rownames(pca$x)) +
geom_point( col=mycols ) +
geom_text_repel( col=mycols ) +
theme_bw()

Plot of PC1 vs PC3
ggplot(as.data.frame(pca$x)) +
aes(x = PC1, y = PC3, label = rownames(pca$x)) +
geom_point(col = mycols) +
geom_text_repel(col = mycols) +
theme_bw()

Plot of PC2 vs PC3
ggplot(as.data.frame(pca$x)) +
aes(x = PC2, y = PC3, label = rownames(pca$x)) +
geom_point(col = mycols) +
geom_text_repel(col = mycols) +
theme_bw()
