---
title:
"VaSP: Quantification and Visualization of
Variations of Splicing in Population"
author: "*Huihui Yu, Qian Du and Chi Zhang*"
date: "`r Sys.Date()`"
output:
rmarkdown::html_vignette:
toc: true
vignette: >
%\VignetteIndexEntry{user guide}
%\VignetteEngine{knitr::rmarkdown}
%\VignetteEncoding{UTF-8}
---
```{r setup, include = FALSE}
options(tinytex.verbose = TRUE)
knitr::opts_chunk$set(
collapse = TRUE,
comment = "#>"
)
```
## 1. Introduction {.tabset .tabset-fade .tabset-pills}
**VaSP** is an R package for discovery of genome-wide variable alternative
splicing events from short-read RNA-seq data and visualizations of gene
splicing information for publication-quality multi-panel figures.
```{r echo=FALSE, out.width=700}
knitr::include_graphics('../README_files/VaSP.png')
```
**Figure 1. Overview of VaSP**. **(A)**. The workflow and functions of
[VaSP](https://github.com/yuhuihui2011/VaSP). The input is an R data object
ballgown (see `?ballgown`) produced by a standard RNA-seq data analysis
protocol, including mapping with HISAT, assembling with StringTie, and
collecting expression information with R package
[Ballgown](https://github.com/alyssafrazee/ballgown). VaSP calculates the
Single Splicing Strength (3S) scores for all splicing junctions in the
genome (`?spliceGenome`) or in a particular gene (`?spliceGene`), identifies
genotype-specific splicing (GSS) events (`?BMfinder`), and displays
differential splicing information (`?splicePlot`). The 3S scores can be also
used for other analyses, such as differential splicing analysis or splicing QTL
identification. **(B)**. VaSP estimates 3S scores based on junction-read counts
normalized by gene-level read coverage. In this example, VaSP calculates the
splicing scores of four introns in a gene X with two transcript isoforms.
Only the fourth intron is a full usage intron excised by both the two isoforms
and the other three are alternative donor site (AltD) sites or Intron Retention
(IntronR), respectively. **(C)**. Visualization of splicing information in gene
MSTRG.183 (LOC_Os01g03070), whole gene without splicing scores. **(D)**.
Visualization of differential splicing region of the gene MSTRG.183 with
splicing score displaying. In C and D, the y-axes are read depths and the arcs
(lines between exons) indicate exon-exon junctions (introns). The dotted arcs
indicate no junction-reads spanning the intron (3S = 0) and solid arcs indicate
3S > 0. The transcripts labeled beginning with ‘LOC_Os’ indicate annotated
transcripts by reference genome annotation and the ones beginning with “MSTRG”
are transcripts assembled by StringTie. ([Yu et al., 2021](#citation))
## 2. Citation
Yu, H., Du, Q., Campbell, M., Yu, B., Walia, H. and Zhang, C. (2021),
Genome‐wide discovery of natural variation in pre‐mRNA splicing and prioritising
causal alternative splicing to salt stress response in rice.
***New Phytol***. https://doi.org/10.1111/nph.17189
## 3. Installation
Start R (>= 4.0) and run:
```{r,eval=FALSE}
if (!requireNamespace("BiocManager", quietly = TRUE))
install.packages("BiocManager")
BiocManager::install("VaSP")
vignette('VaSP')
```
If you use an older version of R (>= 3.5), enter:
```{r,eval=FALSE}
BiocManager::install("yuhuihui2011/VaSP", build_vignettes=TRUE)
vignette('VaSP')
```
## 4. Data input
Users need to follow the manual of R package Ballgown
() to create a ballgown object as an
input for the VaSP package. See `?ballgown` for detailed information on
creating Ballgown objects. The object can be stored in a `.RDate` file by
`save()` . Here is an example of constructing rice.bg object from
HISAT2+StringTie output
```{r,eval=FALSE}
library(VaSP)
?ballgown
path<-system.file('extdata', package='VaSP')
rice.bg<-ballgown(samples = list.dirs(path = path,recursive = F) )
```
## 5. Quick start
Calculate 3S (Single Splicing Strength) scores, find GSS
(genotype-specific splicing) events and display the splicing information.
* Calculating 3S scores:
```{r}
library(VaSP)
data(rice.bg)
?rice.bg
rice.bg
score<-spliceGene(rice.bg, gene="MSTRG.183", junc.type = "score")
tail(round(score,2),2)
```
* Discovering GSS:
```{r}
gss <- BMfinder(score, cores = 1)
gss
```
* Extracing intron information
```{r}
gss_intron<-structure(rice.bg)$intron
(gss_intron<-gss_intron[gss_intron$id%in%rownames(gss)])
range(gss_intron)
```
* Showing the splicing information
```{r splicePlot, fig.width=7, fig.height=4}
splicePlot(rice.bg,gene='MSTRG.183',samples = sampleNames(rice.bg)[c(1,3,5)],
start = 1179000, end = 1179300)
```
## 6. Functions
Currently, there are 6 functions in VaSP:
***getDepth***: Get read depth from a BAM file (in bedgraph format)
***getGeneinfo***: Get gene informaton from a ballgown object
***spliceGene***: Calculate 3S scores for one gene
***spliceGenome***: Calculate genome-wide splicing scores
***BMfinder***: Discover bimodal distrubition features
***splicePlot***: Visualization of read coverage, splicing information and
gene information in a gene region
### 6.1 getDepth
Get read depth from a BAM file (in bedgraph format) and return a data.frame in
bedgraph file format which can be used as input for `plotBedgraph` in
the **SuShi** package.
```{r plotBedgraph, fig.height=3, fig.width=7}
path <- system.file("extdata", package = "VaSP")
bam_files <- list.files(path, "*.bam$")
bam_files
depth <- getDepth(file.path(path, bam_files[1]), "Chr1", start = 1171800,
end = 1179400)
head(depth)
library(Sushi)
par(mar=c(3,5,1,1))
plotBedgraph(depth, "Chr1", chromstart = 1171800, chromend = 1179400,yaxt = "s")
mtext("Depth", side = 2, line = 2.5, cex = 1.2, font = 2)
labelgenome("Chr1", 1171800, 1179400, side = 1, scipen = 20, n = 5,scale = "Kb")
```
### 6.2 getGeneinfo
Get gene informaton from a ballgown object by genes or by genomic regions and
return a data.frame in bed-like file format that can be used as input
for `plotGenes` in the **SuShi** package
```{r plotGenes, fig.height=4,fig.width=7}
unique(geneIDs(rice.bg))
gene_id <- c("MSTRG.181", "MSTRG.182", "MSTRG.183")
geneinfo <- getGeneinfo(genes = gene_id, rice.bg)
trans <- table(geneinfo$name) # show how many exons each transcript has
trans
chrom = geneinfo$chrom[1]
chromstart = min(geneinfo$start) - 1500
chromend = max(geneinfo$stop) + 1000
color = rep(SushiColors(2)(length(trans)), trans)
par(mar=c(3,1,1,1))
p<-plotGenes(geneinfo, chrom, chromstart, chromend, col = color, bheight = 0.2,
bentline = FALSE, plotgenetype = "arrow", labeloffset = 0.5)
labelgenome(chrom, chromstart , chromend, side = 1, n = 5, scale = "Kb")
```
### 6.3 spliceGene
Calculate 3S Scores from ballgown object for a given gene. This function can
only calculate one gene. Please use function `spliceGenome` to obtain
genome-wide 3S scores.
```{r}
rice.bg
head(geneIDs(rice.bg))
score <- spliceGene(rice.bg, "MSTRG.183", junc.type = "score")
count <- spliceGene(rice.bg, "MSTRG.183", junc.type = "count")
## compare
tail(score)
tail(count)
## get intron structrue
intron <- structure(rice.bg)$intron
intron[intron$id %in% rownames(score)]
```
### 6.4 spliceGenome
Calculate 3S scores from ballgown objects for all genes and return a list of
two elements: "score' is a matrix of intron 3S scores with intron rows and
sample columns and "intron" is a `GRanges` object of intron structure.
```{r}
rice.bg
splice <- spliceGenome(rice.bg, gene.select = NA, intron.select = NA)
names(splice)
head(splice$score)
splice$intron
```
### 6.5 BMfinder
Find bimodal distrubition features and divide the samples into 2 groups by
k-means clustering and return a matrix with feature rows and sample columns.
```{r}
score <- spliceGene(rice.bg, "MSTRG.183", junc.type = "score")
score <- round(score, 2)
as <- BMfinder(score, cores = 1) # 4 bimodal distrubition features found
## compare
as
score[rownames(score) %in% rownames(as), ]
```
### 6.6 splicePlot
Visualization of read coverage, splicing information and gene information in a
gene region. This function is a wrapper of `getDepth`, `getGeneinfo`,
`spliceGene`, `plotBedgraph` and `plotGenes`.
```{r, fig.width=7, fig.height=4}
samples <- paste("Sample", c("027", "102", "237"), sep = "_")
bam.dir <- system.file("extdata", package = "VaSP")
## plot the whole gene region without junction lables
splicePlot(rice.bg, samples, bam.dir, gene = "MSTRG.183", junc.text = FALSE,
bheight = 0.2)
## plot the alternative splicing region with junction splicing scores
splicePlot(rice.bg, samples, bam.dir, gene = "MSTRG.183", start = 1179000)
```
If the bam files are provided (`bam.dir` is not NA), the read depth for each
sample is plotted. Otherwise (`bam.dir=NA`), the conserved exons of the samples
are displayed by rectangles (an example is the figure in **4. Quick start**).
And by default (`junc.type = 'score'`, `junc.text = TRUE`), the junctions
(represented by arcs) are labeled with splicing scores. You can change the
argument `junc.text = FALSE` to unlabel the junctions or change the argument
`junc.type = 'count'` to label with junction read counts.
```{r, fig.width=7, fig.height=4}
splicePlot(rice.bg, samples, bam.dir, gene = "MSTRG.183", junc.type = 'count',
start = 1179000)
```
There are other more options to modify the plot, please see the function
`?splicePlot` for details.
## 7. Session Information
```{r}
sessionInfo()
```