The stable version of this package is available on Bioconductor. You can install it by running the following:
if (!requireNamespace("BiocManager", quietly=TRUE))
install.packages("BiocManager")
BiocManager::install("vidger")
The latest developmental version of ViDGER
can be installed via GitHub
using the devtools
package:
if (!require("devtools")) install.packages("devtools")
devtools::install_github("btmonier/vidger", ref = "devel")
Once installed, you will have access to the following functions:
vsBoxplot()
vsScatterPlot()
vsScatterMatrix()
vsDEGMatrix()
vsMAPlot()
vsMAMatrix()
vsVolcano()
vsVolcanoMatrix()
vsFourWay()
Further explanation will be given to how these functions work later on in the
documentation. For the following examples, three toy data sets will be used:
df.cuff
, df.deseq
, and df.edger
. Each of these data sets reflect the
three RNA-seq analyses this package covers. These can be loaded in the R
workspace by using the following command:
data(<data_set>)
Where <data_set>
is one of the previously mentioned data sets. Some of the
recurring elements that are found in each of these functions are the type
and d.factor
arguments. The type
argument tells the function how to
process the data for each analytical type (i.e. "cuffdiff"
, "deseq"
, or
"edger"
). The d.factor
argument is used specifically for DESeq2
objects
which we will discuss in the DESeq2 section. All other arguments are discussed
in further detail by looking at the respective help file for each functions
(i.e. ?vsScatterPlot
).
As mentioned earlier, three toy data sets are included with this package. In addition to these data sets, 5 “real-world” data sets were also used. All real-world data used is currently unpublished from ongoing collaborations. Summaries of this data can be found in the following tables:
Table 1: An overview of the toy data sets included in this package. In this table, each data set is summarized in terms of what analytical software was used, organism ID, experimental layout (replicates and treatments), number of transcripts (IDs), and size of the data object in terms of megabytes (MB).
Data | Software | Organism | Reps | Treat. | IDs | Size (MB) |
---|---|---|---|---|---|---|
df.cuff |
CuffDiff | H | 2 | 3 | 1200 | 0.2 |
sapiens | ||||||
df.deseq |
DESeq2 | D. | 2 | 3 | 29391 | 2.3 |
melanogaster | ||||||
df.deseq |
edgeR | A. | 2 | 3 | 724 | 0.1 |
thaliana |
Table 2: “Real-world” (RW) data set statistics. To test the reliability of our package, real data was used from human collections and several plant samples. Each data set is summarized in terms of organism ID, number of experimental samples (n), experimental conditions, and number of transcripts ( IDs).
Data | Organism | n | Exp. Conditions | IDs |
---|---|---|---|---|
RW-1 | H. | 10 | Two treatment dosages taken at two | 198002 |
sapiens | time points and one control sample | |||
taken at one time point | ||||
RW-2 | M. | 24 | Two phenotypes taken at four time | 63517 |
domestia | points (three replicates each) | |||
RW-3 | V. | 6 | Two conditions (three replicates | 59262 |
ripria: | each). | |||
bud | ||||
RW-4 | V. | 6 | Two conditions (three replicates | 17962 |
ripria: | each). | |||
shoot-tip | ||||
(7 days) | ||||
RW-5 | V. | 6 | Two conditions (three replicates | 19064 |
ripria: | each). | |||
shoot-tip | ||||
(21 days) |
Box plots are a useful way to determine the distribution of data. In this case
we can determine the distribution of FPKM or CPM values by using the
vsBoxPlot()
function. This function allows you to extract necessary
results-based data from analytical objects to create a box plot comparing
\(log_{10}\) (FPKM or CPM) distributions for experimental treatments.
vsBoxPlot(
data = df.cuff, d.factor = NULL, type = 'cuffdiff', title = TRUE,
legend = TRUE, grid = TRUE
)
Figure 1: A box plot example using the vsBoxPlot()
function with
cuffdiff
data. In this example, FPKM distributions for each treatment within
an experiment are shown in the form of a box and whisker plot.
vsBoxPlot(
data = df.deseq, d.factor = 'condition', type = 'deseq',
title = TRUE, legend = TRUE, grid = TRUE
)
Figure 2: A box plot example using the vsBoxPlot()
function with
DESeq2
data. In this example, FPKM distributions for each treatment within
an experiment are shown in the form of a box and whisker plot.
vsBoxPlot(
data = df.edger, d.factor = NULL, type = 'edger',
title = TRUE, legend = TRUE, grid = TRUE
)
Figure 3: A box plot example using the vsBoxPlot()
function with edgeR
data. In this example, CPM distributions for each treatment within an
experiment are shown in the form of a box and whisker plot
vsBoxPlot()
can allow for different iterations to showcase data
distribution. These changes can be implemented using the aes
parameter.
Currently, there are 6 different variants:
box
: standard box plotviolin
: violin plotboxdot
: box plot with dot plot overlayviodot
: violin plot with dot plot overlayviosumm
: violin plot with summary stats overlaynotch
: box plot with notchbox
variantdata("df.edger")
vsBoxPlot(
data = df.edger, d.factor = NULL, type = "edger", title = TRUE,
legend = TRUE, grid = TRUE, aes = "box"
)
Figure 4: A box plot example using the aes
parameter: box
violin
variantdata("df.edger")
vsBoxPlot(
data = df.edger, d.factor = NULL, type = "edger", title = TRUE,
legend = TRUE, grid = TRUE, aes = "violin"
)
Figure 5: A box plot example using the aes
parameter: violin
boxdot
variantdata("df.edger")
vsBoxPlot(
data = df.edger, d.factor = NULL, type = "edger", title = TRUE,
legend = TRUE, grid = TRUE, aes = "boxdot"
)
Figure 6: A box plot example using the aes
parameter: boxdot
viodot
variantdata("df.edger")
vsBoxPlot(
data = df.edger, d.factor = NULL, type = "edger", title = TRUE,
legend = TRUE, grid = TRUE, aes = "viodot"
)
Figure 7: A box plot example using the aes
parameter: viodot
viosumm
variantdata("df.edger")
vsBoxPlot(
data = df.edger, d.factor = NULL, type = "edger", title = TRUE,
legend = TRUE, grid = TRUE, aes = "viosumm"
)
Figure 8: A box plot example using the aes
parameter: viosumm
notch
variantdata("df.edger")
vsBoxPlot(
data = df.edger, d.factor = NULL, type = "edger", title = TRUE,
legend = TRUE, grid = TRUE, aes = "notch"
)
Figure 9: A box plot example using the aes
parameter: notch
In addition to aesthetic changes, the fill color of each variant can
also be changed. This can be implemented by modifiying the fill.color
parameter.
The palettes that can be used for this parameter are based off of the
palettes found in the RColorBrewer
package. A visual list of all the palettes can be found
here.
data("df.edger")
vsBoxPlot(
data = df.edger, d.factor = NULL, type = "edger", title = TRUE,
legend = TRUE, grid = TRUE, aes = "box", fill.color = "RdGy"
)
Figure 10: Color variant 1
A box plot example using the fill.color
parameter: RdGy
.
data("df.edger")
vsBoxPlot(
data = df.edger, d.factor = NULL, type = "edger", title = TRUE,
legend = TRUE, grid = TRUE, aes = "viosumm", fill.color = "Paired"
)
Figure 11: Color variant 2
A violin plot example using the fill.color
parameter: Paired
with the aes
parameter: viosumm
.
data("df.edger")
vsBoxPlot(
data = df.edger, d.factor = NULL, type = "edger", title = TRUE,
legend = TRUE, grid = TRUE, aes = "notch", fill.color = "Greys"
)
Figure 12: Color variant 3
A notched box plot example using the fill.color
parameter: Greys
with the aes
parameter: notch
. Using these parameters,
we can also generate grey-scale plots.
This example will look at a basic scatter plot function, vsScatterPlot()
.
This function allows you to visualize comparisons of \(log_{10}\) values of
either FPKM or CPM measurements of two treatments depending on analytical type.
vsScatterPlot(
x = 'hESC', y = 'iPS', data = df.cuff, type = 'cuffdiff',
d.factor = NULL, title = TRUE, grid = TRUE
)
Figure 13: A scatterplot example using the vsScatterPlot()
function with
Cuffdiff
data. In this visualization, \(log_{10}\) comparisons are made of
fragments per kilobase of transcript per million mapped reads (FPKM)
measurments. The dashed line represents regression line for the comparison.
vsScatterPlot(
x = 'treated_paired.end', y = 'untreated_paired.end',
data = df.deseq, type = 'deseq', d.factor = 'condition',
title = TRUE, grid = TRUE
)
Figure 14: A scatterplot example using the vsScatterPlot()
function with
DESeq2
data. In this visualization, \(log_{10}\) comparisons are made of
fragments per kilobase of transcript per million mapped reads (FPKM)
measurments. The dashed line represents regression line for the comparison.
vsScatterPlot(
x = 'WM', y = 'MM', data = df.edger, type = 'edger',
d.factor = NULL, title = TRUE, grid = TRUE
)
Figure 15: A scatterplot example using the vsScatterPlot()
function with
edgeR
data. In this visualization, \(log_{10}\) comparisons are made of
fragments per kilobase of transcript per million mapped reads (FPKM)
measurments. The dashed line represents regression line for the comparison.
This example will look at an extension of the vsScatterPlot()
function which
is vsScatterMatrix()
. This function will create a matrix of all possible
comparisons of treatments within an experiment with additional info.
vsScatterMatrix(
data = df.cuff, d.factor = NULL, type = 'cuffdiff',
comp = NULL, title = TRUE, grid = TRUE, man.title = NULL
)
Figure 16: A scatterplot matrix example using the vsScatterMatrix()
function with Cuffdiff
data. Similar to the scatterplot function, this
visualization allows for all comparisons to be made within an experiment. In
addition to the scatterplot visuals, FPKM distributions (histograms) and
correlation (Corr) values are generated.
vsScatterMatrix(
data = df.deseq, d.factor = 'condition', type = 'deseq',
comp = NULL, title = TRUE, grid = TRUE, man.title = NULL
)
Figure 17: A scatterplot matrix example using the vsScatterMatrix()
function with DESeq2
data. Similar to the scatterplot function, this
visualization allows for all comparisons to be made within an experiment. In
addition to the scatterplot visuals, FPKM distributions (histograms) and
correlation (Corr) values are generated.
vsScatterMatrix(
data = df.edger, d.factor = NULL, type = 'edger', comp = NULL,
title = TRUE, grid = TRUE, man.title = NULL
)
Figure 18: A scatterplot matrix example using the vsScatterMatrix()
function with edgeR
data. Similar to the scatterplot function, this
visualization allows for all comparisons to be made within an experiment. In
addition to the scatterplot visuals, FPKM distributions (histograms) and
correlation (Corr) values are generated.
Using the vsDEGMatrix()
function allows the user to visualize the number of
differentially expressed genes (DEGs) at a given adjusted p-value (padj =
) for each experimental treatment level. Higher color intensity correlates to
a higher number of DEGs.
vsDEGMatrix(
data = df.cuff, padj = 0.05, d.factor = NULL, type = 'cuffdiff',
title = TRUE, legend = TRUE, grid = TRUE
)
Figure 19: A matrix of differentially expressed genes (DEGs) at a given
p-value using the vsDEGMatrix()
function with Cuffdiff
data. With this
function, the user is able to visualize the number of DEGs ata given adjusted
p-value for each experimental treatment level. Higher color intensity
correlates to a higher number of DEGs.
vsDEGMatrix(
data = df.deseq, padj = 0.05, d.factor = 'condition',
type = 'deseq', title = TRUE, legend = TRUE, grid = TRUE
)
Figure 20: A matrix of differentially expressed genes (DEGs) at a given
p-value using the vsDEGMatrix()
function with DESeq2
data. With this
function, the user is able to visualize the number of DEGs ata given adjusted
p-value for each experimental treatment level. Higher color intensity
correlates to a higher number of DEGs.
vsDEGMatrix(
data = df.edger, padj = 0.05, d.factor = NULL, type = 'edger',
title = TRUE, legend = TRUE, grid = TRUE
)
Figure 21: A matrix of differentially expressed genes (DEGs) at a given
p-value using the vsDEGMatrix()
function with edgeR
data. With this
function, the user is able to visualize the number of DEGs ata given adjusted
p-value for each experimental treatment level. Higher color intensity
correlates to a higher number of DEGs.
A grey-scale option is available for this function if you wish to use a
grey-to-white gradient instead of the classic blue-to-white gradient. This
can be invoked by setting the grey.scale
parameter to TRUE
.
vsDEGMatrix(data = df.deseq, d.factor = "condition", type = "deseq",
grey.scale = TRUE
)
vsMAPlot()
visualizes the variance between two samples in terms of gene
expression values where logarithmic fold changes of count data are plotted
against mean counts. For more information on how each of the aesthetics are
plotted, please refer to the figure captions and Method S1.
vsMAPlot(
x = 'iPS', y = 'hESC', data = df.cuff, d.factor = NULL,
type = 'cuffdiff', padj = 0.05, y.lim = NULL, lfc = NULL,
title = TRUE, legend = TRUE, grid = TRUE
)
Figure 22: MA plot visualization using the vsMAPLot()
function with
Cuffdiff
data. LFCs are plotted mean counts to determine the variance
between two treatments in terms of gene expression. Blue nodes on the graph
represent statistically significant LFCs which are greater than a given value
than a user-defined LFC parameter. Green nodes indicate statistically
significant LFCs which are less than the user-defined LFC parameter. Gray
nodes are data points that are not statistically significant. Numerical values
in parantheses for each legend color indicate the number of transcripts that
meet the prior conditions. Triangular shapes represent values that exceed the
viewing area of the graph. Node size changes represent the magnitude of the
LFC values (i.e. larger shapes reflect larger LFC values). Dashed lines
indicate user-defined LFC values.
vsMAPlot(
x = 'treated_paired.end', y = 'untreated_paired.end',
data = df.deseq, d.factor = 'condition', type = 'deseq',
padj = 0.05, y.lim = NULL, lfc = NULL, title = TRUE,
legend = TRUE, grid = TRUE
)
Figure 23: MA plot visualization using the vsMAPLot()
function with
DESeq2
data. LFCs are plotted mean counts to determine the variance between
two treatments in terms of gene expression. Blue nodes on the graph represent
statistically significant LFCs which are greater than a given value than a
user-defined LFC parameter. Green nodes indicate statistically significant
LFCs which are less than the user-defined LFC parameter. Gray nodes are data
points that are not statistically significant. Numerical values in parantheses
for each legend color indicate the number of transcripts that meet the prior
conditions. Triangular shapes represent values that exceed the viewing area of
the graph. Node size changes represent the magnitude of the LFC values (i.e.
larger shapes reflect larger LFC values). Dashed lines indicate user-defined
LFC values.
vsMAPlot(
x = 'WW', y = 'MM', data = df.edger, d.factor = NULL,
type = 'edger', padj = 0.05, y.lim = NULL, lfc = NULL,
title = TRUE, legend = TRUE, grid = TRUE
)
Figure 24: MA plot visualization using the vsMAPLot()
function with
edgeR
data. LFCs are plotted mean counts to determine the variance between
two treatments in terms of gene expression. Blue nodes on the graph represent
statistically significant LFCs which are greater than a given value than a
user-defined LFC parameter. Green nodes indicate statistically significant
LFCs which are less than the user-defined LFC parameter. Gray nodes are data
points that are not statistically significant. Numerical values in parantheses
for each legend color indicate the number of transcripts that meet the prior
conditions. Triangular shapes represent values that exceed the viewing area of
the graph. Node size changes represent the magnitude of the LFC values (i.e.
larger shapes reflect larger LFC values). Dashed lines indicate user-defined
LFC values.
Similar to a scatter plot matrix, vsMAMatrix()
will produce visualizations
for all comparisons within your data set. For more information on how the
aesthetics are plotted in these visualizations, please refer to the figure
caption and Method S1.
vsMAMatrix(
data = df.cuff, d.factor = NULL, type = 'cuffdiff',
padj = 0.05, y.lim = NULL, lfc = 1, title = TRUE,
grid = TRUE, counts = TRUE, data.return = FALSE
)
Figure 25: A MA plot matrix using the vsMAMatrix()
function with Cuffdiff
data. Similar to the vsMAPlot()
function, vsMAMatrix()
will generate a
matrix of MA plots for all comparisons within an experiment. LFCs are plotted
mean counts to determine the variance between two treatments in terms of gene
expression. Blue nodes on the graph represent statistically significant LFCs
which are greater than a given value than a user-defined LFC parameter. Green
nodes indicate statistically significant LFCs which are less than the
user-defined LFC parameter. Gray nodes are data points that are not
statistically significant. Numerical values in parantheses for each legend
color indicate the number of transcripts that meet the prior conditions.
Triangular shapes represent values that exceed the viewing area of the graph.
Node size changes represent the magnitude of the LFC values (i.e. larger
shapes reflect larger LFC values). Dashed lines indicate user-defined LFC
values.
vsMAMatrix(
data = df.deseq, d.factor = 'condition', type = 'deseq',
padj = 0.05, y.lim = NULL, lfc = 1, title = TRUE,
grid = TRUE, counts = TRUE, data.return = FALSE
)
Figure 26: A MA plot matrix using the vsMAMatrix()
function with DESeq2
data. Similar to the vsMAPlot()
function, vsMAMatrix()
will generate a
matrix of MA plots for all comparisons within an experiment. LFCs are plotted
mean counts to determine the variance between two treatments in terms of gene
expression. Blue nodes on the graph represent statistically significant LFCs
which are greater than a given value than a user-defined LFC parameter. Green
nodes indicate statistically significant LFCs which are less than the
user-defined LFC parameter. Gray nodes are data points that are not
statistically significant. Numerical values in parantheses for each legend
color indicate the number of transcripts that meet the prior conditions.
Triangular shapes represent values that exceed the viewing area of the graph.
Node size changes represent the magnitude of the LFC values (i.e. larger
shapes reflect larger LFC values). Dashed lines indicate user-defined LFC
values.
vsMAMatrix(
data = df.edger, d.factor = NULL, type = 'edger',
padj = 0.05, y.lim = NULL, lfc = 1, title = TRUE,
grid = TRUE, counts = TRUE, data.return = FALSE
)
Figure 27: A MA plot matrix using the vsMAMatrix()
function with edgeR
data. Similar to the vsMAPlot()
function, vsMAMatrix()
will generate a
matrix of MA plots for all comparisons within an experiment. LFCs are plotted
mean counts to determine the variance between two treatments in terms of gene
expression. Blue nodes on the graph represent statistically significant LFCs
which are greater than a given value than a user-defined LFC parameter. Green
nodes indicate statistically significant LFCs which are less than the
user-defined LFC parameter. Gray nodes are data points that are not
statistically significant. Numerical values in parantheses for each legend
color indicate the number of transcripts that meet the prior conditions.
Triangular shapes represent values that exceed the viewing area of the graph.
Node size changes represent the magnitude of the LFC values (i.e. larger
shapes reflect larger LFC values). Dashed lines indicate user-defined LFC
values.
The next few visualizations will focus on ways to display differential gene
expression between two or more treatments. Volcano plots visualize the variance
between two samples in terms of gene expression values where the \(-log_{10}\) of
calculated p-values (y-axis) are a plotted against the \(log_2\) changes
(x-axis). These plots can be visualized with the vsVolcano()
function.
For more information on how each of the aesthetics are plotted, please refer
to the figure captions and Method S1.
vsVolcano(
x = 'iPS', y = 'hESC', data = df.cuff, d.factor = NULL,
type = 'cuffdiff', padj = 0.05, x.lim = NULL, lfc = NULL,
title = TRUE, legend = TRUE, grid = TRUE, data.return = FALSE
)
Figure 28: A volcano plot example using the vsVolcano()
function with
Cuffdiff
data. In this visualization, comparisons are made between the
\(-log_{10}\) p-value versus the \(log_2\) fold change (LFC) between two
treatments. Blue nodes on the graph represent statistically significant LFCs
which are greater than a given value than a user-defined LFC parameter. Green
nodes indicate statistically significant LFCs which are less than the
user-defined LFC parameter. Gray nodes are data points that are not
statistically significant. Numerical values in parantheses for each legend
color indicate the number of transcripts that meet the prior conditions. Left
and right brackets (< and >) represent values that exceed the viewing area of
the graph. Node size changes represent the magnitude of the LFC values (i.e.
larger shapes reflect larger LFC values). Vertical and horizontal lines
indicate user-defined LFC and adjusted p-values, respectively.
vsVolcano(
x = 'treated_paired.end', y = 'untreated_paired.end',
data = df.deseq, d.factor = 'condition', type = 'deseq',
padj = 0.05, x.lim = NULL, lfc = NULL, title = TRUE,
legend = TRUE, grid = TRUE, data.return = FALSE
)
Figure 29: A volcano plot example using the vsVolcano()
function with
DESeq2
data. In this visualization, comparisons are made between the
\(-log_{10}\) p-value versus the \(log_2\) fold change (LFC) between two
treatments. Blue nodes on the graph represent statistically significant LFCs
which are greater than a given value than a user-defined LFC parameter. Green
nodes indicate statistically significant LFCs which are less than the
user-defined LFC parameter. Gray nodes are data points that are not
statistically significant. Numerical values in parantheses for each legend
color indicate the number of transcripts that meet the prior conditions. Left
and right brackets (< and >) represent values that exceed the viewing area of
the graph. Node size changes represent the magnitude of the LFC values (i.e.
larger shapes reflect larger LFC values). Vertical and horizontal lines
indicate user-defined LFC and adjusted p-values, respectively.
vsVolcano(
x = 'WW', y = 'MM', data = df.edger, d.factor = NULL,
type = 'edger', padj = 0.05, x.lim = NULL, lfc = NULL,
title = TRUE, legend = TRUE, grid = TRUE, data.return = FALSE
)
Figure 30: A volcano plot example using the vsVolcano()
function with
edgeR
data. In this visualization, comparisons are made between the
\(-log_{10}\) p-value versus the \(log_2\) fold change (LFC) between two
treatments. Blue nodes on the graph represent statistically significant LFCs
which are greater than a given value than a user-defined LFC parameter. Green
nodes indicate statistically significant LFCs which are less than the
user-defined LFC parameter. Gray nodes are data points that are not
statistically significant. Numerical values in parantheses for each legend
color indicate the number of transcripts that meet the prior conditions. Left
and right brackets (< and >) represent values that exceed the viewing area of
the graph. Node size changes represent the magnitude of the LFC values (i.e.
larger shapes reflect larger LFC values). Vertical and horizontal lines
indicate user-defined LFC and adjusted p-values, respectively.
Similar to the prior matrix functions, vsVolcanoMatrix()
will produce
visualizations for all comparisons within your data set. For more information
on how the aesthetics are plotted in these visualizations, please refer to the
figure caption and Method S1.
vsVolcanoMatrix(
data = df.cuff, d.factor = NULL, type = 'cuffdiff',
padj = 0.05, x.lim = NULL, lfc = NULL, title = TRUE,
legend = TRUE, grid = TRUE, counts = TRUE
)
Figure 31: A volcano plot matrix using the vsVolcanoMatrix()
function with
Cuffdiff
data. Similar to the vsVolcano()
function, vsVolcanoMatrix()
will generate a matrix of volcano plots for all comparisons within an
experiment. Comparisons are made between the \(-log_{10}\) p-value versus the
\(log_2\) fold change (LFC) between two treatments. Blue nodes on the graph
represent statistically significant LFCs which are greater than a given value
than a user-defined LFC parameter. Green nodes indicate statistically
significant LFCs which are less than the user-defined LFC parameter. Gray
nodes are data points that are not statistically significant. The blue and
green numbers in each facet represent the number of transcripts that meet the
criteria for blue and green nodes in each comparison. Left and right brackets
(< and >) represent values that exceed the viewing area of the graph. Node
size changes represent the magnitude of the LFC values (i.e. larger shapes
reflect larger LFC values). Vertical and horizontal lines indicate
user-defined LFC and adjusted p-values, respectively.
vsVolcanoMatrix(
data = df.deseq, d.factor = 'condition', type = 'deseq',
padj = 0.05, x.lim = NULL, lfc = NULL, title = TRUE,
legend = TRUE, grid = TRUE, counts = TRUE
)
Figure 32: A volcano plot matrix using the vsVolcanoMatrix()
function with
DESeq2
data. Similar to the vsVolcano()
function, vsVolcanoMatrix()
will generate a matrix of volcano plots for all comparisons within an
experiment. Comparisons are made between the \(-log_{10}\) p-value versus the
\(log_2\) fold change (LFC) between two treatments. Blue nodes on the graph
represent statistically significant LFCs which are greater than a given value
than a user-defined LFC parameter. Green nodes indicate statistically
significant LFCs which are less than the user-defined LFC parameter. Gray
nodes are data points that are not statistically significant. The blue and
green numbers in each facet represent the number of transcripts that meet the
criteria for blue and green nodes in each comparison. Left and right brackets
(< and >) represent values that exceed the viewing area of the graph. Node
size changes represent the magnitude of the LFC values (i.e. larger shapes
reflect larger LFC values). Vertical and horizontal lines indicate
user-defined LFC and adjusted p-values, respectively.
vsVolcanoMatrix(
data = df.edger, d.factor = NULL, type = 'edger', padj = 0.05,
x.lim = NULL, lfc = NULL, title = TRUE, legend = TRUE,
grid = TRUE, counts = TRUE
)
Figure 33: A volcano plot matrix using the vsVolcanoMatrix()
function with
edgeR
data. Similar to the vsVolcano()
function, vsVolcanoMatrix()
will generate a matrix of volcano plots for all comparisons within an
experiment. Comparisons are made between the \(-log_{10}\) p-value versus the
\(log_2\) fold change (LFC) between two treatments. Blue nodes on the graph
represent statistically significant LFCs which are greater than a given value
than a user-defined LFC parameter. Green nodes indicate statistically
significant LFCs which are less than the user-defined LFC parameter. Gray
nodes are data points that are not statistically significant. The blue and
green numbers in each facet represent the number of transcripts that meet the
criteria for blue and green nodes in each comparison. Left and right brackets
(< and >) represent values that exceed the viewing area of the graph. Node
size changes represent the magnitude of the LFC values (i.e. larger shapes
reflect larger LFC values). Vertical and horizontal lines indicate
user-defined LFC and adjusted p-values, respectively.
To create four-way plots, the function, vsFourWay()
is used. This plot
compares the \(log_2\) fold changes between two samples and a ‘control’. For more
information on how each of the aesthetics are plotted, please refer to the
figure captions and Method S1.
vsFourWay(
x = 'iPS', y = 'hESC', control = 'Fibroblasts', data = df.cuff,
d.factor = NULL, type = 'cuffdiff', padj = 0.05, x.lim = NULL,
y.lim = NULL, lfc = NULL, legend = TRUE, title = TRUE, grid = TRUE
)
Figure 34: A four way plot visualization using the vsFourWay()
function with
Cuffdiff
data. In this example, LFCs comparisons between two treatments and
a control are made. Blue nodes indicate statistically significant LFCs which
are greater than a given user-defined value for both x and y-axes. Green nodes
reflect statistically significant LFCs which are less than a user-defined
value for treatment y and greater than said value for treatment x. Similar to
green nodes, red nodes reflect statistically significant LFCs which are
greater than a user-defined vlaue treatment y and less than said value for
treatment x. Gray nodes are data points that are not statistically significant
for both x and y-axes. Triangular shapes indicate values which exceed the
viewing are for the graph. Size change reflects the magnitude of LFC values (
i.e. larger shapes reflect larger LFC values). Vertical and horizontal dashed
lines indicate user-defined LFC values.
vsFourWay(
x = 'treated_paired.end', y = 'untreated_single.read',
control = 'untreated_paired.end', data = df.deseq,
d.factor = 'condition', type = 'deseq', padj = 0.05, x.lim = NULL,
y.lim = NULL, lfc = NULL, legend = TRUE, title = TRUE, grid = TRUE
)
Figure 35: A four way plot visualization using the vsFourWay()
function with
DESeq2
data. In this example, LFCs comparisons between two treatments and a
control are made. Blue nodes indicate statistically significant LFCs which are
greater than a given user-defined value for both x and y-axes. Green nodes
reflect statistically significant LFCs which are less than a user-defined
value for treatment y and greater than said value for treatment x. Similar to
green nodes, red nodes reflect statistically significant LFCs which are
greater than a user-defined vlaue treatment y and less than said value for
treatment x. Gray nodes are data points that are not statistically significant
for both x and y-axes. Triangular shapes indicate values which exceed the
viewing are for the graph. Size change reflects the magnitude of LFC values (
i.e. larger shapes reflect larger LFC values). Vertical and horizontal dashed
lines indicate user-defined LFC values.
vsFourWay(
x = 'WW', y = 'WM', control = 'MM', data = df.edger,
d.factor = NULL, type = 'edger', padj = 0.05, x.lim = NULL,
y.lim = NULL, lfc = NULL, legend = TRUE, title = TRUE, grid = TRUE
)
Figure 36: A four way plot visualization using the vsFourWay()
function with
DESeq2
data. In this example, LFCs comparisons between two treatments and a
control are made. Blue nodes indicate statistically significant LFCs which are
greater than a given user-defined value for both x and y-axes. Green nodes
reflect statistically significant LFCs which are less than a user-defined
value for treatment y and greater than said value for treatment x. Similar to
green nodes, red nodes reflect statistically significant LFCs which are
greater than a user-defined vlaue treatment y and less than said value for
treatment x. Gray nodes are data points that are not statistically significant
for both x and y-axes. Triangular shapes indicate values which exceed the
viewing are for the graph. Size change reflects the magnitude of LFC values (
i.e. larger shapes reflect larger LFC values). Vertical and horizontal dashed
lines indicate user-defined LFC values.
For point-based plots, users can highlight IDs of interest (i.e. genes, transcripts, etc.). Currently, this functionality is implemented in the following functions:
vsScatterPlot()
vsMAPlot()
vsVolcano()
vsFourWay()
To use this feature, simply provide a vector of specified IDs to the
highlight
parameter found in the prior functions. An example of a typical
vector would be as follows:
important_ids <- c(
"ID_001",
"ID_002",
"ID_003",
"ID_004",
"ID_005"
)
important_ids
## [1] "ID_001" "ID_002" "ID_003" "ID_004" "ID_005"
For specific examples using the toy data set, please see the proceeding 4 sub-sections.
vsScatterPlot()
data("df.cuff")
hl <- c(
"XLOC_000033",
"XLOC_000099",
"XLOC_001414",
"XLOC_001409"
)
vsScatterPlot(
x = "hESC", y = "iPS", data = df.cuff, d.factor = NULL,
type = "cuffdiff", title = TRUE, grid = TRUE, highlight = hl
)
Figure 37: Highlighting with vsScatterPlot()
IDs of interest can be
identified within basic scatter plots. When highlighted, non-important points
will turn grey while highlighted points will turn blue. Text tags will try
to optimize their location within the graph without trying to overlap each
other.
vsMAPlot()
hl <- c(
"FBgn0022201",
"FBgn0003042",
"FBgn0031957",
"FBgn0033853",
"FBgn0003371"
)
vsMAPlot(
x = "treated_paired.end", y = "untreated_paired.end",
data = df.deseq, d.factor = "condition", type = "deseq",
padj = 0.05, y.lim = NULL, lfc = NULL, title = TRUE,
legend = TRUE, grid = TRUE, data.return = FALSE, highlight = hl
)
Figure 38: Highlighting with vsMAPlot()
IDs of interest can be
identified within MA plots. When highlighted, non-important points
will decrease in transparency (i.e. lower alpha values) while highlighted
points will turn red. Text tags will try to optimize their location within
the graph without trying to overlap each other.
vsVolcano()
hl <- c(
"FBgn0036248",
"FBgn0026573",
"FBgn0259742",
"FBgn0038961",
"FBgn0038928"
)
vsVolcano(
x = "treated_paired.end", y = "untreated_paired.end",
data = df.deseq, d.factor = "condition",
type = "deseq", padj = 0.05, x.lim = NULL, lfc = NULL,
title = TRUE, grid = TRUE, data.return = FALSE, highlight = hl
)
Figure 39: Highlighting with vsVolcano()
IDs of interest can be
identified within volcano plots. When highlighted, non-important points
will decrease in transparency (i.e. lower alpha values) while highlighted
points will turn red. Text tags will try to optimize their location within
the graph without trying to overlap each other.
vsFourWay()
data("df.edger")
hl <- c(
"ID_639",
"ID_518",
"ID_602",
"ID_449",
"ID_076"
)
vsFourWay(
x = "WM", y = "WW", control = "MM", data = df.edger,
d.factor = NULL, type = "edger", padj = 0.05, x.lim = NULL,
y.lim = NULL, lfc = 2, title = TRUE, grid = TRUE,
data.return = FALSE, highlight = hl
)
Figure 40: Highlighting with vsFourWay()
IDs of interest can be
identified within four-way plots. When highlighted, non-important points
will decrease in transparency (i.e. lower alpha values) while highlighted
points will turn dark grey. Text tags will try to optimize their location
within the graph without trying to overlap each other.
For all plots, users can extract datasets used for the visualizations. You may want to pursue this option if you want to use a highly customized plot script or you would like to perform some unmentioned analysis, for example.
To use this this feature, set the data.return
parameter in the function
you are using to TRUE
. You will also need to assign the function to an
object. See the following example for further details.
In this example, we will use the toy data set df.cuff
, a cuffdiff output
on the function vsScatterPlot()
. Take note that we are assigning the
function to an object tmp
:
# Extract data frame from visualization
data("df.cuff")
tmp <- vsScatterPlot(
x = "hESC", y = "iPS", data = df.cuff, d.factor = NULL,
type = "cuffdiff", title = TRUE, grid = TRUE, data.return = TRUE
)
The object we have created is a list with two elements: data
and plot
.
To extract the data, we can call the first element of the list using the
subset method (<object>[[1]]
) or by invoking its element name
(<object>$data
):
df_scatter <- tmp[[1]] ## or use tmp$data
head(df_scatter)
## id x y
## 1 XLOC_000001 3.47386e-01 20.21750
## 2 XLOC_000002 0.00000e+00 0.00000
## 3 XLOC_000003 0.00000e+00 0.00000
## 4 XLOC_000004 6.97259e+05 0.00000
## 5 XLOC_000005 6.96704e+02 355.82300
## 6 XLOC_000006 0.00000e+00 1.51396
By assigning each of these functions to a list, we can also store the plot as another element. To extract the plot, we can call the second element of the list using the aformentioned procedures:
my_plot <- tmp[[2]] ## or use tmp$plot
my_plot
For all functions, users can modify the font size of multiple portions of the plot. These portions primarily revolve around these components:
To manipulate these components, users can modify the default values of the following parameters:
xaxis.text.size
yaxis.text.size
xaxis.title.size
yaxis.title.size
main.title.size
legend.text.size
legend.title.size
facet.title.size
Each of parameters mentioned in the prior section refer to numerical values. These values correlate to font size in typographic points. To illustrate what exactly these parameters modify, please refer to the following figure:
Figure 41: A visual guide to text size parameters
Users can modify these
components which are highlighted by their respective parameter.
The facet.title.size
parameter refers to the facets which are allocated in
the matrix functions (vsScatterMatrix()
, vsMAMatrix()
,
vsVolcanoMatrix()
). This is illustrated in the following figure:
Figure 42: Location of facet titles
Facet title sizes can be modified using
the facet.title.size
parameter.
Since not all functions are equal in their parameters and component layout, some functions will either have or lack some of the prior parameters. To get an idea of which have functions have which, please refer to the following figure:
Figure 43: An overview of text size parameters for each function
Cells
highlighted in red refer to parameters (columns) which are found in their
respective functions (rows). Cells which are grey indicate parameters which
are not found in each of the functions.
The shape and size of each data point will also change depending on several conditions. To maximize the viewing area while retaining high resolution, some data points will not be present within the viewing area. If they exceed the viewing area, they will change shape from a circle to a triangular orientation.
The extent (i.e. fold change) to how far these points exceed the viewing area are based on the following criteria:
To further clarify theses conditions, please refer to the following figure:
Figure 44: An illustration detailing the principles behind the node size for
the differntial gene expression functions. In this figure, the data points
increase in size depending on which quartile they reside as the absolute LFC
increases (top bar). Data points that fall within the viewing area classified
as SUB while data points that exceed this area are classified as T-1 through
T-4.
Function efficiencies were determined by calculating system times by using the
microbenchmark
R package. Each function was ran 100 times with the prior code
used in the documentation. All benchmarks were determined on a machine running
a 64-bit Windows 10 operating system, 8 GB of RAM, and an Intel Core i5-6400
processor running at 2.7 GHz.
Figure 45: Benchmarks for the vsScatterPlot()
function
Time (ms)
distributions were generated for this function using 100 trials for each of
the three RNAseq data objects. Cuffdiff, DESeq2, and edgeR example data sets
contained 1200, 724, and 29391 transcripts, respectively.
Figure 46: Benchmarks for the vsScatterMatrix()
function
Time (ms)
distributions were generated for this function using 100 trials for each of
the three RNAseq data objects. Cuffdiff, DESeq2, and edgeR example data sets
contained 1200, 724, and 29391 transcripts, respectively.
Figure 47: Benchmarks for the vsBoxPlot()
function
Time (ms)
distributions were generated for this function using 100 trials for each of
the three RNAseq data objects. Cuffdiff, DESeq2, and edgeR example data sets
contained 1200, 724, and 29391 transcripts, respectively.
Figure 48: Benchmarks for the vsDEGMatrix()
function
Time (ms)
distributions were generated for this function using 100 trials for each of
the three RNAseq data objects. Cuffdiff, DESeq2, and edgeR example data sets
contained 1200, 724, and 29391 transcripts, respectively.
Figure 49: Benchmarks for the vsVolcano()
function
Time (ms)
distributions were generated for this function using 100 trials for each of
the three RNAseq data objects. Cuffdiff, DESeq2, and edgeR example data sets
contained 1200, 724, and 29391 transcripts, respectively.
Figure 50: Benchmarks for the vsVolcanoMatrix()
function
Time (ms)
distributions were generated for this function using 100 trials for each of
the three RNAseq data objects. Cuffdiff, DESeq2, and edgeR example data sets
contained 1200, 724, and 29391 transcripts, respectively.
Figure 51: Benchmarks for the vsMAPlot()
function
Time (ms)
distributions were generated for this function using 100 trials for each of
the three RNAseq data objects. Cuffdiff, DESeq2, and edgeR example data sets
contained 1200, 724, and 29391 transcripts, respectively.
Figure 52: Benchmarks for the vsMAMatrix()
function
Time (s)
distributions were generated for this function using 100 trials for each of
the three RNAseq data objects. Cuffdiff, DESeq2, and edgeR example data sets
contained 1200, 724, and 29391 transcripts, respectively.
Figure 53: Benchmarks for the vsFourWay()
function
Time (ms)
distributions were generated for this function using 100 trials for each of
the three RNAseq data objects. Cuffdiff, DESeq2, and edgeR example data sets
contained 1200, 724, and 29391 transcripts, respectively.
## R version 4.0.0 (2020-04-24)
## Platform: x86_64-pc-linux-gnu (64-bit)
## Running under: Ubuntu 18.04.4 LTS
##
## Matrix products: default
## BLAS: /home/biocbuild/bbs-3.11-bioc/R/lib/libRblas.so
## LAPACK: /home/biocbuild/bbs-3.11-bioc/R/lib/libRlapack.so
##
## locale:
## [1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C
## [3] LC_TIME=en_US.UTF-8 LC_COLLATE=C
## [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] parallel stats4 stats graphics grDevices utils datasets
## [8] methods base
##
## other attached packages:
## [1] edgeR_3.30.0 limma_3.44.0
## [3] DESeq2_1.28.0 SummarizedExperiment_1.18.0
## [5] DelayedArray_0.14.0 matrixStats_0.56.0
## [7] Biobase_2.48.0 GenomicRanges_1.40.0
## [9] GenomeInfoDb_1.24.0 IRanges_2.22.0
## [11] S4Vectors_0.26.0 BiocGenerics_0.34.0
## [13] vidger_1.8.0 BiocStyle_2.16.0
##
## loaded via a namespace (and not attached):
## [1] tidyr_1.0.2 bit64_0.9-7 splines_4.0.0
## [4] assertthat_0.2.1 highr_0.8 BiocManager_1.30.10
## [7] blob_1.2.1 GenomeInfoDbData_1.2.3 yaml_2.2.1
## [10] ggrepel_0.8.2 pillar_1.4.3 RSQLite_2.2.0
## [13] lattice_0.20-41 glue_1.4.0 digest_0.6.25
## [16] RColorBrewer_1.1-2 XVector_0.28.0 colorspace_1.4-1
## [19] htmltools_0.4.0 Matrix_1.2-18 plyr_1.8.6
## [22] XML_3.99-0.3 pkgconfig_2.0.3 magick_2.3
## [25] genefilter_1.70.0 bookdown_0.18 zlibbioc_1.34.0
## [28] purrr_0.3.4 xtable_1.8-4 scales_1.1.0
## [31] BiocParallel_1.22.0 tibble_3.0.1 annotate_1.66.0
## [34] farver_2.0.3 ggplot2_3.3.0 ellipsis_0.3.0
## [37] withr_2.2.0 survival_3.1-12 magrittr_1.5
## [40] crayon_1.3.4 memoise_1.1.0 evaluate_0.14
## [43] GGally_1.5.0 tools_4.0.0 lifecycle_0.2.0
## [46] stringr_1.4.0 munsell_0.5.0 locfit_1.5-9.4
## [49] AnnotationDbi_1.50.0 compiler_4.0.0 rlang_0.4.5
## [52] grid_4.0.0 RCurl_1.98-1.2 labeling_0.3
## [55] bitops_1.0-6 rmarkdown_2.1 gtable_0.3.0
## [58] DBI_1.1.0 reshape_0.8.8 R6_2.4.1
## [61] knitr_1.28 dplyr_0.8.5 bit_1.1-15.2
## [64] stringi_1.4.6 Rcpp_1.0.4.6 vctrs_0.2.4
## [67] geneplotter_1.66.0 tidyselect_1.0.0 xfun_0.13