To demonstrate the data visualization of QFeatures
, we
first perform a quick processing of the hlpsms
example
data. We load the data and read it as a QFeautres
object.
See the processing vignette
for more details about data processing with QFeatures
.
We then aggregate the psms to peptides, and the peptodes to proteins.
## Your row data contain missing values. Please read the relevant
## section(s) in the aggregateFeatures manual page regarding the effects
## of missing values on data aggregation.
hl <- aggregateFeatures(hl, "peptides", "ProteinGroupAccessions", name = "proteins", fun = colMeans)
We also add the TMT tags that were used to multiplex the samples. The
data is added to the colData
of the QFeatures
object and will allow us to demonstrate how to plot data from the
colData
.
The dataset is now ready for data exploration.
QFeatures
hierarchyQFeatures
objects can contain several assays as the data
goes through the processing workflow. The plot
function
provides an overview of all the assays present in the dataset, showing
also the hierarchical relationships between the assays as determined by
the AssayLinks
.
This plot is rather simple with only three assays, but some
processing workflows may involve more steps. The feat3
example data illustrates the different possible relationships: one
parent to one child, multiple parents to one child and one parent to
multiple children.
Note that some datasets may contain many assays, for instance because
the MS experiment consists of hundreds of batches. This can lead to an
overcrowded plot. Therefore, you can also explore this hierarchy of
assays through an interactive plot, supported by the plotly
package (Sievert (2020)). You can use the
viewer panel to zoom in and out and navigate across the tree(s).
The quantitative data is retrieved using assay()
, the
feature metadata is retrieved using rowData()
on the assay
of interest, and the sample metadata is retrieved using
colData()
. Once retrieved, the data can be supplied to the
base R data exploration tools. Here are some examples:
proteins
assay..n
from
the protein rowData
.tag
from
the colData
.##
## 126 127C 127N 128C 128N 129C 129N 130C 130N 131
## 1 1 1 1 1 1 1 1 1 1
ggplot2
ggplot2
is a powerful tool for data visualization in
R
and is part of the tidyverse
package
ecosystem (Wickham et al. (2019)). It
produces elegant and publication-ready plots in a few lines of code.
ggplot2
can be used to explore QFeatures
object, similarly to the base functions shown above. Note that
ggplot2
expects data.frame
or
tibble
objects whereas the quantitative data in
QFeatures
are encoded as matrix
(or
matrix-like objects, see ?SummarizedExperiment
) and the
rowData
and colData
are encoded as
DataFrame
. This is easily circumvented by converting those
objects to data.frame
s or tibble
s. See here
how we reproduce the plot above using ggplot2
.
library("ggplot2")
df <- data.frame(rowData(hl)[["proteins"]])
ggplot(df) +
aes(x = .n) +
geom_histogram()
We refer the reader to the ggplot2
package website for more
information about the wide variety of functions that the package offers
and for tutorials and cheatsheets.
Another useful package for quantitative data exploration is
ComplexHeatmap
(Gu, Eils, and
Schlesner (2016)). It is part of the Bioconductor project (Gentleman et al. (2004)) and facilitates
visualization of matrix objects as heatmap. See here an example where we
plot the protein data.
ComplexHeatmap
also allows to add row and/or column
annotations. Let’s add the predicted protein location as row
annotation.
ha <- rowAnnotation(markers = rowData(hl)[["proteins"]]$markers)
Heatmap(matrix = assay(hl, "proteins"),
show_row_names = FALSE,
left_annotation = ha)
More advanced usage of ComplexHeatmap
is described in
the package reference book.
In this section, we show how to combine in a single table different
pieces of information available in a QFeatures
object, that
are quantitation data, feature metadata and sample metadata. The
QFeatures
package provides the longFormat
function that converts a QFeatures
object into a long
table. Long tables are very useful when using ggplot2
for
data visualization. For instance, suppose we want to visualize the
distribution of protein quantitation (present in the
proteins
assay) with respect to the different acquisition
tags (present in the colData
) for each predicted cell
location separately (present in the rowData
of the assays).
Furthermore, we link the quantitation values coming from the same
protein using lines. This can all be plotted at once in a few lines of
code.
## Warning: 'experiments' dropped; see 'drops()'
## harmonizing input:
## removing 20 sampleMap rows not in names(experiments)
ggplot(data.frame(lf)) +
aes(x = tag,
y = value,
group = rowname) +
geom_line() +
facet_wrap(~ markers, scales = "free_y", ncol = 3)
longFormat
allows to retrieve and combine all available
data from a Qfeatures
object. We here demonstrate the ease
to combine different pieces that could highlight sample specific and/or
feature specific effects on data quantitation.
Finally, a simply shiny
app allows to explore and
visualise the respective assays of a QFeatures
object.
A dropdown menu in the side bar allows the user to select an assay of interest, which can then be visualised as a heatmap (figure @ref(fig:heatmapdisplay)), as a quantitative table (figure @ref(fig:assaydisplay)) or a row data table (figure @ref(fig:rowdatadisplay)).
## R version 4.4.2 (2024-10-31)
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##
## attached base packages:
## [1] grid stats4 stats graphics grDevices utils datasets
## [8] methods base
##
## other attached packages:
## [1] ComplexHeatmap_2.23.0 gplots_3.2.0
## [3] dplyr_1.1.4 ggplot2_3.5.1
## [5] QFeatures_1.17.0 MultiAssayExperiment_1.33.1
## [7] SummarizedExperiment_1.37.0 Biobase_2.67.0
## [9] GenomicRanges_1.59.1 GenomeInfoDb_1.43.2
## [11] IRanges_2.41.2 S4Vectors_0.45.2
## [13] BiocGenerics_0.53.3 generics_0.1.3
## [15] MatrixGenerics_1.19.0 matrixStats_1.4.1
## [17] BiocStyle_2.35.0
##
## loaded via a namespace (and not attached):
## [1] tidyselect_1.2.1 farver_2.1.2 bitops_1.0-9
## [4] fastmap_1.2.0 lazyeval_0.2.2 digest_0.6.37
## [7] lifecycle_1.0.4 cluster_2.1.8 ProtGenerics_1.39.1
## [10] statmod_1.5.0 magrittr_2.0.3 compiler_4.4.2
## [13] rlang_1.1.4 sass_0.4.9 tools_4.4.2
## [16] igraph_2.1.2 yaml_2.3.10 knitr_1.49
## [19] S4Arrays_1.7.1 labeling_0.4.3 DelayedArray_0.33.3
## [22] RColorBrewer_1.1-3 plyr_1.8.9 abind_1.4-8
## [25] KernSmooth_2.23-24 withr_3.0.2 purrr_1.0.2
## [28] sys_3.4.3 caTools_1.18.3 colorspace_2.1-1
## [31] iterators_1.0.14 scales_1.3.0 gtools_3.9.5
## [34] MASS_7.3-61 cli_3.6.3 rmarkdown_2.29
## [37] crayon_1.5.3 rjson_0.2.23 httr_1.4.7
## [40] reshape2_1.4.4 BiocBaseUtils_1.9.0 cachem_1.1.0
## [43] stringr_1.5.1 zlibbioc_1.52.0 parallel_4.4.2
## [46] AnnotationFilter_1.31.0 BiocManager_1.30.25 XVector_0.47.0
## [49] vctrs_0.6.5 Matrix_1.7-1 jsonlite_1.8.9
## [52] GetoptLong_1.0.5 clue_0.3-66 maketools_1.3.1
## [55] foreach_1.5.2 limma_3.63.2 tidyr_1.3.1
## [58] jquerylib_0.1.4 glue_1.8.0 codetools_0.2-20
## [61] shape_1.4.6.1 stringi_1.8.4 gtable_0.3.6
## [64] UCSC.utils_1.3.0 munsell_0.5.1 tibble_3.2.1
## [67] pillar_1.10.0 htmltools_0.5.8.1 circlize_0.4.16
## [70] GenomeInfoDbData_1.2.13 R6_2.5.1 doParallel_1.0.17
## [73] evaluate_1.0.1 lattice_0.22-6 png_0.1-8
## [76] msdata_0.46.0 bslib_0.8.0 Rcpp_1.0.13-1
## [79] SparseArray_1.7.2 xfun_0.49 GlobalOptions_0.1.2
## [82] MsCoreUtils_1.19.0 buildtools_1.0.0 pkgconfig_2.0.3