library(BiocStyle)
library(HPAanalyze)
library(tibble)
library(dplyr)
library(ggplot2)
library(hpar)
HPAanalyze
is an R package for retreiving and performing exploratory data analysis from HPA. It provides functionality for importing data tables and xml files from HPA, exporting and visualizing data, as well as download all staining images of interest. The package is free, open source, and available via Github.HPAanalyze
intergrates into the R workflow via the tidyverse
philosophy and data structures, and can be used in combination with Bioconductor packages for easy analysis of HPA data.Keywords: Human Protein Atlas, Proteomics, Homo Sapiens, Visualization, Software
The Human Protein Atlas (HPA) is a comprehensive resource for exploration of human proteome which contains a vast amount of proteomics and transcriptomics data generated from antibody-based tissue micro-array profiling and RNA deep-sequencing.
The program has generated protein expression profiles in human normal tissues with cell type-specific expression patterns, cancer and cell lines via an innovative immunohistochemistry-based approach. These profiles are accompanied by a large collection of high quality histological staining images, annotated with clinical data and quantification. The database also includes classification of protein into both functional classes (such as transcription factors or kinases) and project-related classes (such as candidate genes for cancer). Starting from version 4.0, the HPA includes subcellular location profiles generated based on confocal images of immunofluorescent stained cells. Together, these data provide a detailed picture of protein expression in human cells and tissues, facilitating tissue-based diagnostic and research.
Data from the HPA are freely available via proteinatlas.org, allowing scientists to access and incorporate the data into their research. Previously, the R package hpar has been created for fast and easy programmatic access of HPA data. Here, we introduce HPAanalyze, an R package aims to simplify exploratory data analysis from those data, as well as provide other complementary functionality to hpar.
The Human Protein Atlas project provides data via two main mechanisms: Full datasets in the form of downloadable compressed tab-separated files (.tsv) and individual entries in XML, RDF and TSV formats. The full downloadable datasets includes normal tissue, pathology (cancer), subcellular location, RNA gene and RNA isoform data. For individual entries, the XML format is the most comprehensive, providing information on the target protein, antibodies, summary for each tissue and detailed data from each sample including clinical data, IHC scoring and image download links.
HPAanalyze
overviewHPAanalyze
is designed to fullfill 3 main tasks: (1) Import, subsetting and export downloadable datasets; (2) Visualization of downloadable datasets for exploratory analysis; and (3) Working with the individual XML files. This package aims to serve researchers with little programming experience, but also allow power users to use the imported data as desired.
HPAanalyze
The stable version of HPAanalyze should be downloaded from Bioconductor:
if (!requireNamespace("BiocManager", quietly = TRUE))
install.packages("BiocManager")
BiocManager::install("HPAanalyze")
The development version of HPAanalyze is available on Github can be installed with:
devtools::install_github("trannhatanh89/HPAanalyze")
Please cite: Tran AN, Dussaq AM, Kennell T, Willey C, Hjelmeland A. HPAanalyze: An R Package that Facilitates the Retrieval and Analysis of The Human Protein Atlas Data. bioRxiv 355032; doi: https://doi.org/10.1101/355032
The hpaDownload()
function downloads full datasets from HPA (specifically, the .tsv format described above) and imports them into R as a list of tibbles, the standard object of tidyverse
, which can subsequently be subset with hpaSubset()
and export into .xmlx files with hpaExport()
. The standard object allow the imported data to be further processed in a traditional R workflow. The ability to quickly subset and export data gives researchers the option to use other non-R downstream tools, such as GraphPad for creating publication-quality graphics, or share a subset of data containing only proteins of interest.
You can skip this whole section if you only care about visualization, unless you need a specific version of the HPA datasets, or the RNA expression datasets.
hpaDownload()
This function should be the first thing you use. It give you a list of data frames containing the datasets you specified, which you can then feed into other functions in this package.
# this gives you the latest everything, which is nice to keep but not really necessary
downloadedData <- hpaDownload(downloadList='all')
summary(downloadedData)
#> Length Class Mode
#> normal_tissue 6 tbl_df list
#> pathology 11 tbl_df list
#> subcellular_location 11 tbl_df list
#> rna_tissue 5 tbl_df list
#> rna_cell_line 5 tbl_df list
#> transcript_rna_tissue 4 tbl_df list
#> transcript_rna_cell_line 4 tbl_df list
Most of the time, you will only need the “histology” datasets, which contain normal_tissue
, pathology
(basically cancers) and subcellular_location
.
downloadedData <- hpaDownload(downloadList='histology', version='example')
# version = "example" will load the HPA v18 datasets came with this package. That's sufficient for normal usage, and save you some time.
The normal_tissue
dataset contains information about protein expression profiles in human tissues based on IHC staining. The datasets contain six columns: ensembl
(Ensembl gene identifier); gene
(HGNC symbol), tissue
(tissue name); cell_type
(annotated cell type); level
(expression value); reliability
(the gene reliability of the expression value).
tibble::glimpse(downloadedData$normal_tissue, give.attr=FALSE)
#> Observations: 1,053,330
#> Variables: 5
#> $ ensembl <chr> "ENSG00000000003", "ENSG00000000003", "ENSG00000000003",…
#> $ gene <chr> "TSPAN6", "TSPAN6", "TSPAN6", "TSPAN6", "TSPAN6", "TSPAN…
#> $ tissue <chr> "adrenal gland", "appendix", "appendix", "bone marrow", …
#> $ cell_type <chr> "glandular cells", "glandular cells", "lymphoid tissue",…
#> $ level <chr> "Not detected", "Medium", "Not detected", "Not detected"…
The pathology
dataset contains information about protein expression profiles in human tumor tissue based on IHC staining. The datasets contain eleven columns: ensembl
(Ensembl gene identifier); gene
(HGNC symbol); cancer
(cancer type); high
, medium
, low
, not_detected
(number of patients annotated for different staining levels); prognostic_favorable
, unprognostic_favorable
, prognostic_unfavorable
, unprognostic_unfavorable
(log-rank p values for patient survival and mRNA correlation).
tibble::glimpse(downloadedData$pathology, give.attr=FALSE)
#> Observations: 392,260
#> Variables: 7
#> $ ensembl <chr> "ENSG00000000003", "ENSG00000000003", "ENSG0000000000…
#> $ gene <chr> "TSPAN6", "TSPAN6", "TSPAN6", "TSPAN6", "TSPAN6", "TS…
#> $ cancer <chr> "breast cancer", "carcinoid", "cervical cancer", "col…
#> $ high <int> 1, 0, 11, 0, 10, 0, 0, 4, 8, 0, 0, 8, 11, 5, 2, 9, 11…
#> $ medium <int> 7, 1, 1, 6, 2, 0, 3, 5, 4, 0, 1, 3, 1, 6, 4, 2, 1, 1,…
#> $ low <int> 2, 1, 0, 2, 0, 0, 1, 1, 0, 0, 2, 0, 0, 0, 1, 0, 0, 1,…
#> $ not_detected <int> 2, 2, 0, 2, 0, 11, 0, 0, 0, 11, 9, 0, 0, 0, 5, 0, 0, …
The subcellular_location
dataset contains information about subcellular localization of proteins based on IF stanings of normal cells. The datasets contain eleven columns: ensembl
(Ensembl gene identifier); gene
(HGNC symbol); reliability
(gene reliability score); enhanced
(enhanced locations); supported
(supported locations); approved
(approved locations); uncertain
(uncertain locations); single_cell_var_intensity
(locations with single-cell variation in intensity); single_cell_var_spatial
(locations with spatial single-cell variation); cell_cycle_dependency
(locations with observed cell cycle dependency); go_id
(Gene Ontology Cellular Component term identifier).
tibble::glimpse(downloadedData$subcellular_location, give.attr=FALSE)
#> Observations: 12,073
#> Variables: 8
#> $ ensembl <chr> "ENSG00000000003", "ENSG00000000457", "ENSG00000000460…
#> $ gene <chr> "TSPAN6", "SCYL3", "C1orf112", "FGR", "CFH", "GCLC", "…
#> $ reliability <chr> "Approved", "Uncertain", "Approved", "Approved", "Appr…
#> $ enhanced <chr> NA, NA, NA, NA, NA, NA, "Nucleoplasm", NA, NA, NA, NA,…
#> $ supported <chr> NA, NA, NA, NA, NA, NA, NA, NA, NA, "Nucleoplasm", "Cy…
#> $ approved <chr> "Cytosol", NA, "Mitochondria", "Aggresome;Plasma membr…
#> $ uncertain <chr> NA, "Microtubules;Nuclear bodies", NA, NA, NA, NA, NA,…
#> $ go_id <chr> "Cytosol (GO:0005829)", "Microtubules (GO:0015630);Nuc…
The rna_tissue
and rna_cell_line
datasets contain RNA expression levels of 37 tissues and 64 cell lines based on RNA-seq. These datasets contain four columns each: ensembl
(Ensembl gene identifier); gene
(HGNC symbol); tissue
/cell_line
(type of sample); value
+ unit
(expression level measured by transcripts per million).
downloadedData <- hpaDownload(downloadList='rna', version='hpar')
# version = "hpar" give you the datasets bundled with the hpar package, which is another option.
tibble::glimpse(downloadedData$rna_tissue, give.attr=FALSE)
#> Observations: 725,681
#> Variables: 5
#> $ ensembl <fct> ENSG00000000003, ENSG00000000003, ENSG00000000003, ENSG000…
#> $ gene <fct> TSPAN6, TSPAN6, TSPAN6, TSPAN6, TSPAN6, TSPAN6, TSPAN6, TS…
#> $ tissue <fct> "adipose tissue", "adrenal gland", "appendix", "bone marro…
#> $ value <dbl> 31.5, 26.4, 9.2, 0.7, 53.4, 18.5, 54.2, 48.5, 27.1, 38.5, …
#> $ unit <fct> TPM, TPM, TPM, TPM, TPM, TPM, TPM, TPM, TPM, TPM, TPM, TPM…
tibble::glimpse(downloadedData$rna_cell_line, give.attr=FALSE)
#> Observations: 1,255,232
#> Variables: 5
#> $ ensembl <fct> ENSG00000000003, ENSG00000000003, ENSG00000000003, ENSG0…
#> $ gene <fct> TSPAN6, TSPAN6, TSPAN6, TSPAN6, TSPAN6, TSPAN6, TSPAN6, …
#> $ cell_line <fct> A-431, A549, AF22, AN3-CA, ASC diff, ASC TERT1, BEWO, BJ…
#> $ value <dbl> 27.8, 37.6, 108.1, 51.8, 32.3, 17.7, 42.7, 14.9, 22.4, 3…
#> $ unit <fct> TPM, TPM, TPM, TPM, TPM, TPM, TPM, TPM, TPM, TPM, TPM, T…
Similarly, the transcript_rna_tissue
and transcript_rna_cell_line
datasets contain RNA isoform levels. These datasets contain four columns each: ensembl
(Ensembl gene identifier); transcript
(Ensembl transcript identifier); tissue
/cell_line
(type of sample); value
(expression level measured by transcripts per million). Note that these datasets are significantly larger than others and should only be downloaded when necessary.
downloadedData <- hpaDownload(downloadList='isoform', version='v18')
# version = "v18" is an example of how you may download different versions of the HPA datasets. Just change the number. Note that not all versions are available from the HPA website.
tibble::glimpse(downloadedData$transcript_rna_tissue, give.attr=FALSE)
#> Observations: 27,535,996
#> Variables: 4
#> $ ensembl <chr> "ENSG00000000003", "ENSG00000000003", "ENSG0000000...
#> $ transcript <chr> "ENST00000373020", "ENST00000494424", "ENST0000049...
#> $ tissue <chr> "adipose tissue.V1", "adipose tissue.V1", "adipose...
#> $ value <dbl> 27.3577003, 0.0000000, 1.9341500, 1.6059300, 0.000...
tibble::glimpse(downloadedData$transcript_rna_cell_line, give.attr=FALSE)
#> Observations: 20,972,183
#> Variables: 4
#> $ ensembl <chr> "ENSG00000000003", "ENSG00000000003", "ENSG0000000...
#> $ transcript <chr> "ENST00000373020", "ENST00000494424", "ENST0000049...
#> $ cell_line <chr> "A-431.C35", "A-431.C35", "A-431.C35", "A-431.C35"...
#> $ value <dbl> 29.406799, 0.000000, 0.992916, 0.398387, 0.239204,...
hpar
packageOptionally, data can be imported from the hpar
package. Please note that the hpar
package does not contain the RNA isoform datasets, which are very large and should be downloaded only when necessary.
For data from hpar
, release information can be accessed with getHpaVersion
, getHpaDate
and getHpaEnsembl
.
hpaDownload('all', 'hpar')
hpar::getHpaVersion()
#> version
#> "18.1"
hpar::getHpaDate()
#> date
#> "2018.11.15"
hpar::getHpaEnsembl()
#> ensembl
#> "88.38"
hpaListParam()
To see what parameters are available for subsequent subsetting/visualizing, HPAanalyze includes the function hpaListParam()
. The input for this function is the output of hpaDownload
.
If you leave the argument blank, this function will give you the results for version 18.
## If you use the output from hpaDownload()
downloadedData <- hpaDownload(downloadList='all')
str(hpaListParam(downloadedData))
#> List of 6
#> $ normal_tissue : chr [1:58] "adrenal gland" "appendix" "bone marrow" "breast" ...
#> $ normal_cell : chr [1:82] "glandular cells" "lymphoid tissue" "hematopoietic cells" "adipocytes" ...
#> $ cancer : chr [1:20] "breast cancer" "carcinoid" "cervical cancer" "colorectal cancer" ...
#> $ subcellular_location: chr [1:32] "Cytosol" "Mitochondria" "Aggresome" "Plasma membrane" ...
#> $ normal_tissue_rna : chr [1:37] "adipose tissue" "adrenal gland" "appendix" "bone marrow" ...
#> $ cell_line_rna : chr [1:64] "A-431" "A549" "AF22" "AN3-CA" ...
## If you use leave the argument blank
str(hpaListParam())
#> List of 4
#> $ normal_tissue : chr [1:58] "adrenal gland" "appendix" "bone marrow" "breast" ...
#> $ normal_cell : chr [1:82] "glandular cells" "lymphoid tissue" "hematopoietic cells" "adipocytes" ...
#> $ cancer : chr [1:20] "breast cancer" "carcinoid" "cervical cancer" "colorectal cancer" ...
#> $ subcellular_location: chr [1:32] "Cytosol" "Mitochondria" "Aggresome" "Plasma membrane" ...
hpaSubset()
hpaSubset()
filters the output of hpaDownload()
for desirable target genes, tissues, cell types, cancer, and cell lines. The data will be subset only where applicable (i.e. normal_tissue
will not be subset by cancer). The main purpose of hpaSubset
is to prepare a manageable set of data to be exported. However, this function may also be useful for other data table manipulation purposes. The input for targetGene
argument is a vector of strings of HGNC symbols.
If you leave the data
argument blank, this function will automatically subset the bundled version 18 dataset, which may not contain all of the columns available if you download the data with hpaDownload()
.
downloadedData <- hpaDownload(downloadList='histology', version='example')
sapply(downloadedData, nrow)
#> normal_tissue pathology subcellular_location
#> 1053330 392260 12073
geneList <- c('TP53', 'EGFR', 'CD44', 'PTEN', 'IDH1', 'IDH2', 'CYCS')
tissueList <- c('breast', 'cerebellum', 'skin 1')
cancerList <- c('breast cancer', 'glioma', 'melanoma')
cellLineList <- c('A-431', 'A549', 'AF22', 'AN3-CA')
subsetData <- hpaSubset(data=downloadedData,
targetGene=geneList,
targetTissue=tissueList,
targetCancer=cancerList,
targetCellLine=cellLineList)
sapply(subsetData, nrow)
#> normal_tissue pathology subcellular_location
#> 70 21 7
To subset by Ensemble gene id, use hpar::getHPA()
. See hpar
documentation for more information.
id <- c("ENSG00000000003", "ENSG00000000005")
hpar::getHpa(id, hpadata="hpaNormalTissue") %>%
tibble::glimpse()
#> Observations: 80
#> Variables: 6
#> $ Gene <fct> ENSG00000000003, ENSG00000000003, ENSG00000000003, ENS…
#> $ Gene.name <fct> TSPAN6, TSPAN6, TSPAN6, TSPAN6, TSPAN6, TSPAN6, TSPAN6…
#> $ Tissue <fct> "adrenal gland", "appendix", "appendix", "bone marrow"…
#> $ Cell.type <fct> glandular cells, glandular cells, lymphoid tissue, hem…
#> $ Level <fct> Not detected, Medium, Not detected, Not detected, Not …
#> $ Reliability <fct> Approved, Approved, Approved, Approved, Approved, Appr…
hpaExport()
As the name suggests, hpaExport()
exports the output of hpaSubset()
to one .xlsx file. Each dataset is placed in a separate sheet. More formats such as .csv and .tsv might be added in future release; hence, the fileType
argument is included.
hpaExport(subsetData, fileName='subset.xlsx', fileType='xlsx')
HPAanalyze
provides the ability to quickly visualize data from downloaded HPA datasets with the hpaVis
function family. The goal of these functions is to aid exploratory analysis of a group of target genes, which maybe particularly useful for gaining insights into pathways or gene signatures of interest.
The hpaVis
functions share a common syntax, where the input (data
argument) is the output of hpaDownload()
or hpaSubset()
(although they do their own subseting so it is not necessary to use hpaSubset()
unless you want to reduce the size of your data object). Depending on the function, the target
arguments will let you choose to visualize your vectors of genes, tissue, cell types, etc. (See the help files for more details.) All of hpaVis
functions generate standard ggplot2
plots, which allow you to further customize colors and themes. Colors maybe changed via the color
argument, while the default theme maybe overriden by setting the customTheme
argument to FALSE
.
Currently, the normal_tissue
, pathology
and subcellular_location
data can be visualized, with more functions planned for future releases.
For all functions in the hpaVis
family, if you leave the data
argument blank, they will plot version 18 by default.
hpaVis()
hpaVis
will plot all available plots by default. See the quick-start vignette for details.
hpaVis(targetGene = c("GCH1", "PTS", "SPR", "DHFR"),
targetTissue = c("cerebellum", "cerebral cortex", "hippocampus"),
targetCancer = c("glioma"))
hpaVisTissue()
hpaVisTissue()
generates a “heatmap”, in which the expression of proteins of interest (quantified IHC staining) are plotted for each cell type of each tissue.
geneList <- c('TP53', 'EGFR', 'CD44', 'PTEN', 'IDH1', 'IDH2', 'CYCS')
tissueList <- c('breast', 'cerebellum', 'skin 1')
hpaVisTissue(downloadedData,
targetGene=geneList,
targetTissue=tissueList)
hpaVisPatho()
hpaVisPatho()
generates an arrays of column graphs showing the expression of proteins of interest in each cancer.
This example also demonstrate how the colors of the graphs could be customized, which is a common functionality of the hpaVis
family.
geneList <- c('TP53', 'EGFR', 'CD44', 'PTEN', 'IDH1', 'IDH2', 'CYCS')
cancerList <- c('breast cancer', 'glioma', 'lymphoma', 'prostate cancer')
colorGray <- c('slategray1', 'slategray2', 'slategray3', 'slategray4')
hpaVisPatho(downloadedData,
targetGene=geneList,
targetCancer=cancerList,
color=colorGray)
hpaVisSubcell()
hpaVisSubcell()
generates a tile chart showing the subcellular locations (approved and supported) of proteins of interest.
This example also demonstrate the customization of the output plot with ggplot2 functions, which is applicable to all hpaVis
functions. Notice that the customTheme
argument is set to TRUE
.
geneList <- c('TP53', 'EGFR', 'CD44', 'PTEN', 'IDH1', 'IDH2', 'CYCS')
hpaVisSubcell(downloadedData,
targetGene=geneList,
customTheme=TRUE) +
ggplot2::theme_minimal() +
ggplot2::ylab('Subcellular locations') +
ggplot2::xlab('Protein') +
ggplot2::theme(axis.text.x=element_text(angle=45, hjust=1)) +
ggplot2::theme(legend.position="none") +
ggplot2::coord_equal()
The hpaXml
function family import and extract data from individual XML entries from HPA. The hpaXmlGet()
function downloads and imports data as “xml_document”/“xml_node” object, which can subsequently be processed by other hpaXml
functions. The XML format from HPA contains a wealth of information that may not be covered by this package. However, users can extract any data of interest from the imported XML file using the xml2 package.
A typical workflow for working with XML files includes the following steps: (1) Download and import XML file with hpaXmlGet()
; (2) Extract the desired information with other hpaXml
functions; and (3) Download histological staining pictures, which is currently supported by the hpaXmlTissurExpr()
and hpaXmlTissueExprSum()
functions.
hpaXml
hpaXml
will take an Ensembl gene id (start with ENSG) and extract all availble information. You can also feed the ourput of hpaXmlGet to it. See the quick-start vignette for more details.
EGFR <- hpaXml(inputXml='ENSG00000146648')
names(EGFR)
#> [1] "ProtClass" "TissueExprSum" "Antibody" "TissueExpr"
To view the web page for the protein of interest, which contains similar information in a pretty presentation, use hpar function getHPA()
with argument type="details"
.
hpar::getHpa('ENSG00000146648', type="details")
hpaXmlGet()
The hoaXmlGet()
function takes an Ensembl gene id (start with ENSG) and import the perspective XML file into R. This function calls the xml2::read_xml()
under the hood, hence the resulting object may be processed further with xml2 functions if desired.
EGFRxml <- hpaXmlGet('ENSG00000146648')
hpaXmlProtClass()
Protein class of queried protein can be extracted from the imported XML with hpaXmlProtClass()
. The output of this function is a tibble of 4 columns: id
, name
, parent_id
and source
hpaXmlProtClass(EGFRxml)
#> # A tibble: 40 x 4
#> id name parent_id source
#> <chr> <chr> <chr> <chr>
#> 1 Ez Enzymes <NA> <NA>
#> 2 Ec ENZYME proteins Ez ENZYME
#> 3 Et Transferases Ec ENZYME
#> 4 Ki Kinases Ez UniProt
#> 5 Kt Tyr protein kinases Ki UniProt
#> 6 Ma Predicted membrane proteins <NA> MDM
#> 7 Md Membrane proteins predicted by MDM <NA> MDM
#> 8 Me MEMSAT3 predicted membrane proteins <NA> MEMSAT3
#> 9 Mf MEMSAT-SVM predicted membrane proteins <NA> MEMSAT-SVM
#> 10 Mg Phobius predicted membrane proteins <NA> Phobius
#> # ... with 30 more rows
hpaXmlTissueExprSum()
The function hpaXmlTissueExprSum()
extract the summary of expression of protein of interest in normal tissue. The output of this function is a list of (1) a string contains one-sentence summary and (2) a dataframe of all tissues in which the protein was stained positive and a histological stain images of those tissue.
hpaXmlTissueExprSum(EGFRxml)
#> $summary
#> [1] "Cytoplasmic and membranous expression in several tissues, most abundant in placenta."
#>
#> $img
#> tissue
#> 1 cerebral cortex
#> 2 lymph node
#> 3 liver
#> 4 colon
#> 5 kidney
#> 6 testis
#> 7 placenta
#> imageUrl
#> 1 http://v18.proteinatlas.org/images/18530/41191_B_7_5_rna_selected.jpg
#> 2 http://v18.proteinatlas.org/images/18530/41191_A_7_8_rna_selected.jpg
#> 3 http://v18.proteinatlas.org/images/18530/41191_A_7_4_rna_selected.jpg
#> 4 http://v18.proteinatlas.org/images/18530/41191_A_9_3_rna_selected.jpg
#> 5 http://v18.proteinatlas.org/images/18530/41191_A_9_5_rna_selected.jpg
#> 6 http://v18.proteinatlas.org/images/18530/41191_A_6_6_rna_selected.jpg
#> 7 http://v18.proteinatlas.org/images/18530/41191_A_1_7_rna_selected.jpg
Those images can be downloaded automatically by setting the downloadImg
argument to TRUE
. Eg. hpaXmlTissueExprSum(CCNB1xml, downloadImg=TRUE)
hpaXmlAntibody()
and hpaXmlTissueExpr()
More importantly, the XML files are the only format of HPA programmatically accesible data which contains information about each antibody and each tissue sample used in the project.
hpaXmlAntibody()
extract the antibody information and return a tibble with one row for each antibody.
hpaXmlAntibody(EGFRxml)
#> # A tibble: 5 x 4
#> id releaseDate releaseVersion RRID
#> <chr> <chr> <chr> <chr>
#> 1 CAB000035 2006-03-13 1.2 <NA>
#> 2 HPA001200 2008-02-15 3.1 AB_1078723
#> 3 HPA018530 2008-12-03 4.1 AB_1848044
#> 4 CAB068186 2014-11-06 13 AB_2665679
#> 5 CAB073534 2015-10-16 14 <NA>
hpaXmlTissueExpr()
extract information about all samples for each antibody above and return a list of tibbles. If antibody has not been used for IHC staining, the returned tibble with be empty.
tissueExpression <- hpaXmlTissueExpr(EGFRxml)
summary(tissueExpression)
#> Length Class Mode
#> [1,] 18 tbl_df list
#> [2,] 18 tbl_df list
#> [3,] 18 tbl_df list
#> [4,] 18 tbl_df list
#> [5,] 18 tbl_df list
Each tibble contain clinical data (patientid
, age
, sex
), tissue information (snomedCode
, tissueDescription
), staining results (staining
, intensity
, location
) and one imageUrl
for each sample. However, due to the large amount of data and the relatively large size of each image, hpaXmlTissueExpr
does not provide an automated download option.
tissueExpression[[1]]
#> # A tibble: 327 x 18
#> patientId age sex staining intensity quantity location imageUrl
#> <chr> <chr> <chr> <chr> <chr> <chr> <chr> <chr>
#> 1 1653 53 Male <NA> <NA> <NA> <NA> http://~
#> 2 1721 60 Fema~ <NA> <NA> <NA> <NA> http://~
#> 3 1725 57 Male <NA> <NA> <NA> <NA> http://~
#> 4 4 25 Male <NA> <NA> <NA> <NA> http://~
#> 5 512 34 Fema~ <NA> <NA> <NA> <NA> http://~
#> 6 2664 74 Fema~ <NA> <NA> <NA> <NA> http://~
#> 7 2665 88 Fema~ <NA> <NA> <NA> <NA> http://~
#> 8 1391 54 Fema~ <NA> <NA> <NA> <NA> http://~
#> 9 1447 45 Fema~ <NA> <NA> <NA> <NA> http://~
#> 10 1452 44 Fema~ <NA> <NA> <NA> <NA> http://~
#> # ... with 317 more rows, and 10 more variables: snomedCode1 <chr>,
#> # snomedCode2 <chr>, snomedCode3 <chr>, snomedCode4 <chr>,
#> # snomedCode5 <chr>, tissueDescription1 <chr>, tissueDescription2 <chr>,
#> # tissueDescription3 <chr>, tissueDescription4 <chr>,
#> # tissueDescription5 <chr>
hpaTissueExprSum
and hpaTissueExpr
provide download links to download relevant staining images, with the former function also gives the options to automate the downloading process.
hpar
Bioconductor packageFunctionality | hpar | HPAanalyze |
---|---|---|
Datasets | Included in package | Download from server or Import from hpar |
Query | Ensembl id | HGNC symbol for datasets, Ensembl id for XML |
Data version | One stable version | Latest by default, option to download older |
Release info | Access via functions | N/A |
View relevant browser page | Via getHPA function |
N/A |
Visualization | N/A | Exploratory via hpaVis functions |
XML | N/A | Download and import via hpaXml functions |
Histology image | View by loading browser page | Extract links via hpaXml functions |
We appreciate the support of the National institutes of Health National Cancer Institute R01 CA151522 and funds from the Department of Cell, Developmental and Integrative Biology at the University of Alabama at Birmingham.
Anh Tran, 2018