BiocStyle::markdown()
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suppressPackageStartupMessages(library("ProteomicsAnnotationHubData"))
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Package: r Biocpkg("ProteomicsAnnotationHubData")
Authors: r packageDescription("ProteomicsAnnotationHubData")[["Author"]]
Modified: r file.info("ProteomicsAnnotationHubData.Rmd")$mtime
Compiled: r date()

Introduction

About r Biocpkg("AnnotationHub"):

This package provides a client for the Bioconductor AnnotationHub web resource. The AnnotationHub web resource provides a central location where genomic files (e.g., VCF, bed, wig) and other resources from standard locations (e.g., UCSC, Ensembl) can be discovered. The resource includes metadata about each resource, e.g., a textual description, tags, and date of modification. The client creates and manages a local cache of files retrieved by the user, helping with quick and reproducible access.

The goal of r Biocpkg("ProteomicsAnnotationHubData") is to expand this functionality to mass spectrometry and proteomics data.

See the AnnotationHub's How-To and Access the AnnotationHub Web Service vignettes for a description on how to use it.

Accessing proteomics data

library("AnnotationHub")
ah <- AnnotationHub()
ah

We can extract the entries that originate from the PRIDE database:

query(ah, "PRIDE")

Or those of a specific project

query(ah, "PXD000001")

To see the metadata of a specific entry, we use its AnnotationHub entry number inside single [

ah["AH49008"]

To access the actual data, raw mass spectrometry data in this case, we double the [[

library("mzR")
rw <- ah[["AH49008"]]
rw

In this case, we have an instance of class r as.character(class(rw)), that can be processed as anticipated

plot(peaks(rw, 1), type = "h", xlab = "M/Z", ylab = "Intensity")

In the short demonstration above, we had direct and standardised access to the raw data, without a need to manually open this raw data or worry about the file format. The data was prepared and converted into a standard Bioconductor data types for immediate consumption by the user. This is also valid for other relevant data types such as identification results, fasta files or protein of peptide quantitation data.

Available datasets

To list all available proteomics datasets, one can query AnnotationHub, as described above, or using the following variable defined in the ProteomicsAnnotationHubData package:

library("ProteomicsAnnotationHubData")
availableProteomicsAnnotationHubData

PXD000001

Description

Four human TMT spliked-in proteins in an Erwinia carotovora background. Expected reporter ion ratios: Erwinia peptides: 1:1:1:1:1:1; Enolase spike (sp|P00924|ENO1_YEAST): 10:5:2.5:1:2.5:10; BSA spike (sp|P02769|ALBU_BOVIN): 1:2.5:5:10:5:1; PhosB spike (sp|P00489|PYGM_RABIT): 2:2:2:2:1:1; Cytochrome C spike (sp|P62894|CYC_BOVIN): 1:1:1:1:1:2.

Four data files from the PRIDE PXD000001 experiment are served through AnnotationHub.

  1. The raw mass spectrometry data from the TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01-20141210.mzML file from the PRDIE ftp site, served as an mzRpwiz object, from the r Biocpkg("mzR") package.

  2. The peptide-level quantitation data from the F063721.dat-mztab.txt file from the PRIDE ftp site, served as an MSnSet object, from the r Biocpkg("MSnbase") package.

  3. The protein data base, via the erwinia_carotovora.fasta file from the PRIDE ftp server, served as a AAStringSet object, from the r Biocpkg("Biostrings") package.

  4. The identification results, produced using the MSGF+ search engine, served as a mzRident object, from the r Biocpkg("mzR") package.

Adding new datasets

To suggest updates and/or new mass spectrometry and/or proteomics data, please post your suggestions/request on the Bioconductor support site or open a github issue. Contributions can also be made using github pull requests.

Input files

Starting with r Biocpkg("ProteomicsAnnotationHubData") version 1.1.2, preparing data for submission can be done by writing simple metadata files in Debian Control File (DCF) format. DCF is a simple format for storing key:value pairs in plain text files that can easily be directly read and written by humans. For example, package DESCRIPTION files follow the DCF format. See the details section in ?read.dcf for details about the format.

Each DCF file can document one or more data files and, as opposed to the default R specification, comment lines starting with a # are supported (inline comments are not supported). The fields that must be documented in these ProteomicsAnnotationhubData (PAHD) files are detailed in the next section.

An example, taken from r dir(system.file("extdata", package = "ProteomicsAnnotationHubData"), full.names = TRUE, pattern = "PXD000001.dcf") is illustrated below:

cat(readLines(dir(system.file("extdata", package = "ProteomicsAnnotationHubData"), full.names = TRUE, pattern = "PXD000001.dcf"))[10:30], sep = "\n")

The writePahdTemplate function prepares a PAHD DCF template.

writePahdTemplate()

Required data and metadata

This section describes how ProteomicsAnnotationHubData metadata ojects are described and generated. See also the r Biocpkg("AnnotationHub") package for additional documentation. Below is an excerpt of PXD000001.dcf

f <- list.files(system.file("extdata", package = "ProteomicsAnnotationHubData"),
                full.names = TRUE, pattern = "PXD000001.dcf")
cat(readLines(f)[10:30], sep = "\n")

Title {-}

The title of a file should always be prefixed with its experiment identifier, such as

Description {-}

A short description of the experiment, generally a couple of lines.

Source types {-}

These 3 field document the type/format of the original file and the R data class the file will be converted to.

|-------------------|---------|---------|-----------|--------------|--------| | SourceType | mzML | mzTab | mzid | FASTA | MSnSet | | DispatchClass | mzRpwiz | MSnSet | mzRident | AAStringSet | MSnSet | | RDataClass | mzRpwiz | MSnSet | mzRident | AAStringSet | MSnSet |

Recipe {-}

The function that converts the data into its R data class. See below for further details.

RDataPath {-}

The path to the R data file (see the scenarios below for more details).

Location_prefix {-}

The path to the location of the file. Use S3 if the file will be stored on the Amazon S3 instance or PRIDE if the file is to be retrieved from the PRIDE resource.

SourceUrl {-}

The URL of the original source file. Use S3 if the file will be stored on the Amazon S3 instance or PRIDE if the file is to be retrieved from the PRIDE resource.

Species {-}

Scientific species name.

TaxonomyId {-}

The NCBI taxonomy identifier. Can be found by searching the species name in http://www.ncbi.nlm.nih.gov/taxonomy.

File {-}

The name of the source file.

DataProvider {-}

The original provider of the data. A list of predefined/tested providers.

tab <- do.call(rbind, ProteomicsAnnotationHubData:::ProteomicsAnnotationHubDataProviders)
knitr::kable(tab, row.names = FALSE)

Maintainer {-}

Resource maintainer name and email address.

Tags {-}

Frer from tags. A list of suggested tags is shown below. These suggestions will be updated and completed over time.

ProteomicsAnnotationHubData:::ProteomicsAnnotationHubDataTags

Data location and associated metadata

Overview {-}

The data accessed through the r Biocpkg("AnnotationHub") infrastructure exists, in different forms, in different locations. These locations can be the user's computer, the AnnotationHub Amazon S3 instance and the original data provider. Multiple scenarios are can occur:

  1. The data originates from the provider's public repository. It is directly served to the user, from that third-party server, with possible local processing/coercion and made accessible as a Bioconductor data object.

  2. The data originates from the provider's public repository. However, conversion to a Bioconductor data object is time-consuming or it is anticipated that this would be repeated many times. The data is therefor copied, processed and stored on the AnnotationHub Amazon S3 instance and server from there upon request.

  3. The original file is not available from a data provider, and is stored on the AnnotationHub Amazon S3 instance and, possibly pre-processed. Upon request, it is served to the user.

Definitions {-}

Examples {-}

Refering back to the scenarios described above

Scenario 1 {-}

Files that are downloaded from the third-party resource, in our case PRIDE, and loaded directly into R without any pre-processing:

If the data is pre-processed, a Recipe must be provided.

An example from the PXD000001 data set is the raw mzML file, which is directly downloaded from the PRIDE server and read into R as an mzRpwiz object:

SourceType: mzML
RDataClass: mzRpwiz
Recipe: NA
Location_Prefix: ftp://ftp.pride.ebi.ac.uk/
RDataPath: pride/data/archive/2012/03/PXD000001/TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01-20141210.mzML
SourceUrl: ftp://ftp.pride.ebi.ac.uk/pride/data/archive/2012/03/PXD000001/TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01-20141210.mzML

Scenario 2 {-}

Files that need to be downloaded from a third-party provider such as the PRIDE server, pre-processed and the pre-processed product is stored on AnnotationHub Amazon s3 machine. The user directly gets the object from Amazon S3 instance:

An example from the PXD000001 data set is the fasta file. It originates from the PRIDE ftp server, but is processed into and AAStringSet and stored/server on the AnnotationHub Amazon S3 instance.

SourceType: FASTA
RDataClass: AAStringSet
Recipe: ProteomicsAnnotationHubData:::PXD000001FastaToAAStringSet
Location_Prefix: http://s3.amazonaws.com/annotationhub/
RDataPath: pride/data/archive/2012/03/PXD000001/erwinia_carotovora.rda
SourceUrl: ftp://ftp.pride.ebi.ac.uk/pride/data/archive/2012/03/PXD000001/erwinia_carotovora.fasta

Another example is the mzTab file with peptide-level quantitation data, that is served from the Amazon instance as an MSnSet object.

SourceType: mzTab
RDataClass: MSnSet
Recipe: ProteomicsAnnotationHubData:::PXD000001MzTabToMSnSet
Location_Prefix: http://s3.amazonaws.com/annotationhub/
RDataPath: pride/data/archive/2012/03/PXD000001/F063721.dat-MSnSet.rda
SourceUrl: ftp://ftp.pride.ebi.ac.uk/pride/data/archive/2012/03/PXD000001/F063721.dat-mztab.txt

Scenario 3 {-}

The original data file and the Bioconductor data object are stored on the AnnotationHub Amazon S3 instance and directly served to the user upon request.

An example from the PXD000001 data set is the mzid file, which is not available from the PRIDE ftp server (only a Macot dat file is provided).

SourceType: mzid
RDataClass: mzRident
Recipe: NA
Location_Prefix: http://s3.amazonaws.com/annotationhub/
RDataPath: pride/data/archive/2012/03/PXD000001/TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01-20141210.mzid
SourceUrl: http://s3.amazonaws.com/annotationhub/pride/data/archive/2012/03/PXD000001/TMT_Erwinia_1uLSike_Top10HCD_isol2_45stepped_60min_01-20141210.mzid

Data preparation script

The fully completed DCF files are added to r Biocpkg("ProteomicsAnnotationHubData")'s extdata directory and named accordin to the dataset's identifier using the dcf extension.

Once the above metadata is prepared in one or multiple DCF files, these can be read into R with PAHD. Data preparation scripts are added to If you have new types of data, please contact r Biocpkg("ProteomicsAnnotationHubData")'s maintainer. r Biocpkg("ProteomicsAnnotationHubData")'s scripts directory. Below are the first four lines of PXD000001.R:

f <- list.files(system.file("scripts", package = "ProteomicsAnnotationHubData"),
                full.names = TRUE, pattern = "PXD000001.R")
cat(readLines(f)[1:4], sep = "\n")

The rest of the preparation script calls various functions from the r Biocpkg("AnnotationHubData") package to create valid AnnotationHubMetadata instances. At the end, it is important to serialise the metadata objects in the extdata directory, as these will be used in the unit tests described below.

Preparer functions {-}

Preparer functions and recipes are only required if the rda file is prepared on the AnnotationHub Amazon S3 instance.

Below are the relevant functions for mzRpwiz, mzRIdent, MSnSet and AAStringSet resources. These are defined in r Biocpkg("AnnotationHub") /R/AnnotationHubProteomicsResource-class.R file.

setClass("mzRpwizResource", contains="AnnotationHubResource")
setMethod(".get1", "mzRpwizResource",
    function(x, ...) 
{
    .require("mzR")
    yy <- cache(.hub(x))
    mzR::openMSfile(yy, backend = "pwiz")
})
setClass("mzRidentResource", contains="AnnotationHubResource")
setMethod(".get1", "mzRidentResource",
    function(x, ...) 
{
    .require("mzR")
    yy <- cache(.hub(x))
    mzR::openIDfile(yy)
})
setClass("MSnSetResource", contains="RdaResource")
setMethod(".get1", "MSnSetResource",
    function(x, ...) 
{
    .require("MSnbase")
    callNextMethod(x, ...) 
})
setClass("AAStringSetResource", contains="AnnotationHubResource")
setMethod(".get1", "AAStringSetResource",
     function(x, ...) 
{
    .require("Biostrings")
    yy <- cache(.hub(x))
    Biostrings::readAAStringSet(yy)
})

If you have new types of data, please contact r Biocpkg("ProteomicsAnnotationHubData")'s maintainer.

Testing

Experiment/data unit tests {-}

When new data/experiments or even file types are added, the procedure to add new AnnotationHub items will be streamlined, revised, simplified and hopefully automated. To make sure that any of these updates do not alter the format/annotation, a set of experiment-specific unit tests are set up, that compare the metadata created in this package and the metadata extracted from AnnotationHub.

See for example ./tests/testthat/test_PXD000001.R.



lgatto/ProteomicsAnnotationHubData documentation built on Jan. 11, 2022, 3:41 a.m.