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cBioPortalData

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cBioPortal data and MultiAssayExperiment

Overview

The cBioPortalData R package aims to import cBioPortal datasets as MultiAssayExperiment objects into Bioconductor. Some of the features of the package include:

  1. The use of the MultiAssayExperiment integrative container for coordinating and representing the data.
  2. The data container explicitly links all assays to the patient clinical/pathological data.
  3. With a flexible API, MultiAssayExperiment provides harmonized subsetting and reshaping into convenient wide and long formats.
  4. The package provides datasets from both the API and the saved packaged data.
  5. It also provides automatic local caching, thanks to BiocFileCache

MultiAssayExperiment Cheatsheet

Quick Start

Installation

To install from Bioconductor (recommended for most users, this will install the release or development version corresponding to your version of Bioconductor):

if (!require("BiocManager", quietly = TRUE))
    install.packages("BiocManager")

BiocManager::install("cBioPortalData")

Developers may want to install from GitHub for bleeding-edge updates (although this is generally not necessary because changes here are also pushed to bioc-devel). Note that developers must be working with the development version of Bioconductor; see bioc-devel for details.

if (!require("cBioPortalData", quietly = TRUE))
    BiocManager::install("waldronlab/cBioPortalData")

To load the package:

library(cBioPortalData)

Note

cBioPortalData is a work in progress due to changes in data curation and cBioPortal API specification. Users can view the data(studiesTable) dataset to get an overview of the studies that are available and currently building as MultiAssayExperiment representations. About 89 % of the studies via the API (api_build) and 93 % of the package studies (pack_build) are building, these include additional datasets that were not previously available. Feel free to file an issue to request prioritization of fixing any of the remaining datasets.

cbio <- cBioPortal()
studies <- getStudies(cbio, buildReport = TRUE)
table(studies$api_build)
#> 
#> FALSE  TRUE 
#>    40   340

table(studies$pack_build)
#> 
#> FALSE  TRUE 
#>    28   352

API Service

Flexible and granular access to cBioPortal data from cbioportal.org/api. This option is best used with a particular gene panel of interest. It allows users to download sections of the data with molecular profile and gene panel combinations within a study.

gbm <- cBioPortalData(api = cbio, by = "hugoGeneSymbol", studyId = "gbm_tcga",
    genePanelId = "IMPACT341",
    molecularProfileIds = c("gbm_tcga_rppa", "gbm_tcga_mrna")
)
gbm
#> A MultiAssayExperiment object of 2 listed
#>  experiments with user-defined names and respective classes.
#>  Containing an ExperimentList class object of length 2:
#>  [1] gbm_tcga_mrna: SummarizedExperiment with 336 rows and 401 columns
#>  [2] gbm_tcga_rppa: SummarizedExperiment with 67 rows and 244 columns
#> Functionality:
#>  experiments() - obtain the ExperimentList instance
#>  colData() - the primary/phenotype DataFrame
#>  sampleMap() - the sample coordination DataFrame
#>  `$`, `[`, `[[` - extract colData columns, subset, or experiment
#>  *Format() - convert into a long or wide DataFrame
#>  assays() - convert ExperimentList to a SimpleList of matrices
#>  exportClass() - save data to flat files

Packaged Data Service

This function will download a dataset from the cbioportal.org/datasets website as a packaged tarball and serve it to users as a MultiAssayExperiment object. This option is good for users who are interested in obtaining all the data for a particular study.

acc <- cBioDataPack("acc_tcga")
acc
#> A MultiAssayExperiment object of 10 listed
#>  experiments with user-defined names and respective classes.
#>  Containing an ExperimentList class object of length 10:
#>  [1] cna_hg19.seg: RaggedExperiment with 16080 rows and 90 columns
#>  [2] cna: SummarizedExperiment with 24776 rows and 90 columns
#>  [3] linear_cna: SummarizedExperiment with 24776 rows and 90 columns
#>  [4] methylation_hm450: SummarizedExperiment with 15754 rows and 80 columns
#>  [5] mrna_seq_v2_rsem_zscores_ref_all_samples: SummarizedExperiment with 20531 rows and 79 columns
#>  [6] mrna_seq_v2_rsem_zscores_ref_diploid_samples: SummarizedExperiment with 20440 rows and 79 columns
#>  [7] mrna_seq_v2_rsem: SummarizedExperiment with 20531 rows and 79 columns
#>  [8] mutations: RaggedExperiment with 20166 rows and 90 columns
#>  [9] rppa_zscores: SummarizedExperiment with 191 rows and 46 columns
#>  [10] rppa: SummarizedExperiment with 192 rows and 46 columns
#> Functionality:
#>  experiments() - obtain the ExperimentList instance
#>  colData() - the primary/phenotype DataFrame
#>  sampleMap() - the sample coordination DataFrame
#>  `$`, `[`, `[[` - extract colData columns, subset, or experiment
#>  *Format() - convert into a long or wide DataFrame
#>  assays() - convert ExperimentList to a SimpleList of matrices
#>  exportClass() - save data to flat files