MultiDataSet: an R package for encapsulating multiple data sets with application to omic data integration

BMC Bioinformatics. 2017 Jan 17;18(1):36. doi: 10.1186/s12859-016-1455-1.

Abstract

Background: Reduction in the cost of genomic assays has generated large amounts of biomedical-related data. As a result, current studies perform multiple experiments in the same subjects. While Bioconductor's methods and classes implemented in different packages manage individual experiments, there is not a standard class to properly manage different omic datasets from the same subjects. In addition, most R/Bioconductor packages that have been designed to integrate and visualize biological data often use basic data structures with no clear general methods, such as subsetting or selecting samples.

Results: To cover this need, we have developed MultiDataSet, a new R class based on Bioconductor standards, designed to encapsulate multiple data sets. MultiDataSet deals with the usual difficulties of managing multiple and non-complete data sets while offering a simple and general way of subsetting features and selecting samples. We illustrate the use of MultiDataSet in three common situations: 1) performing integration analysis with third party packages; 2) creating new methods and functions for omic data integration; 3) encapsulating new unimplemented data from any biological experiment.

Conclusions: MultiDataSet is a suitable class for data integration under R and Bioconductor framework.

Keywords: Data infrastructure; Data integration; Data organization; Omics data; R.

MeSH terms

  • DNA Methylation
  • Gene Expression
  • Genomics / methods*
  • Humans
  • Multivariate Analysis
  • Software*