funtooNorm: an R package for normalization of DNA methylation data when there are multiple cell or tissue types.

View Abstract

MOTIVATION

DNA methylation patterns are well known to vary substantially across cell types or tissues. Hence, existing normalization methods may not be optimal if they do not take this into account. We therefore present a new R package for normalization of data from the Illumina Infinium Human Methylation450 BeadChip (Illumina 450 K) built on the concepts in the recently published funNorm method, and introducing cell-type or tissue-type flexibility.

RESULTS

funtooNorm is relevant for data sets containing samples from two or more cell or tissue types. A visual display of cross-validated errors informs the choice of the optimal number of components in the normalization. Benefits of cell (tissue)-specific normalization are demonstrated in three data sets. Improvement can be substantial; it is strikingly better on chromosome X, where methylation patterns have unique inter-tissue variability.

AVAILABILITY AND IMPLEMENTATION

An R package is available at https://github.com/GreenwoodLab/funtooNorm, and has been submitted to Bioconductor at http://bioconductor.org.

Investigators
Abbreviation
Bioinformatics
Publication Date
2015-10-24
Volume
32
Issue
4
Page Numbers
593-5
Pubmed ID
26500152
Medium
Print-Electronic
Full Title
funtooNorm: an R package for normalization of DNA methylation data when there are multiple cell or tissue types.
Authors
Oros Klein K, Grinek S, Bernatsky S, Bouchard L, Ciampi A, Colmegna I, Fortin JP, Gao L, Hivert MF, Hudson M, Kobor MS, Labbe A, MacIsaac JL, Meaney MJ, Morin AM, O'Donnell KJ, Pastinen T, Van Ijzendoorn MH, Voisin G, Greenwood CM