Functional normalization of 450k methylation array data improves replication in large cancer studies

Jean-Philippe Fortin(Johns Hopkins University), Aurélie Labbe(Douglas Mental Health University Institute), Mathieu Lemire(Ontario Institute for Cancer Research), Brent W. Zanke(Ottawa Hospital), Thomas J. Hudson(Ontario Institute for Cancer Research), Elana J. Fertig(Johns Hopkins University), Celia M.T. Greenwood(Jewish General Hospital), Kasper D. Hansen(Johns Hopkins University)
Genome biology
November 14, 2014
Cited by 1,009Open Access
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Abstract

We propose an extension to quantile normalization that removes unwanted technical variation using control probes. We adapt our algorithm, functional normalization, to the Illumina 450k methylation array and address the open problem of normalizing methylation data with global epigenetic changes, such as human cancers. Using data sets from The Cancer Genome Atlas and a large case-control study, we show that our algorithm outperforms all existing normalization methods with respect to replication of results between experiments, and yields robust results even in the presence of batch effects. Functional normalization can be applied to any microarray platform, provided suitable control probes are available.


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