Statistical approaches for the analysis of DNA methylation microarray data
- 26 April 2011
- journal article
- review article
- Published by Springer Nature in Human Genetics
- Vol. 129 (6) , 585-595
- https://doi.org/10.1007/s00439-011-0993-x
Abstract
Following the rapid development and adoption in DNA methylation microarray assays, we are now experiencing a growth in the number of statistical tools to analyze the resulting large-scale data sets. As is the case for other microarray applications, biases caused by technical issues are of concern. Some of these issues are old (e.g., two-color dye bias and probe- and array-specific effects), while others are new (e.g., fragment length bias and bisulfite conversion efficiency). Here, I highlight characteristics of DNA methylation that suggest standard statistical tools developed for other data types may not be directly suitable. I then describe the microarray technologies most commonly in use, along with the methods used for preprocessing and obtaining a summary measure. I finish with a section describing downstream analyses of the data, focusing on methods that model percentage DNA methylation as the outcome, and methods for integrating DNA methylation with gene expression or genotype data.Keywords
This publication has 73 references indexed in Scilit:
- Epigenetic modifications as therapeutic targetsNature Biotechnology, 2010
- Identification of a CpG Island Methylator Phenotype that Defines a Distinct Subgroup of GliomaCancer Cell, 2010
- Genetic Control of Individual Differences in Gene-Specific Methylation in Human BrainAmerican Journal of Human Genetics, 2010
- Identification and functional relevance of de novo DNA methylation in cancerous B‐cell populationsJournal of Cellular Biochemistry, 2010
- Human DNA methylomes at base resolution show widespread epigenomic differencesNature, 2009
- A robust unified approach to analyzing methylation and gene expression dataComputational Statistics & Data Analysis, 2009
- The Epigenomics of CancerPublished by Elsevier ,2007
- DNA methylation profiling of human chromosomes 6, 20 and 22Nature Genetics, 2006
- Chromosome-wide and promoter-specific analyses identify sites of differential DNA methylation in normal and transformed human cellsNature Genetics, 2005
- A new algorithm for hybrid hierarchical clustering with visualization and the bootstrapJournal of Statistical Planning and Inference, 2003