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Cell-composition effects in the analysis of DNA methylation array data: a mathematical perspective

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Title Cell-composition effects in the analysis of DNA methylation array data: a mathematical perspective
Names Houseman, E. Andres (creator)
Kelsey, Karl T. (creator)
Wiencke, John K. (creator)
Marsit, Carmen J. (creator)
Date Issued 2015-03-21 (iso8601)
Note This is the publisher’s final pdf. The published article is copyrighted by the author(s) and published by BioMed Central Ltd. The published article can be found at: http://www.biomedcentral.com/bmcbioinformatics/.
Abstract BACKGROUND: The impact of cell-composition effects in analysis of DNA methylation data is now widely appreciated.
With the availability of a reference data set consisting of DNA methylation measurements on isolated cell types, it is
possible to impute cell proportions and adjust for them, but there is increasing interest in methods that adjust for
cell composition effects when reference sets are incomplete or unavailable.
RESULTS: In this article we present a theoretical basis for one such method, showing that the total effect of a phenotype
on DNA methylation can be decomposed into orthogonal components, one representing the effect of phenotype on
proportions of major cell types, the other representing either subtle effects in composition or global effects at focused
loci, and that it is possible to separate these two types of effects in a finite data set. We demonstrate this principle
empirically on nine DNA methylation data sets, showing that the first few principal components generally contain a
majority of the information on cell-type present in the data, but that later principal components nevertheless contain
information about a small number of loci that may represent more focused associations. We also present a new method
for determining the number of linear terms to interpret as cell-mixture effects and demonstrate robustness to the choice
of this parameter.
CONCLUSIONS: Taken together, our work demonstrates that reference-free algorithms for cell-mixture adjustment can
produce biologically valid results, separating cell-mediated epigenetic effects (i.e. apparent effects arising from differences
in cell composition) from those that are not cell mediated, and that in general the interpretation of associations evident
from DNA methylation should be carefully considered.
Genre Article
Access Condition http://creativecommons.org/licenses/by/3.0/us/
Topic Epigenetics
Identifier Houseman, E. A., Kelsey, K. T., Wiencke, J. K., & Marsit, C. J. (2015). Cell-composition effects in the analysis of DNA methylation array data: a mathematical perspective. BMC Bioinformatics, 16, 95. doi:10.1186/s12859-015-0527-y

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