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Published in: BMC Medicine 1/2017

Open Access 01-12-2017 | Technical advance

Choice of surrogate tissue influences neonatal EWAS findings

Authors: Xinyi Lin, Ai Ling Teh, Li Chen, Ives Yubin Lim, Pei Fang Tan, Julia L. MacIsaac, Alexander M. Morin, Fabian Yap, Kok Hian Tan, Seang Mei Saw, Yung Seng Lee, Joanna D. Holbrook, Keith M. Godfrey, Michael J. Meaney, Michael S. Kobor, Yap Seng Chong, Peter D. Gluckman, Neerja Karnani

Published in: BMC Medicine | Issue 1/2017

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Abstract

Background

Epigenomes are tissue specific and thus the choice of surrogate tissue can play a critical role in interpreting neonatal epigenome-wide association studies (EWAS) and in their extrapolation to target tissue. To develop a better understanding of the link between tissue specificity and neonatal EWAS, and the contributions of genotype and prenatal factors, we compared genome-wide DNA methylation of cord tissue and cord blood, two of the most accessible surrogate tissues at birth.

Methods

In 295 neonates, DNA methylation was profiled using Infinium HumanMethylation450 beadchip arrays. Sites of inter-individual variability in DNA methylation were mapped and compared across the two surrogate tissues at birth, i.e., cord tissue and cord blood. To ascertain the similarity to target tissues, DNA methylation profiles of surrogate tissues were compared to 25 primary tissues/cell types mapped under the Epigenome Roadmap project. Tissue-specific influences of genotype on the variable CpGs were also analyzed. Finally, to interrogate the impact of the in utero environment, EWAS on 45 prenatal factors were performed and compared across the surrogate tissues.

Results

Neonatal EWAS results were tissue specific. In comparison to cord blood, cord tissue showed higher inter-individual variability in the epigenome, with a lower proportion of CpGs influenced by genotype. Both neonatal tissues were good surrogates for target tissues of mesodermal origin. They also showed distinct phenotypic associations, with effect sizes of the overlapping CpGs being in the same order of magnitude.

Conclusions

The inter-relationship between genetics, prenatal factors and epigenetics is tissue specific, and requires careful consideration in designing and interpreting future neonatal EWAS.

Trial registration

This birth cohort is a prospective observational study, designed to study the developmental origins of health and disease, and was retrospectively registered on 1 July 2010 under the identifier NCT01174875.
Appendix
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Metadata
Title
Choice of surrogate tissue influences neonatal EWAS findings
Authors
Xinyi Lin
Ai Ling Teh
Li Chen
Ives Yubin Lim
Pei Fang Tan
Julia L. MacIsaac
Alexander M. Morin
Fabian Yap
Kok Hian Tan
Seang Mei Saw
Yung Seng Lee
Joanna D. Holbrook
Keith M. Godfrey
Michael J. Meaney
Michael S. Kobor
Yap Seng Chong
Peter D. Gluckman
Neerja Karnani
Publication date
01-12-2017
Publisher
BioMed Central
Published in
BMC Medicine / Issue 1/2017
Electronic ISSN: 1741-7015
DOI
https://doi.org/10.1186/s12916-017-0970-x

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