Identification of tissue-specific and common methylation quantitative trait loci in healthy individuals using MAGAR.
View / Open Files
Authors
Scherer, Michael
Gasparoni, Gilles
Rahmouni, Souad
Shashkova, Tatiana
Arnoux, Marion
Louis, Edouard
Nostaeva, Arina
Avalos, Diana
Dermitzakis, Emmanouil T
Aulchenko, Yurii S
Lengauer, Thomas
Lyons, Paul A
Georges, Michel
Publication Date
2021-09-16Journal Title
Epigenetics & chromatin
ISSN
1756-8935
Volume
14
Issue
1
Language
eng
Type
Article
This Version
VoR
Metadata
Show full item recordCitation
Scherer, M., Gasparoni, G., Rahmouni, S., Shashkova, T., Arnoux, M., Louis, E., Nostaeva, A., et al. (2021). Identification of tissue-specific and common methylation quantitative trait loci in healthy individuals using MAGAR.. Epigenetics & chromatin, 14 (1) https://doi.org/10.1186/s13072-021-00415-6
Abstract
<h4>Background</h4>Understanding the influence of genetic variants on DNA methylation is fundamental for the interpretation of epigenomic data in the context of disease. There is a need for systematic approaches not only for determining methylation quantitative trait loci (methQTL), but also for discriminating general from cell type-specific effects.<h4>Results</h4>Here, we present a two-step computational framework MAGAR ( https://bioconductor.org/packages/MAGAR ), which fully supports the identification of methQTLs from matched genotyping and DNA methylation data, and additionally allows for illuminating cell type-specific methQTL effects. In a pilot analysis, we apply MAGAR on data in four tissues (ileum, rectum, T cells, B cells) from healthy individuals and demonstrate the discrimination of common from cell type-specific methQTLs. We experimentally validate both types of methQTLs in an independent data set comprising additional cell types and tissues. Finally, we validate selected methQTLs located in the PON1, ZNF155, and NRG2 genes by ultra-deep local sequencing. In line with previous reports, we find cell type-specific methQTLs to be preferentially located in enhancer elements.<h4>Conclusions</h4>Our analysis demonstrates that a systematic analysis of methQTLs provides important new insights on the influences of genetic variants to cell type-specific epigenomic variation.
Keywords
DNA methylation, Tissue specificity, Quantitative trait loci, computational biology
Sponsorship
ministry of education and science of the russian federation (Graduates 2020)
Horizon 2020 Framework Programme (733100)
Medical Research Council (MR/L019027/1)
Identifiers
PMC8444396, 34530905
External DOI: https://doi.org/10.1186/s13072-021-00415-6
This record's URL: https://www.repository.cam.ac.uk/handle/1810/329604
Statistics
Total file downloads (since January 2020). For more information on metrics see the
IRUS guide.
Recommended or similar items
The current recommendation prototype on the Apollo Repository will be turned off on 03 February 2023. Although the pilot has been fruitful for both parties, the service provider IKVA is focusing on horizon scanning products and so the recommender service can no longer be supported. We recognise the importance of recommender services in supporting research discovery and are evaluating offerings from other service providers. If you would like to offer feedback on this decision please contact us on: support@repository.cam.ac.uk