期刊论文详细信息
Molecular Cytogenetics
Inter-individual methylation variability in differentially methylated regions between maternal whole blood and first trimester CVS
Philippos C Patsalis2  George Koumbaris3  Carolina Sismani2  Michael Hadjidaniel2  Christiana Spyrou3  Evdokia Tsaliki3  Anna Keravnou2  Elisavet A Papageorgiou3  Marios Ioannides1 
[1] Department of Biological Sciences, University of Cyprus, Nicosia, Cyprus;The Cyprus Institute of Neurology and Genetics, Nicosia, Cyprus;NIPD Genetics Ltd, Nicosia, Cyprus
关键词: MeDIP;    Differentially methylated regions;    Inter-individual variability;    Non-invasive prenatal diagnosis;   
Others  :  1149562
DOI  :  10.1186/s13039-014-0073-8
 received in 2014-09-22, accepted in 2014-10-12,  发布年份 2014
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【 摘 要 】

Background

DNA methylation is the most studied form of epigenetic regulation, a process by which chromatin composition and transcription factor binding is altered to influence tissue specific gene expression and differentiation. Such tissue specific methylation patterns are investigated as biomarkers for cancer and cell-free fetal DNA using various methodologies.

Results

We have utilized methylation DNA immunoprecipitation (MeDIP) and real-time quantitative PCR to investigate the inter-individual methylation variability of differentially methylated regions (DMRs) on chromosomes 18 and 21. We have characterized 15 newly selected and seven previously validated DMRs in 50, 1st trimester Chorionic villus samplings (CVS) and 50 female non-pregnant peripheral blood (WBF) samples. qPCR results from MeDIP and genomic DNA (Input) assays were used to calculate fold enrichment values for each DMR. For all regions tested, enrichment was higher in CVS than in WBF samples with mean enrichments ranging from 0.22 to 6.4 and 0.017 to 1 respectively. Despite inter-individual variability, mean enrichment values for CVS were significantly different than those for WBF in all DMRs tested (p?

Conclusions

Our work provides an expansion in the biomarker panel available for non-invasive prenatal diagnosis (NIPD) using the MeDIP-qPCR methology for Down syndrome and can eventually provide the starting point towards the development for assays towards the detection of Edwards syndrome. Furthermore, our data indicate that inter-experimental and inter-individual variation in methylation is apparent, yet the difference in methylation status across tissues is large enough to allow for robust tissue specific methylation identification.

【 授权许可】

   
2014 Ioannides et al.; licensee BioMed Central Ltd.

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