| Literature DB >> 33749504 |
Hongdong Li1, Fengle Jiang2, Yuhui Du1, Na Li1, Zhihong Chen1, Hao Cai3, You Guo3, Guini Hong1,4.
Abstract
Leukocyte cell proportion changes affect the detection of cancer-associated aberrant DNA methylation alterations in peripheral blood samples. We aimed to detect cellular DNA methylation changes in ovarian cancer (OVC) blood samples avoiding the above-mentioned cell-composition effects. Based on the within-sample relative methylation orderings (RMOs) of CpG loci in leukocyte subtypes, we developed the Ref-RMO method to detect aberrant methylation alterations from OVC blood samples. Stable CpG pairs with consistent RMOs in different leukocyte subtypes were determined, more than 99% of which retained their RMO patterns in peripheral whole blood (PWB) in independent datasets. Based on the stable CpG pairs, significantly reversed CpG pairs were detected from OVC PWB samples, which were relative to clinical information such as age, subtype, grade, stage, or CA125 level. Results showed 439 CpG loci were determined to be significant differential DNA methylations between OVC and healthy blood samples. They were mainly enriched in KEGG pathways, such as cytokine-cytokine receptor interaction, apoptosis, proteoglycans in cancer, and immune-associated Gene Ontology terms. STRING analysis showed that they tended to have functional interactions with cancer-associated genes recorded in the COSMIC database. Leukocyte cellular differential DNA methylations could be identified by the proposed RMO-based method from OVC PWB samples, which were cancer-associated aberrant signals against cell-composition effects.Entities:
Keywords: Cancer early detection; cell-composition effect; ovarian cancer; peripheral whole blood; relative methylation ordering
Mesh:
Year: 2021 PMID: 33749504 PMCID: PMC8920127 DOI: 10.1080/15592294.2021.1900029
Source DB: PubMed Journal: Epigenetics ISSN: 1559-2294 Impact factor: 4.528