| Literature DB >> 29776342 |
Surabhi Parashar1, David Cheishvili2,3, Niaz Mahmood1, Ani Arakelian1, Imrana Tanvir4, Haseeb Ahmed Khan4, Richard Kremer1, Catalin Mihalcioiu1, Moshe Szyf2, Shafaat A Rabbani5.
Abstract
BACKGROUND: Immune surveillance acts as a defense mechanism in cancer, and its disruption is involved in cancer progression. DNA methylation reflects the phenotypic identity of cells and recent data suggested that DNA methylation profiles of T cells and peripheral blood mononuclear cells (PBMC) are altered in cancer progression.Entities:
Keywords: Biomarkers; Blood DNA; Breast cancer; DNA methylation; Epigenetic signature; Immune system
Mesh:
Substances:
Year: 2018 PMID: 29776342 PMCID: PMC5960123 DOI: 10.1186/s12885-018-4482-7
Source DB: PubMed Journal: BMC Cancer ISSN: 1471-2407 Impact factor: 4.430
Fig. 1a Genome wide distribution of 10,772 CpGs whose DNA methylation progressively changes with breast cancer progression from stages 1 to 4. b Boxplot of 8238 significantly (p value< 0.05) demethylated (left panel) and 2408 hypermethylated (right panel) CpGs associated with breast cancer progression (delta value between breast cancer stages and average beta values of all normal individuals) in stages 1, 2, 3 and 4 in breast cancer. c Heatmap and hierarchical clustering of top 89 CpG whose quantitative level of DNA methylation correlate with progression (p < 0.01, r > 0.7, r < − 0.7). d Principal component analysis of unaffected females (N1-N9), females with breast cancer stage 1(St1.1-St1.10), stage 2 (St2.1-St2-9), stage 3 (St3.1-St3.5) and stage 4 (St4.1-St4.4) methylation profiles, plot show principal component 1 (coordinate 1) and principal component 2 (coordinate 2) for each sample. Close to each other samples are similar in their methylation profile
Fig. 2Differentially Methylated CG Sites at different stages of breast cancer patients. a Heat map of hierarchical clustering of nine healthy individuals and 28 breast cancer patients by beta values of 10,859 differentially methylated CGs (p < 0.05). b Heat map of hierarchical clustering of 1902 differentially methylated CGs (p < 0.05) in early stages of breast cancer, in healthy individuals and early and late stages of breast cancer patients. c Heat map of hierarchical clustering of nine healthy individuals and 3 and 4 breast cancer stages 9 patients by beta values of top 2239 differentially methylated CGs (p < 0.01). d Venn diagram showing significant overlap (p = 9.47e-321, hypergeometric) of methylation changes between early (1 and 2) and late (3 and 4) stages. e Venn diagram showing overlap of top 89 CpG whose quantitative level of DNA methylation correlate with progression with differentially methylated CpGs in early and late stages of breast cancer. f Red dots indicate 89 the most significant CpG sites (adjusted P value< 0.05, and R > 0.7 or R < 0.7), whose DNA methylation level correlate with breast cancer progression. Delta beta indicates the differences of DNA methylation between average of stage 4 and normal individuals. Green line separate between 10,772 CpG sites (top) whose DNA methylation level correlate with breast cancer progression and not significantly changed CpGs DNA methylation (bottom)
Ingenuity canonical pathways analysis
| Ingenuity canonical pathways | |
|---|---|
| Type I Diabetes Mellitus Signaling | 5.8884E-06 |
| T Helper Cell Differentiation | 2.4547E-05 |
| CDP-diacylglycerol Biosynthesis I | 2.6303E-05 |
| Altered T Cell and B Cell Signaling in Rheumatoid Arthritis | 4.6774E-05 |
| Phosphatidylglycerol Biosynthesis II (Non-plastidic) | 4.6774E-05 |
| Hematopoiesis from Pluripotent Stem Cells | 7.4131E-05 |
| Hepatic Cholestasis | 1.7378E-04 |
| Dendritic Cell Maturation | 1.7783E-04 |
Fig. 3Validation of Illumina 450 K DNA methylation bead array by Pyrosequencing. Correlations between Illumina 450 K array data and pyrosequence analysis. Representative data for CpG sites in cg27182070 (RPA2), cg16624210 (TPPP), cg19761014 (LRRC37B2), cg00481259 (DECR2), cg07271186 (TRY2P), cg01252526 (WDR9), and genes is shown
Fig. 4Association of identified gene panel with disease-free survival. Kaplan-Meier survival curve generated from the combined expression of the identified panel of genes shows strong association between the higher expression of these genes with breast cancer patients relapse-free survival