| Literature DB >> 24391521 |
Colm E Nestor1, Fredrik Barrenäs1, Hui Wang2, Antonio Lentini1, Huan Zhang1, Sören Bruhn1, Rebecka Jörnsten3, Michael A Langston4, Gary Rogers5, Mika Gustafsson1, Mikael Benson1.
Abstract
Altered DNA methylation patterns in CD4(+) T-cells indicate the importance of epigenetic mechanisms in inflammatory diseases. However, the identification of these alterations is complicated by the heterogeneity of most inflammatory diseases. Seasonal allergic rhinitis (SAR) is an optimal disease model for the study of DNA methylation because of its well-defined phenotype and etiology. We generated genome-wide DNA methylation (N(patients) = 8, N(controls) = 8) and gene expression (N(patients) = 9, Ncontrols = 10) profiles of CD4(+) T-cells from SAR patients and healthy controls using Illumina's HumanMethylation450 and HT-12 microarrays, respectively. DNA methylation profiles clearly and robustly distinguished SAR patients from controls, during and outside the pollen season. In agreement with previously published studies, gene expression profiles of the same samples failed to separate patients and controls. Separation by methylation (N(patients) = 12, N(controls) = 12), but not by gene expression (N(patients) = 21, N(controls) = 21) was also observed in an in vitro model system in which purified PBMCs from patients and healthy controls were challenged with allergen. We observed changes in the proportions of memory T-cell populations between patients (N(patients) = 35) and controls (N(controls) = 12), which could explain the observed difference in DNA methylation. Our data highlight the potential of epigenomics in the stratification of immune disease and represents the first successful molecular classification of SAR using CD4(+) T cells.Entities:
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Year: 2014 PMID: 24391521 PMCID: PMC3879208 DOI: 10.1371/journal.pgen.1004059
Source DB: PubMed Journal: PLoS Genet ISSN: 1553-7390 Impact factor: 5.917
Figure 1The DNA methylation profile of allergen-challenged CD4+ T-cells separates SAR patients from healthy controls.
(A) Allergen-challenge assay. Peripheral blood mononuclear cells were isolated from healthy individuals and SAR patients and challenged in vitro with either allergen (pollen) or diluent (PBS). One-week post-challenge total CD4+ T-cells were isolated by MACS negative cell sorting. Genomic DNA and total RNA were isolated from the purified cells and cDNA or bisulfite-converted DNA was applied to gene expression or DNA methylation arrays, respectively. (B) Unsupervised hierarchical clustering of gene expression data of CD4+ T-cells isolated after allergen-challenge of PBMCs from SAR patients (N = 21) and healthy control subjects (N = 21) collected outside the pollen season (left panel).. Sample annotation is illustrated by colored boxes below the dendrogram. Principle components analysis of the same gene expression data fails to cluster data by disease status (right panel). (C) Unsupervised hierarchical clustering of quantitative genome-wide DNA methylation data of CD4+ T-cell DNA isolated after allergen-challenge of PBMCs from SAR patients (N = 12) and healthy control subjects (N = 12) collected outside the pollen season (left panel). Repeated bootstrap resampling of the data to calculate P-values for each cluster revealed that the two main clusters (H & P) were significantly supported by the data (P<0.05). Principle components analysis of the same DNA methylation data also revealed clear separation by disease state along the main principle component (right panel).
Figure 2In vivo CD4+ T-cell methylation separates patients from controls during and outside the pollen season.
(A) Unsupervised hierarchical clustering of gene expression data of CD4+ T-cells from SAR patients (N = 9) and healthy control subjects (N = 10) both during and outside the pollen season (left panel). Sample annotation is illustrated by colored boxes below the dendrogram. Principle components analysis of the same gene expression data failed to cluster samples by disease status (right panel). Array batch indicates which samples were analyzed on the same microarray slide. (B) Unsupervised hierarchical clustering of quantitative genome-wide DNA methylation data of CD4+ T-cells from SAR patients (N = 8) and healthy control subjects (N = 8) both during and outside the pollen season (left panel). Repeated bootstrap resampling of the data to calculate p-values for each cluster revealed that the two main clusters (H & P) were significantly supported by the data (P<0.05). Principle components analysis of the same DNA methylation data also revealed clear separation by disease state along the main principle component (right panel). Array batch indicates which samples were analyzed on the same microarray slide. (C) Plot of patient symptom score during season with PCA1 value revealed a highly significant correlation (Spearman's rho = 0.86, P = 0.01).
Figure 3CD4+ T-cell subsets differ between healthy controls and patients with seasonal allergic rhinitis.
Total CD4+ T-cells, naïve CD4+ T-cells, CD4+ T central memory cells and T effector memory cell numbers in patients with seasonal allergic rhinitis (SAR) (N = 35) and healthy controls (N = 12) were determined by flow cytometry. WBC, white blood cells. Differences between samples were determined by Mann-Whitney U-test.