| Literature DB >> 33963293 |
Anders Berglund1, Ryan M Putney1, Imene Hamaidi2, Sungjune Kim3.
Abstract
Cancer immune evasion is one of the hallmarks of carcinogenesis. Cancer cells employ multiple mechanisms to avoid immune recognition and suppress antitumor immune responses. Recently, accumulating evidence has indicated that immune-related pathways are epigenetically dysregulated in cancer. Most importantly, the epigenetic footprint of immune-related pathways is associated with the patient outcome, underscoring the crucial need to understand this process. In this review, we summarize the current evidence for epigenetic regulation of immune-related pathways in cancer and describe bioinformatics tools, informative visualization techniques, and resources to help decipher the cancer epigenome.Entities:
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Year: 2021 PMID: 33963293 PMCID: PMC8178403 DOI: 10.1038/s12276-021-00612-z
Source DB: PubMed Journal: Exp Mol Med ISSN: 1226-3613 Impact factor: 12.153
Fig. 1Immune-related pathways in cancer.
a Schematic of the prototypic immune synapse. b Expanded depiction of the immune synapse between APCs/tumor cells and T cells. A comprehensive interaction between costimulatory and immune checkpoint ligand-receptor pairs is visualized. c STING-cGAS signaling pathway. Sensing of double-stranded DNA by cGAS leads to endogenous generation of cGAMP, which stimulates STING tetramerization and downstream signaling through IRF3, TBK1, and NF-κB to elicit interferon signaling.
Bioinformatic tools and pipelines for analyzing methylation data.
| Name | Platfor | GUI | Data Types | QC | Preprocess | Cell | DMP | DMR |
|---|---|---|---|---|---|---|---|---|
| RnBeads[ | R/Bioc | Yes | IDAT, betas, GEO, Bis-Seq bed | Control Plots, PCA/MDS | BMIQ[ | Yes | limma[ | Aggregate |
| ChAMP[ | R/Bioc | No | IDAT, betas | Control Plots, PCA/MDS | BMIQ, FunNorm[ | Yes | limma | Probe Lasso[ |
| SeSAMe[ | R/Bioc | No | IDAT | QC statistics | Nonlinear dye[ | Yes | No | No |
| Minfi[ | R/Bioc | No | IDAT, GEO, betas | Control Plots, Beta Density, MDS | SWAN, NOOB, FunNorm, SQN[ | Yes | limma | bumphunter |
| shinyÉPICo[ | R/Bioc | Yes | IDAT | Beta Density, PCA | As minfi | No | limma | mCSEATest[ |
| ENmix[ | R/Bioc | No | IDAT | Control Plots, PCR | Enmix[ | Yes | No | comb-p[ |
| MADA[ | Web | Yes | IDAT | Beta Density, MDS | As minfi, BMIQ, dasen | No | limma, samr[ | Probe Lasso, bumphunter, DMRcate, seqlm[ |
| FOXO BioScience[ | Python | No | IDAT, GEO, ArrayExpress | Control Plots, Beta Density, MDS | NOOB | No | linear regression, logistic regression | No |
| DimMer[ | Java | Yes | IDAT | No | Illumina, SQN | Yes | sliding window |
Bioc bioconductor, MDS multidimensional scaling, PCA principal component analysis, PCR principal component regression, DMP differentially methylated position, DMR differentially methylated region.
Fig. 2Visualization of methylation data.
a Sample-to-sample density scatter plot for the four replicate pairs from the TCGA PRAD methylation dataset. The color indicates the density of the points, and the black line is the y=x line. The Pearson correlation coefficient is listed together with the numbers of probes with |Δβ| > 0.2 and |Δβ| > 0.3. b Histogram of beta-values for the four replicate pairs from the TCGA PRAD methylation dataset. c Scatter plot for the first two principal components, PC1 and PC2, from a PCA model using all the CpG probes and all the samples from the TCGA PRAD methylation dataset. The replicates are indicated by distinct shapes and colors. d Same PCA plot but with the colors and shapes based on the sample type and molecular subtype, respectively.
Fig. 3Gene-level visualization of methylation data.
a Gene structure methylation (GSM) plot for CD40 demonstrating the methylation of the 15 CpG probes across the tumor and normal samples from the TCGA PRAD dataset. The x-axis shows the beta-values, which are shown in boxplots for each CpG probe and group, with normal samples shown in green and tumor samples in blue. The left y-axis displays the genomic position, while the right y-axis displays the probe id. The leftmost vertical column indicates CpG islands, and the right vertical column indicates the gene structure location. *q < 0.05 and |Δβ| > 0.1, **q < 0.01 & |Δβ| > 0.2. b The bar plot shows the Pearson correlation coefficient between each CD40 CpG probe and the gene expression level for the TCGA PRAD samples. The heatmap demonstrates the Pearson correlation of the methylation level between each CpG-probe pair. c The CD40 RNAseq gene expression level vs. the average methylation level for the 11 selected CD40 CpG probes using TCGA PRAD samples. Normal samples are shown as green circles, and tumors are shown as blue diamonds.