| Literature DB >> 32631327 |
Yang Zhou1, Shuli Liu2,3, Yan Hu4, Lingzhao Fang5, Yahui Gao2, Han Xia4, Steven G Schroeder2, Benjamin D Rosen2, Erin E Connor6, Cong-Jun Li2, Ransom L Baldwin2, John B Cole2, Curtis P Van Tassell2, Liguo Yang4, Li Ma7, George E Liu8.
Abstract
BACKGROUND: Efforts to improve animal health, and understand genetic bases for production, may benefit from a comprehensive analysis of animal genomes and epigenomes. Although DNA methylation has been well studied in humans and other model species, its distribution patterns and regulatory impacts in cattle are still largely unknown. Here, we present the largest collection of cattle DNA methylation epigenomic data to date.Entities:
Keywords: Cattle; DNA methylation; Hypomethylated region; Partially methylated domains; Somatic tissues; WGBS (whole genome bisulfite sequencing)
Mesh:
Year: 2020 PMID: 32631327 PMCID: PMC7339546 DOI: 10.1186/s12915-020-00793-5
Source DB: PubMed Journal: BMC Biol ISSN: 1741-7007 Impact factor: 7.431
Fig. 1Analyses of DNA methylation for the tissue-specific development in cattle. a Cluster analysis of the samples using the average methylation level of 500-bp windows. b Gene ontology analysis for the genes overlapped with tissue-specific DMRs
Fig. 2DNA methylation landscapes of PMDs in various cattle tissues. a Distribution analysis of the PMD using chr7 as an example with different genome tracks, including from the top to bottom: CG methylation level; CG density; gene number; placenta gene expression (in log2 scale); HMR numbers in the placenta, sperm, blood, lung, and liver; H3K27Ac (liver) and H3K4me3 (liver). Three DNA methylation-level drops are labeled out with rectangles. b Comparison of the location between PMDs and TADs. c Cluster analysis of cattle samples by the PMD. The PMDs were merged into PMD regions for all the samples. We calculated the ratio of the PMD of each sample to the merged PMD regions, which was then used for the cluster analysis
Fig. 3TSS-HMR as an important indicator for gene expression. a Comparison of the size distributions of different kinds of HMR between the samples in three clusters. b Analysis of the flanking boundaries of the TSS-HMR. c Correlation analysis of the DMRs with gene expression across the gene body region
Fig. 4Classifications of TSS-HMR and their tissue specificity. a Classification of the 5 types of the TSS-HMR: (1) no-TSS-HMR; (2) total in HMR; (3) TSS-HMR T1; (4) TSS-HMR T2; (5) TSS-HMR T3. Please refer to the main text for details. b Comparison of the methylation-level correlation of the CG with different distances between the TSS-HMR core region and two flank regions. c Boxplots of the gene expression for the genes with TSS-HMR or not. d Correlation analysis of the expression of the gene pairs with TSS located in the same HMR. Random: same number of genes pairs randomly chosen from all genes; control: same number of gene pairs randomly chosen from all genes with the same distance of the two TSS; Same_HMR: the gene pairs with TSS located in the same HMR. e The consistent ratio of gene pairs with TSS located in the same HMR of cattle in the other species, we defined the nearest two different strands genes as gene pairs. f The example of TP63: its tissue-specific expression of different transcripts from the two different TSS were regulated by the two tissue-specific TSS-HMRs. g Heatmap of the methylation level of tissue-specific TSS-HMR. h Heatmap of the expression levels of the genes showing tissue-specific high expression and tissue-specific TSS-HMR. i Transcription factor binding motif enrichment analyses of the tissue-specific TSS-HMR using the liver as an example
Fig. 5Comparison between the eCGI and neCGI. a eCGI was enriched around the TSS. b The eCGI was lowly methylated and conserved among different tissues (samples), shown as the standard division of methylation levels among the different samples diminished as their distances to the TSS decreased. c Motif enrichment analyses of the neCGI as compared to the eCGI
Fig. 6Analysis of hypomethylated repeats. a Hypomethylated repeats were enriched around the TSS for different samples. b Analyses of the repeats located in the TSS-HMR; observed/expected ratio of the repeats (y-axis) plotted for each repeat subclass; the size: the number of the repeats located in the TSS-HMR. c Analysis of young Bov-A2 element insertions; SE_up: the upstream part of ancient repeats, SE_down: the downstream part of ancient repeats. IE, the young Bov-A2 elements, which inserted more recently, thus split ancient repeats. The y-axis represents the sequence divergences, thus age of repeats. BOV-A2Bov-A2. dNME8 and PBX4 as two examples for the Bov-A2 insertion in the tissues with different TSS-HMRs