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HeteroMeth: A Database of Cell-to-cell Heterogeneity in DNA Methylation 被引量:2
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作者 Qing Huan Yuliang Zhang +1 位作者 Shaohuan Wu Wenfeng Qian 《Genomics, Proteomics & Bioinformatics》 SCIE CAS CSCD 2018年第4期234-243,共10页
DNA methylation is an important epigenetic mark that plays a vital role in gene expression and cell differentiation. The average DNA methylation level among a group of cells has been extensively documented. However, t... DNA methylation is an important epigenetic mark that plays a vital role in gene expression and cell differentiation. The average DNA methylation level among a group of cells has been extensively documented. However, the cell-to-cell heterogeneity in DNA methylation, which reflects the differentiation of epigenetic status among cells, remains less investigated. Here we established a gold standard of the cell-to-cell heterogeneity in DNA methylation based on single-cell bisulfite sequencing (BS-seq) data. With that, we optimized a computational pipeline for estimating the heterogeneity in DNA methylation from bulk BS-seq data. We further built HeteroMeth, a database for searching, browsing, visualizing, and downloading the data for heterogeneity in DNA methylation for a total of 141 samples in humans, mice, Arabidopsis, and rice. Three genes are used as examples to illustrate the power of HeteroMeth in the identification of unique features in DNA methylation. The optimization of the computational strategy and the construction of the database in this study complement the recent experimental attempts on single-cell DNA methylomes and will facilitate the understanding of epigenetic mechanisms underlying cell differentiation and embryonic development. HeteroMeth is publicly available at http://qianlab.genetics.ac.cn/HeteroMeth. 展开更多
关键词 cell-to-cell heterogeneity dna methylation Bisulfite sequencing Single cell Shannon entropy
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一种肿瘤甲基化谱纯化的统计方法
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作者 朱宜静 聂亚婷 +1 位作者 魏娜娜 郑小琪 《上海师范大学学报(自然科学版)》 2022年第3期334-340,共7页
肿瘤组织的高度异质性是癌症基因组学研究的一个重要课题.在临床实验中获得的肿瘤样本的甲基化谱通常是来自不同成分的混合信号,如癌细胞(cancer cells)、正常细胞(normal cells)、基质(stromal)和免疫浸润细胞(immune cells).其中正常... 肿瘤组织的高度异质性是癌症基因组学研究的一个重要课题.在临床实验中获得的肿瘤样本的甲基化谱通常是来自不同成分的混合信号,如癌细胞(cancer cells)、正常细胞(normal cells)、基质(stromal)和免疫浸润细胞(immune cells).其中正常细胞的混合被认为是许多下游分析的主要混淆因素,忽视或不恰当地考虑肿瘤纯度可能会导致DNA甲基化分析出现偏差或错误的结果,因此建立合适的统计模型修正肿瘤纯度至关重要.文章开发了一个线性统计模型InfiniumPurifyMT,基于肿瘤样本、邻近正常样本和肿瘤纯度得到纯化的肿瘤甲基化谱. 展开更多
关键词 肿瘤纯度 肿瘤纯化 dna甲基化 富集分析 肿瘤异质性
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