染色质
生物
精子
组蛋白
表观遗传学
遗传学
染色体构象捕获
基因组
染色体
核小体
细胞生物学
计算生物学
基因
基因表达
增强子
作者
Qiangzong Yin,Ching‐Yao Yang,Olga Strelkova,Jingyi Wu,Yu Sun,Sneha Gopalan,Liyan Yang,Job Dekker,Thomas G. Fazzio,Xin Zhiguo Li,Johan H. Gibcus,Oliver J. Rando
出处
期刊:Genome Research
[Cold Spring Harbor Laboratory]
日期:2023-12-01
卷期号:33 (12): 2079-2093
被引量:6
标识
DOI:10.1101/gr.277845.123
摘要
Mammalian sperm show an unusual and heavily compacted genomic packaging state. In addition to its role in organizing the compact and hydrodynamic sperm head, it has been proposed that sperm chromatin architecture helps to program gene expression in the early embryo. Scores of genome-wide surveys in sperm have reported patterns of chromatin accessibility, nucleosome localization, histone modification, and chromosome folding. Here, we revisit these studies in light of recent reports that sperm obtained from the mouse epididymis are contaminated with low levels of cell-free chromatin. In the absence of proper sperm lysis, we readily recapitulate multiple prominent genome-wide surveys of sperm chromatin, suggesting that these profiles primarily reflect contaminating cell-free chromatin. Removal of cell-free DNA, and appropriate lysis conditions, are together required to reveal a sperm chromatin state distinct from most previous reports. Using ATAC-seq to explore relatively accessible genomic loci, we identify a landscape of open loci associated with early development and transcriptional control. Histone modification and chromosome folding profiles also strongly support the hypothesis that prior studies suffer from contamination, but technical challenges associated with reliably preserving the architecture of the compacted sperm head prevent us from confidently assaying true localization patterns for these epigenetic marks. Together, our studies show that our knowledge of chromosome packaging in mammalian sperm remains largely incomplete, and motivate future efforts to more accurately characterize genome organization in mature sperm.
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