化学
染色质
DNA甲基化
DNA
计算生物学
甲基化
核糖核酸
分辨率(逻辑)
基因表达
生物化学
人工智能
基因
计算机科学
生物
作者
Xi Zeng,Xiaoping Yang,Zhixing Zhong,Xin Lin,Qiuyue Chen,Shaowei Jiang,Mengwu Mo,Shichao Lin,Huimin Zhang,Zhi Zhu,Jin Li,Jia Song,Chaoyong Yang
标识
DOI:10.1021/acs.analchem.4c02765
摘要
Parallel single-cell multimodal sequencing is the most intuitive and precise tool for cellular status research. In this study, we propose AMAR-seq to automate methylation, chromatin accessibility, and RNA expression coanalysis with single-cell precision. We validated the accuracy and robustness of AMAR-seq in comparison with standard single-omics methods. The high gene detection rate and genome coverage of AMAR-seq enabled us to establish a genome-wide gene expression regulatory atlas and triple-omics landscape with single base resolution and implement single-cell copy number variation analysis. Applying AMAR-seq to investigate the process of mouse embryonic stem cell differentiation, we revealed the dynamic coupling of the epigenome and transcriptome, which may contribute to unraveling the molecular mechanisms of early embryonic development. Collectively, we propose AMAR-seq for the in-depth and accurate establishment of single-cell multiomics regulatory patterns in a cost-effective, efficient, and automated manner, paving the way for insightful dissection of complex life processes.
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