染色质
可用的
计算机科学
搜索引擎索引
工作流程
基因组
基因组学
转座酶
计算生物学
生物
遗传学
人工智能
数据库
万维网
基因
转座因子
作者
Ryan M. Mulqueen,Dmitry Pokholok,Brendan L. O’Connell,Casey Thornton,Fan Zhang,Brian J. O’Roak,Jason M. Link,Galip Gurkan Yardmici,Rosalie C. Sears,Frank J. Steemers,Andrew C. Adey
标识
DOI:10.1101/2021.01.11.425995
摘要
Abstract Single-cell genomics assays have emerged as a dominant platform for interrogating complex biological systems. Methods to capture various properties at the single-cell level typically suffer a tradeoff between cell count and information content, which is defined by the number of unique and usable reads acquired per cell. We and others have described workflows that utilize single-cell combinatorial indexing (sci) 1 , leveraging transposase-based library construction 2 to assess a variety of genomic properties in high throughput; however, these techniques often produce sparse coverage for the property of interest. Here, we describe a novel adaptor-switching strategy, ‘s3’, capable of producing one-to-two order-of-magnitude improvements in usable reads obtained per cell for chromatin accessibility (s3-ATAC), whole genome sequencing (s3-WGS), and whole genome plus chromatin conformation (s3-GCC), while retaining the same high-throughput capabilities of predecessor ‘sci’ technologies. We apply s3 to produce high-coverage single-cell ATAC-seq profiles of mouse brain and human cortex tissue; and whole genome and chromatin contact maps for two low-passage patient-derived cell lines from a primary pancreatic tumor.
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