| Literature DB >> 33406427 |
Tianshi Lu1, Seongoh Park2, James Zhu1, Yunguan Wang1, Xiaowei Zhan3, Xinlei Wang4, Li Wang5, Hao Zhu6, Tao Wang7.
Abstract
Single-cell lineage tracing provides crucial insights into the fates of individual cells. Single-cell RNA sequencing (scRNA-seq) is commonly applied in modern biomedical research, but genetics-based lineage tracing for scRNA-seq data is still unexplored. Variant calling from scRNA-seq data uniquely suffers from "expressional drop-outs," including low expression and allelic bias in gene expression, which presents significant obstacles for lineage reconstruction. We introduce SClineager, which infers accurate evolutionary lineages from scRNA-seq data by borrowing information from related cells to overcome expressional drop-outs. We systematically validate SClineager and show that genetics-based lineage tracing is applicable for single-cell-sequencing studies of both tumor and non-tumor tissues using SClineager. Overall, our work provides a powerful tool that can be applied to scRNA-seq data to decipher the lineage histories of cells and that could address a missing opportunity to reveal valuable information from the large amounts of existing scRNA-seq data.Entities:
Keywords: drop-out; genetics; lineage tracing; scRNA-seq
Mesh:
Year: 2021 PMID: 33406427 DOI: 10.1016/j.celrep.2020.108589
Source DB: PubMed Journal: Cell Rep Impact factor: 9.423