生物
祖细胞
细胞命运测定
转录组
细胞分化
计算生物学
谱系(遗传)
细胞
人口
造血
祖细胞
细胞生物学
干细胞
电池类型
遗传学
基因
基因表达
转录因子
人口学
社会学
作者
Josip S. Herman,Sagar Sagar,Dominic Grün
出处
期刊:Nature Methods
[Nature Portfolio]
日期:2018-04-09
卷期号:15 (5): 379-386
被引量:317
摘要
FateID identifies fate biases in early multipotent progenitor populations from single-cell RNA-seq data. To understand stem cell differentiation along multiple lineages, it is necessary to resolve heterogeneous cellular states and the ancestral relationships between them. We developed a robotic miniaturized CEL-Seq2 implementation to carry out deep single-cell RNA-seq of ∼2,000 mouse hematopoietic progenitors enriched for lymphoid lineages, and used an improved clustering algorithm, RaceID3, to identify cell types. To resolve subtle transcriptome differences indicative of lineage biases, we developed FateID, an iterative supervised learning algorithm for the probabilistic quantification of cell fate bias in progenitor populations. Here we used FateID to delineate domains of fate bias and enable the derivation of high-resolution differentiation trajectories, thereby revealing a common progenitor population of B cells and plasmacytoid dendritic cells, which we validated by in vitro differentiation assays. We expect that FateID will improve understanding of the process of cell fate choice in complex multi-lineage differentiation systems.
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