生物
电池类型
谱系(遗传)
多细胞生物
斑马鱼
脊椎动物
计算生物学
基因
细胞分化
进化生物学
细胞
遗传学
作者
Bushra Raj,Daniel E. Wagner,Aaron McKenna,Shristi Pandey,Allon M. Klein,Jay Shendure,James A. Gagnon,Alexander F. Schier
摘要
scGESTALT enables large-scale characterization of cell types and lineage relationships during vertebrate brain development. The lineage relationships among the hundreds of cell types generated during development are difficult to reconstruct. A recent method, GESTALT, used CRISPR–Cas9 barcode editing for large-scale lineage tracing, but was restricted to early development and did not identify cell types. Here we present scGESTALT, which combines the lineage recording capabilities of GESTALT with cell-type identification by single-cell RNA sequencing. The method relies on an inducible system that enables barcodes to be edited at multiple time points, capturing lineage information from later stages of development. Sequencing of ∼60,000 transcriptomes from the juvenile zebrafish brain identified >100 cell types and marker genes. Using these data, we generate lineage trees with hundreds of branches that help uncover restrictions at the level of cell types, brain regions, and gene expression cascades during differentiation. scGESTALT can be applied to other multicellular organisms to simultaneously characterize molecular identities and lineage histories of thousands of cells during development and disease.
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