Sequential progenitor states mark the generation of pancreatic endocrine lineages in mice and humans

生物 祖细胞 祖细胞 人口 细胞分化 电池类型 小岛 胰岛 肠内分泌细胞 内分泌系统 基因 遗传学 细胞生物学 细胞 干细胞 计算生物学 内分泌学 激素 胰岛素 人口学 社会学
作者
Xinxin Yu,Wei‐Lin Qiu,Yang Liu,Yanchun Wang,Mao‐Yang He,Dan Wang,Yu Zhang,Lin‐Chen Li,Jing Zhang,Yi Wang,Cheng‐Ran Xu
出处
期刊:Cell Research [Springer Nature]
卷期号:31 (8): 886-903 被引量:30
标识
DOI:10.1038/s41422-021-00486-w
摘要

The pancreatic islet contains multiple hormone+ endocrine lineages (α, β, δ, PP and ε cells), but the developmental processes that underlie endocrinogenesis are poorly understood. Here, we generated novel mouse lines and combined them with various genetic tools to enrich all types of hormone+ cells for well-based deep single-cell RNA sequencing (scRNA-seq), and gene coexpression networks were extracted from the generated data for the optimization of high-throughput droplet-based scRNA-seq analyses. These analyses defined an entire endocrinogenesis pathway in which different states of endocrine progenitor (EP) cells sequentially differentiate into specific endocrine lineages in mice. Subpopulations of the EP cells at the final stage (EP4early and EP4late) show different potentials for distinct endocrine lineages. ε cells and an intermediate cell population were identified as distinct progenitors that independently generate both α and PP cells. Single-cell analyses were also performed to delineate the human pancreatic endocrinogenesis process. Although the developmental trajectory of pancreatic lineages is generally conserved between humans and mice, clear interspecies differences, including differences in the proportions of cell types and the regulatory networks associated with the differentiation of specific lineages, have been detected. Our findings support a model in which sequential transient progenitor cell states determine the differentiation of multiple cell lineages and provide a blueprint for directing the generation of pancreatic islets in vitro.
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