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An In Vitro Human Segmentation Clock Model Derived from Embryonic Stem Cells.


ABSTRACT: Defects in somitogenesis result in vertebral malformations at birth known as spondylocostal dysostosis (SCDO). Somites are formed with a species-specific periodicity controlled by the "segmentation clock," which comprises a group of oscillatory genes in the presomitic mesoderm. Here, we report that a segmentation clock model derived from human embryonic stem cells shows many hallmarks of the mammalian segmentation clock in vivo, including a dependence on the NOTCH and WNT signaling pathways. The gene expression oscillations are highly synchronized, displaying a periodicity specific to the human clock. Introduction of a point of mutation into HES7, a specific mutation previously associated with clinical SCDO, eliminated clock gene oscillations, successfully reproducing the defects in the segmentation clock. Thus, we provide a model for studying the previously inaccessible human segmentation clock to better understand the mechanisms contributing to congenital skeletal defects.

SUBMITTER: Chu LF 

PROVIDER: S-EPMC6814198 | biostudies-literature | 2019 Aug

REPOSITORIES: biostudies-literature

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An In Vitro Human Segmentation Clock Model Derived from Embryonic Stem Cells.

Chu Li-Fang LF   Mamott Daniel D   Ni Zijian Z   Bacher Rhonda R   Liu Cathy C   Swanson Scott S   Kendziorski Christina C   Stewart Ron R   Thomson James A JA  

Cell reports 20190801 9


Defects in somitogenesis result in vertebral malformations at birth known as spondylocostal dysostosis (SCDO). Somites are formed with a species-specific periodicity controlled by the "segmentation clock," which comprises a group of oscillatory genes in the presomitic mesoderm. Here, we report that a segmentation clock model derived from human embryonic stem cells shows many hallmarks of the mammalian segmentation clock in vivo, including a dependence on the NOTCH and WNT signaling pathways. The  ...[more]

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