Reconstructing 3D deformation dynamics for curved epithelial sheet morphogenesis from positional data of sparsely-labeled cells

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作者
Yoshihiro Morishita
Ken-ichi Hironaka
Sang-Woo Lee
Takashi Jin
Daisuke Ohtsuka
机构
[1] RIKEN Quantitative Biology Center,Laboratory for Developmental Morphogeometry
[2] Research Fellow of the Japan Society for the Promotion of Science,Laboratory for Nano
[3] RIKEN Quantitative Biology Center,Bio Probes
来源
Nature Communications | / 8卷
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摘要
Quantifying global tissue deformation patterns is essential for understanding how organ-specific morphology is generated during development and regeneration. However, due to imaging difficulties and complex morphology, little is known about deformation dynamics for most vertebrate organs such as the brain and heart. To better understand these dynamics, we propose a method to precisely reconstruct global deformation patterns for three-dimensional morphogenesis of curved epithelial sheets using positional data from labeled cells representing only 1–10% of the entire tissue with limited resolution. By combining differential-geometrical and Bayesian frameworks, the method is applicable to any morphology described with arbitrary coordinates, and ensures the feasibility of analyzing many vertebrate organs. Application to data from chick forebrain morphogenesis demonstrates that our method provides not only a quantitative description of tissue deformation dynamics but also predictions of the mechanisms that determine organ-specific morphology, which could form the basis for the multi-scale understanding of organ morphogenesis.
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