Learning a conserved mechanism for early neuroectoderm morphogenesis
Morphogenesis is the process whereby the body of an organism develops its target shape. The morphogen BMP is known to play a conserved role across bilaterian organisms in determining the dorsoventral (DV) axis. Yet, how BMP governs the spatio-temporal dynamics of cytoskeletal proteins driving morpho...
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Zusammenfassung: | Morphogenesis is the process whereby the body of an organism develops its
target shape. The morphogen BMP is known to play a conserved role across
bilaterian organisms in determining the dorsoventral (DV) axis. Yet, how BMP
governs the spatio-temporal dynamics of cytoskeletal proteins driving
morphogenetic flow remains an open question. Here, we use machine learning to
mine a morphodynamic atlas of Drosophila development, and construct a
mathematical model capable of predicting the coupled dynamics of myosin,
E-cadherin, and morphogenetic flow. Mutant analysis shows that BMP sets the
initial condition of this dynamical system according to the following signaling
cascade: BMP establishes DV pair-rule-gene patterns that set-up an E-cadherin
gradient which in turn creates a myosin gradient in the opposite direction
through mechanochemical feedbacks. Using neural tube organoids, we argue that
BMP, and the signaling cascade it triggers, prime the conserved dynamics of
neuroectoderm morphogenesis from fly to humans. |
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DOI: | 10.48550/arxiv.2405.18382 |