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Robust trigger wave speed in Xenopus cytoplasmic extracts.


ABSTRACT: Self-regenerating trigger waves can spread rapidly through the crowded cytoplasm without diminishing in amplitude or speed, providing consistent, reliable, long-range communication. The macromolecular concentration of the cytoplasm varies in response to physiological and environmental fluctuations, raising the question of how or if trigger waves can robustly operate in the face of such fluctuations. Using Xenopus extracts, we found that mitotic and apoptotic trigger wave speeds are remarkably invariant. We derived a model that accounts for this robustness and for the eventual slowing at extremely high and low cytoplasmic concentrations. The model implies that the positive and negative effects of cytoplasmic concentration (increased reactant concentration vs. increased viscosity) are nearly precisely balanced. Accordingly, artificially maintaining a constant cytoplasmic viscosity during dilution abrogates this robustness. The robustness in trigger wave speeds may contribute to the reliability of the extremely rapid embryonic cell cycle.

SUBMITTER: Huang JH 

PROVIDER: S-EPMC10769400 | biostudies-literature | 2023 Dec

REPOSITORIES: biostudies-literature

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Robust trigger wave speed in <i>Xenopus</i> cytoplasmic extracts.

Huang Jo-Hsi JH   Chen Yuping Y   Huang William Y C WYC   Tabatabaee Saman S   Ferrell James E JE  

bioRxiv : the preprint server for biology 20231223


Self-regenerating trigger waves can spread rapidly through the crowded cytoplasm without diminishing in amplitude or speed, providing consistent, reliable, long-range communication. The macromolecular concentration of the cytoplasm varies in response to physiological and environmental fluctuations, raising the question of how or if trigger waves can robustly operate in the face of such fluctuations. Using <i>Xenopus</i> extracts, we found that mitotic and apoptotic trigger wave speeds are remark  ...[more]

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