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预测 YAP/TAZ 核易位以响应 ECM 机械感知。

Predicting YAP/TAZ nuclear translocation in response to ECM mechanosensing.

机构信息

The Key Laboratory of Biomedical Information Engineering of Ministry of Education, School of Life Science and Technology, Xi'an Jiaotong University, Xi'an, P.R. China; Bioinspired Engineering and Biomechanics Center (BEBC), Xi'an Jiaotong University, Xi'an, P.R. China.

State Key Laboratory of Mechanics and Control of Mechanical Structures, Nanjing University of Aeronautics and Astronautics, Nanjing, China.

出版信息

Biophys J. 2023 Jan 3;122(1):43-53. doi: 10.1016/j.bpj.2022.11.2943. Epub 2022 Nov 30.

Abstract

Cells translate mechanical cues from the extracellular matrix (ECM) into signaling that can affect the nucleus. One pathway by which such nuclear mechanotransduction occurs is a signaling axis that begins with integrin-ECM bonds and continues through a cascade of chemical reactions and structural changes that lead to nuclear translocation of YAP/TAZ. This signaling axis is self-reinforcing, with stiff ECM promoting integrin binding and thus facilitating polymerization and tension in the cytoskeletal contractile apparatus, which can compress nuclei, open nuclear pore channels, and enhance nuclear accumulation of YAP/TAZ. We previously developed a computational model of this mechanosensing axis for the linear elastic ECM by assuming that there is a linear relationship between the nucleocytoplasmic ratio of YAP/TAZ and nuclear flattening. Here, we extended our previous model to more general ECM behaviors (e.g., viscosity, viscoelasticity, and viscoplasticity) and included detailed YAP/TAZ translocation dynamics based on nuclear deformation. This model was predictive of diverse mechanosensing responses in a broad range of cells. Results support the hypothesis that diverse mechanosensing phenomena across many cell types arise from a simple, unified set of mechanosensing pathways.

摘要

细胞将细胞外基质(ECM)中的机械线索转化为信号,这些信号可以影响细胞核。核机械转导发生的一种途径是信号轴,该信号轴始于整合素-ECM 键,然后通过一系列化学反应和结构变化继续进行,导致 YAP/TAZ 核易位。这个信号轴具有自我增强的特性,刚性的 ECM 促进整合素的结合,从而有助于细胞骨架收缩装置的聚合和张力,这可以压缩核,打开核孔通道,并增强 YAP/TAZ 在核内的积累。我们之前通过假设 YAP/TAZ 的核质比与核扁平化之间存在线性关系,为线性弹性 ECM 开发了这个机械传感轴的计算模型。在这里,我们将我们之前的模型扩展到更一般的 ECM 行为(例如,粘度、粘弹性和粘塑性),并根据核变形包含了详细的 YAP/TAZ 易位动力学。该模型可以预测广泛的细胞类型中各种机械传感反应。结果支持了这样一种假设,即许多细胞类型中的各种机械传感现象源于一组简单而统一的机械传感途径。

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