Division of Bioengineering, Graduate School of Engineering Science, Osaka University, Osaka, Japan.
School of Life Science, Peking University, Beijing, China.
PLoS Comput Biol. 2024 Aug 5;20(8):e1012312. doi: 10.1371/journal.pcbi.1012312. eCollection 2024 Aug.
Cells exhibit various morphological characteristics due to their physiological activities, and changes in cell morphology are inherently accompanied by the assembly and disassembly of the actin cytoskeleton. Stress fibers are a prominent component of the actin-based intracellular structure and are highly involved in numerous physiological processes, e.g., mechanotransduction and maintenance of cell morphology. Although it is widely accepted that variations in cell morphology interact with the distribution and localization of stress fibers, it remains unclear if there are underlying geometric principles between the cell morphology and actin cytoskeleton. Here, we present a machine learning system that uses the diffusion model to convert the cell shape to the distribution and alignment of stress fibers. By training with corresponding cell shape and stress fibers datasets, our system learns the conversion to generate the stress fiber images from its corresponding cell shape. The predicted stress fiber distribution agrees well with the experimental data. With this conversion relation, our system allows for performing virtual experiments that provide a visual map showing the probability of stress fiber distribution from the virtual cell shape. Our system potentially provides a powerful approach to seek further hidden geometric principles regarding how the configuration of subcellular structures is determined by the boundary of the cell structure; for example, we found that the stress fibers of cells with small aspect ratios tend to localize at the cell edge while cells with large aspect ratios have homogenous distributions.
细胞由于其生理活动而表现出各种形态特征,细胞形态的变化本质上伴随着肌动蛋白细胞骨架的组装和拆卸。应力纤维是基于肌动蛋白的细胞内结构的一个突出组成部分,高度参与许多生理过程,例如机械转导和细胞形态的维持。尽管广泛认为细胞形态的变化与应力纤维的分布和定位相互作用,但细胞形态和肌动蛋白细胞骨架之间是否存在潜在的几何原理仍不清楚。在这里,我们提出了一个使用扩散模型将细胞形状转换为应力纤维分布和取向的机器学习系统。通过使用相应的细胞形状和应力纤维数据集进行训练,我们的系统学习了转换,从而可以根据其相应的细胞形状生成应力纤维图像。预测的应力纤维分布与实验数据吻合良好。通过这种转换关系,我们的系统可以进行虚拟实验,提供一个可视化地图,显示从虚拟细胞形状得出的应力纤维分布的概率。我们的系统可能为寻求关于亚细胞结构的配置如何由细胞结构的边界决定的进一步隐藏的几何原理提供了一种强大的方法;例如,我们发现,具有小纵横比的细胞的应力纤维倾向于定位于细胞边缘,而具有大纵横比的细胞具有均匀的分布。