封闭细胞迁移的非线性动力学--建模与推理。

ArXiv Pub Date : 2024-12-14
Pedrom Zadeh, Brian A Camley
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引用次数: 0

摘要

真核细胞的运动受环境影响很大,封闭的细胞与在简单的二维基底上迁移的细胞通常会形成质的不同的运动模式。最近的实验以及提取细胞运动方程的数据驱动方法表明,癌细胞 MDA-MB-231 放置在二态粘合微图案(由窄桥连接的两个大正方形)上时,会在极限循环中持续跳跃,而在矩形封闭环境中则平均保持静止。与此相反,在双态微图案上迁移的健康 MCF10A 细胞是双稳态的,即它们平均会定居在任一盆地中,两种状态之间只有噪音引起的跳跃。我们可以通过一个爬行细胞的单一计算相场模型来捕捉所有这些行为,前提是与非粘性基底的接触会抑制细胞前沿。我们的模型预测,较大和较软的细胞更有可能持续跳跃,而较小和较硬的细胞则更有可能双稳态。控制细胞迁移的其他关键因素是突起的频率及其噪声的大小。我们的研究结果表明,关于细胞如何感知其几何形状的相对简单的假设可以解释各种不同的细胞行为,并显示了数据驱动方法在表征实验和模拟方面的强大功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inferring nonlinear dynamics of cell migration.

The motility of eukaryotic cells is strongly influenced by their environment, with confined cells often developing qualitatively different motility patterns from those migrating on simple two-dimensional substrates. Recent experiments, coupled with data-driven methods to extract a cell's equation of motion, showed that cancerous MDA-MB-231 cells persistently hop in a limit cycle when placed on two-state adhesive micropatterns (two large squares connected by a narrow bridge), while they remain stationary on average in rectangular confinements. In contrast, healthy MCF10A cells migrating on the two-state micropattern are bistable, i.e., they settle into either basin on average with only noise-induced hops between the two states. We can capture all these behaviors with a single computational phase field model of a crawling cell, under the assumption that contact with non-adhesive substrate inhibits the cell front. Our model predicts that larger and softer cells are more likely to persistently hop, while smaller and stiffer cells are more likely to be bistable. Other key factors controlling cell migration are the frequency of protrusions and their magnitude of noise. Our results show that relatively simple assumptions about how cells sense their geometry can explain a wide variety of different cell behaviors, and show the power of data-driven approaches to characterize both experiment and simulation.

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