Cell mechanics are pivotal in regulating cellular activities, diseases progression, and cancer development. However, the understanding of how cellular viscoelastic properties vary in physiological and pathological stimuli remains scarce. Here, we develop a hybrid self-similar hierarchical theory-microrheology approach to accurately and efficiently characterize cellular viscoelasticity. Focusing on two key cell types associated with livers fibrosis-the capillarized liver sinusoidal endothelial cells and activated hepatic stellate cells-we uncover a universal two-stage power-law rheology characterized by two distinct exponents, α(short) and α(long). The mechanical profiles derived from both exponents exhibit significant potential for discriminating among diverse cells. This finding suggests a potential common dynamic creep characteristic across biological systems, extending our earlier observations in soft tissues. Using a tailored hierarchical model for cellular mechanical structures, we discern significant variations in the viscoelastic properties and their distribution profiles across different cell types and states from the cytoplasm (elastic stiffness E(1) and viscosity η), to a single cytoskeleton fiber (elastic stiffness E(2)), and then to the cell level (transverse expansion stiffness E(3)). Importantly, we construct a logistic-regression-based machine-learning model using the dynamic parameters that outperforms conventional cell-stiffness-based classifiers in assessing cell states, achieving an area under the curve of 97% vs. 78%. Our findings not only advance a robust framework for monitoring intricate cell dynamics but also highlight the crucial role of cellular viscoelasticity in discerning cell states across a spectrum of liver diseases and prognosis, offering new avenues for developing diagnostic and therapeutic strategies based on cellular viscoelasticity.
Beyond stiffness: Multiscale viscoelastic features as biomechanical markers for assessing cell types and states.
超越刚度:多尺度粘弹性特征作为评估细胞类型和状态的生物力学标记
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作者:Chang Zhuo, Li Li-Ya, Shi Zhi-Jun, Liu Wenjia, Xu Guang-Kui
| 期刊: | Biophysical Journal | 影响因子: | 3.100 |
| 时间: | 2024 | 起止号: | 2024 Jul 2; 123(13):1869-1881 |
| doi: | 10.1016/j.bpj.2024.05.033 | 研究方向: | 细胞生物学 |
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