Quantifying nonequilibrium dynamics and thermodynamics of cell fate decision making in yeast under pheromone induction

IF 2.9 Q2 BIOPHYSICS Biophysics reviews Pub Date : 2023-09-01 DOI:10.1063/5.0157759
Sheng Li, Qiong Liu, Erkang Wang, Jin Wang
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Abstract

Cellular responses to pheromone in yeast can range from gene expression to morphological and physiological changes. While signaling pathways are well studied, the cell fate decision-making during cellular polar growth is still unclear. Quantifying these cellular behaviors and revealing the underlying physical mechanism remain a significant challenge. Here, we employed a hidden Markov chain model to quantify the dynamics of cellular morphological systems based on our experimentally observed time series. The resulting statistics generated a stability landscape for state attractors. By quantifying rotational fluxes as the non-equilibrium driving force that tends to disrupt the current attractor state, the dynamical origin of non-equilibrium phase transition from four cell morphological fates to a single dominant fate was identified. We revealed that higher chemical voltage differences induced by a high dose of pheromone resulted in higher chemical currents, which will trigger a greater net input and, thus, more degrees of the detailed balance breaking. By quantifying the thermodynamic cost of maintaining morphological state stability, we demonstrated that the flux-related entropy production rate provides a thermodynamic origin for the phase transition in non-equilibrium morphologies. Furthermore, we confirmed that the time irreversibility in time series provides a practical way to predict the non-equilibrium phase transition.
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信息素诱导下酵母细胞命运决策的非平衡动力学和热力学定量研究
酵母对信息素的细胞反应可以从基因表达到形态和生理变化。虽然信号通路研究得很好,但细胞极性生长过程中细胞命运的决定仍不清楚。量化这些细胞行为并揭示潜在的物理机制仍然是一个重大挑战。在这里,我们采用隐马尔可夫链模型来量化基于我们的实验观察到的时间序列的细胞形态系统的动态。由此产生的统计数据为州吸引子创造了一个稳定的前景。通过将旋转通量量化为倾向于破坏当前吸引子状态的非平衡驱动力,确定了从四种细胞形态命运到单一优势命运的非平衡相变的动力学起源。我们发现,由高剂量信息素引起的更高的化学电压差导致更高的化学电流,这将触发更大的净输入,因此,更多程度的详细平衡被打破。通过量化维持形态状态稳定的热力学成本,我们证明了与通量相关的熵产率为非平衡形态的相变提供了热力学来源。此外,我们证实了时间序列中的时间不可逆性为预测非平衡相变提供了一种实用的方法。
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