Structured dynamics of the cell-cycle at multiple scales

IF 1.3 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Frontiers in Applied Mathematics and Statistics Pub Date : 2023-04-05 DOI:10.3389/fams.2023.1090753
A. Hodgkinson, Aisha Tursynkozha, D. Trucu
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Abstract

The eukaryotic cell cycle comprises 4 phases (G1, S, G2, and M) and is an essential component of cellular health, allowing the cell to repair damaged DNA prior to division. Facilitating this processes, p53 is activated by DNA-damage and arrests the cell cycle to allow for the repair of this damage, while mutations in the p53 gene frequently occur in cancer. As such, this process occurs on the cell-scale but affects the organism on the cell population-scale. Here, we present two models of cell cycle progression: The first of these is concerned with the cell-scale process of cell cycle progression and the temporal biochemical processes, driven by cyclins and underlying progression from one phase to the next. The second of these models concerns the cell population-scale process of cell-cycle progression and its arrest under the influence of DNA-damage and p53-activation. Both systems take advantage of structural modeling conventions to develop novels methods for describing and exploring cell-cycle dynamics on these two divergent scales. The cell-scale model represents the accumulations of cyclins across an internal cell space and demonstrates that such a formalism gives rise to a biological clock system, with definite periodicity. The cell population-scale model allows for the exploration of interactions between various regulating proteins and the DNA-damage state of the system and quantitatively demonstrates the structural dynamics which allow p53 to regulate the G2- to M-phase transition and to prevent the mitosis of genetically damaged cells. A divergent periodicity and clear distribution of transition times is observed, as compared with the single-cell system. Comparison to a system with a reduced genetic repair rate shows a greater delay in cell cycle progression and an increased accumulation of cell in the G2-phase, as a result of the p53 biochemical feedback mechanism.
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多尺度细胞周期的结构动力学
真核细胞周期包括4个阶段(G1、S、G2和M),是细胞健康的重要组成部分,允许细胞在分裂前修复受损的DNA。为了促进这一过程,p53被dna损伤激活,并阻止细胞周期以允许这种损伤的修复,而p53基因的突变经常发生在癌症中。因此,这个过程发生在细胞尺度上,但在细胞群尺度上影响生物体。在这里,我们提出了细胞周期进程的两个模型:第一个模型涉及细胞周期进程的细胞尺度过程和时间生化过程,由周期蛋白驱动,从一个阶段到下一个阶段的潜在进展。这些模型中的第二个涉及细胞群体规模的细胞周期进程及其在dna损伤和p53激活影响下的停滞。这两个系统都利用结构建模惯例来开发描述和探索这两个不同尺度上的细胞周期动力学的新方法。细胞尺度模型代表了周期蛋白在细胞内部空间的积累,并证明了这种形式产生了具有明确周期性的生物钟系统。细胞群体规模模型允许探索各种调节蛋白与系统dna损伤状态之间的相互作用,并定量地展示了允许p53调节G2期到m期转变并防止遗传损伤细胞有丝分裂的结构动力学。与单细胞系统相比,观察到不同的周期性和明显的过渡时间分布。与遗传修复率降低的系统相比,由于p53的生化反馈机制,细胞周期进展延迟更大,g2期细胞积累增加。
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来源期刊
Frontiers in Applied Mathematics and Statistics
Frontiers in Applied Mathematics and Statistics Mathematics-Statistics and Probability
CiteScore
1.90
自引率
7.10%
发文量
117
审稿时长
14 weeks
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