Oscillations and Spatial Patterns in Large-Scale Stochastic Gene Regulatory Networks
大规模随机基因调控网络中的振荡与空间模式
Manuel Eduardo Hernández-García, Jorge Velázquez-Castro
AI总结 研究负反馈与扩散的循环基因调控网络,通过确定性和随机方法分析其稳定性,发现随机波动可诱导图灵失稳,为理解发育中的模式形成提供新视角。
Comments 16 pages, 10 figures
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基因调控网络(GRNs)是细胞生长和组织形成的基础,在发育过程中协调基因表达的时空调控。这些网络固有地受到分子噪声引起的内在波动的影响,因此分析其稳定性对于理解生物体稳健的模式形成和发育动力学至关重要。在本研究中,我们分析了具有负反馈和扩散的循环GRNs的稳定性和动力学,考虑了确定性和随机方法。在确定性情况下,系统表现出稳定性与不稳定性之间的分岔,导致无扩散时的Hopf失稳和包含扩散时的Turing-Hopf失稳。观察到空间域的离散化引入了额外的不稳定模式,从而允许更广泛的模式。基于二阶矩方法的随机框架包含了内在波动,揭示了对于小系统尺寸,即使系统在无扩散时是稳定的,波动也可以主导动力学并诱导随机Turing失稳。值得注意的是,即使所有变量具有相同的扩散速率,Turing失稳也可能出现。所开发的框架提供了一种系统的方法来分析具有扩散的高维随机系统的稳定性,从而简化了Turing和Turing-Hopf失稳的预测。这些发现有助于更深入地理解GRNs中的复杂动力学和模式形成,对细胞分化和发育等生物过程具有潜在意义。
Gene regulatory networks (GRNs) are fundamental to cellular growth and tissue formation, orchestrating spatially and temporally regulated gene expression during development. These networks are inherently subject to intrinsic fluctuations arising from molecular noise, making the analysis of their stability essential for understanding robust pattern formation and developmental dynamics of the organism. In this study, we analyze the stability and dynamics of cyclic GRNs with negative feedback and diffusion, considering both deterministic and stochastic approaches. In the deterministic case, the system exhibits a bifurcation between stability and instability, leading to Hopf instability in the absence of diffusion and to Turing-Hopf instability when diffusion is included. It was observed that the discretization of the spatial domain introduces additional unstable modes, enabling a wider range of patterns. The stochastic framework based on the second-moment approach, which incorporates intrinsic fluctuations, reveals that for small system sizes, fluctuations can dominate the dynamics and induce stochastic Turing instability, even when the system is stable in the absence of diffusion. Notably, Turing instabilities can emerge even when all variables have the same diffusion rate. The developed framework provides a systematic method for analyzing the stability of high-dimensional stochastic systems with diffusion, thereby simplifying the prediction of Turing and Turing-Hopf instabilities. These findings contribute to a deeper understanding of the complex dynamics and pattern formation in GRNs, with potential implications for biological processes, such as cellular differentiation and development.