Zeeman Institute for Systems Biology and Infectious Epidemiology Research, University of Warwick, Coventry CV4 7AL, United Kingdom.
Simons Centre for the Study of Living Machines, National Centre for Biological Sciences, Tata Institute of Fundamental Research, Bangalore 560065, India.
Proc Natl Acad Sci U S A. 2021 Sep 21;118(38). doi: 10.1073/pnas.2109729118.
Embryonic development leads to the reproducible and ordered appearance of complexity from egg to adult. The successive differentiation of different cell types that elaborate this complexity results from the activity of gene networks and was likened by Waddington to a flow through a landscape in which valleys represent alternative fates. Geometric methods allow the formal representation of such landscapes and codify the types of behaviors that result from systems of differential equations. Results from Smale and coworkers imply that systems encompassing gene network models can be represented as potential gradients with a Riemann metric, justifying the Waddington metaphor. Here, we extend this representation to include parameter dependence and enumerate all three-way cellular decisions realizable by tuning at most two parameters, which can be generalized to include spatial coordinates in a tissue. All diagrams of cell states vs. model parameters are thereby enumerated. We unify a number of standard models for spatial pattern formation by expressing them in potential form (i.e., as topographic elevation). Turing systems appear nonpotential, yet in suitable variables the dynamics are low dimensional and potential. A time-independent embedding recovers the original variables. Lateral inhibition is described by a saddle point with many unstable directions. A model for the patterning of the eye appears as relaxation in a bistable potential. Geometric reasoning provides intuitive dynamic models for development that are well adapted to fit time-lapse data.
胚胎发育导致从卵子到成年的可重复和有序的复杂性出现。不同细胞类型的连续分化,精心制作这种复杂性的结果来自基因网络的活动,Waddington 将其比作流经景观,其中山谷代表替代命运。几何方法允许对这种景观进行正式表示,并对微分方程系统产生的行为类型进行编码。Smale 及其同事的结果表明,包含基因网络模型的系统可以表示为具有黎曼度量的势梯度,这证明了 Waddington 的隐喻。在这里,我们将这种表示扩展到包括参数依赖性,并枚举通过最多调整两个参数可实现的所有三种细胞决策,这可以推广到组织中的空间坐标。因此,所有细胞状态与模型参数的图表都被枚举出来。我们通过将它们表示为势能形式(即地形高程)来统一许多标准的空间模式形成模型。图灵系统看起来是非势的,但在适当的变量中,动力学是低维的和势的。时间独立的嵌入恢复了原始变量。侧向抑制由具有许多不稳定方向的鞍点描述。眼睛模式形成的模型表现为双稳态势中的弛豫。几何推理为发育提供了直观的动态模型,非常适合拟合延时数据。