Institute of Science and Technology for Brain-Inspired Intelligence, Shanghai, China; Shanghai Center for Mathematical Sciences, Fudan University, Shanghai, China.
Department of Mathematics, University of California, Irvine, Irvine, California.
Biophys J. 2021 Oct 19;120(20):4484-4500. doi: 10.1016/j.bpj.2021.08.043. Epub 2021 Sep 2.
Epithelial-mesenchymal transition (EMT), a basic developmental process that might promote cancer metastasis, has been studied from various perspectives. Recently, the early warning theory has been used to anticipate critical transitions in EMT from mathematical modeling. However, the underlying mechanisms of EMT involving complex molecular networks remain to be clarified. Especially, how to quantify the global stability and stochastic transition dynamics of EMT and what the underlying mechanism for early warning theory in EMT is remain to be fully clarified. To address these issues, we constructed a comprehensive gene regulatory network model for EMT and quantified the corresponding potential landscape. The landscape for EMT displays multiple stable attractors, which correspond to E, M, and some other intermediate states. Based on the path-integral approach, we identified the most probable transition paths of EMT, which are supported by experimental data. Correspondingly, the results of transition actions demonstrated that intermediate states can accelerate EMT, consistent with recent studies. By integrating the landscape and path with early warning concept, we identified the potential barrier height from the landscape as a global and more accurate measure for early warning signals to predict critical transitions in EMT. The landscape results also provide an intuitive and quantitative explanation for the early warning theory. Overall, the landscape and path results advance our mechanistic understanding of dynamical transitions and roles of intermediate states in EMT, and the potential barrier height provides a new, to our knowledge, measure for critical transitions and quantitative explanations for the early warning theory.
上皮-间充质转化 (EMT) 是一种促进癌症转移的基本发育过程,已经从多个角度进行了研究。最近,早期预警理论已被用于通过数学建模来预测 EMT 中的关键转变。然而,涉及复杂分子网络的 EMT 的潜在机制仍有待阐明。特别是,如何量化 EMT 的全局稳定性和随机转变动力学,以及 EMT 中早期预警理论的潜在机制仍有待充分阐明。为了解决这些问题,我们构建了 EMT 的综合基因调控网络模型,并量化了相应的潜在景观。EMT 的景观显示出多个稳定的吸引子,对应于 E、M 和其他一些中间状态。基于路径积分方法,我们确定了 EMT 的最可能转变路径,这些路径得到了实验数据的支持。相应地,转变动作的结果表明,中间状态可以加速 EMT,这与最近的研究一致。通过整合景观和路径与早期预警概念,我们将景观中的势垒高度识别为一个全局且更准确的早期预警信号测量值,以预测 EMT 中的关键转变。景观结果也为早期预警理论提供了直观和定量的解释。总的来说,景观和路径的结果推进了我们对 EMT 中动力学转变和中间状态作用的机制理解,而势垒高度提供了一个新的、据我们所知的、用于关键转变的测量值,并为早期预警理论提供了定量解释。