Tang Ying, Yuan Ruoshi, Wang Gaowei, Zhu Xiaomei, Ao Ping
Department of Physics and Astronomy, Shanghai Jiao Tong University, Shanghai, 200240, China.
School of Biomedical Engineering, Shanghai Jiao Tong University, Shanghai, 200240, China.
Sci Rep. 2017 Nov 17;7(1):15762. doi: 10.1038/s41598-017-15889-2.
Quantifying stochastic processes is essential to understand many natural phenomena, particularly in biology, including the cell-fate decision in developmental processes as well as the genesis and progression of cancers. While various attempts have been made to construct potential landscape in high dimensional systems and to estimate transition rates, they are practically limited to the cases where either noise is small or detailed balance condition holds. A general and practical approach to investigate real-world nonequilibrium systems, which are typically high-dimensional and subject to large multiplicative noise and the breakdown of detailed balance, remains elusive. Here, we formulate a computational framework that can directly compute the relative probabilities between locally stable states of such systems based on a least action method, without the necessity of simulating the steady-state distribution. The method can be applied to systems with arbitrary noise intensities through A-type stochastic integration, which preserves the dynamical structure of the deterministic counterpart dynamics. We demonstrate our approach in a numerically accurate manner through solvable examples. We further apply the method to investigate the role of noise on tumor heterogeneity in a 38-dimensional network model for prostate cancer, and provide a new strategy on controlling cell populations by manipulating noise strength.
量化随机过程对于理解许多自然现象至关重要,尤其是在生物学领域,包括发育过程中的细胞命运决定以及癌症的发生和发展。虽然已经进行了各种尝试来构建高维系统中的势景观并估计跃迁速率,但实际上它们仅限于噪声较小或满足细致平衡条件的情况。研究现实世界中的非平衡系统的通用且实用的方法仍然难以捉摸,这类系统通常是高维的,并且受到大的乘性噪声以及细致平衡的破坏。在这里,我们制定了一个计算框架,该框架可以基于最小作用量方法直接计算此类系统局部稳定状态之间的相对概率,而无需模拟稳态分布。该方法可以通过A型随机积分应用于具有任意噪声强度的系统,这种积分保留了确定性对应动力学的动力学结构。我们通过可解示例以数值精确的方式展示了我们的方法。我们进一步应用该方法来研究噪声在前列腺癌的38维网络模型中对肿瘤异质性的作用,并提供了一种通过操纵噪声强度来控制细胞群体的新策略。