核密度估计
鞍点
转移率矩阵
计算机科学
能源景观
核(代数)
统计物理学
数学优化
吸引子
非参数统计
生物系统
应用数学
计量经济学
数学
统计
物理
热力学
生物
数学分析
几何学
组合数学
估计员
作者
Chunhua Feng,Yubo Bai,Chunhe Li
摘要
The dynamical properties of many complex physical and biological systems can be quantified from the energy landscape theory. Previous approaches focused on estimating the transition rate from landscape reconstruction based on data. However, for general non-equilibrium systems (such as gene regulatory systems), both the energy landscape and the probability flux are important to determine the transition rate between attractors. In this work, we proposed a data-driven approach to estimate non-equilibrium transition rate, which combines the kernel density estimation and non-equilibrium transition rate theory. Our approach shows superior performance in estimating transition rate from data, compared with previous methods, due to the introduction of a nonparametric density estimation method and the new saddle point by considering the effects of flux. We demonstrate the practical validity of our approach by applying it to a simplified cell fate decision model and a high-dimensional stem cell differentiation model. Our approach can be applied to other biological and physical systems.
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