Hu Qing, Lu Xiaoqi, Xue Zhuozhen, Wang Ruiqi
Department of Mathematics, Shanghai University, Shanghai, China.
Newtouch Center for Mathematics of Shanghai University, Shanghai, China.
NPJ Syst Biol Appl. 2025 Mar 4;11(1):23. doi: 10.1038/s41540-025-00504-2.
With rapid advances in biological technology and computational approaches, inferring specific gene regulatory networks from data alone during cell fate decisions, including determining direct regulations and their intensities between biomolecules, remains one of the most significant challenges. In this study, we propose a general computational approach based on systematic perturbation, statistical, and differential analyses to infer network topologies and identify network differences during cell fate decisions. For each cell fate state, we first theoretically show how to calculate local response matrices based on perturbation data under systematic perturbation analysis, and we also derive the wild-type (WT) local response matrix for specific ordinary differential equations. To make the inferred network more accurate and eliminate the impact of perturbation degrees, the confidence interval (CI) of local response matrices under multiple perturbations is applied, and the redefined local response matrix is proposed in statistical analysis to determine network topologies across all cell fates. Then in differential analysis, we introduce the concept of relative local response matrix, which enables us to identify critical regulations governing each cell state and dominant cell states associated with specific regulations. The epithelial to mesenchymal transition (EMT) network is chosen as an illustrative example to verify the feasibility of the approach. Largely consistent with experimental observations, the differences of inferred networks at the three cell states can be quantitatively identified. The approach presented here can be also applied to infer other regulatory networks related to cell fate decisions.
随着生物技术和计算方法的迅速发展,仅从数据中推断细胞命运决定过程中的特定基因调控网络,包括确定生物分子之间的直接调控及其强度,仍然是最重大的挑战之一。在本研究中,我们提出了一种基于系统扰动、统计和差异分析的通用计算方法,以推断网络拓扑结构并识别细胞命运决定过程中的网络差异。对于每种细胞命运状态,我们首先从理论上展示了如何在系统扰动分析下基于扰动数据计算局部响应矩阵,并且我们还推导了特定常微分方程的野生型(WT)局部响应矩阵。为了使推断的网络更准确并消除扰动程度的影响,我们应用了多次扰动下局部响应矩阵的置信区间(CI),并在统计分析中提出了重新定义的局部响应矩阵以确定所有细胞命运的网络拓扑结构。然后在差异分析中,我们引入了相对局部响应矩阵的概念,这使我们能够识别控制每种细胞状态的关键调控以及与特定调控相关的主导细胞状态。选择上皮-间质转化(EMT)网络作为示例来验证该方法的可行性。与实验观察结果基本一致,可以定量识别三种细胞状态下推断网络的差异。本文提出的方法也可应用于推断与细胞命运决定相关的其他调控网络。