Zhong Jiayuan, Huang Ziyi, Qiu Jianqiang, Ling Fei, Chen Pei, Liu Rui
School of Mathematics, Foshan University, Foshan 528000, China.
School of Biology and Biological Engineering, South China University of Technology, Guangzhou 510640, China.
Research (Wash D C). 2025 Aug 26;8:0852. doi: 10.34133/research.0852. eCollection 2025.
Abrupt shifts, referred to as critical transitions, are frequently observed in complex biological systems, characterized by marked qualitative changes occurring from one stable state to another through a pre-transitional/critical state. Pinpointing such critical states, along with the signaling molecules, can provide valuable insights into the fundamental mechanisms of intricate biological processes. However, the identification and early warning of the critical state remains a challenge, particularly in model-free cases with high-dimensional single-cell data, where traditional statistical methods often prove inadequate due to the inherent sparsity, noise, and heterogeneity of the data. In this study, we propose a novel quantitative method, cell-specific causal network entropy (CCNE), to infer the specific causal network for each cell and quantify dynamic causal changes, thereby enabling the identification of critical states in complex biological processes at the single-cell level. We validated the accuracy and effectiveness of the proposed approach through numerical simulations and 5 distinct real-world single-cell datasets. Compared to existing methods for detecting critical states, the proposed CCNE exhibits enhanced effectiveness in identifying critical transition signals. Moreover, CCNE score is a computational tool for distinguishing temporal changes in cellular heterogeneity and demonstrates satisfactory performance in clustering cells over time. In addition, the reliability of CCNE is further emphasized through the functional enrichment and pathway analysis of signaling molecules.
突然转变,即所谓的临界转变,在复杂生物系统中经常被观察到,其特征是通过预转变/临界状态从一个稳定状态到另一个稳定状态发生明显的质的变化。确定这些临界状态以及信号分子,可以为复杂生物过程的基本机制提供有价值的见解。然而,临界状态的识别和早期预警仍然是一个挑战,特别是在具有高维单细胞数据的无模型情况下,由于数据固有的稀疏性、噪声和异质性,传统统计方法往往证明是不够的。在本研究中,我们提出了一种新的定量方法,即细胞特异性因果网络熵(CCNE),以推断每个细胞的特定因果网络并量化动态因果变化,从而能够在单细胞水平上识别复杂生物过程中的临界状态。我们通过数值模拟和5个不同的真实世界单细胞数据集验证了所提出方法的准确性和有效性。与现有的检测临界状态的方法相比,所提出的CCNE在识别临界转变信号方面表现出更高的有效性。此外,CCNE得分是一种区分细胞异质性时间变化的计算工具,并且在随时间对细胞进行聚类方面表现出令人满意的性能。此外,通过信号分子的功能富集和通路分析进一步强调了CCNE的可靠性。