Mei Hao, Wang Zhiyuan, Yang Hang, Li Xiaoke, Xu Yaqing
Center for Applied Statistics, School of Statistics, Institute of Health Data Science, Renmin University of China, 59 Zhongguancun Street, 100872 Beijing, China.
Department of Epidemiology and Biostatistics, School of Public Health, Shanghai Jiao Tong University School of Medicine, 227 South Chongqing Road, 200025 Shanghai, China.
Brief Bioinform. 2025 May 1;26(3). doi: 10.1093/bib/bbaf223.
Network analysis has become an essential tool in biological and biomedical research, providing insights into complex biological mechanisms. Since biological systems are inherently time-dependent, incorporating time-varying methods is crucial for capturing temporal changes, adaptive interactions, and evolving dependencies within networks. Our study explores key time-varying methodologies for network structure estimation and network inference based on observed structures. We begin by discussing approaches for estimating network structures from data, focusing on the time-varying Gaussian graphical model, dynamic Bayesian network, and vector autoregression-based causal analysis. Next, we examine analytical techniques that leverage pre-specified or observed networks, including other autoregression-based methods and latent variable models. Furthermore, we explore practical applications and computational tools designed for these methods. By synthesizing these approaches, our study provides a comprehensive evaluation of their strengths and limitations in the context of biological data analysis.
网络分析已成为生物和生物医学研究中的重要工具,有助于深入了解复杂的生物机制。由于生物系统本质上是随时间变化的,因此采用时变方法对于捕捉网络中的时间变化、适应性相互作用以及不断演变的依赖性至关重要。我们的研究探索了基于观测结构进行网络结构估计和网络推断的关键时变方法。我们首先讨论从数据估计网络结构的方法,重点是时变高斯图形模型、动态贝叶斯网络和基于向量自回归的因果分析。接下来,我们研究利用预先指定或观测到的网络的分析技术,包括其他基于自回归的方法和潜在变量模型。此外,我们还探索了为这些方法设计的实际应用和计算工具。通过综合这些方法,我们的研究全面评估了它们在生物数据分析背景下的优势和局限性。