Wang Yunge, Zhang Lingling, Si Tong, Roberts Sarah, Wang Yuqi, Gong Haijun
Department of Mathematics and Statistics, Saint Louis University, St. Louis, MO 63103, USA.
Department of Mathematics and Statistics, University at Albany SUNY, Albany, NY 12222, USA.
Curr Issues Mol Biol. 2025 May 30;47(6):408. doi: 10.3390/cimb47060408.
Inferring time-varying gene regulatory networks from time-series single-cell RNA sequencing (scRNA-seq) data remains a challenging task. The existing methods have notable limitations as most are either designed for reconstructing time-varying networks from bulk microarray data or constrained to inferring stationary networks from scRNA-seq data, failing to capture the dynamic regulatory changes at the single-cell level. Furthermore, scRNA-seq data present unique challenges, including sparsity, dropout events, and the need to account for heterogeneity across individual cells. These challenges complicate the accurate capture of gene regulatory network dynamics over time. In this work, we propose a novel f-divergence-based dynamic gene regulatory network inference method (f-DyGRN), which applies f-divergence to quantify the temporal variations in gene expression across individual single cells. Our approach integrates a first-order Granger causality model with various regularization techniques and partial correlation analysis to reconstruct gene regulatory networks from scRNA-seq data. To infer dynamic regulatory networks at different stages, we employ a moving window strategy, which allows for the capture of dynamic changes in gene interactions over time. We applied this method to analyze both simulated and real scRNA-seq data from THP-1 human myeloid monocytic leukemia cells, comparing its performance with the existing approaches. Our results demonstrate that f-DyGRN, when equipped with a suitable f-divergence measure, outperforms most of the existing methods in reconstructing dynamic regulatory networks from time-series scRNA-seq data.
从时间序列单细胞RNA测序(scRNA-seq)数据推断时变基因调控网络仍然是一项具有挑战性的任务。现有方法存在显著局限性,因为大多数方法要么是为从批量微阵列数据重建时变网络而设计,要么局限于从scRNA-seq数据推断静态网络,无法捕捉单细胞水平的动态调控变化。此外,scRNA-seq数据带来了独特的挑战,包括稀疏性、缺失事件以及需要考虑单个细胞之间的异质性。这些挑战使得准确捕捉基因调控网络随时间的动态变化变得更加复杂。在这项工作中,我们提出了一种基于f散度的新型动态基因调控网络推断方法(f-DyGRN),该方法应用f散度来量化单个单细胞中基因表达的时间变化。我们的方法将一阶格兰杰因果模型与各种正则化技术和偏相关分析相结合,以从scRNA-seq数据重建基因调控网络。为了推断不同阶段的动态调控网络,我们采用了移动窗口策略,该策略允许捕捉基因相互作用随时间的动态变化。我们将此方法应用于分析来自THP-1人髓单核细胞白血病细胞的模拟和真实scRNA-seq数据,并将其性能与现有方法进行比较。我们的结果表明,当配备合适的f散度度量时,f-DyGRN在从时间序列scRNA-seq数据重建动态调控网络方面优于大多数现有方法。