Schwab Julian D, Ikonomi Nensi, Werle Silke D, Weidner Felix M, Geiger Hartmut, Kestler Hans A
Institute of Medical Systems Biology, Ulm University, Albert-Einstein-Allee 11, Ulm 89081, Germany.
Institute of Molecular Medicine, Ulm University, Albert-Einstein-Allee 11, Ulm 89081, Germany.
Comput Struct Biotechnol J. 2021 Sep 15;19:5321-5332. doi: 10.1016/j.csbj.2021.09.012. eCollection 2021.
Regulatory dependencies in molecular networks are the basis of dynamic behaviors affecting the phenotypical landscape. With the advance of high throughput technologies, the detail of omics data has arrived at the single-cell level. Nevertheless, new strategies are required to reconstruct regulatory networks based on populations of single-cell data. Here, we present a new approach to generate populations of gene regulatory networks from single-cell RNA-sequencing (scRNA-seq) data. Our approach exploits the heterogeneity of single-cell populations to generate pseudo-timepoints. This allows for the first time to uncouple network reconstruction from a direct dependency on time series measurements. The generated time series are then fed to a combined reconstruction algorithm. The latter allows a fast and efficient reconstruction of ensembles of gene regulatory networks. Since this approach does not require knowledge on time-related trajectories, it allows us to model heterogeneous processes such as aging. Applying the approach to the aging-associated NF-B signaling pathway-based scRNA-seq data of human hematopoietic stem cells (HSCs), we were able to reconstruct eight ensembles, and evaluate their dynamic behavior. Moreover, we propose a strategy to evaluate the resulting attractor patterns. Interaction graph-based features and dynamic investigations of our model ensembles provide a new perspective on the heterogeneity and mechanisms related to human HSCs aging.
分子网络中的调控依赖性是影响表型格局的动态行为的基础。随着高通量技术的发展,组学数据的细节已达到单细胞水平。然而,需要新的策略来基于单细胞数据群体重建调控网络。在此,我们提出了一种从单细胞RNA测序(scRNA-seq)数据生成基因调控网络群体的新方法。我们的方法利用单细胞群体的异质性来生成伪时间点。这首次使得网络重建能够与对时间序列测量的直接依赖脱钩。然后将生成的时间序列输入到一个组合重建算法中。后者能够快速有效地重建基因调控网络的集合。由于这种方法不需要关于时间相关轨迹的知识,它使我们能够对诸如衰老等异质过程进行建模。将该方法应用于基于衰老相关的核因子-κB信号通路的人类造血干细胞(HSCs)的scRNA-seq数据,我们能够重建八个集合,并评估它们的动态行为。此外,我们提出了一种评估所得吸引子模式的策略。基于相互作用图的特征以及我们模型集合的动态研究为与人类HSCs衰老相关的异质性和机制提供了新的视角。