Liu Zhilong, Lin Hai, Li Xiang, Xue Hao, Lu Yuer, Xu Fei, Shuai Jianwei
Department of Physics, Xiamen University, No. 422, Siming South Road, Xiamen, Fujian, 361005, China.
Oujiang Laboratory (Zhejiang Lab for Regenerative Medicine, Vision and Brain Health), No. 999, Jinshi Road, Yongzhong Street, Longwan District, Wenzhou, Zhejiang, 325000, China; Wenzhou Institute, University of Chinese Academy of Sciences, No. 1, Jinlian Road, Longwan District, Wenzhou, Zhejiang, 325000, China.
Brief Bioinform. 2024 Nov 22;26(1). doi: 10.1093/bib/bbae698.
Aging is a complex and heterogeneous biological process at cellular, tissue, and individual levels. Despite extensive effort in scientific research, a comprehensive understanding of aging mechanisms remains lacking. This study analyzed aging-related gene networks, using single-cell RNA sequencing data from >15 000 cells. We constructed a gene correlation network, integrating gene expressions into the weights of network edges, and ranked gene importance using a random walk model to generate a gene importance matrix. This unsupervised method improved the clustering performance of cell types. To further quantify the complexity of gene networks during aging, we introduced network structural entropy. The findings of our study reveal that the overall network structural entropy increases in the aged cells compared to the young cells. However, network entropy changes varied greatly within different cell subtypes. Specifically, the network structural entropy among various cell types may increase, remain unchanged, or decrease. This wide range of changes may be closely related to their individual functions, highlighting the cellular heterogeneity and potential key network reconfigurations. Analyzing gene network entropy provides insights into the molecular mechanisms behind aging. This study offers new scientific evidence and theoretical support for understanding the changes in cell functions during aging.
衰老在细胞、组织和个体水平上是一个复杂且异质性的生物学过程。尽管科研工作投入巨大,但对衰老机制仍缺乏全面的理解。本研究利用来自15000多个细胞的单细胞RNA测序数据,分析了与衰老相关的基因网络。我们构建了一个基因相关网络,将基因表达整合到网络边的权重中,并使用随机游走模型对基因重要性进行排序以生成基因重要性矩阵。这种无监督方法提高了细胞类型的聚类性能。为了进一步量化衰老过程中基因网络的复杂性,我们引入了网络结构熵。我们的研究结果表明,与年轻细胞相比,衰老细胞中的整体网络结构熵增加。然而,不同细胞亚型内的网络熵变化差异很大。具体而言,各种细胞类型之间的网络结构熵可能增加、保持不变或减少。这种广泛的变化可能与其各自的功能密切相关,突出了细胞异质性和潜在的关键网络重构。分析基因网络熵有助于深入了解衰老背后的分子机制。本研究为理解衰老过程中细胞功能的变化提供了新的科学证据和理论支持。