Chen Zhihua, Chen Siyuan, Qiang Xiaoli
The Institute of Computing Science and Technology, Guangzhou University, Guangzhou, China.
The School of Artificial Intelligence and Automation, Huazhong University of Science and Technology, Wuhan, China.
Front Bioinform. 2022 Jan 26;2:812314. doi: 10.3389/fbinf.2022.812314. eCollection 2022.
Brain tumor research has been stapled for human health while brain network research is crucial for us to understand brain activity. Here the structural controllability theory is applied to study three human brain-specific gene regulatory networks, including forebrain gene regulatory network, hindbrain gene regulatory network and neuron associated cells cancer related gene regulatory network, whose nodes are neural genes and the edges represent the gene expression regulation among the genes. The nodes are classified into two classes: critical nodes and ordinary nodes, based on the change of the number of driver nodes upon its removal. Eight topological properties (out-degree , in-degree , degree , betweenness , closeness , in-closeness , out-closeness and clustering coefficient ) are calculated in this paper and the results prove that the critical genes have higher score of topological properties than the ordinary genes. Then two bioinformatic analysis are used to explore the biologic significance of the critical genes. On the one hand, the enrichment scores in several kinds of gene databases are calculated and reveal that the critical nodes are richer in essential genes, cancer genes and the neuron related disease genes than the ordinary nodes, which indicates that the critical nodes may be the biomarker in brain-specific gene regulatory network. On the other hand, GO analysis and KEGG pathway analysis are applied on them and the results show that the critical genes mainly take part in 14 KEGG pathways that are transcriptional misregulation in cancer, pathways in cancer and so on, which indicates that the critical genes are related to the brain tumor. Finally, by deleting the edges or routines in the network, the robustness analysis of node classification is realized, and the robustness of node classification is proved. The comparison of neuron associated cells cancer related GRN (Gene Regulatory Network) and normal brain-specific GRNs (including forebrain and hindbrain GRN) shows that the neuron-related cell cancer-related gene regulatory network is more robust than other types.
脑肿瘤研究对人类健康至关重要,而脑网络研究对于我们理解大脑活动至关重要。本文应用结构可控性理论研究了三个人脑特异性基因调控网络,包括前脑基因调控网络、后脑基因调控网络和神经元相关细胞癌相关基因调控网络,其节点为神经基因,边表示基因之间的基因表达调控。根据去除后驱动节点数量的变化,将节点分为两类:关键节点和普通节点。本文计算了八个拓扑性质(出度、入度、度、介数、紧密性、入紧密性、出紧密性和聚类系数),结果证明关键基因的拓扑性质得分高于普通基因。然后使用两种生物信息学分析方法来探索关键基因的生物学意义。一方面,计算了几种基因数据库中的富集分数,结果表明关键节点比普通节点在必需基因、癌症基因和神经元相关疾病基因方面更丰富,这表明关键节点可能是人脑特异性基因调控网络中的生物标志物。另一方面,对它们进行了基因本体(GO)分析和京都基因与基因组百科全书(KEGG)通路分析,结果表明关键基因主要参与14条KEGG通路,如癌症中的转录失调、癌症相关通路等,这表明关键基因与脑肿瘤有关。最后,通过删除网络中的边或路径,实现了节点分类的鲁棒性分析,并证明了节点分类的鲁棒性。神经元相关细胞癌相关基因调控网络(GRN)与正常脑特异性GRN(包括前脑和后脑GRN)的比较表明,神经元相关细胞癌相关基因调控网络比其他类型更具鲁棒性。