论文标题

复杂疾病的网络分析:炎症性肠病病例中的肠道菌群

Network analysis of a complex disease: the gut microbiota in the inflammatory bowel disease case

论文作者

Hu, Mirko, Caldarelli, Guido, Gili, Tommaso

论文摘要

炎症性肠病(IBD)是复杂的疾病,其中肠道菌群受到遗传性易感性受试者的免疫系统的攻击,当它们暴露于但不清楚的环境因素时。这类疾病的复杂性使它们适合通过网络科学来代表和研究。在该项目中,将肠道菌群,克罗恩病和溃疡性结肠炎受试者的元基因组数据分为三个范围(普遍,常见,罕见)。然后,使用相关网络和共表达网络来表示此数据。前一个网络涉及计算Pearson的相关性以及使用渗透阈值将邻接矩阵进行二进制的使用,而后者涉及双方网络的构建和单核投影后的二聚体矩阵后。然后,在所谓的网络上使用了中心措施和社区检测。获得的主要结果是关于“杀菌剂”的模块,这些模块是在对照对象的相关网络中,“粪便核酸杆菌”,其中共酶A在IBD相关网络和“ Escherichia Coli”中成为核心A,在哪个模块中具有不同的位置。

Inflammatory bowel diseases (IBD) are complex diseases in which the gut microbiota is attacked by the immune system of genetically predisposed subjects when they are exposed to yet unclear environmental factors. The complexity of this class of diseases makes them suitable to be represented and studied with network science. In the project, the metagenomic data of the gut microbiota of control, Crohn's disease, and ulcerative colitis subjects were divided in three ranges (prevalent, common, uncommon). Then, correlation networks and co-expression networks were used to represent this data. The former networks involved the calculation of the Pearson's correlation and the use of the percolation threshold to binarize the adjacency matrix, whereas the latter involved the construction of the bipartite networks and the monopartite projection after binarization of the biadjacency matrix. Then, centrality measures and community detection were used on the so-built networks. The main results obtained were about the modules of "Bacteroides", which were connected in control subjects' correlation network, "Faecalibacterium prausnitzii", where co-enzyme A became central in IBD correlation networks and "Escherichia coli", which module has different position in the different diagnoses networks.

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