人类蛋白质-蛋白质相互作用网络中管家基因的拓扑特征

Pei Wang, Yuhuan Zhang, Jinhu Lu, Xinghuo Yu
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引用次数: 4

摘要

人类管家基因(Human housekeeping genes, HKGs)广泛表达于多种组织中,参与细胞维持或维持细胞功能,在基因表达实验中常被作为实验对照和规范化参考。在文献整理和最新数据库的基础上,我们构建了一个大规模的人类蛋白质-蛋白质相互作用网络(HPIN)和一个hgs子网络。通过HPIN中HKGs的拓扑特征,我们表征了人类HKGs的拓扑特征。结果表明,HKGs具有非常大的平均度、k壳度、中间度、半局部和特征向量中心性、聚类系数、紧密度、PageRank和motif中心性,均高于HPIN。在9个指标中,HKGs的平均差值是HPIN的7倍左右,但其变异系数(CV)也最大。HKGs的接近性具有最小的CV和非常大的中位数。通过ROC分析,我们发现大部分指标及其组成可用于预测HKGs,预测准确率在80%左右。特别是贴近度的预测精度可达到82.36%。这些研究揭示了人类功能基因的表征和鉴定,这在系统生物学和网络医学中具有潜在的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topological characterization of housekeeping genes in human protein-protein interaction network
Human housekeeping genes (HKGs) are widely expressed in various tissues, which involve in cell maintenance or sustaining cell function, and are often taken as experimental control and normalization references in gene expression experiments. Based on literature curation and up-to-date databases, we construct a large-scale human protein-protein interaction network (HPIN) and a HKGs subnetwork. Through the topological features of HKGs in the HPIN, we characterize the topological features of human HKGs. Our results indicate HKGs are with very large average degree, k-shell, betweeness, semilocal and eigenvector centralities, clustering coefficient, closeness, PageRank and motif centrality, which are all higher than that of the HPIN. Among the nine indexes, HKGs are with the average betweeness about 7 times larger than that for the HPIN, but they are also with the largest coefficient of variant (CV). The closeness of HKGs is with the smallest CV and very large median. Based on ROC analysis, we find most of the indexes and their compositions can be used to predict HKGs, with prediction accuracy around 80%. Especially, the prediction accuracy of the closeness can achieve as high as 82.36%. The investigations shed some lights on the characterization and identification of human functional genes, which have potential implications in systems biology and networked medicine.
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