Trinh Hung-Cuong, Kwon Yung-Keun
School of Electrical Engineering, University of Ulsan, 93 Daehak-Ro, Ulsan, 44610 Nam -Gu, Republic of Korea.
Bioinformatics. 2016 Sep 1;32(17):i763-i771. doi: 10.1093/bioinformatics/btw464.
Biological networks are composed of molecular components and their interactions represented by nodes and edges, respectively, in a graph model. Based on this model, there were many studies with respect to effects of node-based mutations on the network dynamics, whereas little attention was paid to edgetic mutations so far.
In this paper, we defined an edgetic sensitivity measure that quantifies how likely a converging attractor is changed by edge-removal mutations in a Boolean network model. Through extensive simulations based on that measure, we found interesting properties of highly sensitive edges in both random and real signaling networks. First, the sensitive edges in random networks tend to link two end nodes both of which are susceptible to node-knockout mutations. Interestingly, it was analogous to an observation that the sensitive edges in human signaling networks are likely to connect drug-target genes. We further observed that the edgetic sensitivity predicted drug-targets better than the node-based sensitivity. In addition, the sensitive edges showed distinguished structural characteristics such as a lower connectivity, more involving feedback loops and a higher betweenness. Moreover, their gene-ontology enrichments were clearly different from the other edges. We also observed that genes incident to the highly sensitive interactions are more central by forming a considerably large connected component in human signaling networks. Finally, we validated our approach by showing that most sensitive interactions are promising edgetic drug-targets in p53 cancer and T-cell apoptosis networks. Taken together, the edgetic sensitivity is valuable to understand the complex dynamics of signaling networks.
Supplementary data are available at Bioinformatics online.
生物网络由分子成分及其相互作用组成,在图模型中分别由节点和边表示。基于此模型,有许多关于基于节点的突变对网络动态影响的研究,而到目前为止,对边突变的关注很少。
在本文中,我们定义了一种边敏感性度量,用于量化布尔网络模型中通过边去除突变改变收敛吸引子的可能性。通过基于该度量的广泛模拟,我们在随机和真实信号网络中发现了高敏感边的有趣特性。首先,随机网络中的敏感边倾向于连接两个末端节点,这两个节点都容易受到节点敲除突变的影响。有趣的是,这类似于人类信号网络中敏感边可能连接药物靶基因的观察结果。我们进一步观察到,边敏感性比基于节点的敏感性能更好地预测药物靶点。此外,敏感边表现出独特的结构特征,如较低的连通性、更多地涉及反馈回路和更高的介数。而且,它们的基因本体富集与其他边明显不同。我们还观察到,在人类信号网络中,与高度敏感相互作用相关的基因通过形成相当大的连通分量而更具中心性。最后,我们通过表明大多数敏感相互作用在p53癌症和T细胞凋亡网络中是有前景的边药物靶点来验证我们的方法。综上所述,边敏感性对于理解信号网络的复杂动态很有价值。
补充数据可在《生物信息学》在线获取。