Liu Jia, Zhu Huole, Qiu Jianfeng
State Key Laboratory of Media Convergence and Communication, Communication University of China, Beijing, China.
Key Laboratory of Intelligent Computing and Signal Processing of Ministry of Education, School of Artificial Intelligence, Anhui University, Hefei, China.
Front Genet. 2021 Oct 25;12:726596. doi: 10.3389/fgene.2021.726596. eCollection 2021.
For studying the pathogenesis of complex diseases, it is important to identify the disease modules in the system level. Since the protein-protein interaction (PPI) networks contain a number of incomplete and incorrect interactome, most existing methods often lead to many disease proteins isolating from disease modules. In this paper, we propose an effective disease module identification method IDMCSS, where the used human PPI networks are obtained by adding some potential missing interactions from existing PPI networks, as well as removing some potential incorrect interactions. In IDMCSS, a network adjustment strategy is developed to add or remove links around disease proteins based on both topological and semantic information. Next, neighboring proteins of disease proteins are prioritized according to a suggested similarity between each of them and disease proteins, and the protein with the largest similarity with disease proteins is added into a candidate disease protein set one by one. The stopping criterion is set to the boundary of the disease proteins. Finally, the connected subnetwork having the largest number of disease proteins is selected as a disease module. Experimental results on asthma demonstrate the effectiveness of the method in comparison to existing algorithms for disease module identification. It is also shown that the proposed IDMCSS can obtain the disease modules having crucial biological processes of asthma and 12 targets for drug intervention can be predicted.
为了研究复杂疾病的发病机制,在系统层面识别疾病模块非常重要。由于蛋白质-蛋白质相互作用(PPI)网络包含许多不完整和不正确的相互作用组,大多数现有方法往往导致许多疾病蛋白与疾病模块分离。在本文中,我们提出了一种有效的疾病模块识别方法IDMCSS,其中使用的人类PPI网络是通过从现有PPI网络中添加一些潜在的缺失相互作用以及去除一些潜在的不正确相互作用而获得的。在IDMCSS中,开发了一种网络调整策略,基于拓扑和语义信息在疾病蛋白周围添加或删除链接。接下来,根据疾病蛋白与每个相邻蛋白之间建议的相似性对疾病蛋白的相邻蛋白进行优先级排序,并将与疾病蛋白相似度最高的蛋白逐个添加到候选疾病蛋白集中。停止标准设置为疾病蛋白的边界。最后,选择具有最多疾病蛋白的连通子网作为疾病模块。哮喘的实验结果证明了该方法相对于现有疾病模块识别算法的有效性。还表明,所提出的IDMCSS可以获得具有哮喘关键生物学过程的疾病模块,并且可以预测12个药物干预靶点。