School of Artificial Intelligence and Computer Science, Jiangnan University, Wuxi, China.
Jiangsu Provincial Engineering Laboratory of Pattern Recognition and Computational Intelligence, Jiangnan University, Wuxi, China.
J Integr Bioinform. 2023 Dec 14;20(4). doi: 10.1515/jib-2023-0006. eCollection 2023 Dec 1.
Proteins are important parts of the biological structures and encode a lot of biological information. Protein-protein interaction network alignment is a model for analyzing proteins that helps discover conserved functions between organisms and predict unknown functions. In particular, multi-network alignment aims at finding the mapping relationship among multiple network nodes, so as to transfer the knowledge across species. However, with the increasing complexity of PPI networks, how to perform network alignment more accurately and efficiently is a new challenge. This paper proposes a new global network alignment algorithm called Simulated Annealing Multiple Network Alignment (SAMNA), using both network topology and sequence homology information. To generate the alignment, SAMNA first generates cross-network candidate clusters by a clustering algorithm on a -partite similarity graph constructed with sequence similarity information, and then selects candidate cluster nodes as alignment results and optimizes them using an improved simulated annealing algorithm. Finally, the SAMNA algorithm was experimented on synthetic and real-world network datasets, and the results showed that SAMNA outperformed the state-of-the-art algorithm in biological performance.
蛋白质是生物结构的重要组成部分,编码了大量的生物信息。蛋白质-蛋白质相互作用网络比对是一种用于分析蛋白质的模型,有助于发现生物之间保守的功能,并预测未知的功能。特别是,多网络比对旨在寻找多个网络节点之间的映射关系,从而在物种之间传递知识。然而,随着 PPI 网络的日益复杂,如何更准确、高效地进行网络比对成为一个新的挑战。本文提出了一种新的全局网络比对算法,称为模拟退火多网络比对(SAMNA),它同时利用网络拓扑和序列同源性信息。为了生成比对,SAMNA 首先通过在基于序列相似性信息构建的 -分相似图上使用聚类算法生成跨网络候选簇,然后选择候选簇节点作为比对结果,并使用改进的模拟退火算法对其进行优化。最后,在合成和真实网络数据集上对 SAMNA 算法进行了实验,结果表明,SAMNA 在生物学性能方面优于最先进的算法。