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Algorithms and tools for protein-protein interaction networks clustering, with a special focus on population-based stochastic methods

机译:蛋白质-蛋白质相互作用网络聚类的算法和工具,特别关注基于人群的随机方法

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Motivation: Protein-protein interaction (PPI) networks are powerful models to represent the pairwise protein interactions of the organisms. Clustering PPI networks can be useful for isolating groups of interacting proteins that participate in the same biological processes or that perform together specific biological functions. Evolutionary orthologies can be inferred this way, as well as functions and properties of yet uncharacterized proteins. Results: We present an overview of the main state-of-the-art clustering methods that have been applied to PPI networks over the past decade. We distinguish five specific categories of approaches, describe and compare their main features and then focus on one of them, i.e. population-based stochastic search. We provide an experimental evaluation, based on some validation measures widely used in the literature, of techniques in this class, that are as yet less explored than the others. In particular, we study how the capability of Genetic Algorithms (GAs) to extract clusters in PPI networks varies when different topology-based fitness functions are used, and we compare GAs with the main techniques in the other categories. The experimental campaign shows that predictions returned by GAs are often more accurate than those produced by the contestant methods. Interesting issues still remain open about possible generalizations of GAs allowing for cluster overlapping.
机译:动机:蛋白质-蛋白质相互作用(PPI)网络是表示生物体成对蛋白质相互作用的强大模型。聚类PPI网络可用于分离参与相同生物学过程或共同执行特定生物学功能的相互作用蛋白组。可以通过这种方式推断进化的正交排列以及尚未表征的蛋白质的功能和特性。结果:我们概述了过去十年中已应用于PPI网络的主要最新聚类方法。我们将方法分为五类,描述并比较其主要特征,然后重点研究其中一种,即基于人群的随机搜索。我们根据文献中广泛使用的一些验证措施,对此类技术进行实验评估,但迄今未比其他方法探索得多。特别是,我们研究了使用不同的基于拓扑的适应度函数时,遗传算法(GA)提取PPI网络中聚类的能力如何变化,并将GA与其他类别的主要技术进行了比较。实验性活动表明,GA所返回的预测通常比竞赛者方法所产生的预测更准确。有关允许集群重叠的GA通用化问题,仍然存在有趣的问题。

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