Protein-protein interaction prediction via Collective Matrix Factorization

Qian Xu, E. Xiang, Qiang Yang
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引用次数: 33

Abstract

Protein-protein interactions (PPI) play an important role in cellular processes and metabolic processes within a cell. An important task is to determine the existence of interactions among proteins. Unfortunately, existing biological experimental techniques are expensive, time-consuming and labor-intensive. The network structures of many such networks are sparse, incomplete and noisy, containing many false positive and false negatives. Thus, state-of-the-art methods for link prediction in these networks often cannot give satisfactory prediction results, especially when some networks are extremely sparse. Noticing that we typically have more than one PPI network available, we naturally wonder whether it is possible to 'transfer' the linkage knowledge from some existing, relatively dense networks to a sparse network, to improve the prediction performance. Noticing that a network structure can be modeled using a matrix model, in this paper, we introduce the well-known Collective Matrix Factorization (CMF) technique to 'transfer' usable linkage knowledge from relatively dense interaction network to a sparse target network. Our approach is to establish the correspondence between a source and a target network via network similarities. We test this method on two real protein-protein interaction networks, Helicobacter pylori (as a target network) and Human (as a source network). Our experimental results show that our method can achieve higher and more robust performance as compared to some baseline methods.
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基于集合矩阵分解的蛋白质相互作用预测
蛋白质-蛋白质相互作用(PPI)在细胞过程和细胞内代谢过程中起着重要作用。一项重要的任务是确定蛋白质之间是否存在相互作用。不幸的是,现有的生物实验技术是昂贵的,耗时和劳动密集型的。许多此类网络的网络结构是稀疏的、不完整的和有噪声的,包含许多假阳性和假阴性。因此,在这些网络中,最先进的链路预测方法往往不能给出令人满意的预测结果,特别是当一些网络非常稀疏时。注意到我们通常有多个可用的PPI网络,我们很自然地想知道是否有可能将链接知识从一些现有的、相对密集的网络“转移”到一个稀疏的网络,以提高预测性能。注意到网络结构可以使用矩阵模型建模,在本文中,我们引入了著名的集体矩阵分解(CMF)技术,将可用的链接知识从相对密集的交互网络“转移”到稀疏的目标网络。我们的方法是通过网络相似性在源网络和目标网络之间建立对应关系。我们在两个真实的蛋白质-蛋白质相互作用网络上测试了这种方法,幽门螺杆菌(作为目标网络)和人类(作为源网络)。实验结果表明,与一些基线方法相比,该方法具有更高的鲁棒性。
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