Using indirect protein-protein interactions for protein complex predication.

H. Chua, K. Ning, W. Sung, H. Leong, L. Wong
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引用次数: 35

Abstract

Protein complexes are fundamental for understanding principles of cellular organizations. Accurate and fast protein complex prediction from the PPI networks of increasing sizes can serve as a guide for biological experiments to discover novel protein complexes. However, protein complex prediction from PPI networks is a hard problem, especially in situations where the PPI network is noisy. We know from previous work that proteins that do not interact, but share interaction partners (level-2 neighbors) often share biological functions. The strength of functional association can be estimated using a topological weight, FS-Weight. Here we study the use of indirect interactions between level-2 neighbors (level-2 interactions) for protein complex prediction. All direct and indirect interactions are first weighted using topological weight (FS-Weight). Interactions with low weight are removed from the network, while level-2 interactions with high weight are introduced into the interaction network. Existing clustering algorithms can then be applied on this modified network. We also propose a novel algorithm that searches for cliques in the modified network, and merge cliques to form clusters using a "partial clique merging" method. In this paper, we show that 1) the use of indirect interactions and topological weight to augment protein-protein interactions can be used to improve the precision of clusters predicted by various existing clustering algorithms; 2) our complex finding algorithm performs very well on interaction networks modified in this way. Since no any other information except the original PPI network is used, our approach would be very useful for protein complex prediction, especially for prediction of novel protein complexes.
利用间接蛋白质-蛋白质相互作用预测蛋白质复合物。
蛋白质复合物是理解细胞组织原理的基础。从越来越大的PPI网络中准确、快速地预测蛋白质复合物,可以为生物学实验发现新的蛋白质复合物提供指导。然而,从PPI网络中预测蛋白质复合物是一个难题,特别是在PPI网络有噪声的情况下。我们从以前的工作中知道,没有相互作用,但具有相互作用伙伴(2级邻居)的蛋白质通常具有相同的生物功能。功能关联的强度可以使用拓扑权重FS-Weight来估计。在这里,我们研究了使用2级邻居之间的间接相互作用(2级相互作用)来预测蛋白质复合物。首先使用拓扑权重(FS-Weight)对所有直接和间接相互作用进行加权。低权重的交互从网络中移除,而高权重的二级交互被引入到交互网络中。现有的聚类算法可以应用于这个修改后的网络。我们还提出了一种新的算法,该算法在修改后的网络中搜索派系,并使用“部分派系合并”方法将派系合并成簇。本文表明:1)利用间接相互作用和拓扑权重来增强蛋白质-蛋白质相互作用可以提高现有各种聚类算法预测聚类的精度;2)我们的复杂搜索算法在经过这种方式修改的交互网络上表现良好。由于除了原始的PPI网络外没有使用任何其他信息,因此我们的方法对蛋白质复合物的预测非常有用,特别是对新型蛋白质复合物的预测。
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