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Title: Protein complex detection with semi-supervised learning in protein interaction networks. Author: Shi L, Lei X, Zhang A. Journal: Proteome Sci; 2011 Oct 14; 9 Suppl 1(Suppl 1):S5. PubMed ID: 22165896. Abstract: BACKGROUND: Protein-protein interactions (PPIs) play fundamental roles in nearly all biological processes. The systematic analysis of PPI networks can enable a great understanding of cellular organization, processes and function. In this paper, we investigate the problem of protein complex detection from noisy protein interaction data, i.e., finding the subsets of proteins that are closely coupled via protein interactions. However, protein complexes are likely to overlap and the interaction data are very noisy. It is a great challenge to effectively analyze the massive data for biologically meaningful protein complex detection. RESULTS: Many people try to solve the problem by using the traditional unsupervised graph clustering methods. Here, we stand from a different point of view, redefining the properties and features for protein complexes and designing a "semi-supervised" method to analyze the problem. In this paper, we utilize the neural network with the "semi-supervised" mechanism to detect the protein complexes. By retraining the neural network model recursively, we could find the optimized parameters for the model, in such a way we can successfully detect the protein complexes. The comparison results show that our algorithm could identify protein complexes that are missed by other methods. We also have shown that our method achieve better precision and recall rates for the identified protein complexes than other existing methods. In addition, the framework we proposed is easy to be extended in the future. CONCLUSIONS: Using a weighted network to represent the protein interaction network is more appropriate than using a traditional unweighted network. In addition, integrating biological features and topological features to represent protein complexes is more meaningful than using dense subgraphs. Last, the "semi-supervised" learning model is a promising model to detect protein complexes with more biological and topological features available.[Abstract] [Full Text] [Related] [New Search]