2010
DOI: 10.1016/j.mcm.2010.06.015
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Spectral clustering for detecting protein complexes in protein–protein interaction (PPI) networks

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Cited by 37 publications
(20 citation statements)
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“…Studies of protein complexes in a PPI network contribute greatly to the understanding of the biological mechanism. Spectral clustering has been widely applied to detect protein complexes from PPI networks [Christel and Kim 2005;Sen et al 2006;Kentaro et al 2010;Qin and Gao 2010].…”
Section: Protein Complexes Detection Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…Studies of protein complexes in a PPI network contribute greatly to the understanding of the biological mechanism. Spectral clustering has been widely applied to detect protein complexes from PPI networks [Christel and Kim 2005;Sen et al 2006;Kentaro et al 2010;Qin and Gao 2010].…”
Section: Protein Complexes Detection Resultsmentioning
confidence: 99%
“…To evaluate the complexes mined by clustering, the resulting complexes are matched to known protein complexes from Gavin et al [2006] and Krogan et al [2006], 478 and 547 in number, respectively. We use the method in Qin and Gao [2010] to determine the number of clusters. The number of samples is set as 800.…”
Section: Protein Complexes Detection Resultsmentioning
confidence: 99%
“…Signal Transduction Model (STM) is the novel algorith m reflects the signal transduction that selects representative protein for every cluster and modify cluster iteratively based on signal transduction [9].TRIBE-M CL (Markov Clustering), CASCA DE, GFA are the other effective algorithm which are simulate a functional and biological flow of the protein. [10,11] This clustering approach converts the problem to quadratic optimi zation with some constraints through the matrix analysis methodology. These methods are generally useful for large and complex datasets.…”
Section: ) Density Based Clustering [1 6 and 15]mentioning
confidence: 99%
“…It has advantage of fast partitioning of the PPI network into appropriate biological cluster with approximate equal size. Qin et al [11] had developed a spectral clustering technique which is useful to perceive complexes of the proteins and functions. [12] Densely connected structure sometimes absent in the PPI network which becomes the problem for the functional module detection.…”
Section: ) Density Based Clustering [1 6 and 15]mentioning
confidence: 99%
“…Spectral clustering-based approaches solve the problem by converting it to a quadratic optimization with constraints by utilizing the methodology of matrix analysis. For instance, Qin et al presented a spectral clustering method in [7], and a diffusion model-based spectral clustering was proposed in [8]. However, using the algorithms mentioned above, protein modules with densities less than certain thresholds may be absent from some potential protein modules in PPI networks.…”
Section: Introductionmentioning
confidence: 99%