Partitioning a PPI Network into Overlapping Modules Constrained by High-Density and Periphery Tracking

  • Altaf-Ul-Amin M
  • Wada M
  • Kanaya S
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Abstract

This paper presents an algorithm called DPClusO for partitioning simple graphs into overlapping modules, that is, clusters constrained by density and periphery tracking. The major advantages of DPClusO over the related and previously published algorithm DPClus are shorter running time and ensuring coverage, that is, each node goes to at least one module. DPClusO is a general-purpose clustering algorithm and useful for finding overlapping cohesive groups in a simple graph for any type of application. This work shows that the modules generated by DPClusO from several PPI networks of yeast with high-density constraint match with more known complexes compared to some other recently published complex generating algorithms. Furthermore, the biological significance of the high density modules has been demonstrated by comparing their P values in the context of Gene Ontology (GO) terms with those of the randomly generated modules having the same size, distribution, and zero density. As a consequence, it was also learnt that a PPI network is a combination of mainly high-density and star-like modules.

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Altaf-Ul-Amin, Md., Wada, M., & Kanaya, S. (2012). Partitioning a PPI Network into Overlapping Modules Constrained by High-Density and Periphery Tracking. ISRN Biomathematics, 2012, 1–11. https://doi.org/10.5402/2012/726429

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