Identification and prediction of functional protein modules using a bi-level community detection algorithm

  title={Identification and prediction of functional protein modules using a bi-level community detection algorithm},
  author={Suely Oliveira and Rahil Sharma},
  journal={Int. J. Bioinform. Res. Appl.},
Identifying functional modules is believed to reveal most cellular processes. There have been many computational approaches to investigate the underlying biological structures. We shall use community detection algorithm which we present in a bi-level algorithmic framework to accurately identify protein complexes in less computational time. We call this algorithm bi-level label propagation algorithm BLLP. Using this algorithm, we extract 123 communities from a protein-protein interaction PPI… 

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