What type of connectivity structure are we seeing in protein-protein interaction networks? A number of random graph models have been mooted. After fitting model parameters to real data, the models can be judged by their success in reproducing key network properties. Here, we propose a very simple random graph model that inserts a connection according to the degree, or 'stickiness', of the two proteins involved. This model can be regarded as a testable distillation of more sophisticated versions that attempt to account for the presence of interaction surfaces or binding domains. By computing a range of network similarity measures, including relative graphlet frequency distance, we find that our model outperforms other random graph classes. In particular, we show that given the underlying degree information, fitting a stickiness model produces better results than simply choosing a degree-matching graph uniformly at random. Therefore, the results lend support to the basic modelling methodology.
机构:
NASA Astrobiol Inst, Mountain View, CA 94035 USA
Georgia Inst Technol, Sch Biol, Atlanta, GA 30322 USA
Blue Marble Space Inst Sci, Seattle, WA 98145 USANASA Astrobiol Inst, Mountain View, CA 94035 USA
Kacar, Betuel
Gaucher, Eric A.
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机构:
Georgia Inst Technol, Sch Biol, Atlanta, GA 30322 USA
Georgia Inst Technol, Sch Chem & Biochem, Atlanta, GA 30322 USANASA Astrobiol Inst, Mountain View, CA 94035 USA