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Mehranfar et al., 2017 - Google Patents

A Type-2 fuzzy data fusion approach for building reliable weighted protein interaction networks with application in protein complex detection

Mehranfar et al., 2017

Document ID
12692379086565118566
Author
Mehranfar A
Ghadiri N
Kouhsar M
Golshani A
Publication year
Publication venue
Computers in biology and medicine

External Links

Snippet

Detecting the protein complexes is an important task in analyzing the protein interaction networks. Although many algorithms predict protein complexes in different ways, surveys on the interaction networks indicate that about 50% of detected interactions are false positives …
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