1. Efficient prediction of human protein-protein interactions at a global scale
- Author
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Ke Jin, Fredrik Barrenäs, Ashkan Golshani, Frank Dehne, Hui Wang, Sylvain Pitre, Mohan Babu, Andrew Schoenrock, Mikael Benson, Alex Wong, Bahram Samanfar, Mohsen Hooshyar, Michael A. Langston, Alamgir, Charles A. Phillips, James R. Green, Sadhna Phanse, Katayoun Omidi, and Yuan Gui
- Subjects
Interactome ,Proteome ,Protein-protein interactions ,Computational biology ,Biology ,Biochemistry ,Protein–protein interaction ,03 medical and health sciences ,0302 clinical medicine ,Structural Biology ,Protein Interaction Mapping ,Human proteome project ,Humans ,Molecular Biology ,030304 developmental biology ,Massively parallel computing ,0303 health sciences ,Genome, Human ,business.industry ,Applied Mathematics ,Scale (chemistry) ,Human proteome ,Computational Biology ,Proteins ,Personalized medicine ,3. Good health ,Computer Science Applications ,030220 oncology & carcinogenesis ,Network analysis ,Human genome ,Computational prediction ,DNA microarray ,business ,Software ,Research Article - Abstract
Background Our knowledge of global protein-protein interaction (PPI) networks in complex organisms such as humans is hindered by technical limitations of current methods. Results On the basis of short co-occurring polypeptide regions, we developed a tool called MP-PIPE capable of predicting a global human PPI network within 3 months. With a recall of 23% at a precision of 82.1%, we predicted 172,132 putative PPIs. We demonstrate the usefulness of these predictions through a range of experiments. Conclusions The speed and accuracy associated with MP-PIPE can make this a potential tool to study individual human PPI networks (from genomic sequences alone) for personalized medicine. Electronic supplementary material The online version of this article (doi:10.1186/s12859-014-0383-1) contains supplementary material, which is available to authorized users.
- Published
- 2014
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