| Literature DB >> 30679268 |
Shaowei Dong1, Vincent Lau1, Richard Song1, Matthew Ierullo1, Eddi Esteban1, Yingzhou Wu1, Teeratham Sivieng1, Hardeep Nahal1, Allison Gaudinier2, Asher Pasha1, Rose Oughtred3,4,5, Kara Dolinski3,4,5, Mike Tyers6,7, Siobhan M Brady2, Ruth Grene8, Björn Usadel3, Nicholas J Provart9.
Abstract
Determining the complete Arabidopsis (Arabidopsis thaliana) protein-protein interaction network is essential for understanding the functional organization of the proteome. Numerous small-scale studies and a couple of large-scale ones have elucidated a fraction of the estimated 300,000 binary protein-protein interactions in Arabidopsis. In this study, we provide evidence that a docking algorithm has the ability to identify real interactions using both experimentally determined and predicted protein structures. We ranked 0.91 million interactions generated by all possible pairwise combinations of 1,346 predicted structure models from an Arabidopsis predicted "structure-ome" and found a significant enrichment of real interactions for the top-ranking predicted interactions, as shown by cosubcellular enrichment analysis and yeast two-hybrid validation. Our success rate for computationally predicted, structure-based interactions was 63% of the success rate for published interactions naively tested using the yeast two-hybrid system and 2.7 times better than for randomly picked pairs of proteins. This study provides another perspective in interactome exploration and biological network reconstruction using protein structural information. We have made these interactions freely accessible through an improved Arabidopsis Interactions Viewer and have created community tools for accessing these and ∼2.8 million other protein-protein and protein-DNA interactions for hypothesis generation by researchers worldwide. The Arabidopsis Interactions Viewer is freely available at http://bar.utoronto.ca/interactions2/.Entities:
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Year: 2019 PMID: 30679268 PMCID: PMC6446796 DOI: 10.1104/pp.18.01216
Source DB: PubMed Journal: Plant Physiol ISSN: 0032-0889 Impact factor: 8.340