| URL: | http://www.cls.zju.edu.cn/pair/ |
| Full name: | Predicted Arabidopsis Interactome Resource |
| Description: | The Predicted Arabidopsis Interactome Resource (PAIR) contains 149,900 protein-protein interactions involving 10,380 proteins. This dataset includes 145,494 interactions predicted by the PAIR V3 prediction model and 5590 experimentally reported interactions collected from the major interaction databases. The predicted interactions are expected to cover 24.47% of the entire Arabidopsis interactome with a high reliability of 43.52%. In addition, another set of predicted interactions covering 74.55% of the entire Aradopsis interactome but with low reliability is also available for download. The prediction accuracies have been validated by two external benchmark datasets. |
| Year founded: | 2011 |
| Last update: | 2019-11-01 |
| Version: | v3.x |
| Accessibility: |
Accessible
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| Country/Region: | China |
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| University/Institution: | Zhejiang University |
| Address: | Hangzhou,PR China,310058 |
| City: | Hangzhou |
| Province/State: | Zhejiang |
| Country/Region: | China |
| Contact name (PI/Team): | Xin Chen |
| Contact email (PI/Helpdesk): | xinchen@zju.edu.cn |
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Predicted Arabidopsis Interactome Resource and Gene Set Linkage Analysis: A Transcriptomic Analysis Resource. [PMID: 29530937]
An advanced functional understanding of omics data is important for elucidating the design logic of physiological processes in plants and effectively controlling desired traits in plants. We present the latest versions of the Predicted Arabidopsis Interactome Resource (PAIR) and of the gene set linkage analysis (GSLA) tool, which enable the interpretation of an observed transcriptomic change (differentially expressed genes [DEGs]) in Arabidopsis (Arabidopsis thaliana) with respect to its functional impact for biological processes. PAIR version 5.0 integrates functional association data between genes in multiple forms and infers 335,301 putative functional interactions. GSLA relies on this high-confidence inferred functional association network to expand our perception of the functional impacts of an observed transcriptomic change. GSLA then interprets the biological significance of the observed DEGs using established biological concepts (annotation terms), describing not only the DEGs themselves but also their potential functional impacts. This unique analytical capability can help researchers gain deeper insights into their experimental results and highlight prospective directions for further investigation. We demonstrate the utility of GSLA with two case studies in which GSLA uncovered how molecular events may have caused physiological changes through their collective functional influence on biological processes. Furthermore, we showed that typical annotation-enrichment tools were unable to produce similar insights to PAIR/GSLA. The PAIR version 5.0-inferred interactome and GSLA Web tool both can be accessed at http://public.synergylab.cn/pair/. |
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PAIR: the predicted Arabidopsis interactome resource. [PMID: 20952401]
The predicted Arabidopsis interactome resource (PAIR, http://www.cls.zju.edu.cn/pair/), comprised of 5990 experimentally reported molecular interactions in Arabidopsis thaliana together with 145,494 predicted interactions, is currently the most comprehensive data set of the Arabidopsis interactome with high reliability. PAIR predicts interactions by a fine-tuned support vector machine model that integrates indirect evidences for interaction, such as gene co-expressions, domain interactions, shared GO annotations, co-localizations, phylogenetic profile similarities and homologous interactions in other organisms (interologs). These predictions were expected to cover 24% of the entire Arabidopsis interactome, and their reliability was estimated to be 44%. Two independent example data sets were used to rigorously validate the prediction accuracy. PAIR features a user-friendly query interface, providing rich annotation on the relationships between two proteins. A graphical interaction network browser has also been integrated into the PAIR web interface to facilitate mining of specific pathways. |