AI Article Synopsis

  • - Protein-protein interaction experiments often produce false positives, but the new WeSA (Weighted SocioAffinity) metric helps to differentiate genuine interactions from noise by analyzing large datasets like IntAct and BioGRID.
  • - WeSA has been shown to improve accuracy in determining interaction confidence, achieving high scores in ROC analysis with results indicating high true positive rates and precision rates (AUC = 0.93, TPR = 0.84, FPR = 0.11, Precision = 0.98).
  • - The WeSA web server is user-friendly and allows researchers to submit their own data or explore existing human protein interaction information, with results displayed in tables and network visualizations to easily identify and remove false positives

Article Abstract

Protein-protein interaction experiments still yield many false positive interactions. The socioaffinity metric can distinguish true protein-protein interactions from noise based on available data. Here, we present WeSA (Weighted SocioAffinity), which considers large datasets of interaction proteomics data (IntAct, BioGRID, the BioPlex) to score human protein interactions and, in a statistically robust way, flag those (even from a single experiment) that are likely to be false positives. ROC analysis (using CORUM-PDB positives and Negatome negatives) shows that WeSA improves over other measures of interaction confidence. WeSA shows consistently good results over all datasets (up to: AUC = 0.93 and at best threshold: TPR = 0.84, FPR = 0.11, Precision = 0.98). WeSA is freely available without login (wesa.russelllab.org). Users can submit their own data or look for organized information on human protein interactions using the web server. Users can either retrieve available information for a list of proteins of interest or calculate scores for new experiments. The server outputs either pre-computed or updated WeSA scores for the input enriched with information from databases. The summary is presented as a table and a network-based visualization allowing the user to remove those nodes/edges that the method considers spurious.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11223876PMC
http://dx.doi.org/10.1093/nar/gkae423DOI Listing

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