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A knowledge-based scoring function to assess quaternary associations of proteins

Abhilesh S Dhawanjewar, Ankit Roy, M. S. Madhusudhan

2020Bioinformatics16 citationsDOIOpen Access PDF

Abstract

MOTIVATION: The elucidation of all inter-protein interactions would significantly enhance our knowledge of cellular processes at a molecular level. Given the enormity of the problem, the expenses and limitations of experimental methods, it is imperative that this problem is tackled computationally. In silico predictions of protein interactions entail sampling different conformations of the purported complex and then scoring these to assess for interaction viability. In this study, we have devised a new scheme for scoring protein-protein interactions. RESULTS: Our method, PIZSA (Protein Interaction Z-Score Assessment), is a binary classification scheme for identification of native protein quaternary assemblies (binders/nonbinders) based on statistical potentials. The scoring scheme incorporates residue-residue contact preference on the interface with per residue-pair atomic contributions and accounts for clashes. PIZSA can accurately discriminate between native and non-native structural conformations from protein docking experiments and outperform other contact-based potential scoring functions. The method has been extensively benchmarked and is among the top 6 methods, outperforming 31 other statistical, physics based and machine learning scoring schemes. The PIZSA potentials can also distinguish crystallization artifacts from biological interactions. AVAILABILITY AND IMPLEMENTATION: PIZSA is implemented as a web server at http://cospi.iiserpune.ac.in/pizsa and can be downloaded as a standalone package from http://cospi.iiserpune.ac.in/pizsa/Download/Download.html. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

Topics & Concepts

Computer scienceDownloadIn silicoProtein–protein interactionDocking (animal)Protein functionMachine learningWeb serverBinary numberData miningArtificial intelligenceThe InternetChemistryMathematicsBiochemistryGeneNursingOperating systemWorld Wide WebArithmeticMedicineProtein Structure and DynamicsBioinformatics and Genomic NetworksComputational Drug Discovery Methods
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