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Protease-Inhibitor Interaction Predictions: Lessons on the Complexity of Protein–Protein Interactions

Protein interactions shape proteome function and thus biology. Identification of protein interactions is a major goal in molecular biology, but biochemical methods, although improving, remain limited in coverage and accuracy. Whereas computational predictions can guide biochemical experiments, low v...

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Autores principales: Fortelny, Nikolaus, Butler, Georgina S., Overall, Christopher M., Pavlidis, Paul
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The American Society for Biochemistry and Molecular Biology 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5461536/
https://www.ncbi.nlm.nih.gov/pubmed/28385878
http://dx.doi.org/10.1074/mcp.M116.065706
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author Fortelny, Nikolaus
Butler, Georgina S.
Overall, Christopher M.
Pavlidis, Paul
author_facet Fortelny, Nikolaus
Butler, Georgina S.
Overall, Christopher M.
Pavlidis, Paul
author_sort Fortelny, Nikolaus
collection PubMed
description Protein interactions shape proteome function and thus biology. Identification of protein interactions is a major goal in molecular biology, but biochemical methods, although improving, remain limited in coverage and accuracy. Whereas computational predictions can guide biochemical experiments, low validation rates of predictions remain a major limitation. Here, we investigated computational methods in the prediction of a specific type of interaction, the inhibitory interactions between proteases and their inhibitors. Proteases generate thousands of proteoforms that dynamically shape the functional state of proteomes. Despite the important regulatory role of proteases, knowledge of their inhibitors remains largely incomplete with the vast majority of proteases lacking an annotated inhibitor. To link inhibitors to their target proteases on a large scale, we applied computational methods to predict inhibitory interactions between proteases and their inhibitors based on complementary data, including coexpression, phylogenetic similarity, structural information, co-annotation, and colocalization, and also surveyed general protein interaction networks for potential inhibitory interactions. In testing nine predicted interactions biochemically, we validated the inhibition of kallikrein 5 by serpin B12. Despite the use of a wide array of complementary data, we found a high false positive rate of computational predictions in biochemical follow-up. Based on a protease-specific definition of true negatives derived from the biochemical classification of proteases and inhibitors, we analyzed prediction accuracy of individual features, thereby we identified feature-specific limitations, which also affected general protein interaction prediction methods. Interestingly, proteases were often not coexpressed with most of their functional inhibitors, contrary to what is commonly assumed and extrapolated predominantly from cell culture experiments. Predictions of inhibitory interactions were indeed more challenging than predictions of nonproteolytic and noninhibitory interactions. In summary, we describe a novel and well-defined but difficult protein interaction prediction task and thereby highlight limitations of computational interaction prediction methods.
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spelling pubmed-54615362017-06-14 Protease-Inhibitor Interaction Predictions: Lessons on the Complexity of Protein–Protein Interactions Fortelny, Nikolaus Butler, Georgina S. Overall, Christopher M. Pavlidis, Paul Mol Cell Proteomics Research Protein interactions shape proteome function and thus biology. Identification of protein interactions is a major goal in molecular biology, but biochemical methods, although improving, remain limited in coverage and accuracy. Whereas computational predictions can guide biochemical experiments, low validation rates of predictions remain a major limitation. Here, we investigated computational methods in the prediction of a specific type of interaction, the inhibitory interactions between proteases and their inhibitors. Proteases generate thousands of proteoforms that dynamically shape the functional state of proteomes. Despite the important regulatory role of proteases, knowledge of their inhibitors remains largely incomplete with the vast majority of proteases lacking an annotated inhibitor. To link inhibitors to their target proteases on a large scale, we applied computational methods to predict inhibitory interactions between proteases and their inhibitors based on complementary data, including coexpression, phylogenetic similarity, structural information, co-annotation, and colocalization, and also surveyed general protein interaction networks for potential inhibitory interactions. In testing nine predicted interactions biochemically, we validated the inhibition of kallikrein 5 by serpin B12. Despite the use of a wide array of complementary data, we found a high false positive rate of computational predictions in biochemical follow-up. Based on a protease-specific definition of true negatives derived from the biochemical classification of proteases and inhibitors, we analyzed prediction accuracy of individual features, thereby we identified feature-specific limitations, which also affected general protein interaction prediction methods. Interestingly, proteases were often not coexpressed with most of their functional inhibitors, contrary to what is commonly assumed and extrapolated predominantly from cell culture experiments. Predictions of inhibitory interactions were indeed more challenging than predictions of nonproteolytic and noninhibitory interactions. In summary, we describe a novel and well-defined but difficult protein interaction prediction task and thereby highlight limitations of computational interaction prediction methods. The American Society for Biochemistry and Molecular Biology 2017-06 2017-04-06 /pmc/articles/PMC5461536/ /pubmed/28385878 http://dx.doi.org/10.1074/mcp.M116.065706 Text en © 2017 by The American Society for Biochemistry and Molecular Biology, Inc. Author's Choice—Final version free via Creative Commons CC-BY license (http://creativecommons.org/licenses/by/4.0) .
spellingShingle Research
Fortelny, Nikolaus
Butler, Georgina S.
Overall, Christopher M.
Pavlidis, Paul
Protease-Inhibitor Interaction Predictions: Lessons on the Complexity of Protein–Protein Interactions
title Protease-Inhibitor Interaction Predictions: Lessons on the Complexity of Protein–Protein Interactions
title_full Protease-Inhibitor Interaction Predictions: Lessons on the Complexity of Protein–Protein Interactions
title_fullStr Protease-Inhibitor Interaction Predictions: Lessons on the Complexity of Protein–Protein Interactions
title_full_unstemmed Protease-Inhibitor Interaction Predictions: Lessons on the Complexity of Protein–Protein Interactions
title_short Protease-Inhibitor Interaction Predictions: Lessons on the Complexity of Protein–Protein Interactions
title_sort protease-inhibitor interaction predictions: lessons on the complexity of protein–protein interactions
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5461536/
https://www.ncbi.nlm.nih.gov/pubmed/28385878
http://dx.doi.org/10.1074/mcp.M116.065706
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