Motivation: Antibodies are able to recognize a wide range of antigens through their complementary determining regions formed by six hypervariable loops. Predicting the 3D structure of these loops is essential for the analysis and reengineering of novel antibodies with enhanced affinity and specificity. The canonical structure model allows high accuracy prediction for five of the loops. The third loop of the heavy chain, H3, is the hardest to predict because of its diversity in structure, length and sequence composition.Results: We describe a method, based on the Random Forest automatic learning technique, to select structural templates for H3 loops among a dataset of candidates. These can be used to predict the structure of the loop with a higher accuracy than that achieved by any of the presently available methods. The method also has the advantage of being extremely fast and returning a reliable estimate of the model quality.Availability and implementation: The source code is freely available at http://www.biocomputing.it/H3Loopred/Contact: anna.tramontano@uniroma1.itSupplementary Information: Supplementary data are available at Bioinformatics online.

Improving the accuracy of the structure prediction of the third hypervariable loop of the heavy chains of antibodies / Abdel Messih, M. A. F.; Lepore, R.; Marcatili, P.; Tramontano, A.. - In: BIOINFORMATICS. - ISSN 1367-4803. - STAMPA. - 19:30(2014), pp. 2733-2740. [10.1093/bioinformatics/btu194]

Improving the accuracy of the structure prediction of the third hypervariable loop of the heavy chains of antibodies

Abdel Messih, M. A. F.;Lepore, R.;Marcatili, P.;Tramontano, A.
Conceptualization
2014

Abstract

Motivation: Antibodies are able to recognize a wide range of antigens through their complementary determining regions formed by six hypervariable loops. Predicting the 3D structure of these loops is essential for the analysis and reengineering of novel antibodies with enhanced affinity and specificity. The canonical structure model allows high accuracy prediction for five of the loops. The third loop of the heavy chain, H3, is the hardest to predict because of its diversity in structure, length and sequence composition.Results: We describe a method, based on the Random Forest automatic learning technique, to select structural templates for H3 loops among a dataset of candidates. These can be used to predict the structure of the loop with a higher accuracy than that achieved by any of the presently available methods. The method also has the advantage of being extremely fast and returning a reliable estimate of the model quality.Availability and implementation: The source code is freely available at http://www.biocomputing.it/H3Loopred/Contact: anna.tramontano@uniroma1.itSupplementary Information: Supplementary data are available at Bioinformatics online.
2014
antibody modelling, structure-function relationship, machine-learning, protein structure, machine-learning, molecular interactions
01 Pubblicazione su rivista::01a Articolo in rivista
Improving the accuracy of the structure prediction of the third hypervariable loop of the heavy chains of antibodies / Abdel Messih, M. A. F.; Lepore, R.; Marcatili, P.; Tramontano, A.. - In: BIOINFORMATICS. - ISSN 1367-4803. - STAMPA. - 19:30(2014), pp. 2733-2740. [10.1093/bioinformatics/btu194]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/577784
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