A receptor dependent-4D QSAR approach to predict the activity of mutated enzymes

Abstract Screening and selection tools to obtain focused libraries play a key role in successfully engineering enzymes of desired qualities. The quality of screening depends on efficient assays; however, a focused library generated with a priori information plays a major role in effectively identify...

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Main Authors: R. Pravin Kumar, Naveen Kulkarni
Format: Article
Language:English
Published: Nature Publishing Group 2017-07-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-017-06625-x
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spelling doaj-f36e23b772ba4b379bcd21f06a9c6fea2020-12-08T01:50:53ZengNature Publishing GroupScientific Reports2045-23222017-07-017111310.1038/s41598-017-06625-xA receptor dependent-4D QSAR approach to predict the activity of mutated enzymesR. Pravin Kumar0Naveen Kulkarni1Polyclone BioservicesPolyclone BioservicesAbstract Screening and selection tools to obtain focused libraries play a key role in successfully engineering enzymes of desired qualities. The quality of screening depends on efficient assays; however, a focused library generated with a priori information plays a major role in effectively identifying the right enzyme. As a proof of concept, for the first time, receptor dependent – 4D Quantitative Structure Activity Relationship (RD-4D-QSAR) has been implemented to predict kinetic properties of an enzyme. The novelty of this study is that the mutated enzymes also form a part of the training data set. The mutations were modeled in a serine protease and molecular dynamics simulations were conducted to derive enzyme-substrate (E-S) conformations. The E-S conformations were enclosed in a high resolution grid consisting of 156,250 grid points that stores interaction energies to generate QSAR models to predict the enzyme activity. The QSAR predictions showed similar results as reported in the kinetic studies with >80% specificity and >50% sensitivity revealing that the top ranked models unambiguously differentiated enzymes with high and low activity. The interaction energy descriptors of the best QSAR model were used to identify residues responsible for enzymatic activity and substrate specificity.https://doi.org/10.1038/s41598-017-06625-x
collection DOAJ
language English
format Article
sources DOAJ
author R. Pravin Kumar
Naveen Kulkarni
spellingShingle R. Pravin Kumar
Naveen Kulkarni
A receptor dependent-4D QSAR approach to predict the activity of mutated enzymes
Scientific Reports
author_facet R. Pravin Kumar
Naveen Kulkarni
author_sort R. Pravin Kumar
title A receptor dependent-4D QSAR approach to predict the activity of mutated enzymes
title_short A receptor dependent-4D QSAR approach to predict the activity of mutated enzymes
title_full A receptor dependent-4D QSAR approach to predict the activity of mutated enzymes
title_fullStr A receptor dependent-4D QSAR approach to predict the activity of mutated enzymes
title_full_unstemmed A receptor dependent-4D QSAR approach to predict the activity of mutated enzymes
title_sort receptor dependent-4d qsar approach to predict the activity of mutated enzymes
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2017-07-01
description Abstract Screening and selection tools to obtain focused libraries play a key role in successfully engineering enzymes of desired qualities. The quality of screening depends on efficient assays; however, a focused library generated with a priori information plays a major role in effectively identifying the right enzyme. As a proof of concept, for the first time, receptor dependent – 4D Quantitative Structure Activity Relationship (RD-4D-QSAR) has been implemented to predict kinetic properties of an enzyme. The novelty of this study is that the mutated enzymes also form a part of the training data set. The mutations were modeled in a serine protease and molecular dynamics simulations were conducted to derive enzyme-substrate (E-S) conformations. The E-S conformations were enclosed in a high resolution grid consisting of 156,250 grid points that stores interaction energies to generate QSAR models to predict the enzyme activity. The QSAR predictions showed similar results as reported in the kinetic studies with >80% specificity and >50% sensitivity revealing that the top ranked models unambiguously differentiated enzymes with high and low activity. The interaction energy descriptors of the best QSAR model were used to identify residues responsible for enzymatic activity and substrate specificity.
url https://doi.org/10.1038/s41598-017-06625-x
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