Identifying the Enzymatic Mode of Action for Cellulase Enzymes by Means of Docking Calculations and a Machine Learning Algorithm

Docking calculations have been conducted on 36 cellulase enzymes and the results were evaluated by a machine learning algorithm to determine the nature of the enzyme (i.e. endo- or exo- enzymatic activity). The docking calculations have also been used to identify crucial substrate-enzyme interaction...

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Main Authors: Somisetti V. Sambasivarao, David M. Granum, Hua Wang, C. Mark Maupin
Format: Article
Language:English
Published: AIMS Press 2014-01-01
Series:AIMS Molecular Science
Subjects:
Online Access:http://www.aimspress.com/article/10.3934/molsci.2014.1.59/fulltext.html
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spelling doaj-7699be24431d4e2f8af43e450ce9c7e02020-11-25T02:19:41ZengAIMS PressAIMS Molecular Science2372-028X2372-03012014-01-0111598010.3934/molsci.2014.1.59Identifying the Enzymatic Mode of Action for Cellulase Enzymes by Means of Docking Calculations and a Machine Learning AlgorithmSomisetti V. Sambasivarao0David M. Granum1Hua Wang2C. Mark Maupin3Department of Chemical and Biological Engineering, Colorado School of Mines, Golden, CO 80401, USADepartment of Chemical and Biological Engineering, Colorado School of Mines, Golden, CO 80401, USADepartment of Electrical Engineering and Computer Science, Colorado School of Mines, Golden, CO 80401, USADepartment of Chemical and Biological Engineering, Colorado School of Mines, Golden, CO 80401, USADocking calculations have been conducted on 36 cellulase enzymes and the results were evaluated by a machine learning algorithm to determine the nature of the enzyme (i.e. endo- or exo- enzymatic activity). The docking calculations have also been used to identify crucial substrate-enzyme interactions, and establish structure-function relationships. The use of carboxymethyl cellulose as a docking substrate is found to correctly identify the endo- or exo- behavior of cellulase enzymes with 92% accuracy while cellobiose docking calculations resulted in an 86% predictive accuracy. The binding distributions for cellobiose have been classified into two distinct types; distributions with a single maximum or distributions with a bi-modal structure. It is found that the uni-modal distributions correspond to exo- type enzyme while a bi-modal substrate docking distribution corresponds to endo- type enzyme. These results indicate that the use of docking calculations and machine learning algorithms are a fast and computationally inexpensive method for predicting if a cellulase enzyme possesses primarily endo- or exo- type behavior, while also revealing critical enzyme-substrate interactions.http://www.aimspress.com/article/10.3934/molsci.2014.1.59/fulltext.htmlCarboxymethyl celluloseCellobiohydrolaseCellobioseCellulaseDockingEndoglucanaseMachine learningProduct inhibition
collection DOAJ
language English
format Article
sources DOAJ
author Somisetti V. Sambasivarao
David M. Granum
Hua Wang
C. Mark Maupin
spellingShingle Somisetti V. Sambasivarao
David M. Granum
Hua Wang
C. Mark Maupin
Identifying the Enzymatic Mode of Action for Cellulase Enzymes by Means of Docking Calculations and a Machine Learning Algorithm
AIMS Molecular Science
Carboxymethyl cellulose
Cellobiohydrolase
Cellobiose
Cellulase
Docking
Endoglucanase
Machine learning
Product inhibition
author_facet Somisetti V. Sambasivarao
David M. Granum
Hua Wang
C. Mark Maupin
author_sort Somisetti V. Sambasivarao
title Identifying the Enzymatic Mode of Action for Cellulase Enzymes by Means of Docking Calculations and a Machine Learning Algorithm
title_short Identifying the Enzymatic Mode of Action for Cellulase Enzymes by Means of Docking Calculations and a Machine Learning Algorithm
title_full Identifying the Enzymatic Mode of Action for Cellulase Enzymes by Means of Docking Calculations and a Machine Learning Algorithm
title_fullStr Identifying the Enzymatic Mode of Action for Cellulase Enzymes by Means of Docking Calculations and a Machine Learning Algorithm
title_full_unstemmed Identifying the Enzymatic Mode of Action for Cellulase Enzymes by Means of Docking Calculations and a Machine Learning Algorithm
title_sort identifying the enzymatic mode of action for cellulase enzymes by means of docking calculations and a machine learning algorithm
publisher AIMS Press
series AIMS Molecular Science
issn 2372-028X
2372-0301
publishDate 2014-01-01
description Docking calculations have been conducted on 36 cellulase enzymes and the results were evaluated by a machine learning algorithm to determine the nature of the enzyme (i.e. endo- or exo- enzymatic activity). The docking calculations have also been used to identify crucial substrate-enzyme interactions, and establish structure-function relationships. The use of carboxymethyl cellulose as a docking substrate is found to correctly identify the endo- or exo- behavior of cellulase enzymes with 92% accuracy while cellobiose docking calculations resulted in an 86% predictive accuracy. The binding distributions for cellobiose have been classified into two distinct types; distributions with a single maximum or distributions with a bi-modal structure. It is found that the uni-modal distributions correspond to exo- type enzyme while a bi-modal substrate docking distribution corresponds to endo- type enzyme. These results indicate that the use of docking calculations and machine learning algorithms are a fast and computationally inexpensive method for predicting if a cellulase enzyme possesses primarily endo- or exo- type behavior, while also revealing critical enzyme-substrate interactions.
topic Carboxymethyl cellulose
Cellobiohydrolase
Cellobiose
Cellulase
Docking
Endoglucanase
Machine learning
Product inhibition
url http://www.aimspress.com/article/10.3934/molsci.2014.1.59/fulltext.html
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