Cargando…

In Silico Prediction of O(6)-Methylguanine-DNA Methyltransferase Inhibitory Potency of Base Analogs with QSAR and Machine Learning Methods

O(6)-methylguanine-DNA methyltransferase (MGMT), a unique DNA repair enzyme, can confer resistance to DNA anticancer alkylating agents that modify the O(6)-position of guanine. Thus, inhibition of MGMT activity in tumors has a great interest for cancer researchers because it can significantly improv...

Descripción completa

Detalles Bibliográficos
Autores principales: Sun, Guohui, Fan, Tengjiao, Sun, Xiaodong, Hao, Yuxing, Cui, Xin, Zhao, Lijiao, Ren, Ting, Zhou, Yue, Zhong, Rugang, Peng, Yongzhen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6278368/
https://www.ncbi.nlm.nih.gov/pubmed/30404161
http://dx.doi.org/10.3390/molecules23112892
_version_ 1783378349650870272
author Sun, Guohui
Fan, Tengjiao
Sun, Xiaodong
Hao, Yuxing
Cui, Xin
Zhao, Lijiao
Ren, Ting
Zhou, Yue
Zhong, Rugang
Peng, Yongzhen
author_facet Sun, Guohui
Fan, Tengjiao
Sun, Xiaodong
Hao, Yuxing
Cui, Xin
Zhao, Lijiao
Ren, Ting
Zhou, Yue
Zhong, Rugang
Peng, Yongzhen
author_sort Sun, Guohui
collection PubMed
description O(6)-methylguanine-DNA methyltransferase (MGMT), a unique DNA repair enzyme, can confer resistance to DNA anticancer alkylating agents that modify the O(6)-position of guanine. Thus, inhibition of MGMT activity in tumors has a great interest for cancer researchers because it can significantly improve the anticancer efficacy of such alkylating agents. In this study, we performed a quantitative structure activity relationship (QSAR) and classification study based on a total of 134 base analogs related to their ED(50) values (50% inhibitory concentration) against MGMT. Molecular information of all compounds were described by quantum chemical descriptors and Dragon descriptors. Genetic algorithm (GA) and multiple linear regression (MLR) analysis were combined to develop QSAR models. Classification models were generated by seven machine-learning methods based on six types of molecular fingerprints. Performances of all developed models were assessed by internal and external validation techniques. The best QSAR model was obtained with Q(2)(Loo) = 0.83, R(2) = 0.87, Q(2)(ext) = 0.67, and R(2)(ext) = 0.69 based on 84 compounds. The results from QSAR studies indicated topological charge indices, polarizability, ionization potential (IP), and number of primary aromatic amines are main contributors for MGMT inhibition of base analogs. For classification studies, the accuracies of 10-fold cross-validation ranged from 0.750 to 0.885 for top ten models. The range of accuracy for the external test set ranged from 0.800 to 0.880 except for PubChem-Tree model, suggesting a satisfactory predictive ability. Three models (Ext-SVM, Ext-Tree and Graph-RF) showed high and reliable predictive accuracy for both training and external test sets. In addition, several representative substructures for characterizing MGMT inhibitors were identified by information gain and substructure frequency analysis method. Our studies might be useful for further study to design and rapidly identify potential MGMT inhibitors.
format Online
Article
Text
id pubmed-6278368
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-62783682018-12-13 In Silico Prediction of O(6)-Methylguanine-DNA Methyltransferase Inhibitory Potency of Base Analogs with QSAR and Machine Learning Methods Sun, Guohui Fan, Tengjiao Sun, Xiaodong Hao, Yuxing Cui, Xin Zhao, Lijiao Ren, Ting Zhou, Yue Zhong, Rugang Peng, Yongzhen Molecules Article O(6)-methylguanine-DNA methyltransferase (MGMT), a unique DNA repair enzyme, can confer resistance to DNA anticancer alkylating agents that modify the O(6)-position of guanine. Thus, inhibition of MGMT activity in tumors has a great interest for cancer researchers because it can significantly improve the anticancer efficacy of such alkylating agents. In this study, we performed a quantitative structure activity relationship (QSAR) and classification study based on a total of 134 base analogs related to their ED(50) values (50% inhibitory concentration) against MGMT. Molecular information of all compounds were described by quantum chemical descriptors and Dragon descriptors. Genetic algorithm (GA) and multiple linear regression (MLR) analysis were combined to develop QSAR models. Classification models were generated by seven machine-learning methods based on six types of molecular fingerprints. Performances of all developed models were assessed by internal and external validation techniques. The best QSAR model was obtained with Q(2)(Loo) = 0.83, R(2) = 0.87, Q(2)(ext) = 0.67, and R(2)(ext) = 0.69 based on 84 compounds. The results from QSAR studies indicated topological charge indices, polarizability, ionization potential (IP), and number of primary aromatic amines are main contributors for MGMT inhibition of base analogs. For classification studies, the accuracies of 10-fold cross-validation ranged from 0.750 to 0.885 for top ten models. The range of accuracy for the external test set ranged from 0.800 to 0.880 except for PubChem-Tree model, suggesting a satisfactory predictive ability. Three models (Ext-SVM, Ext-Tree and Graph-RF) showed high and reliable predictive accuracy for both training and external test sets. In addition, several representative substructures for characterizing MGMT inhibitors were identified by information gain and substructure frequency analysis method. Our studies might be useful for further study to design and rapidly identify potential MGMT inhibitors. MDPI 2018-11-06 /pmc/articles/PMC6278368/ /pubmed/30404161 http://dx.doi.org/10.3390/molecules23112892 Text en © 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Sun, Guohui
Fan, Tengjiao
Sun, Xiaodong
Hao, Yuxing
Cui, Xin
Zhao, Lijiao
Ren, Ting
Zhou, Yue
Zhong, Rugang
Peng, Yongzhen
In Silico Prediction of O(6)-Methylguanine-DNA Methyltransferase Inhibitory Potency of Base Analogs with QSAR and Machine Learning Methods
title In Silico Prediction of O(6)-Methylguanine-DNA Methyltransferase Inhibitory Potency of Base Analogs with QSAR and Machine Learning Methods
title_full In Silico Prediction of O(6)-Methylguanine-DNA Methyltransferase Inhibitory Potency of Base Analogs with QSAR and Machine Learning Methods
title_fullStr In Silico Prediction of O(6)-Methylguanine-DNA Methyltransferase Inhibitory Potency of Base Analogs with QSAR and Machine Learning Methods
title_full_unstemmed In Silico Prediction of O(6)-Methylguanine-DNA Methyltransferase Inhibitory Potency of Base Analogs with QSAR and Machine Learning Methods
title_short In Silico Prediction of O(6)-Methylguanine-DNA Methyltransferase Inhibitory Potency of Base Analogs with QSAR and Machine Learning Methods
title_sort in silico prediction of o(6)-methylguanine-dna methyltransferase inhibitory potency of base analogs with qsar and machine learning methods
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6278368/
https://www.ncbi.nlm.nih.gov/pubmed/30404161
http://dx.doi.org/10.3390/molecules23112892
work_keys_str_mv AT sunguohui insilicopredictionofo6methylguaninednamethyltransferaseinhibitorypotencyofbaseanalogswithqsarandmachinelearningmethods
AT fantengjiao insilicopredictionofo6methylguaninednamethyltransferaseinhibitorypotencyofbaseanalogswithqsarandmachinelearningmethods
AT sunxiaodong insilicopredictionofo6methylguaninednamethyltransferaseinhibitorypotencyofbaseanalogswithqsarandmachinelearningmethods
AT haoyuxing insilicopredictionofo6methylguaninednamethyltransferaseinhibitorypotencyofbaseanalogswithqsarandmachinelearningmethods
AT cuixin insilicopredictionofo6methylguaninednamethyltransferaseinhibitorypotencyofbaseanalogswithqsarandmachinelearningmethods
AT zhaolijiao insilicopredictionofo6methylguaninednamethyltransferaseinhibitorypotencyofbaseanalogswithqsarandmachinelearningmethods
AT renting insilicopredictionofo6methylguaninednamethyltransferaseinhibitorypotencyofbaseanalogswithqsarandmachinelearningmethods
AT zhouyue insilicopredictionofo6methylguaninednamethyltransferaseinhibitorypotencyofbaseanalogswithqsarandmachinelearningmethods
AT zhongrugang insilicopredictionofo6methylguaninednamethyltransferaseinhibitorypotencyofbaseanalogswithqsarandmachinelearningmethods
AT pengyongzhen insilicopredictionofo6methylguaninednamethyltransferaseinhibitorypotencyofbaseanalogswithqsarandmachinelearningmethods