Prediction of selective estrogen receptor beta agonist using open data and machine learning approach

Ai-qin Niu,1 Liang-jun Xie,2 Hui Wang,1 Bing Zhu,1 Sheng-qi Wang3 1Department of Gynecology, the First People’s Hospital of Shangqiu, Shangqiu, Henan, People’s Republic of China; 2Department of Image Diagnoses, the Third Hospital of Jinan, Jinan, Shandong, People’s Rep...

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Main Authors: Niu AQ, Xie LJ, Wang H, Zhu B, Wang SQ
Format: Article
Language:English
Published: Dove Medical Press 2016-07-01
Series:Drug Design, Development and Therapy
Subjects:
Online Access:https://www.dovepress.com/prediction-of-selective-estrogen-receptor-beta-agonist-using-open-data-peer-reviewed-article-DDDT
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spelling doaj-0d4226b7747c4a8ea9738925243f16d62020-11-24T23:29:31ZengDove Medical PressDrug Design, Development and Therapy1177-88812016-07-012016Issue 12323233127938Prediction of selective estrogen receptor beta agonist using open data and machine learning approachNiu AQXie LJWang HZhu BWang SQAi-qin Niu,1 Liang-jun Xie,2 Hui Wang,1 Bing Zhu,1 Sheng-qi Wang3 1Department of Gynecology, the First People’s Hospital of Shangqiu, Shangqiu, Henan, People’s Republic of China; 2Department of Image Diagnoses, the Third Hospital of Jinan, Jinan, Shandong, People’s Republic of China; 3Department of Mammary Disease, Guangdong Provincial Hospital of Chinese Medicine, the Second Clinical College of Guangzhou University of Chinese Medicine, Guangzhou, People’s Republic of China Background: Estrogen receptors (ERs) are nuclear transcription factors that are involved in the regulation of many complex physiological processes in humans. ERs have been validated as important drug targets for the treatment of various diseases, including breast cancer, ovarian cancer, osteoporosis, and cardiovascular disease. ERs have two subtypes, ER-α and ER-β. Emerging data suggest that the development of subtype-selective ligands that specifically target ER-β could be a more optimal approach to elicit beneficial estrogen-like activities and reduce side effects. Methods: Herein, we focused on ER-β and developed its in silico quantitative structure-activity relationship models using machine learning (ML) methods. Results: The chemical structures and ER-β bioactivity data were extracted from public chemogenomics databases. Four types of popular fingerprint generation methods including MACCS fingerprint, PubChem fingerprint, 2D atom pairs, and Chemistry Development Kit extended fingerprint were used as descriptors. Four ML methods including Naïve Bayesian classifier, k-nearest neighbor, random forest, and support vector machine were used to train the models. The range of classification accuracies was 77.10% to 88.34%, and the range of area under the ROC (receiver operating characteristic) curve values was 0.8151 to 0.9475, evaluated by the 5-fold cross-validation. Comparison analysis suggests that both the random forest and the support vector machine are superior for the classification of selective ER-β agonists. Chemistry Development Kit extended fingerprints and MACCS fingerprint performed better in structural representation between active and inactive agonists. Conclusion: These results demonstrate that combining the fingerprint and ML approaches leads to robust ER-β agonist prediction models, which are potentially applicable to the identification of selective ER-β agonists. Keywords: estrogen receptor subtype β, selective estrogen receptor modulators, quantitative structure-activity relationship models, machine learning approachhttps://www.dovepress.com/prediction-of-selective-estrogen-receptor-beta-agonist-using-open-data-peer-reviewed-article-DDDTEstrogen receptor subtype βSelective estrogen receptor modulatorsAgonistQuantitative structure-activity relationship modelsMachine Learning Approach
collection DOAJ
language English
format Article
sources DOAJ
author Niu AQ
Xie LJ
Wang H
Zhu B
Wang SQ
spellingShingle Niu AQ
Xie LJ
Wang H
Zhu B
Wang SQ
Prediction of selective estrogen receptor beta agonist using open data and machine learning approach
Drug Design, Development and Therapy
Estrogen receptor subtype β
Selective estrogen receptor modulators
Agonist
Quantitative structure-activity relationship models
Machine Learning Approach
author_facet Niu AQ
Xie LJ
Wang H
Zhu B
Wang SQ
author_sort Niu AQ
title Prediction of selective estrogen receptor beta agonist using open data and machine learning approach
title_short Prediction of selective estrogen receptor beta agonist using open data and machine learning approach
title_full Prediction of selective estrogen receptor beta agonist using open data and machine learning approach
title_fullStr Prediction of selective estrogen receptor beta agonist using open data and machine learning approach
title_full_unstemmed Prediction of selective estrogen receptor beta agonist using open data and machine learning approach
title_sort prediction of selective estrogen receptor beta agonist using open data and machine learning approach
publisher Dove Medical Press
series Drug Design, Development and Therapy
issn 1177-8881
publishDate 2016-07-01
description Ai-qin Niu,1 Liang-jun Xie,2 Hui Wang,1 Bing Zhu,1 Sheng-qi Wang3 1Department of Gynecology, the First People’s Hospital of Shangqiu, Shangqiu, Henan, People’s Republic of China; 2Department of Image Diagnoses, the Third Hospital of Jinan, Jinan, Shandong, People’s Republic of China; 3Department of Mammary Disease, Guangdong Provincial Hospital of Chinese Medicine, the Second Clinical College of Guangzhou University of Chinese Medicine, Guangzhou, People’s Republic of China Background: Estrogen receptors (ERs) are nuclear transcription factors that are involved in the regulation of many complex physiological processes in humans. ERs have been validated as important drug targets for the treatment of various diseases, including breast cancer, ovarian cancer, osteoporosis, and cardiovascular disease. ERs have two subtypes, ER-α and ER-β. Emerging data suggest that the development of subtype-selective ligands that specifically target ER-β could be a more optimal approach to elicit beneficial estrogen-like activities and reduce side effects. Methods: Herein, we focused on ER-β and developed its in silico quantitative structure-activity relationship models using machine learning (ML) methods. Results: The chemical structures and ER-β bioactivity data were extracted from public chemogenomics databases. Four types of popular fingerprint generation methods including MACCS fingerprint, PubChem fingerprint, 2D atom pairs, and Chemistry Development Kit extended fingerprint were used as descriptors. Four ML methods including Naïve Bayesian classifier, k-nearest neighbor, random forest, and support vector machine were used to train the models. The range of classification accuracies was 77.10% to 88.34%, and the range of area under the ROC (receiver operating characteristic) curve values was 0.8151 to 0.9475, evaluated by the 5-fold cross-validation. Comparison analysis suggests that both the random forest and the support vector machine are superior for the classification of selective ER-β agonists. Chemistry Development Kit extended fingerprints and MACCS fingerprint performed better in structural representation between active and inactive agonists. Conclusion: These results demonstrate that combining the fingerprint and ML approaches leads to robust ER-β agonist prediction models, which are potentially applicable to the identification of selective ER-β agonists. Keywords: estrogen receptor subtype β, selective estrogen receptor modulators, quantitative structure-activity relationship models, machine learning approach
topic Estrogen receptor subtype β
Selective estrogen receptor modulators
Agonist
Quantitative structure-activity relationship models
Machine Learning Approach
url https://www.dovepress.com/prediction-of-selective-estrogen-receptor-beta-agonist-using-open-data-peer-reviewed-article-DDDT
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