Literature DB >> 11206373

QSAR models using a large diverse set of estrogens.

L M Shi1, H Fang, W Tong, J Wu, R Perkins, R M Blair, W S Branham, S L Dial, C L Moland, D M Sheehan.   

Abstract

Endocrine disruptors (EDs) have a variety of adverse effects in humans and animals. About 58,000 chemicals, most having little safety data, must be tested in a group of tiered assays. As assays will take years, it is important to develop rapid methods to help in priority setting. For application to large data sets, we have developed an integrated system that contains sequential four phases to predict the ability of chemicals to bind to the estrogen receptor (ER), a prevalent mechanism for estrogenic EDs. Here we report the results of evaluating two types of QSAR models for inclusion in phase III to quantitatively predict chemical binding to the ER. Our data set for the relative binding affinities (RBAs) to the ER consists of 130 chemicals covering a wide range of structural diversity and a 6 orders of magnitude spread of RBAs. CoMFA and HQSAR models were constructed and compared for performance. The CoMFA model had a r2 = 0.91 and a q2LOO = 0.66. HQSAR showed reduced performance compared to CoMFA with r2 = 0.76 and q2LOO = 0.59. A number of parameters were examined to improve the CoMFA model. Of these, a phenol indicator increased the q2LOO to 0.71. When up to 50% of the chemicals were left out in the leave-N-out cross-validation, the q2 remained significant. Finally, the models were tested by using two test sets; the q2pred for these were 0.71 and 0.62, a significant result which demonstrates the utility of the CoMFA model for predicting the RBAs of chemicals not included in the training set. If used in conjunction with phases I and II, which reduced the size of the data set dramatically by eliminating most inactive chemicals, the current CoMFA model (phase III) can be used to predict the RBA of chemicals with sufficient accuracy and to provide quantitative information for priority setting.

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Year:  2001        PMID: 11206373     DOI: 10.1021/ci000066d

Source DB:  PubMed          Journal:  J Chem Inf Comput Sci        ISSN: 0095-2338


  39 in total

1.  Computational predictive models for P-glycoprotein inhibition of in-house chalcone derivatives and drug-bank compounds.

Authors:  Trieu-Du Ngo; Thanh-Dao Tran; Minh-Tri Le; Khac-Minh Thai
Journal:  Mol Divers       Date:  2016-07-18       Impact factor: 2.943

2.  Pharmacophore search for anti-fertility and estrogenic potencies of estrogen analogs.

Authors:  Sk Mahasin Alam; Ria Pal; Shuchi Nagar; Md Ataul Islam; Achintya Saha
Journal:  J Mol Model       Date:  2008-07-29       Impact factor: 1.810

3.  The importance of molecular structures, endpoints' values, and predictivity parameters in QSAR research: QSAR analysis of a series of estrogen receptor binders.

Authors:  Jiazhong Li; Paola Gramatica
Journal:  Mol Divers       Date:  2009-11-17       Impact factor: 2.943

4.  Nonlinear QSAR modeling for predicting cytotoxicity of ionic liquids in leukemia rat cell line: an aid to green chemicals designing.

Authors:  Shikha Gupta; Nikita Basant; Kunwar P Singh
Journal:  Environ Sci Pollut Res Int       Date:  2015-04-28       Impact factor: 4.223

5.  Modeling the binding affinity of structurally diverse industrial chemicals to carbon using the artificial intelligence approaches.

Authors:  Shikha Gupta; Nikita Basant; Premanjali Rai; Kunwar P Singh
Journal:  Environ Sci Pollut Res Int       Date:  2015-07-11       Impact factor: 4.223

6.  Acute aquatic toxicity of organic solvents modeled by QSARs.

Authors:  A Levet; C Bordes; Y Clément; P Mignon; C Morell; H Chermette; P Marote; P Lantéri
Journal:  J Mol Model       Date:  2016-11-09       Impact factor: 1.810

7.  QSAR model based on weighted MCS trees approach for the representation of molecule data sets.

Authors:  Bernardo Palacios-Bejarano; Gonzalo Cerruela García; Irene Luque Ruiz; Miguel Ángel Gómez-Nieto
Journal:  J Comput Aided Mol Des       Date:  2013-02-06       Impact factor: 3.686

8.  Discovery of novel urokinase plasminogen activator (uPA) inhibitors using ligand-based modeling and virtual screening followed by in vitro analysis.

Authors:  Mahmoud A Al-Sha'er; Mohammad A Khanfar; Mutasem O Taha
Journal:  J Mol Model       Date:  2014-01-28       Impact factor: 1.810

9.  In silico prediction of the developmental toxicity of diverse organic chemicals in rodents for regulatory purposes.

Authors:  Nikita Basant; Shikha Gupta; Kunwar P Singh
Journal:  Toxicol Res (Camb)       Date:  2016-02-29       Impact factor: 3.524

10.  Modeling the toxicity of chemical pesticides in multiple test species using local and global QSTR approaches.

Authors:  Nikita Basant; Shikha Gupta; Kunwar P Singh
Journal:  Toxicol Res (Camb)       Date:  2015-12-10       Impact factor: 3.524

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