Literature DB >> 17238242

Random forest prediction of mutagenicity from empirical physicochemical descriptors.

Qing-You Zhang1, João Aires-de-Sousa.   

Abstract

Fast-to-calculate empirical physicochemical descriptors were investigated for their ability to predict mutagenicity (positive or negative Ames test) from the molecular structure. Fast methods are highly desired for the screening of large libraries of compounds. Global molecular descriptors and MOLMAP descriptors of bond properties were used to train random forests. Error percentages as low as 15% and 16% were achieved for an external test set with 472 compounds and for the training set with 4083 structures, respectively. High sensitivity and specificity were observed. Random forests were able to associate meaningful probabilities to the predictions and to explain the predictions in terms of similarities between query structures and compounds in the training set.

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Year:  2007        PMID: 17238242     DOI: 10.1021/ci050520j

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  13 in total

1.  Computer-aided design of novel antibacterial 3-hydroxypyridine-4-ones: application of QSAR methods based on the MOLMAP approach.

Authors:  Razieh Sabet; Afshin Fassihi; Bahram Hemmateenejad; Lotfollah Saghaei; Ramin Miri; Maryam Gholami
Journal:  J Comput Aided Mol Des       Date:  2012-03-28       Impact factor: 3.686

Review 2.  Considerations and recent advances in QSAR models for cytochrome P450-mediated drug metabolism prediction.

Authors:  Haiyan Li; Jin Sun; Xiaowen Fan; Xiaofan Sui; Lan Zhang; Yongjun Wang; Zhonggui He
Journal:  J Comput Aided Mol Des       Date:  2008-06-24       Impact factor: 3.686

3.  Machine learning of chemical reactivity from databases of organic reactions.

Authors:  Gonçalo V S M Carrera; Sunil Gupta; João Aires-de-Sousa
Journal:  J Comput Aided Mol Des       Date:  2009-05-26       Impact factor: 3.686

4.  Models for antitubercular activity of 5â-O-[(N-Acyl)sulfamoyl]adenosines.

Authors:  Rakesh K Goyal; Harish Dureja; Gajendra Singh; Anil Kumar Madan
Journal:  Sci Pharm       Date:  2010-08-13

5.  An investigation into pharmaceutically relevant mutagenicity data and the influence on Ames predictive potential.

Authors:  Patrick McCarren; Clayton Springer; Lewis Whitehead
Journal:  J Cheminform       Date:  2011-11-22       Impact factor: 5.514

6.  Diverse models for anti-HIV activity of purine nucleoside analogs.

Authors:  Naveen Khatri; Viney Lather; A K Madan
Journal:  Chem Cent J       Date:  2015-05-23       Impact factor: 4.215

7.  Accurate and efficient target prediction using a potency-sensitive influence-relevance voter.

Authors:  Alessandro Lusci; Michael Browning; David Fooshee; Joshua Swamidass; Pierre Baldi
Journal:  J Cheminform       Date:  2015-12-29       Impact factor: 5.514

8.  1D 13C-NMR data as molecular descriptors in spectra--structure relationship analysis of oligosaccharides.

Authors:  Florbela Pereira
Journal:  Molecules       Date:  2012-03-28       Impact factor: 4.411

9.  Could graph neural networks learn better molecular representation for drug discovery? A comparison study of descriptor-based and graph-based models.

Authors:  Dejun Jiang; Zhenxing Wu; Chang-Yu Hsieh; Guangyong Chen; Ben Liao; Zhe Wang; Chao Shen; Dongsheng Cao; Jian Wu; Tingjun Hou
Journal:  J Cheminform       Date:  2021-02-17       Impact factor: 5.514

10.  In-silico predictive mutagenicity model generation using supervised learning approaches.

Authors:  Abhik Seal; Anurag Passi; Uc Abdul Jaleel; David J Wild
Journal:  J Cheminform       Date:  2012-05-15       Impact factor: 5.514

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