Literature DB >> 23856075

Predicting carcinogenicity of diverse chemicals using probabilistic neural network modeling approaches.

Kunwar P Singh1, Shikha Gupta, Premanjali Rai.   

Abstract

Robust global models capable of discriminating positive and non-positive carcinogens; and predicting carcinogenic potency of chemicals in rodents were developed. The dataset of 834 structurally diverse chemicals extracted from Carcinogenic Potency Database (CPDB) was used which contained 466 positive and 368 non-positive carcinogens. Twelve non-quantum mechanical molecular descriptors were derived. Structural diversity of the chemicals and nonlinearity in the data were evaluated using Tanimoto similarity index and Brock-Dechert-Scheinkman statistics. Probabilistic neural network (PNN) and generalized regression neural network (GRNN) models were constructed for classification and function optimization problems using the carcinogenicity end point in rat. Validation of the models was performed using the internal and external procedures employing a wide series of statistical checks. PNN constructed using five descriptors rendered classification accuracy of 92.09% in complete rat data. The PNN model rendered classification accuracies of 91.77%, 80.70% and 92.08% in mouse, hamster and pesticide data, respectively. The GRNN constructed with nine descriptors yielded correlation coefficient of 0.896 between the measured and predicted carcinogenic potency with mean squared error (MSE) of 0.44 in complete rat data. The rat carcinogenicity model (GRNN) applied to the mouse and hamster data yielded correlation coefficient and MSE of 0.758, 0.71 and 0.760, 0.46, respectively. The results suggest for wide applicability of the inter-species models in predicting carcinogenic potency of chemicals. Both the PNN and GRNN (inter-species) models constructed here can be useful tools in predicting the carcinogenicity of new chemicals for regulatory purposes.
© 2013.

Entities:  

Keywords:  Carcinogenicity; Diversity; Generalized regression neural network; Interspecies model; Molecular descriptors; Probabilistic neural network

Mesh:

Substances:

Year:  2013        PMID: 23856075     DOI: 10.1016/j.taap.2013.06.029

Source DB:  PubMed          Journal:  Toxicol Appl Pharmacol        ISSN: 0041-008X            Impact factor:   4.219


  8 in total

1.  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

2.  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

3.  Estimating sensory irritation potency of volatile organic chemicals using QSARs based on decision tree methods for regulatory purpose.

Authors:  Shikha Gupta; Nikita Basant; Kunwar P Singh
Journal:  Ecotoxicology       Date:  2015-02-24       Impact factor: 2.823

4.  Artificial intelligence uncovers carcinogenic human metabolites.

Authors:  Aayushi Mittal; Sanjay Kumar Mohanty; Vishakha Gautam; Sakshi Arora; Sheetanshu Saproo; Ria Gupta; Roshan Sivakumar; Prakriti Garg; Anmol Aggarwal; Padmasini Raghavachary; Nilesh Kumar Dixit; Vijay Pal Singh; Anurag Mehta; Juhi Tayal; Srivatsava Naidu; Debarka Sengupta; Gaurav Ahuja
Journal:  Nat Chem Biol       Date:  2022-08-11       Impact factor: 16.174

5.  A graph neural network approach for molecule carcinogenicity prediction.

Authors:  Philip Fradkin; Adamo Young; Lazar Atanackovic; Brendan Frey; Leo J Lee; Bo Wang
Journal:  Bioinformatics       Date:  2022-06-24       Impact factor: 6.931

6.  Lopinavir Resistance Classification with Imbalanced Data Using Probabilistic Neural Networks.

Authors:  Letícia M Raposo; Mônica B Arruda; Rodrigo M de Brindeiro; Flavio F Nobre
Journal:  J Med Syst       Date:  2016-01-06       Impact factor: 4.460

Review 7.  In Silico Prediction of Chemical Toxicity for Drug Design Using Machine Learning Methods and Structural Alerts.

Authors:  Hongbin Yang; Lixia Sun; Weihua Li; Guixia Liu; Yun Tang
Journal:  Front Chem       Date:  2018-02-20       Impact factor: 5.221

8.  CarcinoPred-EL: Novel models for predicting the carcinogenicity of chemicals using molecular fingerprints and ensemble learning methods.

Authors:  Li Zhang; Haixin Ai; Wen Chen; Zimo Yin; Huan Hu; Junfeng Zhu; Jian Zhao; Qi Zhao; Hongsheng Liu
Journal:  Sci Rep       Date:  2017-05-18       Impact factor: 4.379

  8 in total

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