Literature DB >> 10955523

Neural network modeling for estimation of partition coefficient based on atom-type electrotopological state indices

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Abstract

A method for predicting log P values for a diverse set of 1870 organic molecules has been developed based on atom-type electrotopological-state (E-state) indices and neural network modeling. An extended set of E-state indices, which included specific indices with a more detailed description of amino, carbonyl, and hydroxy groups, was used in the current study. For the training set of 1754 molecules the squared correlation coefficient and root-mean-squared error were r2 = 0.90 and RMS(LOO) = 0.46, respectively. Structural parameters which included molecular weight and 38 atom-type E-state indices were used as the inputs in 39-5-1 artificial neural networks. The results from multilinear regression analysis were r2 = 0.87 and RMS(LOO) = 0.55, respectively. For a test set of 35 nucleosides, 12 nucleoside bases, 19 drug compounds, and 50 general organic compounds (n = 116) not included in the training set, a predictive r2 = 0.94 and RMS = 0.41 were calculated by artificial neural networks. The results for the same set by multilinear regression were r2 = 0.86 and RMS = 0.72. The improved prediction ability of artificial neural networks can be attributed to the nonlinear properties of this method that allowed the detection of high-order relationships between E-state indices and the n-octanol/water partition coefficient. The present approach was found to be an accurate and fast method that can be used for the reliable estimation of log P values for even the most complex structures.

Entities:  

Year:  2000        PMID: 10955523     DOI: 10.1021/ci9904261

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


  9 in total

1.  Simultaneous prediction of aqueous solubility and octanol/water partition coefficient based on descriptors derived from molecular structure.

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Journal:  J Comput Aided Mol Des       Date:  2001-08       Impact factor: 3.686

2.  Substructure and whole molecule approaches for calculating log P.

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Authors:  Igor V Tetko; Johann Gasteiger; Roberto Todeschini; Andrea Mauri; David Livingstone; Peter Ertl; Vladimir A Palyulin; Eugene V Radchenko; Nikolay S Zefirov; Alexander S Makarenko; Vsevolod Yu Tanchuk; Volodymyr V Prokopenko
Journal:  J Comput Aided Mol Des       Date:  2005-06       Impact factor: 3.686

5.  Automated QSPR through Competitive Workflow.

Authors:  J Cartmell; S Enoch; D Krstajic; D E Leahy
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6.  QSAR modeling of AT1 receptor antagonists using ANN.

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7.  Transformer-CNN: Swiss knife for QSAR modeling and interpretation.

Authors:  Pavel Karpov; Guillaume Godin; Igor V Tetko
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8.  ClassicalGSG: Prediction of log P using classical molecular force fields and geometric scattering for graphs.

Authors:  Nazanin Donyapour; Matthew Hirn; Alex Dickson
Journal:  J Comput Chem       Date:  2021-03-30       Impact factor: 3.672

9.  Matched Molecular Pair Analysis on Large Melting Point Datasets: A Big Data Perspective.

Authors:  Michael Withnall; Hongming Chen; Igor V Tetko
Journal:  ChemMedChem       Date:  2017-08-23       Impact factor: 3.466

  9 in total

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