Literature DB >> 12767167

Prediction of aqueous solubility and partition coefficient optimized by a genetic algorithm based descriptor selection method.

Jörg K Wegner1, Andreas Zell.   

Abstract

The paper describes a fast and flexible descriptor selection method using a genetic algorithm variant (GA-SEC). The relevance of the descriptors will be measured using Shannon entropy (SE) and differential Shannon entropy (DSE), which have very sparse memory requirements and allow the processing of huge data sets. A small quantity of the most important descriptors will be used automatically to build a value prediction model. The most important descriptors are not a linear combination of other descriptors, but transparent, pure descriptors. We used an artificial neural network (ANN) model to predict the aqueous solubility logS and the octanol/water partition coefficient logP. The logS data set was divided into a training set of 1016 compounds and a test set of 253 compounds. A correlation coefficient of 0.93 and an empirical standard deviation of 0.54 were achieved. The logP data set was divided into a training set of 1853 compounds and a test set of 138 compounds. A correlation coefficient of 0.92 and an empirical standard deviation of 0.44 were achieved.

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Year:  2003        PMID: 12767167     DOI: 10.1021/ci034006u

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


  10 in total

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Review 2.  Recent progress in the computational prediction of aqueous solubility and absorption.

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5.  Multi-space classification for predicting GPCR-ligands.

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Journal:  Mol Divers       Date:  2005       Impact factor: 2.943

6.  Prediction of pharmacokinetic parameters using a genetic algorithm combined with an artificial neural network for a series of alkaloid drugs.

Authors:  Majid Zandkarimi; Mohammad Shafiei; Farzin Hadizadeh; Mohammad Ali Darbandi; Kaveh Tabrizian
Journal:  Sci Pharm       Date:  2013-09-22

7.  Descriptor Selection via Log-Sum Regularization for the Biological Activities of Chemical Structure.

Authors:  Liang-Yong Xia; Yu-Wei Wang; De-Yu Meng; Xiao-Jun Yao; Hua Chai; Yong Liang
Journal:  Int J Mol Sci       Date:  2017-12-22       Impact factor: 5.923

8.  Pruned Machine Learning Models to Predict Aqueous Solubility.

Authors:  Alexander L Perryman; Daigo Inoyama; Jimmy S Patel; Sean Ekins; Joel S Freundlich
Journal:  ACS Omega       Date:  2020-07-01

9.  Prediction of aqueous intrinsic solubility of druglike molecules using Random Forest regression trained with Wiki-pS0 database.

Authors:  Alex Avdeef
Journal:  ADMET DMPK       Date:  2020-03-04

10.  Simultaneous feature selection and parameter optimisation using an artificial ant colony: case study of melting point prediction.

Authors:  Noel M O'Boyle; David S Palmer; Florian Nigsch; John Bo Mitchell
Journal:  Chem Cent J       Date:  2008-10-29       Impact factor: 4.215

  10 in total

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