Literature DB >> 24493411

Impact of distance-based metric learning on classification and visualization model performance and structure-activity landscapes.

Natalia V Kireeva1, Svetlana I Ovchinnikova, Sergey L Kuznetsov, Andrey M Kazennov, Aslan Yu Tsivadze.   

Abstract

This study concerns large margin nearest neighbors classifier and its multi-metric extension as the efficient approaches for metric learning which aimed to learn an appropriate distance/similarity function for considered case studies. In recent years, many studies in data mining and pattern recognition have demonstrated that a learned metric can significantly improve the performance in classification, clustering and retrieval tasks. The paper describes application of the metric learning approach to in silico assessment of chemical liabilities. Chemical liabilities, such as adverse effects and toxicity, play a significant role in drug discovery process, in silico assessment of chemical liabilities is an important step aimed to reduce costs and animal testing by complementing or replacing in vitro and in vivo experiments. Here, to our knowledge for the first time, a distance-based metric learning procedures have been applied for in silico assessment of chemical liabilities, the impact of metric learning on structure-activity landscapes and predictive performance of developed models has been analyzed, the learned metric was used in support vector machines. The metric learning results have been illustrated using linear and non-linear data visualization techniques in order to indicate how the change of metrics affected nearest neighbors relations and descriptor space.

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Year:  2014        PMID: 24493411     DOI: 10.1007/s10822-014-9719-1

Source DB:  PubMed          Journal:  J Comput Aided Mol Des        ISSN: 0920-654X            Impact factor:   3.686


  23 in total

Review 1.  ADMET in silico modelling: towards prediction paradise?

Authors:  Han van de Waterbeemd; Eric Gifford
Journal:  Nat Rev Drug Discov       Date:  2003-03       Impact factor: 84.694

2.  Neural network studies. 4. Introduction to associative neural networks.

Authors:  Igor V Tetko
Journal:  J Chem Inf Comput Sci       Date:  2002 May-Jun

3.  Neighborhood behavior of in silico structural spaces with respect to in vitro activity spaces-a novel understanding of the molecular similarity principle in the context of multiple receptor binding profiles.

Authors:  Dragos Horvath; Catherine Jeandenans
Journal:  J Chem Inf Comput Sci       Date:  2003 Mar-Apr

4.  Activity landscape representations for structure-activity relationship analysis.

Authors:  Anne Mai Wassermann; Mathias Wawer; Jürgen Bajorath
Journal:  J Med Chem       Date:  2010-09-16       Impact factor: 7.446

5.  Structure--activity landscape index: identifying and quantifying activity cliffs.

Authors:  Rajarshi Guha; John H Van Drie
Journal:  J Chem Inf Model       Date:  2008-02-28       Impact factor: 4.956

6.  Machine learning methods for property prediction in chemoinformatics: Quo Vadis?

Authors:  Alexandre Varnek; Igor Baskin
Journal:  J Chem Inf Model       Date:  2012-05-25       Impact factor: 4.956

7.  On the interpretation and interpretability of quantitative structure-activity relationship models.

Authors:  Rajarshi Guha
Journal:  J Comput Aided Mol Des       Date:  2008-09-11       Impact factor: 3.686

8.  Towards in silico identification of the human ether-a-go-go-related gene channel blockers: discriminative vs. generative classification models.

Authors:  N Kireeva; S L Kuznetsov; A A Bykov; A Yu Tsivadze
Journal:  SAR QSAR Environ Res       Date:  2012-11-16       Impact factor: 3.000

9.  Generative Topographic Mapping (GTM): Universal Tool for Data Visualization, Structure-Activity Modeling and Dataset Comparison.

Authors:  N Kireeva; I I Baskin; H A Gaspar; D Horvath; G Marcou; A Varnek
Journal:  Mol Inform       Date:  2012-04-04       Impact factor: 3.353

10.  Predicting the mechanism of phospholipidosis.

Authors:  Robert Lowe; Hamse Y Mussa; Florian Nigsch; Robert C Glen; John Bo Mitchell
Journal:  J Cheminform       Date:  2012-01-26       Impact factor: 5.514

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  2 in total

1.  Performance of Machine Learning Algorithms for Qualitative and Quantitative Prediction Drug Blockade of hERG1 channel.

Authors:  Soren Wacker; Sergei Yu Noskov
Journal:  Comput Toxicol       Date:  2017-05-13

2.  Supervised extensions of chemography approaches: case studies of chemical liabilities assessment.

Authors:  Svetlana I Ovchinnikova; Arseniy A Bykov; Aslan Yu Tsivadze; Evgeny P Dyachkov; Natalia V Kireeva
Journal:  J Cheminform       Date:  2014-05-07       Impact factor: 5.514

  2 in total

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