Literature DB >> 14632438

Electronic van der Waals surface property descriptors and genetic algorithms for developing structure-activity correlations in olfactory databases.

Barry K Lavine1, Charles E Davidson, Curt Breneman, William Katt, C Matthew Sundling.   

Abstract

A methodology to facilitate the intelligent design of new odorants (e.g., musks) with specialized properties has been developed as part of an ongoing research effort in machine learning. In a traditional framework, the introduction of a new odorant is a lengthy, costly, and laborious discovery, development, and testing process. We propose to streamline this process utilizing large existing olfactory databases available through the open scientific literature as input for a new structure/activity correlation methodology. The first step in this process is to characterize each molecule in the database by an appropriate set of descriptors. To accomplish this task, an enhanced version of Breneman's Transferable Atom Equivalent (TAE) descriptor methodology will be used to create a large set of electron density derived shape/property hybrid (PEST), wavelet coefficient (WCD), and TAE histogram descriptors. We have chosen these molecular property descriptors to represent the problem because they have been shown to contain pertinent shape and electronic properties of the molecule and correlate with key modes of intermolecular interactions. Traditional QSAR methodologies, which employ fragment based descriptors, have been shown to be effective for QSAR development within homologous sets of molecules but are less effective when applied to data sets containing a great deal of structural variation. In contrast to previous attempts at SAR, our use of shape-aware electron density based molecular property descriptors has removed many of the limitations brought about by the use of descriptors based on substructure fragments, molecular surface properties, or other whole molecule descriptors. Another reason for the mixed success of past QSAR efforts can be traced to the nature of the underlying modeling problem, which is often quite complex. To meet these challenges, a genetic algorithm for pattern recognition analysis has been developed that selects descriptors which create class separation in a plot of the two largest principal components of the data while simultaneously searching for features that increase clustering of the data.

Entities:  

Year:  2003        PMID: 14632438     DOI: 10.1021/ci030016j

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


  7 in total

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2.  Shape signatures: new descriptors for predicting cardiotoxicity in silico.

Authors:  Dmitriy S Chekmarev; Vladyslav Kholodovych; Konstantin V Balakin; Yan Ivanenkov; Sean Ekins; William J Welsh
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Review 3.  The importance of discerning shape in molecular pharmacology.

Authors:  Sandhya Kortagere; Matthew D Krasowski; Sean Ekins
Journal:  Trends Pharmacol Sci       Date:  2009-01-31       Impact factor: 14.819

4.  QSAR studies of the antioxidant activity of anthocyanins.

Authors:  Pablo R Duchowicz; Nicolás A Szewczuk; Alicia B Pomilio
Journal:  J Food Sci Technol       Date:  2019-08-17       Impact factor: 2.701

5.  Ion mobility-mass spectrometry analysis of serum N-linked glycans from esophageal adenocarcinoma phenotypes.

Authors:  M M Gaye; S J Valentine; Y Hu; N Mirjankar; Z T Hammoud; Y Mechref; B K Lavine; D E Clemmer
Journal:  J Proteome Res       Date:  2012-11-05       Impact factor: 4.466

6.  Ligand Specificity and Evolution of Mammalian Musk Odor Receptors: Effect of Single Receptor Deletion on Odor Detection.

Authors:  Narumi Sato-Akuhara; Nao Horio; Aya Kato-Namba; Keiichi Yoshikawa; Yoshihito Niimura; Sayoko Ihara; Mika Shirasu; Kazushige Touhara
Journal:  J Neurosci       Date:  2016-04-20       Impact factor: 6.167

7.  Predicting olfactory receptor neuron responses from odorant structure.

Authors:  Michael Schmuker; Marien de Bruyne; Melanie Hähnel; Gisbert Schneider
Journal:  Chem Cent J       Date:  2007-05-04       Impact factor: 4.215

  7 in total

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