Artificial neural network prediction of quantitative structure - retention relationships of polycyclic aromatic hydocarbons in gas chromatography

A feed-forward artificial neural network (ANN) model was used to link molecular structures (boiling points, connectivity indices and molecular weights) and retention indices of polycyclic aromatic hydrocarbons (PAHs) in linear temperature-programmed gas chromatography. A randomly taken subset of PAH...

Full description

Bibliographic Details
Main Authors: SNEZANA SREMAC, BILJANA SKRBIC, ANTONIJE ONJIA
Format: Article
Language:English
Published: Serbian Chemical Society 2005-11-01
Series:Journal of the Serbian Chemical Society
Subjects:
GC
ANN
Online Access:http://www.shd.org.yu/HtDocs/SHD/vol70/No11/JSCS_V70_No11-07.pdf
id doaj-1caaa430279d433db20cd08e63b77e5b
record_format Article
spelling doaj-1caaa430279d433db20cd08e63b77e5b2020-11-25T01:57:00ZengSerbian Chemical Society Journal of the Serbian Chemical Society0352-51392005-11-01701112911300Artificial neural network prediction of quantitative structure - retention relationships of polycyclic aromatic hydocarbons in gas chromatographySNEZANA SREMACBILJANA SKRBICANTONIJE ONJIAA feed-forward artificial neural network (ANN) model was used to link molecular structures (boiling points, connectivity indices and molecular weights) and retention indices of polycyclic aromatic hydrocarbons (PAHs) in linear temperature-programmed gas chromatography. A randomly taken subset of PAH retention data reported by Lee et al. [Anal. Chem. 51 (1979) 768], containing retention index data for 30 PAHs, was used to make the ANN model. The prediction ability of the trained ANN was tested on unseen data for 18 PAHs from the same article, as well as on the retention data for 7 PAHs experimentally obtained in this work. In addition, two different data sets with known retention indices taken from the literature were analyzed by the same ANN model. It has been shown that the relative accuracy as the degree of agreement between the measured and the predicted retention indices in all testing sets, for most of the studied PAHs, were within the experimental error margins (±3%).http://www.shd.org.yu/HtDocs/SHD/vol70/No11/JSCS_V70_No11-07.pdfretention indexGCANNPAHsQSRRmolecular descriptors.
collection DOAJ
language English
format Article
sources DOAJ
author SNEZANA SREMAC
BILJANA SKRBIC
ANTONIJE ONJIA
spellingShingle SNEZANA SREMAC
BILJANA SKRBIC
ANTONIJE ONJIA
Artificial neural network prediction of quantitative structure - retention relationships of polycyclic aromatic hydocarbons in gas chromatography
Journal of the Serbian Chemical Society
retention index
GC
ANN
PAHs
QSRR
molecular descriptors.
author_facet SNEZANA SREMAC
BILJANA SKRBIC
ANTONIJE ONJIA
author_sort SNEZANA SREMAC
title Artificial neural network prediction of quantitative structure - retention relationships of polycyclic aromatic hydocarbons in gas chromatography
title_short Artificial neural network prediction of quantitative structure - retention relationships of polycyclic aromatic hydocarbons in gas chromatography
title_full Artificial neural network prediction of quantitative structure - retention relationships of polycyclic aromatic hydocarbons in gas chromatography
title_fullStr Artificial neural network prediction of quantitative structure - retention relationships of polycyclic aromatic hydocarbons in gas chromatography
title_full_unstemmed Artificial neural network prediction of quantitative structure - retention relationships of polycyclic aromatic hydocarbons in gas chromatography
title_sort artificial neural network prediction of quantitative structure - retention relationships of polycyclic aromatic hydocarbons in gas chromatography
publisher Serbian Chemical Society
series Journal of the Serbian Chemical Society
issn 0352-5139
publishDate 2005-11-01
description A feed-forward artificial neural network (ANN) model was used to link molecular structures (boiling points, connectivity indices and molecular weights) and retention indices of polycyclic aromatic hydrocarbons (PAHs) in linear temperature-programmed gas chromatography. A randomly taken subset of PAH retention data reported by Lee et al. [Anal. Chem. 51 (1979) 768], containing retention index data for 30 PAHs, was used to make the ANN model. The prediction ability of the trained ANN was tested on unseen data for 18 PAHs from the same article, as well as on the retention data for 7 PAHs experimentally obtained in this work. In addition, two different data sets with known retention indices taken from the literature were analyzed by the same ANN model. It has been shown that the relative accuracy as the degree of agreement between the measured and the predicted retention indices in all testing sets, for most of the studied PAHs, were within the experimental error margins (±3%).
topic retention index
GC
ANN
PAHs
QSRR
molecular descriptors.
url http://www.shd.org.yu/HtDocs/SHD/vol70/No11/JSCS_V70_No11-07.pdf
work_keys_str_mv AT snezanasremac artificialneuralnetworkpredictionofquantitativestructureretentionrelationshipsofpolycyclicaromatichydocarbonsingaschromatography
AT biljanaskrbic artificialneuralnetworkpredictionofquantitativestructureretentionrelationshipsofpolycyclicaromatichydocarbonsingaschromatography
AT antonijeonjia artificialneuralnetworkpredictionofquantitativestructureretentionrelationshipsofpolycyclicaromatichydocarbonsingaschromatography
_version_ 1724977092593975296