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Toxicological evaluation of complex mixtures by pattern recognition: correlating chemical fingerprints to mutagenicity.

We describe the use of pattern recognition and multivariate regression in the assessment of complex mixtures by correlating chemical fingerprints to the mutagenicity of the mixtures. Mixtures were 20 organic extracts of exhaust particles, each containing 102-170 individual compounds such as polycycl...

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Autores principales: Eide, Ingvar, Neverdal, Gunhild, Thorvaldsen, Bodil, Grung, Bjørn, Kvalheim, Olav M
Formato: Texto
Lenguaje:English
Publicado: 2002
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1241282/
https://www.ncbi.nlm.nih.gov/pubmed/12634129
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author Eide, Ingvar
Neverdal, Gunhild
Thorvaldsen, Bodil
Grung, Bjørn
Kvalheim, Olav M
author_facet Eide, Ingvar
Neverdal, Gunhild
Thorvaldsen, Bodil
Grung, Bjørn
Kvalheim, Olav M
author_sort Eide, Ingvar
collection PubMed
description We describe the use of pattern recognition and multivariate regression in the assessment of complex mixtures by correlating chemical fingerprints to the mutagenicity of the mixtures. Mixtures were 20 organic extracts of exhaust particles, each containing 102-170 individual compounds such as polycyclic aromatic hydrocarbons (PAHs), nitro-PAHs, oxy-PAHs, and saturated hydrocarbons. Mixtures were characterized by full-scan GC-MS (gas chromatography-mass spectrometry). Data were resolved into peaks and spectra for individual compounds by an automated curve resolution procedure. Resolved chromatograms were integrated, resulting in a predictor matrix that was used as input to a principal component analysis to evaluate similarities between mixtures (i.e., classification). Furthermore, partial least-squares projections to latent structures were used to correlate the GC-MS data to mutagenicity, as measured in the Ames Salmonella assay (i.e., calibration). The best model (high r2 and Q2) identifies the variables that co-vary with the observed mutagenicity. These variables may subsequently be identified in more detail. Furthermore, the regression model can be used to predict mutagenicity from GC-MS chromatograms of other organic extracts. We emphasize that both chemical fingerprints as well as detailed data on composition can be used in pattern recognition.
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spelling pubmed-12412822005-11-08 Toxicological evaluation of complex mixtures by pattern recognition: correlating chemical fingerprints to mutagenicity. Eide, Ingvar Neverdal, Gunhild Thorvaldsen, Bodil Grung, Bjørn Kvalheim, Olav M Environ Health Perspect Research Article We describe the use of pattern recognition and multivariate regression in the assessment of complex mixtures by correlating chemical fingerprints to the mutagenicity of the mixtures. Mixtures were 20 organic extracts of exhaust particles, each containing 102-170 individual compounds such as polycyclic aromatic hydrocarbons (PAHs), nitro-PAHs, oxy-PAHs, and saturated hydrocarbons. Mixtures were characterized by full-scan GC-MS (gas chromatography-mass spectrometry). Data were resolved into peaks and spectra for individual compounds by an automated curve resolution procedure. Resolved chromatograms were integrated, resulting in a predictor matrix that was used as input to a principal component analysis to evaluate similarities between mixtures (i.e., classification). Furthermore, partial least-squares projections to latent structures were used to correlate the GC-MS data to mutagenicity, as measured in the Ames Salmonella assay (i.e., calibration). The best model (high r2 and Q2) identifies the variables that co-vary with the observed mutagenicity. These variables may subsequently be identified in more detail. Furthermore, the regression model can be used to predict mutagenicity from GC-MS chromatograms of other organic extracts. We emphasize that both chemical fingerprints as well as detailed data on composition can be used in pattern recognition. 2002-12 /pmc/articles/PMC1241282/ /pubmed/12634129 Text en
spellingShingle Research Article
Eide, Ingvar
Neverdal, Gunhild
Thorvaldsen, Bodil
Grung, Bjørn
Kvalheim, Olav M
Toxicological evaluation of complex mixtures by pattern recognition: correlating chemical fingerprints to mutagenicity.
title Toxicological evaluation of complex mixtures by pattern recognition: correlating chemical fingerprints to mutagenicity.
title_full Toxicological evaluation of complex mixtures by pattern recognition: correlating chemical fingerprints to mutagenicity.
title_fullStr Toxicological evaluation of complex mixtures by pattern recognition: correlating chemical fingerprints to mutagenicity.
title_full_unstemmed Toxicological evaluation of complex mixtures by pattern recognition: correlating chemical fingerprints to mutagenicity.
title_short Toxicological evaluation of complex mixtures by pattern recognition: correlating chemical fingerprints to mutagenicity.
title_sort toxicological evaluation of complex mixtures by pattern recognition: correlating chemical fingerprints to mutagenicity.
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1241282/
https://www.ncbi.nlm.nih.gov/pubmed/12634129
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