Development of Near Infrared Spectroscopy Models for Quantitative Prediction of the Content of Bioactive Compounds in Olive Leaves

The objective of this work was to evaluate the ability of artificial neural networks (ANN) in near infrared (NIR) spectra calibration models to predict the total polyphenolic content, antioxidant activity, and extraction yield of the olive leaves aqueous extracts prepared with three extraction proce...

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Main Authors: D. Valinger, M. Kušen, A. Jurinjak Tušek, M. Panić, T. Jurina, M. Benković, I. Radojčić Redovniković, J. Gajdoš Kljusurić
Format: Article
Language:English
Published: Croatian Society of Chemical Engineers 2019-01-01
Series:Chemical and Biochemical Engineering Quarterly
Subjects:
Online Access:http://silverstripe.fkit.hr/cabeq/assets/Uploads/12-12-4-2018.pdf
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spelling doaj-f2014ab2fd8a44f19dd77046d56174b62020-11-24T21:54:52ZengCroatian Society of Chemical EngineersChemical and Biochemical Engineering Quarterly0352-95681846-51532019-01-0132453554310.15255/CABEQ.2018.1396Development of Near Infrared Spectroscopy Models for Quantitative Prediction of the Content of Bioactive Compounds in Olive LeavesD. Valinger0M. Kušen1A. Jurinjak Tušek2M. Panić3 T. Jurina4M. Benković5 I. Radojčić Redovniković6J. Gajdoš Kljusurić7University of Zagreb, Faculty of Food Technology and Biotechnology, Department of Process Engineering, Pierottijeva 6, 10000 ZagrebNutrimedica, Cernička 30, 10000 ZagrebUniversity of Zagreb, Faculty of Food Technology and Biotechnology, Department of Process Engineering, Pierottijeva 6, 10000 ZagrebUniversity of Zagreb, Faculty of Food Technology and Biotechnology, Department of Biochemical Engineering, Pierottijeva 6, 10000 ZagrebUniversity of Zagreb, Faculty of Food Technology and Biotechnology, Department of Process Engineering, Pierottijeva 6, 10000 ZagrebUniversity of Zagreb, Faculty of Food Technology and Biotechnology, Department of Process Engineering, Pierottijeva 6, 10000 ZagrebUniversity of Zagreb, Faculty of Food Technology and Biotechnology, Department of Biochemical Engineering, Pierottijeva 6, 10000 ZagrebUniversity of Zagreb, Faculty of Food Technology and Biotechnology, Department of Process Engineering, Pierottijeva 6, 10000 ZagrebThe objective of this work was to evaluate the ability of artificial neural networks (ANN) in near infrared (NIR) spectra calibration models to predict the total polyphenolic content, antioxidant activity, and extraction yield of the olive leaves aqueous extracts prepared with three extraction procedures (conventional extraction, microwave-assisted extraction, and microwave-ultrasound-assisted extraction). Partial least squares (PLS) models were developed from principal component analyses (PCA) scores of NIR spectra of olive leaf aqueous extracts in terms of total polyphenols concentration, antioxidant activity, and extraction yield for each extraction procedure. PLS models were used to view which PCA scores are the best suited as input for ANN based on three output variables. ANN showed very good correlation of NIRs and all tested variables, especially in the case of total polyphenolic content (TPC). Therefore, ANN can be used for the prediction of total polyphenol concentrations, antioxidant activity, and extraction yield of plant extracts based on the NIR spectra. http://silverstripe.fkit.hr/cabeq/assets/Uploads/12-12-4-2018.pdfNIR spectraartificial neural networksolive leaf extractsconventional extractionmicrowave-assisted extractionmicrowave-ultrasound-assisted extraction
collection DOAJ
language English
format Article
sources DOAJ
author D. Valinger
M. Kušen
A. Jurinjak Tušek
M. Panić
T. Jurina
M. Benković
I. Radojčić Redovniković
J. Gajdoš Kljusurić
spellingShingle D. Valinger
M. Kušen
A. Jurinjak Tušek
M. Panić
T. Jurina
M. Benković
I. Radojčić Redovniković
J. Gajdoš Kljusurić
Development of Near Infrared Spectroscopy Models for Quantitative Prediction of the Content of Bioactive Compounds in Olive Leaves
Chemical and Biochemical Engineering Quarterly
NIR spectra
artificial neural networks
olive leaf extracts
conventional extraction
microwave-assisted extraction
microwave-ultrasound-assisted extraction
author_facet D. Valinger
M. Kušen
A. Jurinjak Tušek
M. Panić
T. Jurina
M. Benković
I. Radojčić Redovniković
J. Gajdoš Kljusurić
author_sort D. Valinger
title Development of Near Infrared Spectroscopy Models for Quantitative Prediction of the Content of Bioactive Compounds in Olive Leaves
title_short Development of Near Infrared Spectroscopy Models for Quantitative Prediction of the Content of Bioactive Compounds in Olive Leaves
title_full Development of Near Infrared Spectroscopy Models for Quantitative Prediction of the Content of Bioactive Compounds in Olive Leaves
title_fullStr Development of Near Infrared Spectroscopy Models for Quantitative Prediction of the Content of Bioactive Compounds in Olive Leaves
title_full_unstemmed Development of Near Infrared Spectroscopy Models for Quantitative Prediction of the Content of Bioactive Compounds in Olive Leaves
title_sort development of near infrared spectroscopy models for quantitative prediction of the content of bioactive compounds in olive leaves
publisher Croatian Society of Chemical Engineers
series Chemical and Biochemical Engineering Quarterly
issn 0352-9568
1846-5153
publishDate 2019-01-01
description The objective of this work was to evaluate the ability of artificial neural networks (ANN) in near infrared (NIR) spectra calibration models to predict the total polyphenolic content, antioxidant activity, and extraction yield of the olive leaves aqueous extracts prepared with three extraction procedures (conventional extraction, microwave-assisted extraction, and microwave-ultrasound-assisted extraction). Partial least squares (PLS) models were developed from principal component analyses (PCA) scores of NIR spectra of olive leaf aqueous extracts in terms of total polyphenols concentration, antioxidant activity, and extraction yield for each extraction procedure. PLS models were used to view which PCA scores are the best suited as input for ANN based on three output variables. ANN showed very good correlation of NIRs and all tested variables, especially in the case of total polyphenolic content (TPC). Therefore, ANN can be used for the prediction of total polyphenol concentrations, antioxidant activity, and extraction yield of plant extracts based on the NIR spectra.
topic NIR spectra
artificial neural networks
olive leaf extracts
conventional extraction
microwave-assisted extraction
microwave-ultrasound-assisted extraction
url http://silverstripe.fkit.hr/cabeq/assets/Uploads/12-12-4-2018.pdf
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