Global and Specific NIR Models for Oxidative Stability Prediction and Cultivar Discrimination in Extra Virgin Olive Oil

The Oxidative Stability Index (OSI) is crucial for evaluating the commercial, nutritional, and sensory properties of extra virgin olive oils (EVOO). Near-infrared spectroscopy (NIRS) offers a rapid and cost-effective alternative to evaluate OSI with respect to traditional methods like Rancimat. This...

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Main Authors: Hande Yılmaz-Düzyaman, Raúl de la Rosa, Nieves Núñez-Sánchez, Lorenzo León
Format: Article
Language:English
Published: MDPI AG 2025-02-01
Series:Horticulturae
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Online Access:https://www.mdpi.com/2311-7524/11/2/177
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author Hande Yılmaz-Düzyaman
Raúl de la Rosa
Nieves Núñez-Sánchez
Lorenzo León
author_facet Hande Yılmaz-Düzyaman
Raúl de la Rosa
Nieves Núñez-Sánchez
Lorenzo León
author_sort Hande Yılmaz-Düzyaman
collection DOAJ
description The Oxidative Stability Index (OSI) is crucial for evaluating the commercial, nutritional, and sensory properties of extra virgin olive oils (EVOO). Near-infrared spectroscopy (NIRS) offers a rapid and cost-effective alternative to evaluate OSI with respect to traditional methods like Rancimat. This study aimed to develop a robust global NIRS model for predicting OSI in EVOO and compare it with specific models for key Spanish cultivars such as ‘Picual’, ‘Arbequina’, and ‘Sikitita’ (a new, recently released cultivar for commercial hedgerow planting systems). Using NIRS spectra from 1100 to 2500 nm, we analyzed 939 samples globally and developed cultivar-specific models based on 59 ‘Picual’, 84 ‘Arbequina’, and 48 ‘Sikitita’ samples. Partial Least Squares (PLS) regression models demonstrated promising results in all sample sets tested, with the global model outperforming individual yearly models, highlighting the importance of incorporating variability to enhance predictive performance. Log-transformed OSI data improved accuracy across all models. Additionally, discriminant analysis (LDA) was performed on NIRS spectra from five cultivars (‘Arbequina,’ ‘Picual,’ ‘Koroneiki,’ ‘Sikitita,’ and ‘Arbosana’), a total of 254 samples, achieving 96% accuracy in differentiating monovarietal EVOO samples. These findings demonstrate the versatility of NIRS for OSI modeling and cultivar discrimination, making it a valuable tool for breeding programs and quality assessment.
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spelling doaj-art-e459f9caf1e24dfeaa35835ea59f02642025-08-20T03:12:11ZengMDPI AGHorticulturae2311-75242025-02-0111217710.3390/horticulturae11020177Global and Specific NIR Models for Oxidative Stability Prediction and Cultivar Discrimination in Extra Virgin Olive OilHande Yılmaz-Düzyaman0Raúl de la Rosa1Nieves Núñez-Sánchez2Lorenzo León3IFAPA Centro Alameda del Obispo, Avda, Menéndez Pidal s/n, 14004 Córdoba, SpainInstituto de Agricultura Sostenible (CSIC), Avda, Menéndez Pidal s/n, 14004 Córdoba, SpainDepartamento de Producción Animal, Universidad de Córdoba, Campus de Rabanales, 14071 Córdoba, SpainIFAPA Centro Alameda del Obispo, Avda, Menéndez Pidal s/n, 14004 Córdoba, SpainThe Oxidative Stability Index (OSI) is crucial for evaluating the commercial, nutritional, and sensory properties of extra virgin olive oils (EVOO). Near-infrared spectroscopy (NIRS) offers a rapid and cost-effective alternative to evaluate OSI with respect to traditional methods like Rancimat. This study aimed to develop a robust global NIRS model for predicting OSI in EVOO and compare it with specific models for key Spanish cultivars such as ‘Picual’, ‘Arbequina’, and ‘Sikitita’ (a new, recently released cultivar for commercial hedgerow planting systems). Using NIRS spectra from 1100 to 2500 nm, we analyzed 939 samples globally and developed cultivar-specific models based on 59 ‘Picual’, 84 ‘Arbequina’, and 48 ‘Sikitita’ samples. Partial Least Squares (PLS) regression models demonstrated promising results in all sample sets tested, with the global model outperforming individual yearly models, highlighting the importance of incorporating variability to enhance predictive performance. Log-transformed OSI data improved accuracy across all models. Additionally, discriminant analysis (LDA) was performed on NIRS spectra from five cultivars (‘Arbequina,’ ‘Picual,’ ‘Koroneiki,’ ‘Sikitita,’ and ‘Arbosana’), a total of 254 samples, achieving 96% accuracy in differentiating monovarietal EVOO samples. These findings demonstrate the versatility of NIRS for OSI modeling and cultivar discrimination, making it a valuable tool for breeding programs and quality assessment.https://www.mdpi.com/2311-7524/11/2/177<i>Olea europaea</i>olive breedingEVOONIRoxidative stabilityquality
spellingShingle Hande Yılmaz-Düzyaman
Raúl de la Rosa
Nieves Núñez-Sánchez
Lorenzo León
Global and Specific NIR Models for Oxidative Stability Prediction and Cultivar Discrimination in Extra Virgin Olive Oil
Horticulturae
<i>Olea europaea</i>
olive breeding
EVOO
NIR
oxidative stability
quality
title Global and Specific NIR Models for Oxidative Stability Prediction and Cultivar Discrimination in Extra Virgin Olive Oil
title_full Global and Specific NIR Models for Oxidative Stability Prediction and Cultivar Discrimination in Extra Virgin Olive Oil
title_fullStr Global and Specific NIR Models for Oxidative Stability Prediction and Cultivar Discrimination in Extra Virgin Olive Oil
title_full_unstemmed Global and Specific NIR Models for Oxidative Stability Prediction and Cultivar Discrimination in Extra Virgin Olive Oil
title_short Global and Specific NIR Models for Oxidative Stability Prediction and Cultivar Discrimination in Extra Virgin Olive Oil
title_sort global and specific nir models for oxidative stability prediction and cultivar discrimination in extra virgin olive oil
topic <i>Olea europaea</i>
olive breeding
EVOO
NIR
oxidative stability
quality
url https://www.mdpi.com/2311-7524/11/2/177
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AT rauldelarosa globalandspecificnirmodelsforoxidativestabilitypredictionandcultivardiscriminationinextravirginoliveoil
AT nievesnunezsanchez globalandspecificnirmodelsforoxidativestabilitypredictionandcultivardiscriminationinextravirginoliveoil
AT lorenzoleon globalandspecificnirmodelsforoxidativestabilitypredictionandcultivardiscriminationinextravirginoliveoil