Cargando…

Improving bitter pit prediction by the use of X-ray fluorescence (XRF): A new approach by multivariate classification

Bitter pit (BP) is one of the most relevant post-harvest disorders for apple industry worldwide, which is often related to calcium (Ca) deficiency at the calyx end of the fruit. Its occurrence takes place along with an imbalance with other minerals, such as potassium (K). Although the K/Ca ratio is...

Descripción completa

Detalles Bibliográficos
Autores principales: Moggia, Claudia, Bravo, Manuel A., Baettig, Ricardo, Valdés, Marcelo, Romero-Bravo, Sebastián, Zúñiga, Mauricio, Cornejo, Jorge, Gosetti, Fabio, Ballabio, Davide, Cabeza, Ricardo A., Beaudry, Randolph, Lobos, Gustavo A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9748620/
https://www.ncbi.nlm.nih.gov/pubmed/36531358
http://dx.doi.org/10.3389/fpls.2022.1033308
_version_ 1784849861395349504
author Moggia, Claudia
Bravo, Manuel A.
Baettig, Ricardo
Valdés, Marcelo
Romero-Bravo, Sebastián
Zúñiga, Mauricio
Cornejo, Jorge
Gosetti, Fabio
Ballabio, Davide
Cabeza, Ricardo A.
Beaudry, Randolph
Lobos, Gustavo A.
author_facet Moggia, Claudia
Bravo, Manuel A.
Baettig, Ricardo
Valdés, Marcelo
Romero-Bravo, Sebastián
Zúñiga, Mauricio
Cornejo, Jorge
Gosetti, Fabio
Ballabio, Davide
Cabeza, Ricardo A.
Beaudry, Randolph
Lobos, Gustavo A.
author_sort Moggia, Claudia
collection PubMed
description Bitter pit (BP) is one of the most relevant post-harvest disorders for apple industry worldwide, which is often related to calcium (Ca) deficiency at the calyx end of the fruit. Its occurrence takes place along with an imbalance with other minerals, such as potassium (K). Although the K/Ca ratio is considered a valuable indicator of BP, a high variability in the levels of these elements occurs within the fruit, between fruits of the same plant, and between plants and orchards. Prediction systems based on the content of elements in fruit have a high variability because they are determined in samples composed of various fruits. With X-ray fluorescence (XRF) spectrometry, it is possible to characterize non-destructively the signal intensity for several mineral elements at a given position in individual fruit and thus, the complete signal of the mineral composition can be used to perform a predictive model to determine the incidence of bitter pit. Therefore, it was hypothesized that using a multivariate modeling approach, other elements beyond the K and Ca could be found that could improve the current clutter prediction capability. Two studies were carried out: on the first one an experiment was conducted to determine the K/Ca and the whole spectrum using XRF of a balanced sample of affected and non-affected ‘Granny Smith’ apples. On the second study apples of three cultivars (‘Granny Smith’, ‘Brookfield’ and ‘Fuji’), were harvested from two commercial orchards to evaluate the use of XRF to predict BP. With data from the first study a multivariate classification system was trained (balanced database of healthy and BP fruit, consisting in 176 from each group) and then the model was applied on the second study to fruit from two orchards with a history of BP. Results show that when dimensionality reduction was performed on the XRF spectra (1.5 - 8 KeV) of ‘Granny Smith’ apples, comparing fruit with and without BP, along with K and Ca, four other elements (i.e., Cl, Si, P, and S) were found to be deterministic. However, the PCA revealed that the classification between samples (BP vs. non-BP fruit) was not possible by univariate analysis (individual elements or the K/Ca ratio).Therefore, a multivariate classification approach was applied, and the classification measures (sensitivity, specificity, and balanced precision) of the PLS-DA models for all cultivars evaluated (‘Granny Smith’, ‘Fuji’ and ‘Brookfield’) on the full training samples and with both validation procedures (Venetian and Monte Carlo), ranged from 0.76 to 0.92. The results of this work indicate that using this technology at the individual fruit level is essential to understand the factors that determine this disorder and can improve BP prediction of intact fruit.
format Online
Article
Text
id pubmed-9748620
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-97486202022-12-15 Improving bitter pit prediction by the use of X-ray fluorescence (XRF): A new approach by multivariate classification Moggia, Claudia Bravo, Manuel A. Baettig, Ricardo Valdés, Marcelo Romero-Bravo, Sebastián Zúñiga, Mauricio Cornejo, Jorge Gosetti, Fabio Ballabio, Davide Cabeza, Ricardo A. Beaudry, Randolph Lobos, Gustavo A. Front Plant Sci Plant Science Bitter pit (BP) is one of the most relevant post-harvest disorders for apple industry worldwide, which is often related to calcium (Ca) deficiency at the calyx end of the fruit. Its occurrence takes place along with an imbalance with other minerals, such as potassium (K). Although the K/Ca ratio is considered a valuable indicator of BP, a high variability in the levels of these elements occurs within the fruit, between fruits of the same plant, and between plants and orchards. Prediction systems based on the content of elements in fruit have a high variability because they are determined in samples composed of various fruits. With X-ray fluorescence (XRF) spectrometry, it is possible to characterize non-destructively the signal intensity for several mineral elements at a given position in individual fruit and thus, the complete signal of the mineral composition can be used to perform a predictive model to determine the incidence of bitter pit. Therefore, it was hypothesized that using a multivariate modeling approach, other elements beyond the K and Ca could be found that could improve the current clutter prediction capability. Two studies were carried out: on the first one an experiment was conducted to determine the K/Ca and the whole spectrum using XRF of a balanced sample of affected and non-affected ‘Granny Smith’ apples. On the second study apples of three cultivars (‘Granny Smith’, ‘Brookfield’ and ‘Fuji’), were harvested from two commercial orchards to evaluate the use of XRF to predict BP. With data from the first study a multivariate classification system was trained (balanced database of healthy and BP fruit, consisting in 176 from each group) and then the model was applied on the second study to fruit from two orchards with a history of BP. Results show that when dimensionality reduction was performed on the XRF spectra (1.5 - 8 KeV) of ‘Granny Smith’ apples, comparing fruit with and without BP, along with K and Ca, four other elements (i.e., Cl, Si, P, and S) were found to be deterministic. However, the PCA revealed that the classification between samples (BP vs. non-BP fruit) was not possible by univariate analysis (individual elements or the K/Ca ratio).Therefore, a multivariate classification approach was applied, and the classification measures (sensitivity, specificity, and balanced precision) of the PLS-DA models for all cultivars evaluated (‘Granny Smith’, ‘Fuji’ and ‘Brookfield’) on the full training samples and with both validation procedures (Venetian and Monte Carlo), ranged from 0.76 to 0.92. The results of this work indicate that using this technology at the individual fruit level is essential to understand the factors that determine this disorder and can improve BP prediction of intact fruit. Frontiers Media S.A. 2022-11-30 /pmc/articles/PMC9748620/ /pubmed/36531358 http://dx.doi.org/10.3389/fpls.2022.1033308 Text en Copyright © 2022 Moggia, Bravo, Baettig, Valdés, Romero-Bravo, Zúñiga, Cornejo, Gosetti, Ballabio, Cabeza, Beaudry and Lobos https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Plant Science
Moggia, Claudia
Bravo, Manuel A.
Baettig, Ricardo
Valdés, Marcelo
Romero-Bravo, Sebastián
Zúñiga, Mauricio
Cornejo, Jorge
Gosetti, Fabio
Ballabio, Davide
Cabeza, Ricardo A.
Beaudry, Randolph
Lobos, Gustavo A.
Improving bitter pit prediction by the use of X-ray fluorescence (XRF): A new approach by multivariate classification
title Improving bitter pit prediction by the use of X-ray fluorescence (XRF): A new approach by multivariate classification
title_full Improving bitter pit prediction by the use of X-ray fluorescence (XRF): A new approach by multivariate classification
title_fullStr Improving bitter pit prediction by the use of X-ray fluorescence (XRF): A new approach by multivariate classification
title_full_unstemmed Improving bitter pit prediction by the use of X-ray fluorescence (XRF): A new approach by multivariate classification
title_short Improving bitter pit prediction by the use of X-ray fluorescence (XRF): A new approach by multivariate classification
title_sort improving bitter pit prediction by the use of x-ray fluorescence (xrf): a new approach by multivariate classification
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9748620/
https://www.ncbi.nlm.nih.gov/pubmed/36531358
http://dx.doi.org/10.3389/fpls.2022.1033308
work_keys_str_mv AT moggiaclaudia improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT bravomanuela improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT baettigricardo improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT valdesmarcelo improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT romerobravosebastian improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT zunigamauricio improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT cornejojorge improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT gosettifabio improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT ballabiodavide improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT cabezaricardoa improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT beaudryrandolph improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification
AT lobosgustavoa improvingbitterpitpredictionbytheuseofxrayfluorescencexrfanewapproachbymultivariateclassification