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An Approach Using Emerging Optical Technologies and Artificial Intelligence Brings New Markers to Evaluate Peanut Seed Quality

Seeds of high physiological quality are defined by their superior germination capacity and uniform seedling establishment. Here, it was investigated whether multispectral images combined with machine learning models can efficiently categorize the quality of peanut seedlots. The seed quality from sev...

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Autores principales: Fonseca de Oliveira, Gustavo Roberto, Mastrangelo, Clíssia Barboza, Hirai, Welinton Yoshio, Batista, Thiago Barbosa, Sudki, Julia Marconato, Petronilio, Ana Carolina Picinini, Crusciol, Carlos Alexandre Costa, Amaral da Silva, Edvaldo Aparecido
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9048030/
https://www.ncbi.nlm.nih.gov/pubmed/35498679
http://dx.doi.org/10.3389/fpls.2022.849986
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author Fonseca de Oliveira, Gustavo Roberto
Mastrangelo, Clíssia Barboza
Hirai, Welinton Yoshio
Batista, Thiago Barbosa
Sudki, Julia Marconato
Petronilio, Ana Carolina Picinini
Crusciol, Carlos Alexandre Costa
Amaral da Silva, Edvaldo Aparecido
author_facet Fonseca de Oliveira, Gustavo Roberto
Mastrangelo, Clíssia Barboza
Hirai, Welinton Yoshio
Batista, Thiago Barbosa
Sudki, Julia Marconato
Petronilio, Ana Carolina Picinini
Crusciol, Carlos Alexandre Costa
Amaral da Silva, Edvaldo Aparecido
author_sort Fonseca de Oliveira, Gustavo Roberto
collection PubMed
description Seeds of high physiological quality are defined by their superior germination capacity and uniform seedling establishment. Here, it was investigated whether multispectral images combined with machine learning models can efficiently categorize the quality of peanut seedlots. The seed quality from seven lots was assessed traditionally (seed weight, water content, germination, and vigor) and by multispectral images (area, length, width, brightness, chlorophyll fluorescence, anthocyanin, and reflectance: 365 to 970 nm). Seedlings from the seeds of each lot were evaluated for their photosynthetic capacity (fluorescence and chlorophyll index, F(0), F(m), and F(v)/F(m)) and stress indices (anthocyanin and NDVI). Artificial intelligence features (QDA method) applied to the data extracted from the seed images categorized lots with high and low quality. Higher levels of anthocyanin were found in the leaves of seedlings from low quality seeds. Therefore, this information is promising since the initial behavior of the seedlings reflected the quality of the seeds. The existence of new markers that effectively screen peanut seed quality was confirmed. The combination of physical properties (area, length, width, and coat brightness), pigments (chlorophyll fluorescence and anthocyanin), and light reflectance (660, 690, and 780 nm), is highly efficient to identify peanut seedlots with superior quality (98% accuracy).
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spelling pubmed-90480302022-04-29 An Approach Using Emerging Optical Technologies and Artificial Intelligence Brings New Markers to Evaluate Peanut Seed Quality Fonseca de Oliveira, Gustavo Roberto Mastrangelo, Clíssia Barboza Hirai, Welinton Yoshio Batista, Thiago Barbosa Sudki, Julia Marconato Petronilio, Ana Carolina Picinini Crusciol, Carlos Alexandre Costa Amaral da Silva, Edvaldo Aparecido Front Plant Sci Plant Science Seeds of high physiological quality are defined by their superior germination capacity and uniform seedling establishment. Here, it was investigated whether multispectral images combined with machine learning models can efficiently categorize the quality of peanut seedlots. The seed quality from seven lots was assessed traditionally (seed weight, water content, germination, and vigor) and by multispectral images (area, length, width, brightness, chlorophyll fluorescence, anthocyanin, and reflectance: 365 to 970 nm). Seedlings from the seeds of each lot were evaluated for their photosynthetic capacity (fluorescence and chlorophyll index, F(0), F(m), and F(v)/F(m)) and stress indices (anthocyanin and NDVI). Artificial intelligence features (QDA method) applied to the data extracted from the seed images categorized lots with high and low quality. Higher levels of anthocyanin were found in the leaves of seedlings from low quality seeds. Therefore, this information is promising since the initial behavior of the seedlings reflected the quality of the seeds. The existence of new markers that effectively screen peanut seed quality was confirmed. The combination of physical properties (area, length, width, and coat brightness), pigments (chlorophyll fluorescence and anthocyanin), and light reflectance (660, 690, and 780 nm), is highly efficient to identify peanut seedlots with superior quality (98% accuracy). Frontiers Media S.A. 2022-04-14 /pmc/articles/PMC9048030/ /pubmed/35498679 http://dx.doi.org/10.3389/fpls.2022.849986 Text en Copyright © 2022 Fonseca de Oliveira, Mastrangelo, Hirai, Batista, Sudki, Petronilio, Crusciol and Amaral da Silva. 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
Fonseca de Oliveira, Gustavo Roberto
Mastrangelo, Clíssia Barboza
Hirai, Welinton Yoshio
Batista, Thiago Barbosa
Sudki, Julia Marconato
Petronilio, Ana Carolina Picinini
Crusciol, Carlos Alexandre Costa
Amaral da Silva, Edvaldo Aparecido
An Approach Using Emerging Optical Technologies and Artificial Intelligence Brings New Markers to Evaluate Peanut Seed Quality
title An Approach Using Emerging Optical Technologies and Artificial Intelligence Brings New Markers to Evaluate Peanut Seed Quality
title_full An Approach Using Emerging Optical Technologies and Artificial Intelligence Brings New Markers to Evaluate Peanut Seed Quality
title_fullStr An Approach Using Emerging Optical Technologies and Artificial Intelligence Brings New Markers to Evaluate Peanut Seed Quality
title_full_unstemmed An Approach Using Emerging Optical Technologies and Artificial Intelligence Brings New Markers to Evaluate Peanut Seed Quality
title_short An Approach Using Emerging Optical Technologies and Artificial Intelligence Brings New Markers to Evaluate Peanut Seed Quality
title_sort approach using emerging optical technologies and artificial intelligence brings new markers to evaluate peanut seed quality
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9048030/
https://www.ncbi.nlm.nih.gov/pubmed/35498679
http://dx.doi.org/10.3389/fpls.2022.849986
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