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Proximal Hyperspectral Imaging Detects Diurnal and Drought-Induced Changes in Maize Physiology

Hyperspectral imaging is a promising tool for non-destructive phenotyping of plant physiological traits, which has been transferred from remote to proximal sensing applications, and from manual laboratory setups to automated plant phenotyping platforms. Due to the higher resolution in proximal sensi...

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Autores principales: Mertens, Stien, Verbraeken, Lennart, Sprenger, Heike, Demuynck, Kirin, Maleux, Katrien, Cannoot, Bernard, De Block, Jolien, Maere, Steven, Nelissen, Hilde, Bonaventure, Gustavo, Crafts-Brandner, Steven J., Vogel, Jonathan T., Bruce, Wesley, Inzé, Dirk, Wuyts, Nathalie
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7937976/
https://www.ncbi.nlm.nih.gov/pubmed/33692820
http://dx.doi.org/10.3389/fpls.2021.640914
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author Mertens, Stien
Verbraeken, Lennart
Sprenger, Heike
Demuynck, Kirin
Maleux, Katrien
Cannoot, Bernard
De Block, Jolien
Maere, Steven
Nelissen, Hilde
Bonaventure, Gustavo
Crafts-Brandner, Steven J.
Vogel, Jonathan T.
Bruce, Wesley
Inzé, Dirk
Wuyts, Nathalie
author_facet Mertens, Stien
Verbraeken, Lennart
Sprenger, Heike
Demuynck, Kirin
Maleux, Katrien
Cannoot, Bernard
De Block, Jolien
Maere, Steven
Nelissen, Hilde
Bonaventure, Gustavo
Crafts-Brandner, Steven J.
Vogel, Jonathan T.
Bruce, Wesley
Inzé, Dirk
Wuyts, Nathalie
author_sort Mertens, Stien
collection PubMed
description Hyperspectral imaging is a promising tool for non-destructive phenotyping of plant physiological traits, which has been transferred from remote to proximal sensing applications, and from manual laboratory setups to automated plant phenotyping platforms. Due to the higher resolution in proximal sensing, illumination variation and plant geometry result in increased non-biological variation in plant spectra that may mask subtle biological differences. Here, a better understanding of spectral measurements for proximal sensing and their application to study drought, developmental and diurnal responses was acquired in a drought case study of maize grown in a greenhouse phenotyping platform with a hyperspectral imaging setup. The use of brightness classification to reduce the illumination-induced non-biological variation is demonstrated, and allowed the detection of diurnal, developmental and early drought-induced changes in maize reflectance and physiology. Diurnal changes in transpiration rate and vapor pressure deficit were significantly correlated with red and red-edge reflectance. Drought-induced changes in effective quantum yield and water potential were accurately predicted using partial least squares regression and the newly developed Water Potential Index 2, respectively. The prediction accuracy of hyperspectral indices and partial least squares regression were similar, as long as a strong relationship between the physiological trait and reflectance was present. This demonstrates that current hyperspectral processing approaches can be used in automated plant phenotyping platforms to monitor physiological traits with a high temporal resolution.
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spelling pubmed-79379762021-03-09 Proximal Hyperspectral Imaging Detects Diurnal and Drought-Induced Changes in Maize Physiology Mertens, Stien Verbraeken, Lennart Sprenger, Heike Demuynck, Kirin Maleux, Katrien Cannoot, Bernard De Block, Jolien Maere, Steven Nelissen, Hilde Bonaventure, Gustavo Crafts-Brandner, Steven J. Vogel, Jonathan T. Bruce, Wesley Inzé, Dirk Wuyts, Nathalie Front Plant Sci Plant Science Hyperspectral imaging is a promising tool for non-destructive phenotyping of plant physiological traits, which has been transferred from remote to proximal sensing applications, and from manual laboratory setups to automated plant phenotyping platforms. Due to the higher resolution in proximal sensing, illumination variation and plant geometry result in increased non-biological variation in plant spectra that may mask subtle biological differences. Here, a better understanding of spectral measurements for proximal sensing and their application to study drought, developmental and diurnal responses was acquired in a drought case study of maize grown in a greenhouse phenotyping platform with a hyperspectral imaging setup. The use of brightness classification to reduce the illumination-induced non-biological variation is demonstrated, and allowed the detection of diurnal, developmental and early drought-induced changes in maize reflectance and physiology. Diurnal changes in transpiration rate and vapor pressure deficit were significantly correlated with red and red-edge reflectance. Drought-induced changes in effective quantum yield and water potential were accurately predicted using partial least squares regression and the newly developed Water Potential Index 2, respectively. The prediction accuracy of hyperspectral indices and partial least squares regression were similar, as long as a strong relationship between the physiological trait and reflectance was present. This demonstrates that current hyperspectral processing approaches can be used in automated plant phenotyping platforms to monitor physiological traits with a high temporal resolution. Frontiers Media S.A. 2021-02-22 /pmc/articles/PMC7937976/ /pubmed/33692820 http://dx.doi.org/10.3389/fpls.2021.640914 Text en Copyright © 2021 Mertens, Verbraeken, Sprenger, Demuynck, Maleux, Cannoot, De Block, Maere, Nelissen, Bonaventure, Crafts-Brandner, Vogel, Bruce, Inzé and Wuyts. http://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
Mertens, Stien
Verbraeken, Lennart
Sprenger, Heike
Demuynck, Kirin
Maleux, Katrien
Cannoot, Bernard
De Block, Jolien
Maere, Steven
Nelissen, Hilde
Bonaventure, Gustavo
Crafts-Brandner, Steven J.
Vogel, Jonathan T.
Bruce, Wesley
Inzé, Dirk
Wuyts, Nathalie
Proximal Hyperspectral Imaging Detects Diurnal and Drought-Induced Changes in Maize Physiology
title Proximal Hyperspectral Imaging Detects Diurnal and Drought-Induced Changes in Maize Physiology
title_full Proximal Hyperspectral Imaging Detects Diurnal and Drought-Induced Changes in Maize Physiology
title_fullStr Proximal Hyperspectral Imaging Detects Diurnal and Drought-Induced Changes in Maize Physiology
title_full_unstemmed Proximal Hyperspectral Imaging Detects Diurnal and Drought-Induced Changes in Maize Physiology
title_short Proximal Hyperspectral Imaging Detects Diurnal and Drought-Induced Changes in Maize Physiology
title_sort proximal hyperspectral imaging detects diurnal and drought-induced changes in maize physiology
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7937976/
https://www.ncbi.nlm.nih.gov/pubmed/33692820
http://dx.doi.org/10.3389/fpls.2021.640914
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