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Germplasm variability-assisted near infrared reflectance spectroscopy chemometrics to develop multi-trait robust prediction models in rice

Rice is a major staple food across the world in which wide variations in nutrient composition are reported. Rice improvement programs need germplasm accessions with extreme values for any nutritional trait. Near infrared reflectance spectroscopy (NIRS) uses electromagnetic radiations in the NIR regi...

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Autores principales: John, Racheal, Bhardwaj, Rakesh, Jeyaseelan, Christine, Bollinedi, Haritha, Singh, Neha, Harish, G. D., Singh, Rakesh, Nath, Dhrub Jyoti, Arya, Mamta, Sharma, Deepak, Singh, Satyapal, John K, Joseph, Latha, M., Rana, Jai Chand, Ahlawat, Sudhir Pal, Kumar, Ashok
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9386308/
https://www.ncbi.nlm.nih.gov/pubmed/35992536
http://dx.doi.org/10.3389/fnut.2022.946255
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author John, Racheal
Bhardwaj, Rakesh
Jeyaseelan, Christine
Bollinedi, Haritha
Singh, Neha
Harish, G. D.
Singh, Rakesh
Nath, Dhrub Jyoti
Arya, Mamta
Sharma, Deepak
Singh, Satyapal
John K, Joseph
Latha, M.
Rana, Jai Chand
Ahlawat, Sudhir Pal
Kumar, Ashok
author_facet John, Racheal
Bhardwaj, Rakesh
Jeyaseelan, Christine
Bollinedi, Haritha
Singh, Neha
Harish, G. D.
Singh, Rakesh
Nath, Dhrub Jyoti
Arya, Mamta
Sharma, Deepak
Singh, Satyapal
John K, Joseph
Latha, M.
Rana, Jai Chand
Ahlawat, Sudhir Pal
Kumar, Ashok
author_sort John, Racheal
collection PubMed
description Rice is a major staple food across the world in which wide variations in nutrient composition are reported. Rice improvement programs need germplasm accessions with extreme values for any nutritional trait. Near infrared reflectance spectroscopy (NIRS) uses electromagnetic radiations in the NIR region to rapidly measure the biochemical composition of food and agricultural products. NIRS prediction models provide a rapid assessment tool but their applicability is limited by the sample diversity, used for developing them. NIRS spectral variability was used to select a diverse sample set of 180 accessions, and reference data were generated using association of analytical chemists and standard methods. Different spectral pre-processing (up to fourth-order derivatization), scatter corrections (SNV-DT, MSC), and regression methods (partial least square, modified partial least square, and principle component regression) were employed for each trait. Best-fit models for total protein, starch, amylose, dietary fiber, and oil content were selected based on high RSQ, RPD with low SEP(C) in external validation. All the prediction models had ratio of prediction to deviation (RPD) > 2 amongst which the best models were obtained for dietary fiber and protein with R(2) = 0.945 and 0.917, SEP(C) = 0.069 and 0.329, and RPD = 3.62 and 3.46. A paired sample t-test at a 95% confidence interval was performed to ensure that the difference in predicted and laboratory values was non-significant.
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spelling pubmed-93863082022-08-19 Germplasm variability-assisted near infrared reflectance spectroscopy chemometrics to develop multi-trait robust prediction models in rice John, Racheal Bhardwaj, Rakesh Jeyaseelan, Christine Bollinedi, Haritha Singh, Neha Harish, G. D. Singh, Rakesh Nath, Dhrub Jyoti Arya, Mamta Sharma, Deepak Singh, Satyapal John K, Joseph Latha, M. Rana, Jai Chand Ahlawat, Sudhir Pal Kumar, Ashok Front Nutr Nutrition Rice is a major staple food across the world in which wide variations in nutrient composition are reported. Rice improvement programs need germplasm accessions with extreme values for any nutritional trait. Near infrared reflectance spectroscopy (NIRS) uses electromagnetic radiations in the NIR region to rapidly measure the biochemical composition of food and agricultural products. NIRS prediction models provide a rapid assessment tool but their applicability is limited by the sample diversity, used for developing them. NIRS spectral variability was used to select a diverse sample set of 180 accessions, and reference data were generated using association of analytical chemists and standard methods. Different spectral pre-processing (up to fourth-order derivatization), scatter corrections (SNV-DT, MSC), and regression methods (partial least square, modified partial least square, and principle component regression) were employed for each trait. Best-fit models for total protein, starch, amylose, dietary fiber, and oil content were selected based on high RSQ, RPD with low SEP(C) in external validation. All the prediction models had ratio of prediction to deviation (RPD) > 2 amongst which the best models were obtained for dietary fiber and protein with R(2) = 0.945 and 0.917, SEP(C) = 0.069 and 0.329, and RPD = 3.62 and 3.46. A paired sample t-test at a 95% confidence interval was performed to ensure that the difference in predicted and laboratory values was non-significant. Frontiers Media S.A. 2022-08-04 /pmc/articles/PMC9386308/ /pubmed/35992536 http://dx.doi.org/10.3389/fnut.2022.946255 Text en Copyright © 2022 John, Bhardwaj, Jeyaseelan, Bollinedi, Singh, Harish, Singh, Nath, Arya, Sharma, Singh, John K, Latha, Rana, Ahlawat and Kumar. 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 Nutrition
John, Racheal
Bhardwaj, Rakesh
Jeyaseelan, Christine
Bollinedi, Haritha
Singh, Neha
Harish, G. D.
Singh, Rakesh
Nath, Dhrub Jyoti
Arya, Mamta
Sharma, Deepak
Singh, Satyapal
John K, Joseph
Latha, M.
Rana, Jai Chand
Ahlawat, Sudhir Pal
Kumar, Ashok
Germplasm variability-assisted near infrared reflectance spectroscopy chemometrics to develop multi-trait robust prediction models in rice
title Germplasm variability-assisted near infrared reflectance spectroscopy chemometrics to develop multi-trait robust prediction models in rice
title_full Germplasm variability-assisted near infrared reflectance spectroscopy chemometrics to develop multi-trait robust prediction models in rice
title_fullStr Germplasm variability-assisted near infrared reflectance spectroscopy chemometrics to develop multi-trait robust prediction models in rice
title_full_unstemmed Germplasm variability-assisted near infrared reflectance spectroscopy chemometrics to develop multi-trait robust prediction models in rice
title_short Germplasm variability-assisted near infrared reflectance spectroscopy chemometrics to develop multi-trait robust prediction models in rice
title_sort germplasm variability-assisted near infrared reflectance spectroscopy chemometrics to develop multi-trait robust prediction models in rice
topic Nutrition
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9386308/
https://www.ncbi.nlm.nih.gov/pubmed/35992536
http://dx.doi.org/10.3389/fnut.2022.946255
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