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Mathematical modeling to predict rice's phenolic and mineral content through multispectral imaging

Over half the world population relies on rice for energy, but being a carbohydrate-based crop, it offers limited nutritional benefits. To achieve nutritional security targets in Asia, we must understand the genetic variation in multi-nutritional properties with therapeutic properties and deploy this...

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Autores principales: Buenafe, Reuben James, Tiozon, Rhowell, Boyd, Lesley A., Sartagoda, Kristel June, Sreenivasulu, Nese
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9767410/
https://www.ncbi.nlm.nih.gov/pubmed/36570628
http://dx.doi.org/10.1016/j.focha.2022.100141
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author Buenafe, Reuben James
Tiozon, Rhowell
Boyd, Lesley A.
Sartagoda, Kristel June
Sreenivasulu, Nese
author_facet Buenafe, Reuben James
Tiozon, Rhowell
Boyd, Lesley A.
Sartagoda, Kristel June
Sreenivasulu, Nese
author_sort Buenafe, Reuben James
collection PubMed
description Over half the world population relies on rice for energy, but being a carbohydrate-based crop, it offers limited nutritional benefits. To achieve nutritional security targets in Asia, we must understand the genetic variation in multi-nutritional properties with therapeutic properties and deploy this knowledge to future rice breeding. High throughput, VideometerLAB spectral imaging data has been effective in estimating total anthocyanin content, particularly bound anthocyanin content, using the high prediction power of partial least square (PLS) regression models. Multi-pronged nutritional properties of phenolic compounds and minerals, together with videometerLAB features, were utilized to develop models to classify a collection of black rice varieties into three distinct nutritional quality ideotypes. These derived models for black rice diversity panels were created utilizing videometerLAB data (L, A, B parameters), selected phenolic types (total phenolics, total anthocyanins, and bound flavonoids), and minerals (Molybdenum and Phosphorous). Random forest and artificial neural network models depicted the multi-nutritional features of black rice with 85.35 and 99.9% accuracy, respectively. These prediction algorithms would help rice breeders strategically breed nutritionally valuable genotypes based on simple, high-through-put videometerLAB readings and a small number of nutritional assays.
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spelling pubmed-97674102022-12-23 Mathematical modeling to predict rice's phenolic and mineral content through multispectral imaging Buenafe, Reuben James Tiozon, Rhowell Boyd, Lesley A. Sartagoda, Kristel June Sreenivasulu, Nese Food Chem Adv Article Over half the world population relies on rice for energy, but being a carbohydrate-based crop, it offers limited nutritional benefits. To achieve nutritional security targets in Asia, we must understand the genetic variation in multi-nutritional properties with therapeutic properties and deploy this knowledge to future rice breeding. High throughput, VideometerLAB spectral imaging data has been effective in estimating total anthocyanin content, particularly bound anthocyanin content, using the high prediction power of partial least square (PLS) regression models. Multi-pronged nutritional properties of phenolic compounds and minerals, together with videometerLAB features, were utilized to develop models to classify a collection of black rice varieties into three distinct nutritional quality ideotypes. These derived models for black rice diversity panels were created utilizing videometerLAB data (L, A, B parameters), selected phenolic types (total phenolics, total anthocyanins, and bound flavonoids), and minerals (Molybdenum and Phosphorous). Random forest and artificial neural network models depicted the multi-nutritional features of black rice with 85.35 and 99.9% accuracy, respectively. These prediction algorithms would help rice breeders strategically breed nutritionally valuable genotypes based on simple, high-through-put videometerLAB readings and a small number of nutritional assays. Elsevier 2022-10 /pmc/articles/PMC9767410/ /pubmed/36570628 http://dx.doi.org/10.1016/j.focha.2022.100141 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Buenafe, Reuben James
Tiozon, Rhowell
Boyd, Lesley A.
Sartagoda, Kristel June
Sreenivasulu, Nese
Mathematical modeling to predict rice's phenolic and mineral content through multispectral imaging
title Mathematical modeling to predict rice's phenolic and mineral content through multispectral imaging
title_full Mathematical modeling to predict rice's phenolic and mineral content through multispectral imaging
title_fullStr Mathematical modeling to predict rice's phenolic and mineral content through multispectral imaging
title_full_unstemmed Mathematical modeling to predict rice's phenolic and mineral content through multispectral imaging
title_short Mathematical modeling to predict rice's phenolic and mineral content through multispectral imaging
title_sort mathematical modeling to predict rice's phenolic and mineral content through multispectral imaging
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9767410/
https://www.ncbi.nlm.nih.gov/pubmed/36570628
http://dx.doi.org/10.1016/j.focha.2022.100141
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