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    Development and optimization of NIRS prediction models for simultaneous multi-trait assessment in diverse cowpea germplasm

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    Authors
    Padhi, Siddhant Ranjan
    John, Racheal
    Bartwal, Arti
    Tripathi, Kuldeep
    Gupta, Kavita
    Wankhede, Dhammaprakash Pandhari
    Mishra, Gyan Prakash
    Kumar, Sanjeev
    Rana, Jai Chand
    Riar, Amritbir
    Bhardwaj, Rakesh
    Date Issued
    2022-09
    Language
    en
    Type
    Journal Article
    Review status
    Peer Review
    ISI journal
    Accessibility
    Open Access
    Usage rights
    CC-BY-4.0
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    Citation
    Padhi, S.R.; John, R.; Bartwal, A.; Tripathi, K.; Gupta, K.; Wankhede, D.P.; Mishra, G.P.; Kumar, S.; Rana, J.C.; Riar, A.; Bhardwaj, R. (2022) Development and optimization of NIRS prediction models for simultaneous multi-trait assessment in diverse cowpea germplasm. Frontiers in Nutrition 9 12 p. ISSN: 2296-861X
    Permanent link to cite or share this item: https://hdl.handle.net/10568/128704
    DOI: https://doi.org/10.3389/fnut.2022.1001551
    Abstract/Description
    Cowpea (Vigna unguiculata (L.) Walp.) is one such legume that can facilitate achieving sustainable nutrition and climate change goals. Assessing nutritional traits conventionally can be laborious and time-consuming. NIRS is a technique used to rapidly determine biochemical parameters for large germplasm. NIRS prediction models were developed to assess protein, starch, TDF, phenols, and phytic acid based on MPLS regression. Higher RSQexternal values such as 0.903, 0.997, 0.901, 0.706, and 0.955 were obtained for protein, starch, TDF, phenols, and phytic acid respectively. Models for all the traits displayed RPD values of >2.5 except phenols and low SEP indicating the excellent prediction of models. For all the traits worked, p-value ≥ 0.05 implied the accuracy and reliability score >0.8 (except phenol) ensured the applicability of the models. These prediction models will facilitate high throughput screening of large cowpea germplasm in a non-destructive way and the selection of desirable chemotypes in any genetic background with huge application in cowpea crop improvement programs across the world.
    CGIAR Impact Areas
    Climate adaptation and mitigation; Nutrition, health and food security
    Contributes to SDGs
    SDG 2 - Zero hunger
    AGROVOC Keywords
    germplasm; nutritional requirements; evaluation techniques; germoplasma; necesidades de nutrientes; técnicas de evaluación
    Subjects
    CROP PRODUCTION;
    Organizations Affiliated to the Authors
    Bioversity International
    Collections
    • Alliance Bioversity CIAT Journal Articles [1099]
    • Research Lever 4: Biodiversity for Food and Agriculture [568]

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