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A Comparison of Spectral Preprocessing Methods and Their Effects on Nutritional Traits in Cowpea Germplasm

Padhi, Siddhant Ranjan; John, Racheal; Tripathi, Kuldeep; Wankhede, Dhammaprakash Pandhari; Joshi, Tanay; Rana, Jai Chand; Riar, Amritbir Singh and Bhardwaj, Rakesh (2024) A Comparison of Spectral Preprocessing Methods and Their Effects on Nutritional Traits in Cowpea Germplasm. Legume Science, 6 (2), pp. 1-13.

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Document available online at: https://onlinelibrary.wiley.com/doi/full/10.1002/leg3.229


Summary in the original language of the document

Cowpea (Vigna unguiculata L. (Walp)) is a multipurpose legume, which has good nutritional properties. Nutritional parameters assessed conventionally can be labour intensive, costly and time taking for germplasm screening. Near-infrared reflectance spectroscopy (NIRS) is a rapid and nondestructive method, which can facilitate high-throughput germplasm screening. In our study, estimation of amylose and sugars has been done using NIRS. Two preprocessing methods, that is, SNV-DT (standard normal variate with detrending) and MSC (multiplicative scatter correction), were performed for optimization of the original spectra. Subsequently, MPLS (modified partial least square) regression method was employed to construct the prediction models. In amylose, the best RSQexternal (coefficient of determination) (0.962) was found in SNV-DT with mathematical treatment 3,8,8,2. The same result was shown in sugar where the best RSQexternal (0.914) was found in SNV-DT with mathematical treatment 3,4,4,1. Overall, in the case of amylose and sugars, SNV-DT was found to be a good preprocessing treatment than MSC. Paired t-test values in all the treatments for both the preprocessing methods were > 0.05 indicating their reliability. High RSQexternal values for both the traits imply the applicability of the prediction models. Thus, these models can facilitate high-throughput germplasm screening in different national and international crop improvement programmes focusing on quality traits.


EPrint Type:Journal paper
Keywords:legume, MPLS regression, multiplicative scatter correction, nutrition, standard normal variate with detrending, Abacus, FiBL65213, CROPS4HD
Agrovoc keywords:
Language
Value
URI
English
legumes
http://aims.fao.org/aos/agrovoc/c_4255
English
cowpeas
http://aims.fao.org/aos/agrovoc/c_1938
English
nutrition
http://aims.fao.org/aos/agrovoc/c_49892
Subjects: Food systems > Food security, food quality and human health
Crop husbandry > Production systems > Cereals, pulses and oilseeds
"Organics" in general > Countries and regions > India
Research affiliation: Switzerland > FiBL - Research Institute of Organic Agriculture Switzerland > International > Regions > Asia
Switzerland > FiBL - Research Institute of Organic Agriculture Switzerland > Society > Agri-food policy > Food security
Switzerland > FiBL - Research Institute of Organic Agriculture Switzerland > Crops > Arable crops > Legumes
Switzerland > FiBL - Research Institute of Organic Agriculture Switzerland > Crops > Seeds and breeding > Varitey testing
India
DOI:10.1002/leg3.229
Related Links:https://www.fibl.org/de/themen/projektdatenbank/projektitem/project/1961
Deposited By: Forschungsinstitut für biologischen Landbau, FiBL
ID Code:53522
Deposited On:20 Jun 2024 08:55
Last Modified:20 Jun 2024 08:55
Document Language:English
Status:Published
Refereed:Peer-reviewed and accepted

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