Please use this identifier to cite or link to this item: https://openscholar.ump.ac.za/handle/20.500.12714/895
Title: Genomic and subgenomic group discrimination between 100 Indian banana (Musa) accessions using ripe banana pulp multi-elemental fingerprints and chemometrics.
Authors: Devarajan, Ramajayam.
Dibakoane, Siphosethu Richard.
Wokadala, Obiro Cuthbert.
Meiring, Belinda.
Mlambo, Victor.
Kutu, Funso Raphael.
Sibanyoni, July Johannes.
Jayaraman, Jeyabaskaran Kandallu.
ICAR-Indian Institute of Soil and Water Conservation
School of Agricultural Sciences
School of Agricultural Sciences
Tshwane University of Technology
School of Agricultural Sciences
School of Agricultural Sciences
School of Hospitality and Tourism Management
ICAR-National Research Centre for Banana
Keywords: Bananas (Musa).;Chemometrics.;Multi-elemental Fingerprints.;Sub-genome groups.;Banana Genome;India banana accessions.
Issue Date: 2024
Publisher: Elsevier
Abstract: Worldwide, there are over 1000 banana types which are classified in various subgenomic and genomic groups. Distinguishing between the banana types, their genomic and subgenomic groups has been a challenge due to different identities and nomenclature used in different regions of the world. The present study assessed the efficacy of multi-elemental fingerprinting combined with chemometrics to distinguish between genomic and subgenomic groups within 100 Indian banana (Musa) accessions based on ripe banana pulp elemental concentrations. The concentrations of B, Ca, Fe, Mg, Mn K, Zn, Na, and P were analyzed using Inductively Coupled Plasma- Optical Emission Spectroscopy (ICP-OES). Multi-elemental fingerprints plus chemometrics were done using principal component analysis (PCA) then combined with linear discriminant analysis (PCA-LDA), support vector machine (PCA-SVM), and artificial neural network (PCA-ANN) for classification analysis with an 80:20 split between the calibration and verification sets (with total of 300 specimens). The PCA-SVM model was the most effective in classification when applied to the verification set subgenomic and genomic groups data, with accuracies of 83.7% and 100.0% respectively. These results demonstrated that ripe banana pulp multi-elemental fingerprints combined with chemometrics can discriminate between genomic and sub-genomic groups for Indian banana (Musa) accessions.
Description: Published version
URI: https://openscholar.ump.ac.za/handle/20.500.12714/895
DOI: 10.1016/j.jfca.2024.106205
Appears in Collections:Journal articles

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