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Comparative analysis of modified partial least squares regression and hybrid deep learning models for predicting protein content in Perilla (Perilla frutescens L.) seed meal using NIR spectroscopy

Kaur, Simardeep; Singh, Naseeb; Dagar, Preety; Kumar, Amit; Jaiswal, Sandeep; Singh, Binay K.; Bhardwaj, Rakesh; Rana, Jai Chand and Riar, Amritbir (2024) Comparative analysis of modified partial least squares regression and hybrid deep learning models for predicting protein content in Perilla (Perilla frutescens L.) seed meal using NIR spectroscopy. Food Bioscience, 61 (104821), x-xx.

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Document available online at: https://www.sciencedirect.com/science/article/abs/pii/S2212429224012513


Summary in the original language of the document

Perilla seed meal (PSM), a byproduct of oil extraction from Perilla frutescens L. seeds, is rich in protein (24.26–42.85%) and holds potential as an economical and sustainable animal feed. Traditional methods for assessing protein content are labor-intensive and costly. This study explores Near-Infrared Reflectance Spectroscopy (NIRS) for the rapid, precise, and non-destructive determination of PSM protein content in 126 samples. We developed and evaluated Modified Partial Least Squares (MPLS) regression and deep learning (DL) models, including 1D-CNN (Convolutional Neural Network), LSTM Long Short-Term Memory), and hybrid architectures incorporating skip connections, inception modules, and spectral derivatives. Model performance was validated externally using parameters such as RSQexternal (R-squared), bias, SEP(C) (Standard Error of Prediction), RPD (Residual Prediction Deviation), slope, SD (Standard Deviation), p-value (≥0.05), and the correlation between reference and predicted values. The 1D CNN-LSTM-Inception derivative 1 model achieved the best performance (RPD: 8.0, RSQexternal: 0.98), followed by the MPLS-based model (RPD: 4.88, RSQexternal: 0.96) and the 1D CNN derivative 1 model (RPD: 3.07, RSQexternal: 0.96). These models provide a reliable and advanced technology for the non-destructive screening of PSM protein content, thus aiding in the rapid identification and selection of superior perilla chemotypes from varied backgrounds.


EPrint Type:Journal paper
Keywords:deep learning, protein content, perilla, seed meal, NIR, Abacus, FiBL65213, CROPS4HD
Agrovoc keywords:
Language
Value
URI
English
Perilla frutescens
http://aims.fao.org/aos/agrovoc/c_16274
English
seed
http://aims.fao.org/aos/agrovoc/c_6927
English
NIR spectroscopy -> infrared spectrophotometry
http://aims.fao.org/aos/agrovoc/c_28568
Subjects: Crop husbandry > Crop combinations and interactions
Food systems > Food security, food quality and human health
Knowledge management > Research methodology and philosophy > Specific methods
Research affiliation: Switzerland > FiBL - Research Institute of Organic Agriculture Switzerland > International > Regions > Asia
India
DOI:10.1016/j.fbio.2024.104821
Deposited By: Forschungsinstitut für biologischen Landbau, FiBL
ID Code:55018
Deposited On:03 Mar 2025 12:13
Last Modified:03 Mar 2025 12:14
Document Language:English
Status:Published
Refereed:Peer-reviewed and accepted

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