Chemometrics in Tandem with Hyperspectral Imaging for Detecting Authentication of Raw and Cooked Mutton Rolls

Authentication assurance of meat or meat products is critical in the meat industry. Various methods including DNA- or protein-based techniques are accurate for assessing meat authenticity, however, they are destructive, expensive, or laborious. This study explores the feasibility of chemometrics in...

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Main Authors: Hongzhe Jiang, Yi Yang, Minghong Shi
Format: Article
Language:English
Published: MDPI AG 2021-09-01
Series:Foods
Subjects:
Online Access:https://www.mdpi.com/2304-8158/10/9/2127
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spelling doaj-1910398013c64f2587e920fd0bf3b8c32021-09-26T00:09:34ZengMDPI AGFoods2304-81582021-09-01102127212710.3390/foods10092127Chemometrics in Tandem with Hyperspectral Imaging for Detecting Authentication of Raw and Cooked Mutton RollsHongzhe Jiang0Yi Yang1Minghong Shi2College of Mechanical and Electronic Engineering, Nanjing Forestry University, Nanjing 210037, ChinaBeijing Research Center of Intelligent Equipment for Agriculture, Beijing 100097, ChinaCollege of Mechanical and Electronic Engineering, Nanjing Forestry University, Nanjing 210037, ChinaAuthentication assurance of meat or meat products is critical in the meat industry. Various methods including DNA- or protein-based techniques are accurate for assessing meat authenticity, however, they are destructive, expensive, or laborious. This study explores the feasibility of chemometrics in tandem with hyperspectral imaging (HSI) for identifying raw and cooked mutton rolls substitution by pork and duck rolls. Raw or cooked samples (<i>n</i> = 180) of three meat species were prepared to collect hyperspectral images in range of 400–1000 nm. Spectra were extracted from representative regions of interest (ROIs), and spectral principal component analysis (PCA) revealed that PC<sub>1</sub> and PC<sub>2</sub> were effective for the identification. Different methods including standard normal variable (SNV), first and second derivatives, and normalization were individually employed for spectral preprocessing, and modeling methods of partial least squares-discriminant analysis (PLS-DA) and support vector machines (SVM) were also individually applied to develop classification models for both the raw and the cooked. Results showed that PLS-DA model developed by raw spectra presented the highest 100% correct classification rate (CCR) of success in all sets. After that, effective wavelengths selected by successive projections algorithm (SPA) built optimal simplified models which didn’t influence the modeling results compared with full spectra regardless of the meat roll states. Therefore, SPA-PLS-DA models were subsequently used to visualize the raw and cooked meat rolls classification. As a consequence, the general meat species of both raw and cooked meat rolls were readily discernible in pixel-wise manner by generating classification maps. The results showed that HSI combined with chemometrics can be used to identify the authentication of raw and cooked mutton rolls substituted by pork and duck rolls accurately. This promising methodology provides a reference which can be extended to the classification or grading of other meat rolls.https://www.mdpi.com/2304-8158/10/9/2127hyperspectral imagingmeat rollschemometricsvisualizationmeats substitution
collection DOAJ
language English
format Article
sources DOAJ
author Hongzhe Jiang
Yi Yang
Minghong Shi
spellingShingle Hongzhe Jiang
Yi Yang
Minghong Shi
Chemometrics in Tandem with Hyperspectral Imaging for Detecting Authentication of Raw and Cooked Mutton Rolls
Foods
hyperspectral imaging
meat rolls
chemometrics
visualization
meats substitution
author_facet Hongzhe Jiang
Yi Yang
Minghong Shi
author_sort Hongzhe Jiang
title Chemometrics in Tandem with Hyperspectral Imaging for Detecting Authentication of Raw and Cooked Mutton Rolls
title_short Chemometrics in Tandem with Hyperspectral Imaging for Detecting Authentication of Raw and Cooked Mutton Rolls
title_full Chemometrics in Tandem with Hyperspectral Imaging for Detecting Authentication of Raw and Cooked Mutton Rolls
title_fullStr Chemometrics in Tandem with Hyperspectral Imaging for Detecting Authentication of Raw and Cooked Mutton Rolls
title_full_unstemmed Chemometrics in Tandem with Hyperspectral Imaging for Detecting Authentication of Raw and Cooked Mutton Rolls
title_sort chemometrics in tandem with hyperspectral imaging for detecting authentication of raw and cooked mutton rolls
publisher MDPI AG
series Foods
issn 2304-8158
publishDate 2021-09-01
description Authentication assurance of meat or meat products is critical in the meat industry. Various methods including DNA- or protein-based techniques are accurate for assessing meat authenticity, however, they are destructive, expensive, or laborious. This study explores the feasibility of chemometrics in tandem with hyperspectral imaging (HSI) for identifying raw and cooked mutton rolls substitution by pork and duck rolls. Raw or cooked samples (<i>n</i> = 180) of three meat species were prepared to collect hyperspectral images in range of 400–1000 nm. Spectra were extracted from representative regions of interest (ROIs), and spectral principal component analysis (PCA) revealed that PC<sub>1</sub> and PC<sub>2</sub> were effective for the identification. Different methods including standard normal variable (SNV), first and second derivatives, and normalization were individually employed for spectral preprocessing, and modeling methods of partial least squares-discriminant analysis (PLS-DA) and support vector machines (SVM) were also individually applied to develop classification models for both the raw and the cooked. Results showed that PLS-DA model developed by raw spectra presented the highest 100% correct classification rate (CCR) of success in all sets. After that, effective wavelengths selected by successive projections algorithm (SPA) built optimal simplified models which didn’t influence the modeling results compared with full spectra regardless of the meat roll states. Therefore, SPA-PLS-DA models were subsequently used to visualize the raw and cooked meat rolls classification. As a consequence, the general meat species of both raw and cooked meat rolls were readily discernible in pixel-wise manner by generating classification maps. The results showed that HSI combined with chemometrics can be used to identify the authentication of raw and cooked mutton rolls substituted by pork and duck rolls accurately. This promising methodology provides a reference which can be extended to the classification or grading of other meat rolls.
topic hyperspectral imaging
meat rolls
chemometrics
visualization
meats substitution
url https://www.mdpi.com/2304-8158/10/9/2127
work_keys_str_mv AT hongzhejiang chemometricsintandemwithhyperspectralimagingfordetectingauthenticationofrawandcookedmuttonrolls
AT yiyang chemometricsintandemwithhyperspectralimagingfordetectingauthenticationofrawandcookedmuttonrolls
AT minghongshi chemometricsintandemwithhyperspectralimagingfordetectingauthenticationofrawandcookedmuttonrolls
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