Predicting Animal Welfare Labels from Pork Fat Using Raman Spectroscopy and Chemometrics

Katarzyna M. Szykuła, Tim Offermans, O. Lischtschenko, J. Meurs, D. Guenther, Yvette D. Mattley, M. Jaeger, M. Honing
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Abstract

The awareness of the origin of meat that people consume is rapidly increasing today and with that increases the demand for fast and accurate methods for its distinction. In this work, we present for the first time the application of Raman spectroscopy using a portable spectrometer for the classification of pork. Breeding conditions were distinguished from spectral differences of adipose tissues. The pork samples were obtained from Dutch vendors, from supermarkets with quality marks of 1 and 3 stars, and from a local butcher shop. In total, 60 fat samples were examined using a fiber-optic-coupled Raman spectrometer. Recorded spectra were preprocessed before being subjected to multivariate statistical analysis. An initial data exploration using Principal Component Analysis (PCA) revealed a separation of adipose tissue samples between the lower supermarket quality grade and the samples from the local butcher. Moreover, predictive modeling using Partial Least Squares Discriminant Analysis (PLS-DA) resulted in 96.67% classification accuracy for all three sources, demonstrating the suitability of the presented method for intraspecies meat classification and the potential on-site use.
利用拉曼光谱和化学计量学预测猪油中的动物福利标签
今天,人们对肉类来源的认识正在迅速提高,这就增加了对快速准确区分肉类来源的方法的需求。在这项工作中,我们首次介绍了使用便携式光谱仪的拉曼光谱在猪肉分类中的应用。通过脂肪组织的光谱差异来区分育种条件。猪肉样本来自荷兰供应商、质量标志为1星和3星的超市以及当地一家肉店。总共使用光纤耦合拉曼光谱仪检测了60个脂肪样品。记录的光谱在进行多元统计分析之前进行预处理。使用主成分分析(PCA)进行的初步数据探索显示,超市质量等级较低的脂肪组织样本与当地肉店的样本之间存在分离。此外,利用偏最小二乘判别分析(PLS-DA)进行预测建模,对所有三个来源的分类准确率为96.67%,证明了该方法对种内肉类分类的适用性和现场应用的潜力。
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