Prediction of the Fatty Acid Profiles of Iberian Pig Products by Near Infrared Spectroscopy: A Comparison Between Multiple Regression Tools and Artificial Neural Networks

crossref(2024)

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摘要
Abstract In this study the feasibility of predicting the lipid profiles of Iberian ham and shoulder samples by using NIRS technology was evaluated. Gas chromatography analysis was the reference method used. The muscles analyzed and recorded by NIRS were 76 Biceps femoris for Iberian hams and 72Brachiocephalicus for Iberian shoulders. NIR calibrations were carried out by using two methods: modified partial least squares regression (MPLS) and artificial neural networks (ANN). With the MPLS method it was possible to obtain equations with RSQ of > 0.5 for 5 individual fatty acids and 3 summations (PUFA, n-3 and n-6). The use of neural networks made it possible to find equations with RSQ of > 0.5 for 10 individual fatty acids, all of which are present in over 90% of the samples, and 5 summates (SFA, MUFA, PUFA, n-3 and n-6); finding that the calibration curves of the fatty acids C18:1, C18:2n6 and C18:3n3 presented RSQs of > 0.7. The results obtained indicate that NIR spectroscopy could be a very useful technology for the quality control of cured products as it allows estimating the main fatty constituents quickly and without using reagents.
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