Fusion of near-infrared and Raman spectroscopy with machine learning strategies: Non-destructive rapid assessment of freshness and TVB-N value prediction in Pacific white shrimp (Litopenaeus vannamei).
Journal:
Food research international (Ottawa, Ont.)
Published Date:
May 7, 2025
Abstract
Total volatile base nitrogen (TVB-N) is a key indicator of shrimp freshness. Nevertheless, traditional detection methods are cumbersome, time-intensive, and destructive. Here, a rapid and non-destructive method based on near-infrared (NIR) and Raman spectroscopy for the assessment of TVB-N content in Litopenaeus vannamei was proposed. A TVB-N content prediction model was constructed based on three machine learning methods (Convolutional Neural Network, Extreme Learning Machine, and Backpropagation) combined with low-level and mid-level data fusion strategies. After Savitzky-Golay (SG) smoothing preprocessing, the NIR model with SPA feature extraction (coefficient of determination for prediction, Rp = 0.864) outperformed the Raman model with GA feature extraction (Rp = 0.784), with both being the optimal feature-level prediction models for their respective spectra. Furthermore, the combination of mid-level data fusion strategy and the Extreme Learning Machine model resulted in the best prediction performance, with Rp and root mean square error of prediction (RMSEP) values of 0.986 and 0.677 mg/100 g, respectively. Additionally, the feature-level fusion models optimized by the feature selection algorithm showed R values all exceeding 0.96. These results demonstrate the complementary advantages of NIR and Raman spectroscopy for non-destructive, real-time freshness monitoring of shrimp using portable instruments.