School of Food and Biological Engineering, Jiangsu University, Zhenjiang 212013, PR China.
College of Food and Biological Engineering, Jimei University, Xiamen, 361021, PR China.
Food Chem. 2024 Dec 15;461:140798. doi: 10.1016/j.foodchem.2024.140798. Epub 2024 Aug 8.
Pork batter quality significantly affects its product. Herein, this study explored the use of Raman spectroscopy combined with deep learning algorithms for rapidly detecting pork batter quality and revealing the mechanisms of quality changes during heating. Results showed that heating increased β-sheet content (from 26.38 to 41.42%) and exposed hidden hydrophobic groups, which formed aggregates through chemical bonds. Dominant hydrophobic interactions further cross-linked these aggregates, establishing a more homogeneous and denser network at 80 °C. Subsequently, convolutional neural networks (CNN), long short-term memory neural networks (LSTM), and CNN-LSTM were comparatively used to predict gel strength and whiteness in batters based on the Raman spectrum. Thereinto, CNN-LSTM provided the optimal results for gel strength (Rp = 0.9515, RPD = 3.1513) and whiteness (Rp = 0.9383, RPD = 3.0152). Therefore, this study demonstrated the potential of Raman spectroscopy combined with deep learning algorithms as non-destructive tools for predicting pork batter quality and elucidating quality change mechanisms.
猪肉面糊的质量会显著影响其产品。在此,本研究探索了使用拉曼光谱结合深度学习算法来快速检测猪肉面糊的质量,并揭示其在加热过程中质量变化的机制。结果表明,加热会增加β-折叠含量(从 26.38%增加到 41.42%)并暴露隐藏的疏水性基团,这些基团通过化学键形成聚集体。占主导地位的疏水相互作用进一步交联这些聚集体,在 80°C 时形成更均匀、更致密的网络。随后,比较了卷积神经网络(CNN)、长短期记忆神经网络(LSTM)和 CNN-LSTM 基于拉曼光谱预测面糊凝胶强度和白度的能力。其中,CNN-LSTM 为凝胶强度(Rp=0.9515,RPD=3.1513)和白度(Rp=0.9383,RPD=3.0152)提供了最佳结果。因此,本研究证明了拉曼光谱结合深度学习算法作为预测猪肉面糊质量和阐明质量变化机制的非破坏性工具的潜力。