RIKEN Center for Sustainable Resource Science, 1-7-22 Suehiro-cho, Tsurumi-ku, Yokohama 235-0045, Japan.
Graduate School of Medical Life Science, Yokohama City University, 1-7-29 Suehirocho, Tsurumi-ku, Yokohama 230-0045, Japan.
Molecules. 2020 Apr 23;25(8):1966. doi: 10.3390/molecules25081966.
Conventional proton nuclear magnetic resonance (H-NMR) has been widely used for identification and quantification of small molecular components in food. However, identification of major soluble macromolecular components from conventional H-NMR spectra is difficult. This is because the baseline appearance is masked by the dense and high-intensity signals from small molecular components present in the sample mixtures. In this study, we introduced an integrated analytical strategy based on the combination of additional measurement using a diffusion filter, covariation peak separation, and matrix decomposition in a small-scale training dataset. This strategy is aimed to extract signal profiles of soluble macromolecular components from conventional H-NMR spectral data in a large-scale dataset without the requirement of re-measurement. We applied this method to the conventional H-NMR spectra of water-soluble fish muscle extracts and investigated the distribution characteristics of fish diversity and muscle soluble macromolecular components, such as lipids and collagens. We identified a cluster of fish species with low content of lipids and high content of collagens in muscle, which showed great potential for the development of functional foods. Because this mechanical data processing method requires additional measurement of only a small-scale training dataset without special sample pretreatment, it should be immediately applicable to extract macromolecular signals from accumulated conventional H-NMR databases of other complex gelatinous mixtures in foods.
常规质子核磁共振(H-NMR)已广泛用于食品中小分子成分的鉴定和定量。然而,从常规 H-NMR 谱中鉴定主要可溶性大分子成分是困难的。这是因为基线外观被样品混合物中存在的小分子成分的密集和高强度信号所掩盖。在这项研究中,我们引入了一种基于附加测量、共变峰分离和小规模训练数据集的矩阵分解相结合的综合分析策略。该策略旨在从大规模数据集的常规 H-NMR 光谱数据中提取可溶性大分子成分的信号轮廓,而无需重新测量。我们将该方法应用于水溶性鱼肌肉提取物的常规 H-NMR 光谱,并研究了鱼类多样性和肌肉可溶性大分子成分(如脂质和胶原蛋白)的分布特征。我们鉴定出了一组鱼类,其肌肉中的脂质含量低,胶原蛋白含量高,具有开发功能性食品的巨大潜力。因为这种机械数据处理方法只需要对小规模训练数据集进行额外的测量,而不需要特殊的样品预处理,所以它应该可以立即适用于从食品中其他复杂胶状混合物的累积常规 H-NMR 数据库中提取大分子信号。