Hamdy Omnia, Abdel-Salam Zienab, Abdel-Harith Mohamed
Appl Opt. 2022 Dec 1;61(34):10260-10266. doi: 10.1364/AO.470835.
Fish is an essential source of many nutrients necessary for human health. However, the deliberate mislabeling of similar fish fillet types is common in markets to make use of the relatively high price difference. This is a type of explicit food adulteration. In the present work, spectrochemical analysis and chemometric methods are adopted to disclose this type of fish species cheating. Laser-induced breakdown spectroscopy (LIBS) was utilized to differentiate between the fillets of the low-priced tilapia and the expensive Nile perch. Furthermore, the acquired spectroscopic data were analyzed statistically using principal component analysis (PCA) and artificial neural network (ANN) showing good discrimination in the PCA score plot and a 99% classification accuracy rate of the implemented ANN model. The recorded spectra of the two fish indicated that tilapia has a higher fat content than Nile perch, as evidenced by higher CN and C2 bands and an atomic line at 247.8 nm in its spectrum. The obtained results demonstrated the potential of using LIBS as a simple, fast, and cost-effective analytical technique, combined with statistical analysis for the decisive discrimination between fish fillet species.
鱼类是人类健康所需多种营养物质的重要来源。然而,市场上常见故意将相似鱼片类型误标,以利用相对较大的价格差异。这是一种明显的食品掺假行为。在本研究中,采用光谱化学分析和化学计量学方法来揭露这种鱼类品种欺诈行为。利用激光诱导击穿光谱法(LIBS)区分低价罗非鱼和高价尼罗河鲈鱼的鱼片。此外,使用主成分分析(PCA)和人工神经网络(ANN)对获取的光谱数据进行统计分析,在PCA得分图中显示出良好的区分效果,且所实施的ANN模型分类准确率达到99%。两种鱼的记录光谱表明,罗非鱼的脂肪含量高于尼罗河鲈鱼,其光谱中较高的CN和C2带以及247.8 nm处的原子线证明了这一点。所得结果表明,LIBS作为一种简单、快速且经济高效的分析技术,结合统计分析用于决定性地区分鱼片品种具有潜力。