INQUISUR, Departamento de Química, Universidad Nacional del Sur (UNS)-CONICET, Av. Alem 1253, B8000CPB Bahía Blanca, Argentina.
Universidade Federal da Paraíba, Departamento de Química, Laboratório de Automação e Instrumentação em Química Analítica/Quimiometria (LAQA), Caixa Postal 5093, 58051-970 João Pessoa, PB, Brazil.
Spectrochim Acta A Mol Biomol Spectrosc. 2018 Jan 15;189:300-306. doi: 10.1016/j.saa.2017.08.046. Epub 2017 Aug 17.
Determining fat content in hamburgers is very important to minimize or control the negative effects of fat on human health, effects such as cardiovascular diseases and obesity, which are caused by the high consumption of saturated fatty acids and cholesterol. This study proposed an alternative analytical method based on Near Infrared Spectroscopy (NIR) and Successive Projections Algorithm for interval selection in Partial Least Squares regression (iSPA-PLS) for fat content determination in commercial chicken hamburgers. For this, 70 hamburger samples with a fat content ranging from 14.27 to 32.12mgkg were prepared based on the upper limit recommended by the Argentinean Food Codex, which is 20% (ww). NIR spectra were then recorded and then preprocessed by applying different approaches: base line correction, SNV, MSC, and Savitzky-Golay smoothing. For comparison, full-spectrum PLS and the Interval PLS are also used. The best performance for the prediction set was obtained for the first derivative Savitzky-Golay smoothing with a second-order polynomial and window size of 19 points, achieving a coefficient of correlation of 0.94, RMSEP of 1.59mgkg, REP of 7.69% and RPD of 3.02. The proposed methodology represents an excellent alternative to the conventional Soxhlet extraction method, since waste generation is avoided, yet without the use of either chemical reagents or solvents, which follows the primary principles of Green Chemistry. The new method was successfully applied to chicken hamburger analysis, and the results agreed with those with reference values at a 95% confidence level, making it very attractive for routine analysis.
确定汉堡中的脂肪含量对于最小化或控制脂肪对人类健康的负面影响非常重要,这些影响包括心血管疾病和肥胖,这些疾病是由于饱和脂肪酸和胆固醇的高消耗引起的。本研究提出了一种基于近红外光谱(NIR)和连续投影算法(SPA)的替代分析方法,用于偏最小二乘回归(iSPA-PLS)中区间选择,以确定商业鸡肉汉堡中的脂肪含量。为此,根据阿根廷食品法典规定的上限 20%(ww),制备了脂肪含量在 14.27 至 32.12mgkg 之间的 70 个汉堡样品。然后记录 NIR 光谱,并通过应用不同的方法进行预处理:基线校正、SNV、MSC 和 Savitzky-Golay 平滑。为了进行比较,还使用了全光谱 PLS 和区间 PLS。对于预测集,获得了最佳性能,采用一阶导数 Savitzky-Golay 平滑,二阶多项式,窗口大小为 19 个点,相关系数为 0.94,RMSEP 为 1.59mgkg,REP 为 7.69%,RPD 为 3.02。该方法代表了对传统索氏提取方法的极好替代,因为避免了废物的产生,而且无需使用化学试剂或溶剂,遵循绿色化学的主要原则。该新方法成功地应用于鸡肉汉堡的分析,结果在 95%置信水平下与参考值一致,非常适合常规分析。