Joint Institute for Food Safety and Applied Nutrition, University of Maryland, 2134 Patapsco Building, College Park, Maryland 20742.
U.S. Food and Drug Administration, Center for Food Safety and Applied Nutrition, Office of Regulatory Science, 5001 Campus Drive, College Park, Maryland 20740, USA.
J Food Prot. 2020 May 1;83(5):881-889. doi: 10.4315/JFP-19-563.
Simple, fast, and accurate analytical techniques for verifying the accuracy of label declarations for marine oil dietary supplements containing eicosapentaenoic acid (EPA) and docosahexaenoic acid (DHA) are required because of the increased consumption of these products. We recently developed broad-based partial least squares regression (PLS-R) models to quantify six fatty acids (FAs) and FA classes by using the spectroscopic data from a portable Fourier transform infrared (FTIR) device and a benchtop Fourier transform near infrared (FT-NIR) spectrometer. We developed an improved quantification method for these FAs and FA classes by incorporating a nonlinear calibration approach based on the machine learning technique support vector machines. For the two spectroscopic methods, high accuracy in prediction was indicated by low root mean square error of prediction and by correlation coefficients (R2) close to 1, indicating excellent model performance. The percent accuracy of the support vector regression (SV-R) model predicted values for EPA and DHA in the reference material was 90 to 110%. In comparison to PLS-R, SV-R accuracy for prediction of FA and FA class concentrations was up to 2.4 times higher for both ATR-FTIR and FT-NIR spectroscopic data. The SV-R models also provided closer agreement with the certified and reference values for the prediction of EPA and DHA in the reference standard. Based on our findings, the SV-R methods had superior accuracy and predictive quality for predicting the FA concentrations in marine oil dietary supplements. The combination of SV-R with ATR-FTIR and/or FT-NIR spectroscopic data can potentially be applied for the rapid screening of marine oil products to verify the accuracy of label declarations.
由于对含有二十碳五烯酸 (EPA) 和二十二碳六烯酸 (DHA) 的海洋鱼油膳食补充剂的需求增加,因此需要简单、快速和准确的分析技术来验证标签声明的准确性。我们最近开发了基于广泛的偏最小二乘回归 (PLS-R) 模型,通过使用便携式傅里叶变换红外 (FTIR) 设备和台式傅里叶变换近红外 (FT-NIR) 光谱仪的光谱数据来定量六种脂肪酸 (FA) 和 FA 类。我们通过结合基于机器学习技术支持向量机的非线性校准方法,开发了一种改进的 FA 和 FA 类定量方法。对于这两种光谱方法,低预测均方根误差和接近 1 的相关系数 (R2) 表明了高精度的预测,表明了出色的模型性能。支持向量回归 (SV-R) 模型对参考物质中 EPA 和 DHA 的预测值的准确率为 90% 至 110%。与 PLS-R 相比,SV-R 对 FA 和 FA 类浓度的预测准确性对于 ATR-FTIR 和 FT-NIR 光谱数据而言高达 2.4 倍。SV-R 模型在预测参考标准中的 EPA 和 DHA 时,与认证值和参考值的一致性也更高。基于我们的研究结果,SV-R 方法在预测海洋鱼油膳食补充剂中的 FA 浓度方面具有更高的准确性和预测质量。SV-R 方法与 ATR-FTIR 和/或 FT-NIR 光谱数据的结合有可能应用于快速筛选海洋油产品,以验证标签声明的准确性。