Research Institute of Pharmaceutical Sciences and College of Pharmacy, Seoul National University, Seoul 08826, Republic of Korea.
National Institute of Agricultural Sciences, Rural Development Administration, Jeonju 54875, Republic of Korea.
Food Res Int. 2017 Oct;100(Pt 1):814-821. doi: 10.1016/j.foodres.2017.08.006. Epub 2017 Aug 4.
The mixing of extraneous ingredients with original products is a common adulteration practice in food and herbal medicines. In particular, authenticity of white rice and its corresponding blended products has become a key issue in food industry. Accordingly, our current study aimed to develop and evaluate a novel discrimination method by combining targeted lipidomics with powerful supervised learning methods, and eventually introduce a platform to verify the authenticity of white rice. A total of 30 cultivars were collected, and 330 representative samples of white rice from Korea and China as well as seven mixing ratios were examined. Random forests (RF), support vector machines (SVM) with a radial basis function kernel, C5.0, model averaged neural network, and k-nearest neighbor classifiers were used for the classification. We achieved desired results, and the classifiers effectively differentiated white rice from Korea to blended samples with high prediction accuracy for the contamination ratio as low as five percent. In addition, RF and SVM classifiers were generally superior to and more robust than the other techniques. Our approach demonstrated that the relative differences in lysoGPLs can be successfully utilized to detect the adulterated mixing of white rice originating from different countries. In conclusion, the present study introduces a novel and high-throughput platform that can be applied to authenticate adulterated admixtures from original white rice samples.
将外来成分与原始产品混合是食品和草药中常见的掺假行为。特别是,白米及其相应混合产品的真实性已成为食品工业的关键问题。因此,我们目前的研究旨在结合靶向脂质组学和强大的监督学习方法开发和评估一种新的鉴别方法,并最终引入一个平台来验证白米的真实性。共收集了 30 个品种,并对来自韩国和中国的 330 个代表性白米样本以及 7 种混合比例进行了检查。随机森林 (RF)、具有径向基函数核的支持向量机 (SVM)、C5.0、模型平均神经网络和 k-最近邻分类器被用于分类。我们取得了预期的结果,分类器有效地将白米与来自韩国的混合样本区分开来,对污染比例低至 5%的样本具有很高的预测准确性。此外,RF 和 SVM 分类器通常优于其他技术,并且更稳健。我们的方法表明,溶血磷脂酰甘油的相对差异可以成功地用于检测来自不同国家的掺假混合白米。总之,本研究介绍了一种新颖的高通量平台,可用于验证原始白米样品中掺杂物的真实性。