Canadian Food Inspection Agency, Greater Toronto Area Laboratory, 2301 Midland Avenue, Toronto, ON M1P 4R7, Canada.
Canadian Food Inspection Agency, 1400 Merivale Road, Ottawa, ON K1A 0Y9, Canada.
Spectrochim Acta A Mol Biomol Spectrosc. 2024 Dec 5;322:124771. doi: 10.1016/j.saa.2024.124771. Epub 2024 Jul 3.
Packaged coconut water offers various options, from pure to those with added sugars and other additives. While the purity of coconut water is esteemed for its health benefits, its popularity also exposes it to potential adulteration and misrepresentation. To address this concern, our study combines Fourier transform infrared spectroscopy (FTIR) and machine learning techniques to detect potential adulterants in coconut water through classification models. The dataset comprises infrared spectra from coconut water samples spiked with 15 different types of potential sugar substitutes, including: sugars, artificial sweeteners, and sugar alcohols. The interaction of infrared light with molecular bonds generates unique molecular fingerprints, forming the basis of our analysis. Departing from previous research predominantly reliant on linear-based chemometrics for adulterant detection, our study explored linear, non-linear, and combined feature extraction models. By developing an interactive application utilizing principal component analysis (PCA) and t-distributed stochastic neighbor embedding (t-SNE), non-targeted sugar adulterant detection was streamlined through enhanced visualization and pattern recognition. Targeted analysis using ensemble learning random forest (RF) and deep learning 1-dimensional convolutional neural network (1D CNN) achieved higher classification accuracies (95% and 96%, respectively) compared to sparse partial least squares discriminant analysis (sPLS-DA) at 77% and support vector machine (SVM) at 88% on the same dataset. The CNN's demonstrated classification accuracy is complemented by exceptional efficiency through its ability to train and test on raw data.
包装椰子水提供了各种选择,从纯椰子水到添加糖和其他添加剂的椰子水。虽然椰子水的纯净度因其对健康的益处而受到推崇,但它的受欢迎程度也使其容易受到潜在的掺假和虚假陈述的影响。为了解决这个问题,我们的研究结合了傅里叶变换红外光谱(FTIR)和机器学习技术,通过分类模型来检测椰子水中潜在的掺杂物。该数据集包括用 15 种不同类型的潜在糖替代品(包括糖、人工甜味剂和糖醇)掺杂的椰子水样本的红外光谱。红外光与分子键的相互作用产生独特的分子指纹,构成了我们分析的基础。与之前主要依赖线性化学计量学进行掺杂物检测的研究不同,我们的研究探索了线性、非线性和组合特征提取模型。通过开发一个利用主成分分析(PCA)和 t 分布随机邻域嵌入(t-SNE)的交互式应用程序,通过增强可视化和模式识别,简化了非靶向糖掺杂物的检测。使用集成学习随机森林(RF)和深度学习一维卷积神经网络(1D CNN)进行的靶向分析分别实现了 95%和 96%的更高分类准确率,而稀疏偏最小二乘判别分析(sPLS-DA)在同一数据集上的准确率为 77%,支持向量机(SVM)为 88%。CNN 的分类准确率很高,而且它还具有通过处理原始数据进行训练和测试的出色效率。