The Modernization Engineering Technology Research Center of Ethnic Minority Medicine of Hubei Province, School of Pharmaceutical Sciences, South-Central Minzu University, Wuhan 430074, PR China.
Key Laboratory of Pesticide and Chemical Biology, Ministry of Education, College of Chemistry, Central China Normal University, Wuhan 430079, PR China.
Spectrochim Acta A Mol Biomol Spectrosc. 2023 Jan 5;284:121786. doi: 10.1016/j.saa.2022.121786. Epub 2022 Aug 27.
Hangbaiju is highly appreciated flower tea for its health benefits, and its quality and price are affected by geographical origin. Fast and accurate identification of the geographical origin of Hangbaiju is very significant for producers, consumers and market regulators. In this work, hyperspectral imaging combined with chemometrics, was used, for the first time, to explore and implement the geographical origin classification of Hangbaiju. The hyperspectral images in the spectral range of 410-2500 nm for 75 samples of five different origins were collected. As a versatile chemometrics tool, bagging classification tree-radial basis function (BAGCT-RBFN), compared with classification tree (CT), radial basis function network (RBFN), was applied to discriminate Hangbaiju samples from different origins. The results showed that BAGCT-RBFN based on optimal wavelengths yielded superior classification performances to CT and RBFN with full wavelengths. The recognition rates (RR) of the training and prediction sets by BAGCT-RBFN were 96.0 % and 92.0 %, respectively. Hyperspectral imaging combined with chemometric can be considered as a powerful, feasible and convenient tool for the classification of Hangbaiju samples from different origins. It promises to be a potential way for origin discriminant analysis and quality monitor in food fields.
杭白菊因其保健功效而备受推崇,其质量和价格受到地理起源的影响。快速准确地识别杭白菊的地理起源对生产者、消费者和市场监管者都非常重要。在这项工作中,首次结合化学计量学使用高光谱成像技术探索和实施杭白菊的地理起源分类。采集了来自五个不同产地的 75 个样本的光谱范围为 410-2500nm 的高光谱图像。作为一种多功能的化学计量学工具,袋装分类树-径向基函数(BAGCT-RBFN)与分类树(CT)、径向基函数网络(RBFN)相比,应用于区分来自不同产地的杭白菊样本。结果表明,基于最优波长的 BAGCT-RBFN 比全波长的 CT 和 RBFN 具有更好的分类性能。BAGCT-RBFN 对训练集和预测集的识别率(RR)分别为 96.0%和 92.0%。高光谱成像与化学计量学相结合可以被认为是一种强大、可行和方便的工具,用于分类来自不同产地的杭白菊样本。它有望成为食品领域中用于产地判别分析和质量监测的潜在方法。