The Modernization Engineering Technology Research Center of Ethnic Minority Medicine of Hubei Province, School of Pharmaceutical Sciences, South-Central University for Nationalities, Wuhan 430074, PR China.
College of Material and Chemical Engineering, Tongren University, Tongren 554300, Guizhou, PR China.
Anal Chim Acta. 2018 May 30;1008:103-110. doi: 10.1016/j.aca.2017.12.042. Epub 2018 Jan 6.
Fluorescent "turn-off" sensors based on double quantum dots (QDs) has attracted increasing attention in the detection of many materials due to their properties such as more useful information, higher fluorescence efficiency and stability compared with the fluorescent "turn-off" sensors based on single QDs. In this work, highly sensitive and specific method for recognition of 53 different famous green teas was developed based on the fluorescent "turn-off" model with water-soluble ZnCdSe-CdTe double QDs. The fluorescence of the two QDs can be quenched by different teas with varying degrees, which results in the differences in positions and intensities of two peaks. By the combination of classic partial least square discriminant analysis (PLSDA), all the green teas can be discriminated with high sensitivity, specificity and a satisfactory recognition rate of 100% for training set and 100% for prediction set, respectively. The fluorescent "turn-off" sensors based on the single QDs (either ZnCdSe QDs or CdTe QDs) coupled with PLSDA were also employed to recognize the 53 famous green teas with unsatisfactory results. Therefore, the fluorescent "turn-off" sensors based on the double QDs is more appropriate for the large-class-number classification (LCNC) of green teas. Herein, we have demonstrated, for the first time, that so many kinds of famous green teas can be discriminated by the "turn-off" model of double QDs combined with chemometrics, which has largely extended the capability of traditional fluorescence and chemometrics, as well as exhibits great potential to perform LCNC in other practical applications.
基于双量子点(QD)的荧光“关闭”传感器由于其比基于单个 QD 的荧光“关闭”传感器具有更多有用的信息、更高的荧光效率和稳定性等特性,因此在许多材料的检测中引起了越来越多的关注。在这项工作中,基于水溶性 ZnCdSe-CdTe 双 QD 的荧光“关闭”模型,开发了一种用于识别 53 种不同名优绿茶的高灵敏度和特异性方法。两种 QD 的荧光可以被不同的茶以不同的程度猝灭,这导致了两个峰的位置和强度的差异。通过经典的偏最小二乘判别分析(PLSDA)的组合,所有的绿茶都可以被高灵敏度、特异性和令人满意的识别率 100%(训练集)和 100%(预测集)来区分。基于单 QD(ZnCdSe QD 或 CdTe QD)与 PLSDA 结合的荧光“关闭”传感器也被用于识别 53 种名优绿茶,但结果并不理想。因此,基于双 QD 的荧光“关闭”传感器更适合于绿茶的大类别数分类(LCNC)。在这里,我们首次证明了,通过双 QD 与化学计量学相结合的“关闭”模型,可以区分如此多种名优绿茶,这大大扩展了传统荧光和化学计量学的能力,并在其他实际应用中表现出了进行 LCNC 的巨大潜力。