Lu Zhiwei, Chen Maoting, Liu Tao, Wu Chun, Sun Mengmeng, Su Gehong, Wang Xianxiang, Wang Yanying, Yin Huadong, Zhou Xinguang, Ye Jianshan, Shen Yizhong, Rao Hanbing
College of Science, Sichuan Agricultural University, Xinkang Road, Yucheng District, Ya'an 625014, P. R. China.
College of Information Engineering, Sichuan Agricultural University, Xinkang Road, Yucheng District, Ya'an 625014, P. R. China.
ACS Appl Mater Interfaces. 2023 Feb 7. doi: 10.1021/acsami.2c16565.
An optical monitoring device combining a smartphone with a polychromatic ratiometric fluorescence-colorimetric paper sensor was developed to detect Hg and S in water and seafood. This monitoring included the detection of food deterioration and was made possible by processing the sensing data with a machine learning algorithm. The polychromatic fluorescence sensor was composed of blue fluorescent carbon quantum dots (CDs) (BU-CDs) and green and red fluorescent CdZnTe quantum dots (QDs) (named GN-QDs and RD-QDs, respectively). The experimental results and density functional theory (DFT) prove that the incorporation of Zn can improve the stability and quantum yield of CdZnTe QDs. According to the dynamic and static quenching mechanisms, GN-QDs and RD-QDs were quenched by Hg and sulfide, respectively, but BU-CDs were not sensitive to them. The system colors change from green to red to blue as the concentration of the two detectors rises, and the limits of detection (LOD) were 0.002 and 1.488 μM, respectively. Meanwhile, the probe was combined with the hydrogel to construct a visual sensing intelligent test strip, which realized the monitoring of food freshness. In addition, a smartphone device assisted by multiple machine learning methods was used to text Hg and sulfide in real samples. It can be concluded that the fabulous stability, sensitivity, and practicality exhibited by this sensing mechanism give it unlimited potential for assessing the contents of toxic and hazardous substances Hg and sulfide.
开发了一种将智能手机与多色比率荧光 - 比色纸传感器相结合的光学监测装置,用于检测水和海鲜中的汞和硫。这种监测包括对食品变质的检测,通过使用机器学习算法处理传感数据得以实现。多色荧光传感器由蓝色荧光碳量子点(CDs)(BU - CDs)以及绿色和红色荧光碲化镉锌量子点(QDs)(分别命名为GN - QDs和RD - QDs)组成。实验结果和密度泛函理论(DFT)证明,锌的掺入可以提高碲化镉锌量子点的稳定性和量子产率。根据动态和静态猝灭机制,GN - QDs和RD - QDs分别被汞和硫化物猝灭,但BU - CDs对它们不敏感。随着两种检测物浓度的升高,系统颜色从绿色变为红色再变为蓝色,检测限(LOD)分别为0.002和1.488 μM。同时,该探针与水凝胶结合构建了一种视觉传感智能测试条,实现了对食品新鲜度的监测。此外,使用了由多种机器学习方法辅助的智能手机设备对实际样品中的汞和硫化物进行检测。可以得出结论,这种传感机制所展现出的出色稳定性、灵敏度和实用性使其在评估有毒有害物质汞和硫化物含量方面具有无限潜力。