College of Information Engineering, Sichuan Agricultural University, Xin Kang Road, Yucheng District, Ya'an 625014, PR China.
College of Science, Sichuan Agricultural University, Xin Kang Road, Yucheng District, Ya'an 625014, PR China.
J Hazard Mater. 2022 Mar 15;426:128091. doi: 10.1016/j.jhazmat.2021.128091. Epub 2021 Dec 16.
Azodicarbonamide (ADA) in flour can be easily decomposed to semi-carbazide and biuret, exhibiting strong genotoxicity in vitro and carcinogenicity. Glutathione (GSH) can be conjugated with some ketone-containing compounds and unsaturated aldehydes to form toxic metabolites. Here, a novel ratio fluorescence probe based on blue emitting biomass-derived carbon dots (BCDs) and yellow emitting 2,3-diaminophenazine (OxOPD) was prepared for the bifunctional determination of glutathione (GSH) and ADA. This strategy includes three processes: (1) Ag oxidizes o-phenylenediamine (OPD) to produce OxOPD. The peak at 562 nm was enhanced, and the peak at 442 nm was reduced due to fluorescence resonance energy transfer (FRET), (2) glutathione binds Ag and inhibits the production of OxOPD, (3) ADA oxidizes GSH to form GSSG, resulting in the release of Ag by GSH. Therefore, the newly designed ratio fluorescence probe can be based on the intensity ratio (I/I) changes and significant fluorescent color changes to detect GSH and ADA. Moreover, a smartphone WeChat applet and a yolov3-assisted deep learning classification model have been developed to quickly detect GSH and ADA on-site based on an image processing algorithm. These results indicate that smartphone ratiometric fluorescence sensing combined with machine learning has broad prospects for biomedical analysis.
面粉中的偶氮二甲酰胺(ADA)很容易分解为半卡巴肼和缩二脲,在体外表现出很强的遗传毒性和致癌性。谷胱甘肽(GSH)可以与一些含酮的化合物和不饱和醛结合,形成有毒的代谢物。在这里,我们制备了一种新型比率荧光探针,基于蓝色发射的生物质衍生碳点(BCDs)和黄色发射的 2,3-二氨基吩嗪(OxOPD),用于双功能测定谷胱甘肽(GSH)和 ADA。该策略包括三个过程:(1)Ag 将邻苯二胺(OPD)氧化生成 OxOPD。由于荧光共振能量转移(FRET),562nm 处的峰增强,而 442nm 处的峰减弱;(2)谷胱甘肽结合 Ag 并抑制 OxOPD 的生成;(3)ADA 将 GSH 氧化形成 GSSG,导致 GSH 将 Ag 释放。因此,新设计的比率荧光探针可以根据强度比(I/I)的变化和显著的荧光颜色变化来检测 GSH 和 ADA。此外,我们还开发了基于图像处理算法的智能手机微信小程序和 yolov3 辅助深度学习分类模型,用于现场快速检测 GSH 和 ADA。这些结果表明,智能手机比率荧光传感结合机器学习在生物医学分析中有广阔的应用前景。