Wang Degui, Yu Long, Li Xin, Lu Yunfei, Niu Chaoqun, Fan Penghui, Zhu Houjuan, Chen Bing, Wang Suhua
School of Environment and Energy, South China University of Technology, Guangzhou 510006, People's Republic of China; School of Environmental Science and Engineering, Guangdong University of Petrochemical Technology, Maoming 525000, People's Republic of China.
School of Environmental Science and Engineering, Guangdong University of Petrochemical Technology, Maoming 525000, People's Republic of China.
J Hazard Mater. 2024 Feb 15;464:132950. doi: 10.1016/j.jhazmat.2023.132950. Epub 2023 Nov 7.
Sulfides possess either high toxicity or play crucial physiological role such as gas transmitter dependent upon dosage, hence the significant for their rapid sensitive and selective concentration determination. Herein, a machine learning enhanced ratiometric fluorescence sensor was engineered for sulfide determination by incorporating the nanometal-organic framework (UiO-66-NH) along with protoporphyrin IX (Ppix). The blue fluorescence at 431 nm originated from the moiety of UiO-66-NH by 365 nm excitation serves as an internal calibration reference signal, while the red fluorescence at 629 nm from the moiety of Ppix serves as the analytical signal, and the intensity is correlated to the amount of sulfides. The fluorescence color of the sensor gradually varies from blue to red upon sequential addition of copper and sulfide ions, resulting in RGB (Red, Green, Blue) feature values for corresponding sulfide concentrations, which facilities the advanced data processing techniques using machine learning algorithms. On the basis of fluorescence image fingerprint extraction and machine learning algorithms, an online data analysis model was developed to improve the precision and accuracy of sulfide determination. The established model employed Linear Discriminant Analysis (LDA) and was subjected to rigorous cross-validation to ensure its robustness. By analyzing the correlation between RGB feature values and sulfide concentrations, the study highlighted a significant positive relationship between the red feature values and sulfide concentrations. The application of machine learning techniques on the ratiometric fluorescence signal of the UiO-66-NH/Ppix probe demonstrated its potential for intelligent quantitative determination of sulfides, offering a valuable and efficient tool for pollution detection and real-time rapid environmental monitoring.
硫化物根据剂量的不同,要么具有高毒性,要么发挥关键的生理作用,如气体递质,因此快速、灵敏且选择性地测定其浓度具有重要意义。在此,通过将纳米金属有机框架(UiO-66-NH)与原卟啉IX(Ppix)结合,设计了一种机器学习增强的比率荧光传感器用于硫化物测定。在365nm激发下,UiO-66-NH部分产生的431nm处的蓝色荧光用作内部校准参考信号,而Ppix部分产生的629nm处的红色荧光用作分析信号,其强度与硫化物的量相关。随着铜离子和硫离子的依次加入,传感器的荧光颜色逐渐从蓝色变为红色,从而得到对应硫化物浓度的RGB(红、绿、蓝)特征值,这便于使用机器学习算法进行先进的数据处理技术。基于荧光图像指纹提取和机器学习算法,开发了一种在线数据分析模型,以提高硫化物测定的精度和准确性。所建立的模型采用线性判别分析(LDA),并经过严格的交叉验证以确保其稳健性。通过分析RGB特征值与硫化物浓度之间的相关性,该研究突出了红色特征值与硫化物浓度之间的显著正相关关系。机器学习技术在UiO-66-NH/Ppix探针比率荧光信号上的应用证明了其在硫化物智能定量测定方面的潜力,为污染检测和实时快速环境监测提供了一种有价值且高效的工具。