化学
荧光
残余物
猝灭(荧光)
生物系统
传感器阵列
复矩阵
环境化学
口译(哲学)
色谱法
健康风险
特征(语言学)
人工神经网络
荧光光谱法
检出限
生化工程
环境分析
纳米技术
定量分析(化学)
化学传感器
荧光光谱法
作者
Qi An,Ping Gu,Mingxiao Li,Enyu Wang,Yuxuan Yao,Qiannan Duan,Xiaolei Qu,Heyun Fu
标识
DOI:10.1021/acs.analchem.6c00730
摘要
The severe environmental and health risks posed by perfluoroalkyl substances (PFASs), coupled with the limitations of conventional detection methods, have highlighted the urgent need to develop efficient analytical platforms. However, the simultaneous quantification of multiple PFAS targets in complex systems with easy-to-perform operations remains a challenge. Herein we present a sensing platform that integrates a fluorescence sensor array and deep learning algorithm for the quantitative screening of multiple PFASs in water. The approach leveraged the distinct quenching effects induced by different PFAS species on the fluorescence emission of individual array elements (i.e., fluorescent dyes). Through the feature interpretation of the information-rich three-dimensional fluorescence spectra using a residual neural network algorithm, the platform achieved simultaneous and comprehensive quantification of five types of PFASs in complex water samples. This novel strategy not only offers a facile and rapid method for multiple PFAS analysis but also expands the methodological boundaries of analytical sensing.
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