化学
拉曼光谱
生物系统
跟踪(心理语言学)
灵敏度(控制系统)
定性分析
分析化学(期刊)
概化理论
信号(编程语言)
光谱学
高光谱成像
模式识别(心理学)
人工智能
吸附
色谱法
肉眼
忠诚
拉曼散射
亮度
化学计量学
定量分析(化学)
作者
Si-Heng Luo,Jing Xu,Wei Li Wang,Chen-ru Xiong,Lu Ping. Wang,Zhong-Qun Tian,Guo Kun Liu,Si-Heng Luo,Jing Xu,Wei Li Wang,Chen-ru Xiong,Lu Ping. Wang,Zhong-Qun Tian,Guo Kun Liu
摘要
Surface-enhanced Raman spectroscopy (SERS) is a powerful tool for spectrum-structure correlation across various fields. However, the qualitative and quantitative analysis of SERS to trace targets is often compromised due to the coadsorption and competitive adsorption from nontargets in complex systems. To unmix and identify the SERS signal of a target within a mixture SERS spectrum, we develop SSNet, an intelligent and self-supervised algorithm. Taking the trace detection of gelsemium phytotoxin in various food samples as an example, SSNet performs with high fidelity across the core qualitative and quantitative benchmarks: Raman peak intensity, peak position, and relative intensity. Without any prior knowledge of the matrix, SSNet achieved expert-level qualitative sensitivity. With the knowledge of similar matrices, the sensitivity was an order of magnitude higher than that of an expert, even when the SERS signal of the target is invisible to the naked eye. The ability to unmix SERS signals of multiple targets is further demonstrated using the three structurally similar gelsemium phytotoxins. The exceptional performance and generalizability of SSNet enhance the on-site, in situ, in vivo, and operando applications of Raman/SERS.
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