组分(热力学)
化学
拉曼光谱
化学计量学
生物系统
表面增强拉曼光谱
谱线
色谱法
分析化学(期刊)
拉曼散射
物理
天文
生物
光学
热力学
作者
Mary M. Bajomo,Yilong Ju,Jingyi Zhou,Simina Elefterescu,Corbin Farr,Yiping Zhao,Oara Neumann,Peter Nordlander,Ankit Patel,Naomi J. Halas
标识
DOI:10.1073/pnas.2211406119
摘要
Surface-enhanced Raman spectroscopy (SERS) holds exceptional promise as a streamlined chemical detection strategy for biological and environmental contaminants compared with current laboratory methods. Priority pollutants such as polycyclic aromatic hydrocarbons (PAHs), detectable in water and soil worldwide and known to induce multiple adverse health effects upon human exposure, are typically found in multicomponent mixtures. By combining the molecular fingerprinting capabilities of SERS with the signal separation and detection capabilities of machine learning (ML), we examine whether individual PAHs can be identified through an analysis of the SERS spectra of multicomponent PAH mixtures. We have developed an unsupervised ML method we call Characteristic Peak Extraction, a dimensionality reduction algorithm that extracts characteristic SERS peaks based on counts of detected peaks of the mixture. By analyzing the SERS spectra of two-component and four-component PAH mixtures where the concentration ratios of the various components vary, this algorithm is able to extract the spectra of each unknown component in the mixture of unknowns, which is then subsequently identified against a SERS spectral library of PAHs. Combining the molecular fingerprinting capabilities of SERS with the signal separation and detection capabilities of ML, this effort is a step toward the computational demixing of unknown chemical components occurring in complex multicomponent mixtures.
科研通智能强力驱动
Strongly Powered by AbleSci AI