Litcius/Paper detail

A Statistical Approach of Background Removal and Spectrum Identification for SERS Data

Chuanqi Wang, Lifu Xiao, Chen Dai, Anh H. Nguyen, Laurie E. Littlepage, Zachary D. Schultz, Jun Li

2020Scientific Reports16 citationsDOIOpen Access PDF

Abstract

SERS (surface-enhanced Raman scattering) enhances the Raman signals, but the plasmonic effects are sensitive to the chemical environment and the coupling between nanoparticles, resulting in large and variable backgrounds, which make signal matching and analyte identification highly challenging. Removing background is essential, but existing methods either cannot fit the strong fluctuation of the SERS spectrum or do not consider the spectra's shape change across time. Here we present a new statistical approach named SABARSI that overcomes these difficulties by combining information from multiple spectra. Further, after efficiently removing the background, we have developed the first automatic method, as a part of SABARSI, for detecting signals of molecules and matching signals corresponding to identical molecules. The superior efficiency and reproducibility of SABARSI are shown on two types of experimental datasets.

Topics & Concepts

Raman scatteringAnalyteIdentification (biology)Matching (statistics)Computer scienceRaman spectroscopySIGNAL (programming language)Biological systemPattern recognition (psychology)Spectral linePlasmonCoupling (piping)Materials scienceAnalytical Chemistry (journal)Artificial intelligenceChemistryPhysicsOpticsOptoelectronicsStatisticsMathematicsChromatographyAstronomyMetallurgyBotanyBiologyProgramming languageSpectroscopy Techniques in Biomedical and Chemical ResearchGold and Silver Nanoparticles Synthesis and ApplicationsSpectroscopy and Chemometric Analyses
A Statistical Approach of Background Removal and Spectrum Identification for SERS Data | Litcius