49: Functional Regression for SERS Spectrum Transformation Across Diverse Instruments

Tao Wang First Author
 
Tao Wang Presenting Author
 
Tuesday, Aug 5: 10:30 AM - 12:20 PM
2751 
Contributed Posters 
Music City Center 
Surface-enhanced Raman spectroscopy (SERS) holds remarkable potential for the rapid and portable detection of trace molecules. However, the analysis and comparison of SERS spectra are challenging due to the diverse range of instruments used for data acquisition. A spectra instrument transformation framework based on the penalized functional regression model (SpectraFRM) is introduced for cross-instrument mapping with subsequent machine learning classification to compare transformed spectra with standard spectra. In particular, the nonparametric forms of the functional response, predictors, and coefficients employed in SepctraFRM allow for efficient modeling of the nonlinear relationship between target spectra and standard spectra. With an additional feature extraction step, the transformed spectra outperform the original spectra by 10% in analytes identification tasks. Overall, the proposed method is shown to be flexible, robust, accurate, and interpretable despite varieties of analytes and instruments, making it a potentially powerful tool for the standardization of SERS spectra from various instruments.

Keywords

Functional Regression

spectrum transformation

surface-enhanced Raman scattering 

Main Sponsor

Section on Statistical Learning and Data Science