Label-free SERS detection of proteins based on machine learning classification of chemo-structural determinants
Academic Article
Publication Date:
2020
abstract:
Establishing standardized methods for a consistent analysis of spectral data remains a largely underexplored aspect in surface-enhanced Raman spectroscopy (SERS), particularly applied to biological and biomedical research. Here we propose an effective machine learning classification of protein species with closely resembled spectral profiles by a mixed data processing based on principal component analysis (PCA) applied to multipeak fitting on SERS spectra. This strategy simultaneously assures a successful discrimination of proteins and a thorough characterization of the chemostructural differences among them, ultimately opening up new routes for SERS evolution toward sensing applications and diagnostics of interest in life sciences.
Iris type:
01.01 Articolo in rivista
Keywords:
machine learning; sers; proteins; classification; PCA; support vector machines
List of contributors:
Amicucci, Chiara; Farnesi, Edoardo; Matteini, Paolo; Barucci, Andrea; Banchelli, Martina; D'Andrea, Cristiano
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