Lectin-Modified Bacterial Cellulose Nanocrystals Decorated
with Au Nanoparticles for Selective Detection of Bacteria Using Surface-Enhanced
Raman Scattering Coupled with Machine Learning
posted on 2022-01-07, 21:43authored byAsifur Rahman, Seju Kang, Wei Wang, Qishen Huang, Inyoung Kim, Peter J. Vikesland
Bacterial
cellulose nanocrystals (BCNCs) are tunable and biocompatible
cellulose nanomaterials that can be easily bioconjugated and used
for biosensing applications. We report the application of concanavalin
A (con A) lectin-modified BCNCs (con A + BCNCs) for bacterial isolation
and label-free surface-enhanced Raman spectroscopy (SERS) detection
of bacterial species using Au nanoparticles (AuNPs). The aggregated
AuNP + bacteria + (con A + BCNC) conjugates generated SERS hot spots
that enabled the SERS detection of the strain Escherichia
coli 8739 at the 103 CFU/mL level. The
optimized detection assay was then used to differentiate 19 common
bacterial strains. The large SERS spectral dataset for the 19 bacterial
strains was analyzed using the support vector machine (SVM), an optimization-based
machine-learning technique that worked as a binary classifier. The
SVM classifier showed a high overall accuracy of 87.7% in correctly
discriminating bacterial strains. This study illustrates the potential
of combining low-cost nanocellulose-based SERS biosensors with machine-learning
techniques for the analysis of large spectral datasets.