Affiliation:
1. George Washington University
2. Pennsylvania State University
Abstract
Early virus identification is a key component of both patient treatment
and epidemiological monitoring. In the case of influenza A virus
infections, where the detection of subtypes associated with bird flu
in humans could lead to a pandemic, rapid subtype-level identification
is important. Surface-enhanced Raman spectroscopy coupled with machine
learning can be used to rapidly detect and identify viruses in a
label-free manner. As there is a range of available excitation
wavelengths for performing Raman spectroscopy, we must choose the best
one to permit discrimination between highly similar subtypes of a
virus. We show that the spectra produced by influenza A subtypes H1N1
and H3N2 exhibit a higher degree of dissimilarity when using
785 nm excitation wavelength in comparison with 532 nm
excitation wavelength. Furthermore, the cross-validated area under the
curve (AUC) for identification was higher for the 785 nm
excitation, reaching 0.95 as compared to 0.86 for 532 nm.
Ultimately, this study suggests that exciting with a 785 nm
wavelength is better able to differentiate two closely related
influenza viruses and likely can extend to other closely related
pathogens.
Funder
National Science Foundation