Paper 13035-46
Evaluation of synthetic Raman spectra for use in virus detection
On demand | Presented live 23 April 2024
Abstract
A Generative Adversarial Network was used to produce Raman spectra of Influenza A virus in culture and then used to train a virus detection classification model. Dimensionality reduction plotting using t-Distributed Stochastic Neighbor Embedding (t-SNE) demonstrated overlap between the real and synthetic spectra but not complete blending, which can be attributed to the subtle differences between the real and synthetic data. Nevertheless, the real and synthetic spectra also exhibited similar Raman peak patterns. Moreover, the inclusion of synthetic spectra into the training set was able to increase the virus classification accuracy from 83.5% to 91.5%. This indicates that the GANs were able to synthesize spectra closely related to virus-positive spectra yet distinctly different from virus-negative spectra, which appear visually similar. We conclude that the synthetic spectra produced by the GANs were similar to the real data but not an exact replacement.
Presenter
RyeAnne Ricker
National Institutes of Health (United States)
RyeAnne Ricker is a 5th year PhD student at George Washington University in the Department of Biomedical Engineering. RyeAnne conducts her research at the National Institutes of Health as a Graduate Partnership Program Fellow. Her research focuses on the use of Raman spectroscopy and machine learning for rapid virus identification. Prior to graduate school, RyeAnne received her two Bachelors of Science degrees in Microbiology and Biological Engineering at Montana State University. Following undergrad, she worked for two years for the Division of Disease Control and Health Statistics in Washington State as a bacterial microbiologist.