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Stokes shift spectroscopy and machine learning for label-free human prostate cancer detection
Resource type
Authors/contributors
- Pu, Y. (Author)
- Wu, B. (Author)
- Mo, H. (Author)
- Alfano, R.R. (Author)
Title
Stokes shift spectroscopy and machine learning for label-free human prostate cancer detection
Abstract
The Stokes shift spectra (S3) of human cancerous and normal prostate tissues were collected label free at a selected wavelength interval of 40 nm to investigate the efficacy of the approach based on three key molecules—tryptophan, collagen, and reduced nicotinamide adenine dinucleotide (NADH)—as cancer biomarkers. S3 combines both fluorescence and absorption spectra in one scan. The S3 spectra were analyzed using machine learning (ML) algorithms, including principal component analysis (PCA), nonnegative matrix factorization (NMF), and support vector machines (SVMs). The components retrieved from the S3 spectra were considered principal biomarkers. The differences in the weights of the components between the two types of tissues were found to be significant. Sensitivity, specificity, and accuracy were calculated to evaluate the performance of SVM classification. This research demonstrates that S3 spectroscopy is effective for detecting the changes in the relative concentrations of the endogenous fluorophores in tissues due to the development of cancer label free. © 2023 Optica Publishing Group.
Publication
Optics Letters
Date
2023
Volume
48
Issue
4
Pages
936-939
Citation Key
puStokesShiftSpectroscopy2023
ISSN
0146-9592
Archive
Scopus
Language
English
Library Catalog
Scopus
Extra
1 citations (Crossref) [2023-10-31]
Citation
Pu, Y., Wu, B., Mo, H., & Alfano, R. R. (2023). Stokes shift spectroscopy and machine learning for label-free human prostate cancer detection. Optics Letters, 48(4), 936–939. Scopus. https://doi.org/10.1364/OL.483076
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