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Machine learning approaches in non-contact autofluorescence spectrum classification.

Publication ,  Journal Article
Raman, AP; Zachem, TJ; Plumlee, S; Park, C; Eward, W; Codd, PJ; Ross, W
Published in: PLOS Digit Health
October 2024

Manual surgical resection of soft tissue sarcoma tissue can involve many challenges, including the critical need for precise determination of tumor boundary with normal tissue and limitations of current surgical instrumentation, in addition to standard risks of infection or tissue healing difficulty. Substantial research has been conducted in the biomedical sensing landscape for development of non-human contact sensing devices. One such point-of-care platform, previously devised by our group, utilizes autofluorescence-based spectroscopic signatures to highlight important physiological differences in tumorous and healthy tissue. The following study builds on this work, implementing classification algorithms, including Artificial Neural Network, Support Vector Machine, Logistic Regression, and K-Nearest Neighbors, to diagnose freshly resected murine tissue as sarcoma or healthy. Classification accuracies of over 93% are achieved with Logistic Regression, and Area Under the Curve scores over 94% are achieved with Support Vector Machines, delineating a clear way to automate photonic diagnosis of ambiguous tissue in assistance of surgeons. These interpretable algorithms can also be linked to important physiological diagnostic indicators, unlike the black-box ANN architecture. This is the first known study to use machine learning to interpret data from a non-contact autofluorescence sensing device on sarcoma tissue, and has direct applications in rapid intraoperative sensing.

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Published In

PLOS Digit Health

DOI

EISSN

2767-3170

Publication Date

October 2024

Volume

3

Issue

10

Start / End Page

e0000602

Location

United States
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Raman, A. P., Zachem, T. J., Plumlee, S., Park, C., Eward, W., Codd, P. J., & Ross, W. (2024). Machine learning approaches in non-contact autofluorescence spectrum classification. PLOS Digit Health, 3(10), e0000602. https://doi.org/10.1371/journal.pdig.0000602
Raman, Ashutosh P., Tanner J. Zachem, Sarah Plumlee, Christine Park, William Eward, Patrick J. Codd, and Weston Ross. “Machine learning approaches in non-contact autofluorescence spectrum classification.PLOS Digit Health 3, no. 10 (October 2024): e0000602. https://doi.org/10.1371/journal.pdig.0000602.
Raman AP, Zachem TJ, Plumlee S, Park C, Eward W, Codd PJ, et al. Machine learning approaches in non-contact autofluorescence spectrum classification. PLOS Digit Health. 2024 Oct;3(10):e0000602.
Raman, Ashutosh P., et al. “Machine learning approaches in non-contact autofluorescence spectrum classification.PLOS Digit Health, vol. 3, no. 10, Oct. 2024, p. e0000602. Pubmed, doi:10.1371/journal.pdig.0000602.
Raman AP, Zachem TJ, Plumlee S, Park C, Eward W, Codd PJ, Ross W. Machine learning approaches in non-contact autofluorescence spectrum classification. PLOS Digit Health. 2024 Oct;3(10):e0000602.

Published In

PLOS Digit Health

DOI

EISSN

2767-3170

Publication Date

October 2024

Volume

3

Issue

10

Start / End Page

e0000602

Location

United States