Real-time, in vivo skin cancer triage by laser-induced plasma spectroscopy combined with a deep learning–based diagnostic algorithm
- Authors
- Pyun, Sung Hyun; Min, Wanki; Goo, Boncheol; Seit, Samuel; Azzi, Anthony; Yu-Shun Wong, David; Munavalli, Girish S.; Huh, Chang-Hun; Won, Chong-Hyun; Ko, Minsam
- Issue Date
- Jul-2022
- Publisher
- Mosby Inc.
- Keywords
- basal cell carcinoma; deep neural network (DNN); laser-induced plasma spectroscopy (LIPS); melanoma; skin cancer diagnosis; squamous cell carcinoma
- Citation
- Journal of the American Academy of Dermatology, v.89, no.1, pp 99 - 105
- Pages
- 7
- Indexed
- SCIE
SCOPUS
- Journal Title
- Journal of the American Academy of Dermatology
- Volume
- 89
- Number
- 1
- Start Page
- 99
- End Page
- 105
- URI
- https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/112851
- DOI
- 10.1016/j.jaad.2022.06.1166
- ISSN
- 0190-9622
1097-6787
- Abstract
- Background: Although various skin cancer detection devices have been proposed, most of them are not used owing to their insufficient diagnostic accuracies. Laser-induced plasma spectroscopy (LIPS) can noninvasively extract biochemical information of skin lesions using an ultrashort pulsed laser. Objective: To investigate the diagnostic accuracy and safety of real-time noninvasive in vivo skin cancer diagnostics utilizing nondiscrete molecular LIPS combined with a deep neural network (DNN)–based diagnostic algorithm. Methods: In vivo LIPS spectra were acquired from 296 skin cancers (186 basal cell carcinomas, 96 squamous cell carcinomas, and 14 melanomas) and 316 benign lesions in a multisite clinical study. The diagnostic performance was validated using 10-fold cross-validations. Results: The sensitivity and specificity for differentiating skin cancers from benign lesions using LIPS and the DNN-based algorithm were 94.6% (95% CI: 92.0%-97.2%) and 88.9% (95% CI: 85.5%-92.4%), respectively. No adverse events, including macroscopic or microscopic visible marks or pigmentation due to laser irradiation, were observed. Limitations: The diagnostic performance was evaluated using a limited data set. More extensive clinical studies are needed to validate these results. Conclusions: This LIPS system with a DNN-based diagnostic algorithm is a promising tool to distinguish skin cancers from benign lesions with high diagnostic accuracy in real clinical settings. © 2022 American Academy of Dermatology, Inc.
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