Raman Spectroscopy in Optical Non-Invasive Diagnostics of Skin Neoplasms
https://doi.org/10.24060/2076-3093-2024-14-2-136-141
Abstract
Introduction. Recent decades indicate a significant increase in the incidence of skin cancer. Aim. To upgrade the specialized device and to improve the quality of skin neoplasm diagnostics. Materials and methods. The study mainly involved the method of non-invasive differential diagnostics of skin neoplasms. The method relies upon optical research methods, including Raman spectroscopy, a spectroscopic technique. A 10-year study, conducted by the Department of Oncology, the Samara Regional Clinical Oncology Dispensary (SOKOD), included more than 500 observations. The study used samples of various skin neoplasms obtained during surgical treatment of patients. Experimental tests provided a certain spectrum of various benign and malignant human skin neoplasms, including melanoma. Results. A series of experimental tests resulted in an experimental setup that is absolutely safe to use. Discussion. The study involved comparison of individual characteristics of the Raman spectra, obtained in the examination of neoplasm and healthy skin for each patient, thereby individualizing the method. The study revealed a high accuracy rate of 92% (with sensitivity of 89%, specificity of 93%), thus minimizing risks of false negative results, which is essential for mass examination. Conclusion. Since the proposed device setup does not require consumable products and different reagents, the method is marked with lower time costs and maintenance burden. Raman spectroscopy obtains a significant potential, thus, can be widely used for skin neoplasms in various medical and preventive institutions.
About the Authors
O. I. KaganovRussian Federation
Oleg I. Kaganov — Dr. Sci. (Med.), Prof., Department of Oncology
Samara
I. G. Loginova
Russian Federation
Iuliia G. Loginova — Department of Oncology
Samara
A. A. Moryatov
Russian Federation
Alexander A. Moryatov — Cand. Sci. (Med.), Department of Oncology
Samara
S. V. Kozlov
Russian Federation
Sergey V. Kozlov — Dr. Sci. (Med.), Prof., Department of Oncology
Samara
A. E. Orlov
Russian Federation
Andrey E. Orlov — Dr. Sci. (Med.), Prof., Department of Public Health and Health Organization for Advanced Professional Education
Samara
I. A. Bratchenko
Russian Federation
Ivan A. Bratchenko — Dr. Sci. (Phys.-Math.), Department of Laser and Biotechnical Systems
Samara
B. B. Dzhuraev
Russian Federation
Bakhtovar B. Dzhuraev — 6th year student, Institute of Clinical Medicine
Samara
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Review
For citations:
Kaganov O.I., Loginova I.G., Moryatov A.A., Kozlov S.V., Orlov A.E., Bratchenko I.A., Dzhuraev B.B. Raman Spectroscopy in Optical Non-Invasive Diagnostics of Skin Neoplasms. Creative surgery and oncology. 2024;14(2):136-141. (In Russ.) https://doi.org/10.24060/2076-3093-2024-14-2-136-141