A Model for Recognition of Dermatoscopic Points in Images of Skin Neoplasms

被引:0
|
作者
V. G. Nikitaev
A. N. Pronichev
O. B. Tamrazova
V. Yu. Sergeev
M. A. Solomatin
L. S. Kruglova
V. S. Kozlov
E. A. Druzhinina
机构
[1] National Research Nuclear University MEPhI (Moscow Engineering Physics Institute),
[2] Peoples’ Friendship University of Russia,undefined
[3] Central State Medical Academy,undefined
[4] Directorate of the President of the Russian Federation,undefined
来源
Biomedical Engineering | 2021年 / 55卷
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摘要
The challenges of using computer diagnostics to seek structural elements of melanocytic neoplasms, including cutaneous melanomas at early stages of their development, are discussed. The characteristic features of the structural elements — dermatoscopic points — are also considered. A computer vision technique for recognizing these characteristic features is presented. The developed interdisciplinary approach can be used in the diagnosis of oncological diseases of the skin as a means of supporting decision making for the primary prevention of malignant neoplasms.
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页码:112 / 115
页数:3
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