MELANOMA DIAGNOSIS USING CONVOLUTIONAL NEURAL NETWORKS OF DEEP LEARNING

DOI: https://doi.org/10.29296/25877305-2018-06-06
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Issue: 
6
Year: 
2018

A. Melerzanov, Candidate of Medical Sciences; D. Gavrilov, Candidate of Technical Sciences Moscow Institute of Physics and Technology (State University)

The paper gives the skin disease classification system by photographs, which has been developed using the algorithms based on convolutional neural networks of deep learning. The method allows the automated diagnosis of skin tumors with at least 91% accuracy.

Keywords: 
oncology
deep convolutional neural networks
melanoma diagnosis
computer vision
telemedicine



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