Deep neural networks for classification of dermatological images with multiple skin lesions

Maria Oniga, Razvan-Florian Micu, Andreea Griparis
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Abstract

Skin cancer is one of the major threats to men's and women's health on a global scale, and as with all other cancers, early diagnosis leads to a high rate of recovery. To reduce the required time for diagnosis, we developed an architecture for the automated classification of dermatological images with multiple skin lesions. The proposed system is based on a classical Unet architecture trained with patches extracted from four images with various skin lesions to identify the areas of interest whose condition is determined by an adapted EfficientNetB5 architecture trained with the HAM10000 dataset. Our results showed that the dermatoscopic image models learned from the HAM10000 dataset can be successfully used to diagnose skin cancer from images with multiple lesions, captured with usual cameras.
基于深度神经网络的多皮肤病变皮肤图像分类
皮肤癌是全球范围内男性和女性健康的主要威胁之一,与所有其他癌症一样,早期诊断可导致高治愈率。为了减少诊断所需的时间,我们开发了一个具有多个皮肤病变的皮肤学图像的自动分类架构。该系统基于经典Unet架构,该架构使用从四张不同皮肤病变图像中提取的斑块进行训练,以识别感兴趣的区域,这些区域的状况由经过HAM10000数据集训练的适应性effentnetb5架构确定。我们的研究结果表明,从HAM10000数据集中学习的皮肤镜图像模型可以成功地用于从常规相机捕获的多个病变图像中诊断皮肤癌。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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