Convolutional Neural Networks Applied for Skin Lesion Segmentation

G. S. Araujo, Guillermo Cámara Chávez, R. B. Oliveira
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引用次数: 4

Abstract

Skin cancer is one of the cancers that most aggravates the problem in public health. Among the types of cancer, melanoma is the most aggressive type. Its early diagnosis is essential to increase the possibility of adequate treatment, aiming to reduce the mortality rate. Dermatologists generally use manual methods to diagnose skin lesions. These methods, in addition to being time-consuming, as they are performed manually, can present different results for the same lesion when analyzed by different specialists. Therefore, an automated diagnosis may be necessary to deal with this issue as well as avoid invasive tests. For this, the task of segmenting the skin lesion in the dermoscopic image can be fundamental, as it is a basic task in the image analysis process. In the present work, a Convolutional Neural Network (CNN) model, based on the U-Net, is used to segment the lesion in dermoscopic images. This proposal achieved an accuracy of 0.949 and Jaccard of 0.833 for the 2017 ISIC base, and an accuracy of 0.954 and Jaccard of 0.850 for the 2018 ISIC base. The proposed model has a simpler architecture, in addition to requiring less computational resources. The experiments made it possible to observe that the proposed model results are promising compared with other CNN models presented in the literature.
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卷积神经网络在皮肤病灶分割中的应用
皮肤癌是公共卫生问题最严重的癌症之一。在各种癌症中,黑色素瘤是最具侵袭性的类型。它的早期诊断对于增加适当治疗的可能性至关重要,旨在降低死亡率。皮肤科医生通常使用手工方法诊断皮肤病变。这些方法,除了耗时外,因为它们是手动执行的,当不同的专家分析相同的病变时,可能会给出不同的结果。因此,可能需要自动诊断来处理这个问题,并避免侵入性测试。因此,在皮肤镜图像中分割皮肤病变是最基本的任务,因为它是图像分析过程中的一项基本任务。在本工作中,基于U-Net的卷积神经网络(CNN)模型被用来分割皮肤镜图像中的病变。该建议在2017年ISIC基础上实现了0.949和0.833的准确率,在2018年ISIC基础上实现了0.954和0.850的准确率。所提出的模型具有更简单的体系结构,并且需要更少的计算资源。通过实验可以观察到,与文献中其他CNN模型相比,所提出的模型结果是有希望的。
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