Challenges and Imperatives of Deep Learning Approaches for Detection of Melanoma: A Review

E. Gayatri, S. Aarthy
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Abstract

Recently, melanoma became one of the deadliest forms of skin cancer due to ultraviolet rays. The diagnosis of melanoma is very crucial if it is not identified in the early stages and later on, in the advanced stages, it affects the other organs of the body, too. Earlier identification of melanoma plays a major role in the survival chances of a human. The manual detection of tumor thickness is a very difficult task so dermoscopy is used to measure the thickness of the tumor which is a non-invasive method. Computer-aided diagnosis is one of the greatest evolutions in the medical sector, this system helps the doctors for the automated diagnosis of the disease because it improves accurate disease detection. In the world of digital images, some phases are required to remove the artifacts for achieving the best accurate diagnosis results such as the acquisition of an image, pre-processing, segmentation, feature selection, extraction and finally classification phase. This paper mainly focuses on the various deep learning techniques like convolutional neural networks, recurrent neural networks, You Only Look Once for the purpose of classification and prediction of the melanoma and is also focuses on the other variant of melanomas, i.e. ocular melanoma and mucosal melanoma because it is not a matter where the melanoma starts in the body.
深度学习方法在黑色素瘤检测中的挑战和必要性:综述
最近,由于紫外线的影响,黑色素瘤成为最致命的皮肤癌之一。黑色素瘤的诊断是非常关键的,如果它在早期阶段没有被发现,那么在晚期阶段,它也会影响到身体的其他器官。早期识别黑色素瘤对人类的生存机会起着重要作用。人工检测肿瘤的厚度是一项非常困难的任务,因此使用皮肤镜来测量肿瘤的厚度是一种非侵入性的方法。计算机辅助诊断是医疗领域最伟大的发展之一,该系统帮助医生进行疾病的自动诊断,因为它提高了疾病检测的准确性。在数字图像的世界中,为了达到最准确的诊断结果,需要一些阶段来去除伪影,如图像的获取、预处理、分割、特征选择、提取和最后的分类阶段。本文主要关注卷积神经网络、递归神经网络、You Only Look Once等各种深度学习技术,用于黑色素瘤的分类和预测,同时也关注黑色素瘤的另一种变体,即眼部黑色素瘤和粘膜黑色素瘤,因为这不是黑色素瘤在体内哪里开始的问题。
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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