皮肤癌检测的预处理、分割和分类技术综述

Sonam Khattar, Ravinder Kaur, Ganesh Gupta
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引用次数: 1

摘要

每年大约有200万到300万皮肤癌新病例被发现,使其成为最常见的癌症之一。皮肤病变是皮肤上异常细胞繁殖的结果,手工检查它们是一项艰巨、本能和艰巨的任务。计算机辅助诊断(CAD)技术使从业人员能够更加熟练地掌握他们的调查能力,同时减少进行适当诊断所需的时间。然而,一些更容易使用的先进计算机辅助诊断(CAD)系统的可及性受到限制,导致在快速、无创和可靠的疾病检测方面存在很大的不确定性。根据现有文献,在为皮肤病变创建CAD系统方面投入的努力还不够。主要关注皮肤镜图像中皮肤病变的预处理、分割和分类,本文的目标是给出一个完整和关键的参考书目,解决有关该主题的已发表文献。本文的目的是提供详细而必要的参考。主要目标是给那些刚进入这个领域的研究人员一个概述,他们对这个领域的了解不够,无法理解所有的技术细节。此外,它还确定了一些可以在文献中确定的研究挑战,这些挑战需要未来的研究人员解决,以研究该领域的创新途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review on Preprocessing, Segmentation and Classification Techniques for Detection of Skin Cancer
About 2 to 3 million new cases of skin cancer are identified every year, making it one of the most common forms of cancer. Skin lesions are the result of anomalous cell reproduction on the skin, and examining them manually is a tough, instinctive, and arduous task. Computer-Aided Diagnosis (CAD) technologies allow practitioners to become more proficient in their investigative abilities while at the same time reducing the amount of time necessary to carry out an appropriate diagnosis. However, the restricted accessibility of several advanced computer-aided diagnoses (CAD) systems that are easier to use has resulted in a significant amount of uncertainty over the rapid, non-invasive, and reliable detection of diseases. According to the existing literature, not nearly enough effort has been put into creating CAD systems for skin lesions. With a primary focus on pre-processing, segmentation, and classification of skin lesions in dermoscopic images, the goal of this article is to give a complete and critical bibliography addressing the published literature on this topic. The purpose of this paper is to provide detailed yet necessary references. The main goal is to give researchers who are new to this field and don't know enough about it to understand all of its technical details an overview. In addition, it identifies some of the research challenges that can be identified in the literature and need to be addressed by future researchers to investigate innovative pathways in this area.
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