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Feature selection using sequential backward method in melanoma recognition

机译:黑色素瘤识别中使用顺序后退方法的特征选择

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Due to increased ultraviolet radiation, melanoma skin cancer is on the rise globally even in darker-skinned communities, new cases are being discovered. When detection is in the early stages of cancer like many other forms of cancers, the chances of successful treatment and cure are higher. Chance of survival reduces significantly if detected at a later stage. Diagnosis of melanoma using image processing systems have been developed to assist dermatologist. These employ image processing techniques based on the ABCD rule of melanoma to perform feature extraction after segmentation of the affected region to derive characteristic that will enable machine learning algorithms to classify cancerous from the non-cancerous skin. This paper suggests the use of sequential backward selection technique to determine what are the least number of features that can be used for high accuracy in machine learning classification using k-Nearest Neighbors algorithm.
机译:由于紫外线辐射的增加,即使在皮肤较黑的社区中,黑色素瘤皮肤癌也在全球范围内呈上升趋势,正在发现新的病例。当检测像许多其他形式的癌症一样处于癌症的早期阶段时,成功治疗和治愈的机会就更高。如果在以后的阶段发现,生存机会会大大降低。已经开发出使用图像处理系统诊断黑素瘤以协助皮肤科医生。这些技术采用基于黑素瘤ABCD规则的图像处理技术,在对受影响区域进行分割后进行特征提取,以得出特征,这将使机器学习算法能够对非癌性皮肤进行癌性分类。本文建议使用顺序向后选择技术来确定使用k最近邻算法可用于机器学习分类的高精度的最少数量的特征。

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