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Genetic Programming for Feature Selection and Feature Construction in Skin Cancer Image Classification

机译:用于皮肤癌图像分类中特征选择和特征构建的遗传程序设计

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The incidence of skin cancer, particularly, malignant melanoma, continues to increase worldwide. If such a cancer is not treated at an early stage, it can be fatal. A computer system based on image processing and computer vision techniques, having good diagnostic ability, can provide a quantitative evaluation of these skin cancer cites called skin lesions. The size of a medical image is usually large and therefore requires reduction in dimensionality before being processed by a classification algorithm. Feature selection and construction are effective techniques in reducing the dimensionality while improving classification performance. This work develops a novel genetic programming (GP) based two-stage approach to feature selection and feature construction for skin cancer image classification. Local binary pattern is used to extract gray and colour features from the dermoscopy images. The results of our proposed method have shown that the GP selected and constructed features have promising ability to improve the performance of commonly used classification algorithms. In comparison with using the full set of available features, the GP selected and constructed features have shown significantly better or comparable performance in most cases. Furthermore, the analysis of the evolved feature sets demonstrates the insights of skin cancer properties and validates the feature selection ability of GP to distinguish between benign and malignant cancer images.
机译:皮肤癌,特别是恶性黑色素瘤的发病率在全世界范围内持续增加。如果不及早治疗这种癌症,则可能是致命的。具有良好诊断能力的基于图像处理和计算机视觉技术的计算机系统可以对这些称为皮肤损伤的皮肤癌病例进行定量评估。医学图像的尺寸通常较大,因此需要在通过分类算法进行处理之前减小尺寸。特征选择和构造是减少维数同时提高分类性能的有效技术。这项工作开发了一种新颖的基于遗传程序设计(GP)的两阶段方法,用于皮肤癌图像分类的特征选择和特征构建。局部二进制模式用于从皮肤镜检查图像中提取灰色和颜色特征。我们提出的方法的结果表明,GP的选择和构造特征具有改善常用分类算法性能的有希望的能力。与使用全套可用功能相比,在大多数情况下,GP选择和构建的功能表现出明显更好的性能或可比的性能。此外,对进化后的特征集的分析证明了皮肤癌特性的见解,并验证了GP区分良性和恶性癌症影像的特征选择能力。

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