A genetic programming approach with adaptive region detection to skin cancer image classification

Kunjie Yu , Jintao Lian , Ying Bi , Jing Liang , Bing Xue , Mengjie Zhang
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Abstract

Dermatologists typically require extensive experience to accurately classify skin cancer. In recent years, the development of computer vision and machine learning has provided new methods for assisted diagnosis. Existing skin cancer image classification methods have certain limitations, such as poor interpretability, the requirement of domain knowledge for feature extraction, and the neglect of lesion area information in skin images. This paper proposes a new genetic programming (GP) approach to automatically learn global and/or local features from skin images for classification. To achieve this, a new function set and a new terminal set have been developed. The proposed GP method can automatically and flexibly extract effective local/global features from different types of input images, thus providing a comprehensive description of skin images. A new region detection function has been developed to select the lesion areas from skin images for feature extraction. The performance of this approach is evaluated on three skin cancer image classification tasks, and compared with three GP methods and six non-GP methods. The experimental results show that the new approach achieves significantly better or similar performance in most cases. Further analysis validates the effectiveness of our parameter settings, visualizes the multiple region detection functions used in the individual evolved by the proposed approach, and demonstrates its good convergence ability.
基于自适应区域检测的遗传规划皮肤癌图像分类方法
皮肤科医生通常需要丰富的经验才能准确地分类皮肤癌。近年来,计算机视觉和机器学习的发展为辅助诊断提供了新的方法。现有的皮肤癌图像分类方法存在可解释性差、特征提取需要领域知识、忽略皮肤图像中病变区域信息等局限性。本文提出了一种新的遗传规划方法来自动学习皮肤图像的全局和/或局部特征进行分类。为此,开发了新的功能集和终端集。该方法可以自动灵活地从不同类型的输入图像中提取有效的局部/全局特征,从而对皮肤图像进行全面的描述。开发了一种新的区域检测函数,用于从皮肤图像中选择病变区域进行特征提取。在三个皮肤癌图像分类任务中对该方法的性能进行了评价,并与三种GP方法和六种非GP方法进行了比较。实验结果表明,在大多数情况下,新方法取得了明显更好或相似的性能。进一步的分析验证了我们的参数设置的有效性,可视化了使用该方法进化的个体中使用的多区域检测函数,并证明了其良好的收敛能力。
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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