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基于两阶段遗传编程的多模态图像皮肤癌自动诊断。

Automatically Diagnosing Skin Cancers From Multimodality Images Using Two-Stage Genetic Programming.

出版信息

IEEE Trans Cybern. 2023 May;53(5):2727-2740. doi: 10.1109/TCYB.2022.3182474. Epub 2023 Apr 21.

Abstract

Developing a computer-aided diagnostic system for detecting various skin malignancies from images has attracted many researchers. Unlike many machine-learning approaches, such as artificial neural networks, genetic programming (GP) automatically evolves models with flexible representation. GP successfully provides effective solutions using its intrinsic ability to select prominent features (i.e., feature selection) and build new features (i.e., feature construction). Existing approaches have utilized GP to construct new features from the complete set of original features and the set of operators. However, the complete set of features may contain redundant or irrelevant features that do not provide useful information for classification. This study aims to develop a two-stage GP method, where the first stage selects prominent features, and the second stage constructs new features from these selected features and operators, such as multiplication in a wrapper approach to improve the classification performance. To include local, global, texture, color, and multiscale image properties of skin images, GP selects and constructs features extracted from local binary patterns and pyramid-structured wavelet decomposition. The accuracy of this GP method is assessed using two real-world skin image datasets captured from the standard camera and specialized instruments, and compared with commonly used classification algorithms, three state of the art, and an existing embedded GP method. The results reveal that this new approach of feature selection and feature construction effectively helps improve the performance of the machine-learning classification algorithms. Unlike other black-box models, the evolved models by GP are interpretable; therefore, the proposed method can assist dermatologists to identify prominent features, which has been shown by further analysis on the evolved models.

摘要

从图像中开发用于检测各种皮肤恶性肿瘤的计算机辅助诊断系统吸引了许多研究人员。与许多机器学习方法(如人工神经网络)不同,遗传编程(GP)自动使用灵活的表示形式进化模型。GP 成功地利用其内在的选择突出特征的能力(即特征选择)和构建新特征(即特征构建)提供了有效的解决方案。现有的方法已经利用 GP 从原始特征的完整集合和操作符集合中构建新特征。然而,完整的特征集合可能包含冗余或不相关的特征,这些特征对分类没有提供有用的信息。本研究旨在开发一种两阶段 GP 方法,其中第一阶段选择突出特征,第二阶段从这些选择的特征和操作符构建新特征,例如在包装器方法中进行乘法运算,以提高分类性能。为了包括皮肤图像的局部、全局、纹理、颜色和多尺度图像属性,GP 从局部二值模式和金字塔结构小波分解中选择和构建特征。使用从标准相机和专用仪器捕获的两个真实皮肤图像数据集评估该 GP 方法的准确性,并与常用的分类算法、三种最先进的算法和现有的嵌入式 GP 方法进行比较。结果表明,这种特征选择和特征构建的新方法有效地有助于提高机器学习分类算法的性能。与其他黑盒模型不同,GP 进化的模型是可解释的;因此,所提出的方法可以帮助皮肤科医生识别突出特征,这已经通过对进化模型的进一步分析得到了证明。

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