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Computer-Aided Diagnosis of Malignant Melanoma Using Gabor-Based Entropic Features and Multilevel Neural Networks

机译:基于GABOR型熵特征和多级神经网络的计算机辅助诊断恶性黑素瘤

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摘要

The American Cancer Society has recently stated that malignant melanoma is the most serious type of skin cancer, and it is almost 100% curable, if it is detected and treated early. In this paper, we present a fully automated neural framework for real-time melanoma detection, where a low-dimensional, computationally inexpensive but highly discriminative descriptor for skin lesions is derived from local patterns of Gabor-based entropic features. The input skin image is first preprocessed by filtering and histogram equalization to reduce noise and enhance image quality. An automatic thresholding by the optimized formula of Otsu’s method is used for segmenting out lesion regions from the surrounding healthy skin regions. Then, an extensive set of optimized Gabor-based features is computed to characterize segmented skin lesions. Finally, the normalized features are fed into a trained Multilevel Neural Network to classify each pigmented skin lesion in a given dermoscopic image as benign or melanoma. The proposed detection methodology is successfully tested and validated on the public PH2 benchmark dataset using 5-cross-validation, achieving 97.5%, 100% and 96.87% in terms of accuracy, sensitivity and specificity, respectively, which demonstrate competitive performance compared with several recent state-of-the-art methods.
机译:最近美国癌症协会最近表示恶性黑素瘤是最严重的皮肤癌类型,如果检测到并早期治疗,它的固化几乎是100%。在本文中,我们提出了一种全自动的神经框架,用于实时黑色素瘤检测,其中用于皮肤病变的低维计算廉价但高度鉴别的描述符源自来自基于GABOR的熵特征的局部模式。首先通过过滤和直方图均衡来预处理输入皮肤图像,以降低噪声并提高图像质量。 OTSU方法优化公式的自动阈值率用于从周围的健康皮肤区域分割出损伤区。然后,计算出广泛的优化基于Gabor的特征,以表征分段的皮肤病变。最后,将归一化特征送入训练有素的多级神经网络,以将给定皮肤图像的每个色素皮肤病变分类为良性或黑色素瘤。在公共PH2基准数据集中,使用5交叉验证,在准确性,敏感度和特异性方面成功地测试和验证了在公共PH2基准数据集上进行了成功测试和验证,与最近的几个相比,呈现出竞争性能的竞争性能。最先进的方法。

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