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WN-based approach to melanoma diagnosis from dermoscopy images

机译:基于WN的皮肤镜检查法诊断黑色素瘤的方法

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A new computer-aided diagnosis (CAD) system for detecting malignant melanoma from dermoscopy images based on a fixed grid wavelet network (FGWN) is proposed. This novel approach is unique in at least three ways: (i) the FGWN is a fixed WN which does not require gradient-type algorithms for its construction, (ii) the construction of FGWN is based on a new regressor selection technique: D-optimality orthogonal matching pursuit (DOOMP), and (iii) the entire CAD system relies on the proposed FGWN. These characteristics enhance the integrity and reliability of the results obtained from different stages of automatic melanoma diagnosis. The DOOMP algorithm optimises the network model approximation ability rapidly while improving the model adequacy and robustness. This FGWN is then used to build a CAD system, which performs image enhancement, segmentation, and classification. To classify the images, in the first stage, 441 features with respect to colour, texture, and shape of each lesion are extracted. By means of feature selection, these 441 features are then reduced to 10. The proposed CAD system achieved an accuracy of 91.82%, sensitivity of 92.61%, specificity of 91%, and area under the curve value of 0.944 on a challenging set of 1039 dermoscopy images.
机译:提出了一种基于固定网格小波网络(FGWN)的从皮肤镜检查图像中检测恶性黑色素瘤的新型计算机辅助诊断(CAD)系统。这种新颖的方法至少在以下三种方面具有独特性:(i)FGWN是固定的WN,不需要使用梯度类型的算法进行构造,(ii)FGWN的构建基于新的回归选择技术:D-最优正交匹配追踪(DOOMP),以及(iii)整个CAD系统都依赖于所提出的FGWN。这些特征增强了从自动黑色素瘤诊断的不同阶段获得的结果的完整性和可靠性。 DOOMP算法在提高模型充分性和鲁棒性的同时,快速优化了网络模型的逼近能力。然后,此FGWN用于构建CAD系统,该系统执行图像增强,分割和分类。为了对图像进行分类,在第一阶段中,提取关于每个病变的颜色,纹理和形状的441个特征。通过特征选择,然后将这441个特征减少到10个。在具有挑战性的1039组上,拟议的CAD系统实现了91.82%的准确度,92.61%的灵敏度,91%的特异性以及0.944的曲线下面积。皮肤镜检查图像。

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