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Automatic Diagnosis of Melanoma Using Log-Linearized Gaussian Mixture Network

机译:利用对数线性化高斯混合网络自动诊断黑色素瘤

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Melanoma is the most malignant type of pigmented skin lesions whose early diagnosis is the only treatment key. This paper presents a decision support system for automatic melanoma recognition using log-linearized Gaussian mixture neural network (LLGMNN). Here, some image preprocessing steps precede segmentation to remove artifacts. Next Otsu thresholding method is utilized to detect lesion from the surrounding healthy skin. Then related features including shape and border characteristics, color, and texture features are extracted. A mutual information based feature selection technique is used to find the optimal subset of attributes. Here, two different structures of LLGMNN are designed and validated for our pattern classification problem, one for detection of melanoma from non-melanoma lesions and the other one for discrimination between melanoma, dysplastic, and benign lesions. The proposed system is evaluated on a set of 792 dermoscopy images. Classification results show the accuracy of 89.8%, 88.3%, and 91.2 % for melanoma, dysplastic, and benign lesions, respectively. Results show that the proposed system is efficient, and achieve acceptable classification accuracies.
机译:黑色素瘤是最恶劣的色素皮肤病变类型,其早期诊断是唯一的治疗密钥。本文介绍了使用对数线性化高斯混合神经网络(LLGMNN)自动黑色素瘤识别的决策支持系统。这里,一些图像预处理步骤在分段之前以删除伪像。下一个OTSU阈值处理方法用于检测来自周围健康皮肤的病变。然后提取相关的功能,包括形状和边框特征,颜色和纹理特征。基于相互信息的特征选择技术用于找到最佳属性子集。这里,为我们的模式分类问题设计和验证了两个不同的LLGMNN结构,一种用于检测来自非黑色素瘤病变的黑素瘤,另一个用于黑色素瘤,发育障碍和良性病变之间的歧视。所提出的系统是在一组792个Dermoscopy图像上进行评估。分类结果分别显示了黑色素瘤,发育性和良性病变的89.8 %,88.3±%和91.2 %的准确性。结果表明,该制定的系统是有效的,实现可接受的分类精度。

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