基于神经网络的高级特征皮肤病变自动分类

Wiem Abbes, D. Sellami
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引用次数: 20

摘要

黑色素瘤是最危险的一种皮肤癌。它可以从皮肤的色素细胞发展而来,可以迅速生长并扩散到其他器官(转移)。早期诊断可以增加治愈的机会。在过去的三十年里,黑素瘤发病率的增加导致了更准确的分析方法的出现。特征提取是黑色素瘤决策支持系统的关键步骤。早期专家使用的皮肤镜规则(ABCD规则、7点检查表、孟席斯法、CASH算法)一般都是低级特征。在本文中,我们考虑了几种用于黑色素瘤自动检测的皮肤镜规则,以生成允许语义分析的新的高级特征。这些提取的特征是基于形状特征和颜色和纹理特征。神经网络分类器用于决策。实验结果表明,语义分析是一种有效的黑色素细胞肿瘤鉴别方法,具有良好的准确率。该方法对206张皮肤病变图像的敏感性为92%,特异性为95%。与最近以前的工作比较研究表明,我们的方法在准确性和特异性方面优于。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-level features for automatic skin lesions neural network based classification
Melanoma is the most dangerous form of skin cancer. It can be developed from pigmented cells of the skin and can grow and spread swiftly to other organs (metastasis). An early diagnosis increases the chance of cure. In the past three decades, the increase in the incidence of melanoma has given rise to more accurate methods of analysis. Feature extraction is a critical step in melanoma decision support systems. Early dermatoscopic rules (ABCD rule, 7-point checklist, Menzies method and CASH algorithm), used by experts are generally low level features. In this paper, we consider several dermatoscopic rules for automatic detection of melanoma in order to generate new high level features allowing semantic analysis. Such extracted features are based on shape characterization and color and texture features. A neural network classifier is used for decision making. Experimental results indicate that semantic analysis is a useful method for discrimination of melanocytic skin tumors with good accuracy. The proposed method yields a good sensitivity of 92% and a specificity of 95% on a database of 206 skin lesion images. A comparative study with recent previous works illustrates that our approach outperforms in terms of accuracy and specificity.
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