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Melanoma and Nevus Classification Based on Asymmetry, Border, Color, and GLCM Texture Parameters Using Deep Learning Algorithm

机译:基于不对称,边界,颜色和GLCM纹理参数的黑色素瘤和痣分类使用深度学习算法

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Pattern analysis has been shown to have higher reliability for melanoma and nevus classification. The ABCD method, which is common to be used as a melanoma diagnosis method, has been shown to have inappropriate weighting for each parameter. In addition, pattern analysis has been shown to have a higher success for diagnosing melanoma. In this paper, we choose the Grey Level Co-occurrence Matrix (GLCM) as a texture parameter to represent the pattern of melanoma. We also choose Deep Neural Network (DNN) to retrieve information from the data set. DNN has the capability of analyzing data with a high level of abstraction. Therefore, we choose DNN as a method to classify melanoma and nevus. We use the International Skin Imaging Collaboration (ISIC) archive database as our training and validation data. We use 773 nevi with 870 melanoma images as training data and separate 200 Nevus and 200 Melanoma images as validation data. We achieve 81.75% diagnostic accuracy, 75.5% sensitivity, and 88% specificity
机译:图案分析已被证明对黑色素瘤和痣分类具有更高的可靠性。已被示出为Melanoma诊断方法使用的ABCD方法具有对每个参数的不适当加权。此外,已经显示了模式分析对诊断黑素瘤具有更高的成功。在本文中,我们选择灰度共发生矩阵(GLCM)作为纹理参数,以表示黑素瘤的模式。我们还选择深神经网络(DNN)从数据集中检索信息。 DNN具有高度抽象级别的数据分析数据。因此,我们选择DNN作为对黑色素瘤和痣进行分类的方法。我们使用国际皮肤成像协作(ISIC)归档数据库作为我们的培训和验证数据。我们使用773 Nevi用870个黑色素瘤图像作为训练数据,将200个痣和200个黑色素瘤图像分开作为验证数据。我们达到81.75%的诊断准确性,灵敏度为75.5%和88%的特异性

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