Melanoma skin cancer is one of the most dangerous and life-threatening cancer. Exposure to ultraviolet rays may damage the skin cell's DNA, which causes melanoma skin cancer. However, it is difficult to detect and classify melanoma and nevus mole at the immature stages. In this work, an automatic deep learning system is developed based on the intensity value estimation with a convolutional neural network model (CNN) to detect and classify melanoma and nevus mole more accurately. Since intensity levels are the most distinctive features for object or region of interest identification, the high-intensity pixel values are selected from the extracted lesion images. Incorporating those high-intensity features into the CNN improves the overall performance of the proposed model than the state-of-the-art methods for detecting melanoma skin cancer. To evaluate the system, we used 5-fold cross-validation. Experimental results show that a superior percentage of accuracy (92.58%), sensitivity (93.76%), specificity (91.56%), and precision (90.68%) are achieved.
翻译:皮肤癌是最危险和威胁生命的癌症之一。接触紫外线可能会损害皮肤细胞的DNA,从而导致皮肤癌。然而,在不成熟的阶段,很难检测和分类黑皮瘤和内核摩尔。在这项工作中,根据强度值估计开发了自动深层学习系统,并配以共生神经网络模型(CNN),以更准确地检测和分类黑皮瘤和内核摩尔。由于强度是受关注对象或地区的最明显特征,因此从提取的损害图像中选择了高密度像素值。将这些高密度特征纳入有线电视新闻网改善了拟议模型的总体性能,而不是用于检测黑皮癌的最先进方法。为了评估这个系统,我们使用了5倍的交叉价值模型。实验结果显示,精确度(92.58%)、敏感度(93.76%)、特性(91.56%)和精确度(90.68%)的较高百分比已经实现。