Xu Zhiying, Sheykhahmad Fatima Rashid, Ghadimi Noradin, Razmjooy Navid
Yuanpei College, Shaoxing University, Shaoxing, Zhejiang, 312000, China.
Young Researchers and Elite Club, Ardabil Branch, Islamic Azad University, Ardabil, Iran.
Open Med (Wars). 2020 Sep 8;15(1):860-871. doi: 10.1515/med-2020-0131. eCollection 2020.
Skin cancer is a type of disease in which malignant cells are formed in skin tissues. However, skin cancer is a dangerous disease, and an early detection of this disease helps the therapists to cure this disease. In the present research, an automatic computer-aided method is presented for the early diagnosis of skin cancer. After image noise reduction based on median filter in the first stage, a new image segmentation based on the convolutional neural network optimized by satin bowerbird optimization (SBO) has been adopted and its efficiency has been indicated by the confusion matrix. Then, feature extraction is performed to extract the useful information from the segmented image. An optimized feature selection based on the SBO algorithm is also applied to prune excessive information. Finally, a support vector machine classifier is used to categorize the processed image into the following two groups: cancerous and healthy cases. Simulations have been performed of the American Cancer Society database, and the results have been compared with ten different methods from the literature to investigate the performance of the system in terms of accuracy, sensitivity, negative predictive value, specificity, and positive predictive value.
皮肤癌是一种在皮肤组织中形成恶性细胞的疾病类型。然而,皮肤癌是一种危险的疾病,早期发现这种疾病有助于治疗师治愈它。在本研究中,提出了一种用于皮肤癌早期诊断的自动计算机辅助方法。在第一阶段基于中值滤波器进行图像降噪后,采用了一种基于由缎蓝亭鸟优化(SBO)优化的卷积神经网络的新图像分割方法,并通过混淆矩阵表明了其效率。然后,进行特征提取以从分割后的图像中提取有用信息。还应用了基于SBO算法的优化特征选择来去除过多信息。最后,使用支持向量机分类器将处理后的图像分为以下两组:癌变病例和健康病例。已对美国癌症协会数据库进行了模拟,并将结果与文献中的十种不同方法进行了比较,以从准确性、敏感性、阴性预测值、特异性和阳性预测值方面研究该系统的性能。