Bibi Sobia, Khan Muhammad Attique, Shah Jamal Hussain, Damaševičius Robertas, Alasiry Areej, Marzougui Mehrez, Alhaisoni Majed, Masood Anum
Department of CS, COMSATS University Islamabad, Wah Campus, Islamabad 45550, Pakistan.
Department of Computer Science and Mathematics, Lebanese American University, Beirut 1102-2801, Lebanon.
Diagnostics (Basel). 2023 Sep 26;13(19):3063. doi: 10.3390/diagnostics13193063.
Cancer is one of the leading significant causes of illness and chronic disease worldwide. Skin cancer, particularly melanoma, is becoming a severe health problem due to its rising prevalence. The considerable death rate linked with melanoma requires early detection to receive immediate and successful treatment. Lesion detection and classification are more challenging due to many forms of artifacts such as hairs, noise, and irregularity of lesion shape, color, irrelevant features, and textures. In this work, we proposed a deep-learning architecture for classifying multiclass skin cancer and melanoma detection. The proposed architecture consists of four core steps: image preprocessing, feature extraction and fusion, feature selection, and classification. A novel contrast enhancement technique is proposed based on the image luminance information. After that, two pre-trained deep models, DarkNet-53 and DensNet-201, are modified in terms of a residual block at the end and trained through transfer learning. In the learning process, the Genetic algorithm is applied to select hyperparameters. The resultant features are fused using a two-step approach named serial-harmonic mean. This step increases the accuracy of the correct classification, but some irrelevant information is also observed. Therefore, an algorithm is developed to select the best features called marine predator optimization (MPA) controlled Reyni Entropy. The selected features are finally classified using machine learning classifiers for the final classification. Two datasets, ISIC2018 and ISIC2019, have been selected for the experimental process. On these datasets, the obtained maximum accuracy of 85.4% and 98.80%, respectively. To prove the effectiveness of the proposed methods, a detailed comparison is conducted with several recent techniques and shows the proposed framework outperforms.
癌症是全球主要的重大疾病和慢性病病因之一。皮肤癌,尤其是黑色素瘤,由于其患病率不断上升,正成为一个严重的健康问题。与黑色素瘤相关的相当高的死亡率需要早期检测以便获得及时且成功的治疗。由于存在多种伪影,如毛发、噪声以及病变形状、颜色、无关特征和纹理的不规则性,病变检测和分类更具挑战性。在这项工作中,我们提出了一种用于多类皮肤癌分类和黑色素瘤检测的深度学习架构。所提出的架构包括四个核心步骤:图像预处理、特征提取与融合、特征选择和分类。基于图像亮度信息提出了一种新颖的对比度增强技术。之后,对两个预训练的深度模型DarkNet - 53和DensNet - 201在末尾的残差块方面进行了修改,并通过迁移学习进行训练。在学习过程中,应用遗传算法来选择超参数。使用一种名为串行谐波均值的两步法对所得特征进行融合。这一步提高了正确分类的准确率,但也观察到了一些无关信息。因此,开发了一种名为海洋捕食者优化(MPA)控制的雷尼熵的算法来选择最佳特征。最终使用机器学习分类器对所选特征进行最终分类。选择了两个数据集ISIC2018和ISIC2019用于实验过程。在这些数据集上,分别获得了85.4%和98.80%的最高准确率。为了证明所提方法的有效性,与几种近期技术进行了详细比较,结果表明所提框架表现更优。