Ramadan Rania, Aly Saleh, Abdel-Atty Mahmoud
Mathematics Department, Faculty of Science, Sohag University, Sohag, 82524 Egypt.
Department of Electrical Engineering, Faculty of Engineering, Aswan University, Aswan, 81542 Egypt.
Health Inf Sci Syst. 2022 Aug 14;10(1):17. doi: 10.1007/s13755-022-00185-9. eCollection 2022 Dec.
Melanoma is a type of skin lesion that is less common than other types of skin lesions, but it is fast growing and spreading. Therefore, it is classified as a serious disease that directly threatens human health and life. Recently, the number of deaths due to this disease has increased significantly. Thus, researchers are interested in creating computer-aided diagnostic systems that aid in the proper diagnosis and detection of these lesions from dermoscopy images. Relying on manual diagnosis is time consuming in addition to requiring enough experience from dermatologists. Current skin lesion segmentation systems use deep convolutional neural networks to detect skin lesions from RGB dermoscopy images. However, relying on RGB color model is not always the optimal choice to train such networks because some fine details of lesion parts in the dermoscopy images can not clearly appear using RGB color model. Other color models exhibit invariant features of the dermoscopy images so that they can improve the performance of deep neural networks. In the proposed Color Invariant U-Net (CIU-Net) model, a color mixture block is added at the beginning of the contracting path of U-Net. The color mixture block acts as a mixer to learn the fusion of various input color models and create a new one with three channels. Furthermore, a new channel-attention module is included in the connection path between encoder and decoder paths. This channel attention module is developed to enrich the extracted color features. From the experimental result, we found that the proposed CIU-Net works in harmony with the new proposed hybrid loss function to enhance skin segmentation results. The performance of the proposed CIU-Net architecture is evaluated using ISIC 2018 dataset and the results are compared with other recent approaches. Our proposed method outperformed other recent approaches and achieved the best Dice and Jaccard coefficient with values 92.56% and 91.40%, respectively.
黑色素瘤是一种皮肤病变类型,比其他类型的皮肤病变少见,但生长和扩散迅速。因此,它被归类为直接威胁人类健康和生命的严重疾病。最近,死于这种疾病的人数显著增加。因此,研究人员有兴趣创建计算机辅助诊断系统,以帮助从皮肤镜图像中正确诊断和检测这些病变。依靠人工诊断不仅耗时,还需要皮肤科医生具备足够的经验。当前的皮肤病变分割系统使用深度卷积神经网络从RGB皮肤镜图像中检测皮肤病变。然而,依靠RGB颜色模型来训练此类网络并不总是最佳选择,因为使用RGB颜色模型时,皮肤镜图像中病变部位的一些细微细节可能无法清晰呈现。其他颜色模型展现出皮肤镜图像的不变特征,从而可以提高深度神经网络的性能。在所提出的颜色不变U-Net(CIU-Net)模型中,在U-Net的收缩路径开头添加了一个颜色混合块。该颜色混合块充当混合器,用于学习各种输入颜色模型的融合,并创建一个具有三个通道的新模型。此外,在编码器和解码器路径之间的连接路径中包含一个新的通道注意力模块。开发这个通道注意力模块是为了丰富提取的颜色特征。从实验结果来看,我们发现所提出的CIU-Net与新提出的混合损失函数协同工作,以增强皮肤分割结果。使用ISIC 2018数据集评估所提出的CIU-Net架构的性能,并将结果与其他近期方法进行比较。我们提出的方法优于其他近期方法,分别以92.56%和91.40%的值实现了最佳的骰子系数和杰卡德系数。