Paraddy Sudha
Computer Science & Engineering, PDA College of Engineering, Kalaburagi, India.
Department of Computer Science and Engineering, Sharnbasva University, Kalaburagi, Karnataka, India.
J Imaging Inform Med. 2025 Jun;38(3):1755-1775. doi: 10.1007/s10278-024-01290-9. Epub 2024 Oct 22.
Skin cancer is one of the top three hazardous cancer types, and it is caused by the abnormal proliferation of tumor cells. Diagnosing skin cancer accurately and early is crucial for saving patients' lives. However, it is a challenging task due to various significant issues, including lesion variations in texture, shape, color, and size; artifacts (hairs); uneven lesion boundaries; and poor contrast. To solve these issues, this research proposes a novel Convolutional Swin Transformer (CSwinformer) method for segmenting and classifying skin lesions accurately. The framework involves phases such as data preprocessing, segmentation, and classification. In the first phase, Gaussian filtering, Z-score normalization, and augmentation processes are executed to remove unnecessary noise, re-organize the data, and increase data diversity. In the phase of segmentation, we design a new model "Swinformer-Net" integrating Swin Transformer and U-Net frameworks, to accurately define a region of interest. At the final phase of classification, the segmented outcome is input into the newly proposed module "Multi-Scale Dilated Convolutional Neural Network meets Transformer (MD-CNNFormer)," where the data samples are classified into respective classes. We use four benchmark datasets-HAM10000, ISBI 2016, PH2, and Skin Cancer ISIC for evaluation. The results demonstrated the designed framework's better efficiency against the traditional approaches. The proposed method provided classification accuracy of 98.72%, pixel accuracy of 98.06%, and dice coefficient of 97.67%, respectively. The proposed method offered a promising solution in skin lesion segmentation and classification, supporting clinicians to accurately diagnose skin cancer.
皮肤癌是三大危险癌症类型之一,它由肿瘤细胞的异常增殖引起。准确且早期地诊断皮肤癌对于挽救患者生命至关重要。然而,由于各种重大问题,这是一项具有挑战性的任务,这些问题包括病变在纹理、形状、颜色和大小方面的变化;伪影(毛发);病变边界不均匀;以及对比度差。为了解决这些问题,本研究提出了一种新颖的卷积Swin Transformer(CSwinformer)方法,用于准确分割和分类皮肤病变。该框架包括数据预处理、分割和分类等阶段。在第一阶段,执行高斯滤波、Z分数归一化和增强过程,以去除不必要的噪声、重新组织数据并增加数据多样性。在分割阶段,我们设计了一个新模型“Swinformer-Net”,它整合了Swin Transformer和U-Net框架,以准确界定感兴趣区域。在分类的最后阶段,将分割结果输入到新提出的模块“多尺度扩张卷积神经网络与Transformer相结合(MD-CNNFormer)”中,在该模块中数据样本被分类到各自的类别。我们使用四个基准数据集——HAM10000、ISBI 2016、PH2和皮肤癌ISIC进行评估。结果表明,所设计的框架相对于传统方法具有更高的效率。所提出的方法分别提供了98.72%的分类准确率、98.06%的像素准确率和97.67%的骰子系数。所提出的方法在皮肤病变分割和分类方面提供了一个有前景的解决方案,支持临床医生准确诊断皮肤癌。