Kumar Hemant, Dwivedi Abhishek, Mishra Abhishek Kumar, Shukla Arvind Kumar, Sharma Brajesh Kumar, Agarwal Rashi, Kumar Sunil
Department of Information Technology, School of Engineering & Technology, Chhatrapati Shahu Ji Maharaj University, Kanpur, India.
Department of Computer Applications, School of Engineering & Technology, Chhatrapati Shahu Ji Maharaj University, Kanpur, India.
MethodsX. 2024 Jul 3;13:102839. doi: 10.1016/j.mex.2024.102839. eCollection 2024 Dec.
Melanoma is a type of skin cancer that poses significant health risks and requires early detection for effective treatment. This study proposing a novel approach that integrates a transformer-based model with hand-crafted texture features and Gray Wolf Optimization, aiming to enhance efficiency of melanoma classification. Preprocessing involves standardizing image dimensions and enhancing image quality through median filtering techniques. Texture features, including GLCM and LBP, are extracted to capture spatial patterns indicative of melanoma. The GWO algorithm is applied to select the most discriminative features. A transformer-based decoder is then employed for classification, leveraging attention mechanisms to capture contextual dependencies. The experimental validation on the HAM10000 dataset and ISIC2019 dataset showcases the effectiveness of the proposed methodology. The transformer-based model, integrated with hand-crafted texture features and guided by Gray Wolf Optimization, achieves outstanding results. The results showed that the proposed method performed well in melanoma detection tasks, achieving an accuracy and F1-score of 99.54% and 99.11% on the HAM10000 dataset, and an accuracy of 99.47%, and F1-score of 99.25% on the ISIC2019 dataset. • We use the concepts of LBP and GLCM to extract features from the skin lesion images. • The Gray Wolf Optimization (GWO) algorithm is employed for feature selection. • A decoder based on Transformers is utilized for melanoma classification.
黑色素瘤是一种会带来重大健康风险的皮肤癌,需要早期检测以进行有效治疗。本研究提出了一种将基于Transformer的模型与手工制作的纹理特征和灰狼优化相结合的新方法,旨在提高黑色素瘤分类的效率。预处理包括标准化图像尺寸并通过中值滤波技术提高图像质量。提取包括灰度共生矩阵(GLCM)和局部二值模式(LBP)在内的纹理特征,以捕捉指示黑色素瘤的空间模式。应用灰狼优化(GWO)算法选择最具判别力的特征。然后使用基于Transformer的解码器进行分类,利用注意力机制捕捉上下文依赖关系。在HAM10000数据集和ISIC2019数据集上的实验验证展示了所提出方法的有效性。基于Transformer的模型与手工制作的纹理特征相结合,并在灰狼优化的指导下,取得了出色的结果。结果表明,所提出的方法在黑色素瘤检测任务中表现良好,在HAM10000数据集上的准确率和F1分数分别达到99.54%和99.11%,在ISIC2019数据集上的准确率为99.47%,F1分数为99.25%。
• 我们使用LBP和GLCM的概念从皮肤病变图像中提取特征。
• 采用灰狼优化(GWO)算法进行特征选择。
• 利用基于Transformer的解码器进行黑色素瘤分类。