Subramanian Malliga, Shanmugavadivel Kogilavani, Thangaraj Sudha, Cho Jaehyuk, Ve Sathishkumar
Department of Computer Science and Engineering, Kongu Engineering College, Perundurai, Erode, Tamil Nadu, India.
Department of Artificial Intelligence, Kongu Engineering College, Perundurai, Erode, Tamil Nadu, India.
Curr Med Imaging. 2025;21:e15734056332443. doi: 10.2174/0115734056332443241129113146.
The skin, being the largest organ in the human body, plays a vital protective role. Skin lesions are changes in the appearance of the skin, such as bumps, sores, lumps, patches, and discoloration. If not identified and treated promptly, skin lesion diseases would become a serious and worrisome problem for society due to their detrimental effects. However, visually inspecting skin lesions during medical examinations can be challenging due to their similarities.
The proposed research aimed at leveraging technological advancements, particularly deep learning methods, to analyze dermoscopic images of skin lesions and make accurate predictions, thereby aiding in diagnosis.
The proposed study utilized four pre-trained CNN architectures, RegNetX, EfficientNetB3, VGG19, and ResNet-152, for the multi-class classification of seven types of skin diseases based on dermoscopic images. The significant finding of this study was the integration of attention mechanisms, specifically channel-wise and spatial attention, into these CNN variants. These mechanisms allowed the models to focus on the most relevant regions of the dermoscopic images, enhancing feature extraction and improving classification accuracy. Hyperparameters of the models were optimized using Bayesian optimization, a probabilistic model-based technique that efficiently uses the hyperparameter space to find the optimal configuration for the developed models.
The performance of these models was evaluated, and it was found that RegNetX outperformed the other models with an accuracy of 98.61%. RegNetX showed robust performance when integrated with both channel-wise and spatial attention mechanisms, indicating its effectiveness in focusing on significant features within the dermoscopic images.
The results demonstrated the effectiveness of attention-aware deep learning models in accurately classifying various skin diseases from dermoscopic images. By integrating attention mechanisms, these models can focus on the most relevant features within the images, thereby improving their classification accuracy. The results confirmed that RegNetX, integrated with optimized attention mechanisms, can provide robust, accurate diagnoses, which is critical for early detection and treatment of skin diseases.
皮肤作为人体最大的器官,起着至关重要的保护作用。皮肤病变是皮肤外观的变化,如肿块、溃疡、硬结、斑块和变色。如果不能及时识别和治疗,皮肤病变疾病因其有害影响将成为社会严重且令人担忧的问题。然而,在医学检查中通过视觉检查皮肤病变具有挑战性,因为它们很相似。
拟开展的研究旨在利用技术进步,特别是深度学习方法,分析皮肤病变的皮肤镜图像并做出准确预测,从而辅助诊断。
拟开展的研究使用四种预训练的卷积神经网络(CNN)架构,即RegNetX、EfficientNetB3、VGG19和ResNet - 152,基于皮肤镜图像对七种皮肤病进行多类别分类。本研究的重要发现是将注意力机制,特别是通道注意力和空间注意力,集成到这些CNN变体中。这些机制使模型能够专注于皮肤镜图像中最相关的区域,增强特征提取并提高分类准确率。使用贝叶斯优化对模型的超参数进行优化,贝叶斯优化是一种基于概率模型的技术,可有效利用超参数空间为所开发的模型找到最优配置。
对这些模型的性能进行了评估,发现RegNetX的准确率为98.61%,优于其他模型。当RegNetX与通道注意力和空间注意力机制集成时,表现出稳健的性能,表明其在聚焦皮肤镜图像中的重要特征方面的有效性。
结果证明了注意力感知深度学习模型在从皮肤镜图像中准确分类各种皮肤病方面的有效性。通过集成注意力机制,这些模型可以专注于图像中最相关的特征,从而提高其分类准确率。结果证实,集成优化注意力机制的RegNetX可以提供稳健、准确的诊断,这对于皮肤病的早期检测和治疗至关重要。