Aboulmira Amina, Hrimech Hamid, Lachgar Mohamed, Hanine Mohamed, Garcia Carlos Osorio, Mezquita Gerardo Mendez, Ashraf Imran
LAMSAD Laboratory, ENSA, Hassan First University, Berrechid, Morocco.
L2IS Laboratory, FSTG, Cadi Ayyad University, Marrakech, Morocco.
J Cancer. 2025 Jan 1;16(2):506-520. doi: 10.7150/jca.101574. eCollection 2025.
Faced with anomalies in medical images, Deep learning is facing major challenges in detecting, diagnosing, and classifying the various pathologies that can be treated via medical imaging. The main challenges encountered are mainly due to the imbalance and variability of the data, as well as its complexity. The detection and classification of skin diseases is one such challenge that researchers are trying to overcome, as these anomalies present great variability in terms of appearance, texture, color, and localization, which sometimes makes them difficult to identify accurately and quickly, particularly by doctors, or by the various Deep Learning techniques on offer. In this study, an innovative and robust hybrid architecture is unveiled, underscoring the symbiotic potential of wavelet decomposition in conjunction with EfficientNet models. This approach integrates wavelet transformations with an EfficientNet backbone and incorporates advanced data augmentation, loss function, and optimization strategies. The model tested on the publicly accessible HAM10000 and ISIC2017 datasets has achieved an accuracy rate of 94.7%, and 92.2% respectively.
面对医学图像中的异常情况,深度学习在检测、诊断和分类可通过医学成像治疗的各种病症方面面临重大挑战。所遇到的主要挑战主要归因于数据的不平衡性和变异性以及其复杂性。皮肤疾病的检测和分类就是研究人员试图克服的此类挑战之一,因为这些异常在外观、纹理、颜色和位置方面呈现出很大的变异性,这有时使得它们难以被准确快速地识别,尤其是医生或现有的各种深度学习技术。在本研究中,一种创新且强大的混合架构被揭示,突出了小波分解与EfficientNet模型相结合的共生潜力。这种方法将小波变换与EfficientNet主干相结合,并纳入了先进的数据增强、损失函数和优化策略。在公开可用的HAM10000和ISIC2017数据集上测试的模型分别达到了94.7%和92.2%的准确率。