A Deep-Ensemble-Learning-Based Approach for Skin Cancer Diagnosis

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Abstract

Skin cancer is one of the widespread diseases among existing cancer types. More importantly, the detection of lesions in early diagnosis has tremendously attracted researchers’ attention. Thus, artificial intelligence (AI)-based techniques have supported the early diagnosis of skin cancer by investigating deep-learning-based convolutional neural networks (CNN). However, the current methods remain challenging in detecting melanoma in dermoscopic images. Therefore, in this paper, we propose an ensemble model that uses the vision of both EfficientNetV2S and Swin-Transformer models to detect the early focal zone of skin cancer. Hence, we considerthat the former architecture leads to greater accuracy, while the latter model has the advantage of recognizing dark parts in an image. We have modified the fifth block of the EfficientNetV2S model and have included the Swin-Transformer model. Our experiments demonstrate that the constructed ensemble model has attained a higher level of accuracy over the individual models and has also decreased the losses as compared to traditional strategies. The proposed model achieved an accuracy score of 99.10%, a sensitivity of 99.27%, and a specificity score of 99.80%.

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Shehzad, K., Zhenhua, T., Shoukat, S., Saeed, A., Ahmad, I., Sarwar Bhatti, S., & Chelloug, S. A. (2023). A Deep-Ensemble-Learning-Based Approach for Skin Cancer Diagnosis. Electronics (Switzerland), 12(6). https://doi.org/10.3390/electronics12061342

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