SkinSwinViT: A Lightweight Transformer-Based Method for Multiclass Skin Lesion Classification with Enhanced Generalization Capabilities

Author:

Tang Kun1,Su Jing1,Chen Ruihan12ORCID,Huang Rui1,Dai Ming1,Li Yongjiang1

Affiliation:

1. School of Mathematics and Computer, Guangdong Ocean University, Zhanjiang 524008, China

2. Artificial Intelligence Research Institute, International (Macau) Institute of Academic Research, Macau 999078, China

Abstract

In recent decades, skin cancer has emerged as a significant global health concern, demanding timely detection and effective therapeutic interventions. Automated image classification via computational algorithms holds substantial promise in significantly improving the efficacy of clinical diagnoses. This study is committed to mitigating the challenge of diagnostic accuracy in the classification of multiclass skin lesions. This endeavor is inherently formidable owing to the resemblances among various lesions and the constraints associated with extracting precise global and local image features within diverse dimensional spaces using conventional convolutional neural network methodologies. Consequently, this study introduces the SkinSwinViT methodology for skin lesion classification, a pioneering model grounded in the Swin Transformer framework featuring a global attention mechanism. Leveraging the inherent cross-window attention mechanism within the Swin Transformer architecture, the model adeptly captures local features and interdependencies within skin lesion images while additionally incorporating a global self-attention mechanism to discern overarching features and contextual information effectively. The evaluation of the model’s performance involved the ISIC2018 challenge dataset. Furthermore, data augmentation techniques augmented training dataset size and enhanced model performance. Experimental results highlight the superiority of the SkinSwinViT method, achieving notable metrics of accuracy, recall, precision, specificity, and F1 score at 97.88%, 97.55%, 97.83%, 99.36%, and 97.79%, respectively.

Funder

program for scientific research start-up funds of Guangdong Ocean University

Guangdong Basic and Applied Basic Research Foundation

National College Students Innovation and Entrepreneurship Training Program

Publisher

MDPI AG

Reference43 articles.

1. (2024, March 03). American Cancer Society. Available online: https://www.cancer.org/cancer/types/melanoma-skin-cancer/about/key-statistics.html.

2. (2024, March 06). WHO Newsroom Fact Sheet. Available online: https://www.who.int/news-room/fact-sheets/detail/cancer.

3. (2024, March 06). ISIC Challenge. Available online: https://challenge.isic-archive.com/.

4. Zhang, J., Zhong, F., He, K., Ji, M., Li, S., and Li, C. (2023). Recent Advancements and Perspectives in the Diagnosis of Skin Diseases Using Machine Learning and Deep Learning: A Review. Diagnostics, 13.

5. Artificial intelligence in healthcare;Yu;Nat. Biomed. Eng.,2018

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