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Article type: Research Article
Authors: M.G, Sumithra | Venkatesan, Chandran*
Affiliations: Department of Electronics and Communication Engineering, Sri Krishna College of Technology, Coimbatore, India
Correspondence: [*] Corresponding author: Chandran Venkatesan, Department of Electronics and Communication Engineering, Sri Krishna College of Technology, Coimbatore, India. E-mail: chandranv76@gmail.com.
Abstract: BACKGROUND: The identification of infection in diabetic foot ulcers (DFUs) is challenging due to variability within classes, visual similarity between classes, reduced contrast with healthy skin, and presence of artifacts. Existing studies focus on visual characteristics and tissue classification rather than infection detection, critical for assessing DFUs and predicting amputation risk. OBJECTIVE: To address these challenges, this study proposes a deep learning model using a hybrid CNN and Swin Transformer architecture for infection classification in DFU images. The aim is to leverage end-to-end mapping without prior knowledge, integrating local and global feature extraction to improve detection accuracy. METHODS: The proposed model utilizes a hybrid CNN and Swin Transformer architecture. It employs the Grad CAM technique to visualize the decision-making process of the CNN and Transformer blocks. The DFUC Challenge dataset is used for training and evaluation, emphasizing the model’s ability to accurately classify DFU images into infected and non-infected categories. RESULTS: The model achieves high performance metrics: sensitivity (95.98%), specificity (97.08%), accuracy (96.52%), and Matthews Correlation Coefficient (0.93). These results indicate the model’s effectiveness in quickly diagnosing DFU infections, highlighting its potential as a valuable tool for medical professionals. CONCLUSION: The hybrid CNN and Swin Transformer architecture effectively combines strengths from both models, enabling accurate classification of DFU images as infected or non-infected, even in complex scenarios. The use of Grad CAM provides insights into the model’s decision process, aiding in identifying infected regions within DFU images. This approach shows promise for enhancing clinical assessment and management of DFU infections.
Keywords: Diabetic foot ulcer, infection classification, convolutional neural network, Swin Transformer, Grad CAM
DOI: 10.3233/THC-241444
Journal: Technology and Health Care, vol. Pre-press, no. Pre-press, pp. 1-18, 2024
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