AI Article Synopsis

  • Skin lesions are prevalent and similar in appearance, making accurate diagnosis challenging; existing deep learning models help but often only use surface data from clinical and dermatoscopic sources.
  • This paper introduces a novel diagnostic network that integrates both clinical and ultrasound data to enhance diagnostic accuracy by leveraging both surface and depth information of the lesions.
  • The proposed method includes an attention-guided learning module for better feature representation and a feature reconstruction learning strategy to improve the model's robustness and reliability, demonstrating superior performance in extensive experiments.

Article Abstract

Skin lesion is one of the most common diseases, and most categories are highly similar in morphology and appearance. Deep learning models effectively reduce the variability between classes and within classes, and improve diagnostic accuracy. However, the existing multi-modal methods are only limited to the surface information of lesions in skin clinical and dermatoscopic modalities, which hinders the further improvement of skin lesion diagnostic accuracy. This requires us to further study the depth information of lesions in skin ultrasound. In this paper, we propose a novel skin lesion diagnosis network, which combines clinical and ultrasound modalities to fuse the surface and depth information of the lesion to improve diagnostic accuracy. Specifically, we propose an attention-guided learning (AL) module that fuses clinical and ultrasound modalities from both local and global perspectives to enhance feature representation. The AL module consists of two parts, attention-guided local learning (ALL) computes the intra-modality and inter-modality correlations to fuse multi-scale information, which makes the network focus on the local information of each modality, and attention-guided global learning (AGL) fuses global information to further enhance the feature representation. In addition, we propose a feature reconstruction learning (FRL) strategy which encourages the network to extract more discriminative features and corrects the focus of the network to enhance the model's robustness and certainty. We conduct extensive experiments and the results confirm the superiority of our proposed method. Our code is available at: https://github.com/XCL-hub/AGFnet.

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Source
http://dx.doi.org/10.1109/TMI.2024.3450682DOI Listing

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