Temel Kavramlar
A clinical-oriented multi-level contrastive learning framework that enhances the model's capacity to extract lesion features and discriminate between lesion and low-quality factors, enabling more accurate disease diagnosis from low-quality medical images.
Özet
The paper proposes a clinical-oriented multi-level contrastive learning (CoMCL) framework for disease diagnosis from low-quality medical images. The key highlights are:
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Construction of multi-level positive and negative pairs:
- Enhances the model's ability to distinguish low-quality factors from lesions in low-quality medical images.
- Improves the model's capability to discriminate between lesion and non-lesion areas.
- Enhances the model's awareness to identify lesion characteristics in low-quality images.
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Introduction of a dynamic hard sample mining method based on self-paced learning:
- Effectively leverages hard negatives to improve the quality of the learned lesion-related embeddings.
The proposed CoMCL framework is validated on two public medical image datasets, EyeQ and Chest X-ray, demonstrating superior performance compared to other state-of-the-art disease diagnostic methods, especially in the presence of low-quality factors.
İstatistikler
Medical images often suffer from various low-quality factors such as artifacts and blurring, leading to quality degradation.
Low-quality factors may cause contrastive learning to incorrectly pull the distance in the embedding space between lesion samples and low-quality healthy samples, or between healthy samples and low-quality lesion samples, thereby degrading the diagnostic performance.
Alıntılar
"To address these challenges in real clinical settings and fully exploit medical images without pixel-level annotations, some existing studies [11, 15,24] proactively explore the impact of contrastive learning (CL) [4, 8] on automated disease diagnosis models. However, they do not fully consider the common quality variations in medical images, which limits their effectiveness in eliminating the interference of low-quality factors on disease diagnosis."
"The challenge mentioned above motivates us to develop a Clinical-oriented Multi-level Contrastive Learning method, named CoMCL, tailored for automatic disease diagnosis on low-quality medical images."