CVMMNov 27, 2023

EAFP-Med: An Efficient Adaptive Feature Processing Module Based on Prompts for Medical Image Detection

arXiv:2311.15540v11 citationsh-index: 71
Originality Incremental advance
AI Analysis

This addresses the problem of lesion representation differences across medical imaging technologies for medical image analysis and diagnosis, representing a domain-specific incremental improvement.

The paper tackled cross-domain adaptive medical image detection by proposing EAFP-Med, an efficient adaptive feature processing module based on prompts, which achieved the best performance on three datasets (chest X-ray, cranial MRI, and skin images) compared to nine state-of-the-art methods.

In the face of rapid advances in medical imaging, cross-domain adaptive medical image detection is challenging due to the differences in lesion representations across various medical imaging technologies. To address this issue, we draw inspiration from large language models to propose EAFP-Med, an efficient adaptive feature processing module based on prompts for medical image detection. EAFP-Med can efficiently extract lesion features of different scales from a diverse range of medical images based on prompts while being flexible and not limited by specific imaging techniques. Furthermore, it serves as a feature preprocessing module that can be connected to any model front-end to enhance the lesion features in input images. Moreover, we propose a novel adaptive disease detection model named EAFP-Med ST, which utilizes the Swin Transformer V2 - Tiny (SwinV2-T) as its backbone and connects it to EAFP-Med. We have compared our method to nine state-of-the-art methods. Experimental results demonstrate that EAFP-Med ST achieves the best performance on all three datasets (chest X-ray images, cranial magnetic resonance imaging images, and skin images). EAFP-Med can efficiently extract lesion features from various medical images based on prompts, enhancing the model's performance. This holds significant potential for improving medical image analysis and diagnosis.

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