Med-Tuning: A New Parameter-Efficient Tuning Framework for Medical Volumetric Segmentation

Medical Imaging with Deep Learning 2024

1University of Science and Technology Beijing 2University of Central Florida 3University of Birmingham 4Institute of Automation, Chinese Academy of Sciences

Abstract

The "pre-training then fine-tuning (FT)" paradigm is widely adopted to boost the model performance of deep learning-based methods for medical volumetric segmentation. However, conventional full FT incurs high computational and memory costs. Thus, it is of increasing importance to fine-tune pre-trained models for medical volumetric segmentation tasks in a both effective and parameter-efficient manner. In this paper, we introduce a new framework named Med-Tuning to realize parameter-efficient tuning (PET) for medical volumetric segmentation task and an efficient plug-and-play module named Med-Adapter for task-specific feature extraction. With a small number of tuned parameters, our framework enhances the 2D baselines's precision on segmentation tasks, which are pre-trained on natural images. Extensive experiments on three benchmark datasets (CT and MRI modalities) show that our method achieves better results than previous PET methods on volumetric segmentation tasks. Compared to full FT, Med-Tuning reduces the fine-tuned model parameters by up to 4x, with even better segmentation performance. Our project webpage is at https://rubics-xuan.github.io/Med-Tuning/.

Methodology

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Quantitative Results

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Qualitative Results

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BibTeX

@inproceedings{shen2024med,
      title={Med-Tuning: A New Parameter-Efficient Tuning Framework for Medical Volumetric Segmentation},
      author={Shen, Jiachen and Wang, Wenxuan and Chen, Chen and Jiao, Jianbo and Liu, Jing and Zhang, Yan and Song, Shanshan and Li, Jiangyun},
      booktitle={Medical Imaging with Deep Learning},
      year={2024}
}