Improved Baselines with Synchronized Encoding for Universal Medical Image Segmentation
This work provides an improved baseline for universal medical image segmentation, addressing the domain gap between natural and medical images, though it is incremental in building upon existing fine-tuning techniques.
The authors tackled the challenge of adapting foundation models for medical image segmentation by introducing SyncSAM, a model with a synchronized dual-branch encoder and multi-scale decoder, which achieved state-of-the-art performance and strong zero-shot capabilities on unseen datasets.
Large foundation models, known for their strong zero-shot generalization capabilities, can be applied to a wide range of downstream tasks. However, developing foundation models for medical image segmentation poses a significant challenge due to the domain gap between natural and medical images. While fine-tuning techniques based on the Segment Anything Model (SAM) have been explored, they primarily focus on scaling up data or refining inference strategies without incorporating domain-specific architectural designs, limiting their zero-shot performance. To optimize segmentation performance under standard inference settings and provide a strong baseline for future research, we introduce SyncSAM, which employs a synchronized dual-branch encoder that integrates convolution and Transformer features in a synchronized manner to enhance medical image encoding, and a multi-scale dual-branch decoder to preserve image details. SyncSAM is trained on two of the largest medical image segmentation datasets, SA-Med2D-20M and IMed-361M, resulting in a series of pre-trained models for universal medical image segmentation. Experimental results demonstrate that SyncSAM not only achieves state-of-the-art performance on test sets but also exhibits strong zero-shot capabilities on unseen datasets. Code and checkpoints are available at https://github.com/Hhankyangg/SyncSAM.