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Awesome-Segment-Anything-Medical-Images

In this repo I try to collect a list of papers and projects that I find interesting that utilizes the Segment Anything Model (SAM) to perform segmentation on medical images, utilizes SAM as part of the frameworks, or perform anaylsis or studies of SAM on medical images. Note that this SAM is a relative new model and there may be ignored papers or works that are ignored.

For a list of all projects and researches of SAM in various fields, check out the Awesome Segment Anything repository.

If you find any interesting works feel free to create pull requests or email me to make the list more comprehensive.

Papers

Title Paper Code Dataset Keywords Comments
SAM.MD: Zero-shot medical image segmentation capabilities of the Segment Anything Mode arxiv - abdominal CT organ zero-shot comparasion between prompted SAM and 2D and 3D nnUNet
Segment Anything Model (SAM) for Digital Pathology: Assess Zero-shot Segmentation on Whole Slide Imaging arxiv - Skin tumor, Skin tissue zero-shot comparasion between prompted SAM and SimTriplet
When SAM Meets Medical Images: An Investigation of Segment Anything Model (SAM) on Multi-phase Liver Tumor Segmentation arxiv - Liver Tumor zero-shot comparasion between SAM and UNet
SAM vs BET: A Comparative Study for Brain Extraction and Segmentation of Magnetic Resonance Images using Deep Learning arxiv - Brain MRI zero-shot brain extraction
The “Segment Anything” foundation model achieves favorable brain tumor autosegmentation accuracy on MRI to support radiotherapy treatment planning arxiv - Brain MRI using BraTS 2020 dataset, use promting for SAM
Accuracy of Segment-Anything Model (SAM) in Medical Image Segmentation Tasks arxiv - Various Datasets: ACDC, LiTS, Hipp, ISIC, Prostate, LA, BraTS, Pancreas, BUID, Kvasir, CIR. Benchmark Models: U-Net, U-Net++, Attention U-Net, Trans U-Net, UCTransNet, SAM, SAM-Points, SAM-Boxes (3 prompting settings).
Can SAM Segment Polyps? arxiv - Polyp Utilizes unprompted settings for SAM. Compute S-measure (Sα) score values for the N masks, and the mask with the highest score is selected as the segmentation map.
Segment Anything Model for Medical Image Analysis: an Experimental Study arxiv Code Various Tests SAM on 11 medical datasets. Compares results with RITM. Experiments with various number of prompts.
Segment Anything in Medical Images arxiv Code Various Development of fine-tuning method to adapt SAM to general medical image segmentation.
Medical SAM Adapter: Adapting Segment Anything Model for Medical Image Segmentation arxiv Code Various Introduction of Medical SAM Adapter (MSA), a bottle-neck model to fine-tune the SAM model. Various datasets (AMOS2022, BTCV, and etc) are used

Related Projects

Title Demo Paper Code Comments
SAMM (Segment Any Medical Model): A 3D Slicer Integration to SAM img arxiv code SAM integration in 3D Slicer for semi-automatic segmentation
Segment Anything Model (SAM) in Napari img - code SAM integration in 3D Napari for click-based semantic segmentation
SAM Medical Imaging img - code SAM segmentaiton of DICOM files using Colab
Segment-Anything-Automatically-on-Medical-Image (SAAMI) img - code Automatic SAM 3D segmentation mask generation without prompting