Segment Anything Model for Medical Images?
Yuhao Huang, Xin Yang, Lian Liu, Han Zhou, Ao Chang, Xinrui Zhou, Rusi, Chen, Junxuan Yu, Jiongquan Chen, Chaoyu Chen, Sijing Liu, Haozhe Chi, Xindi, Hu, Kejuan Yue, Lei Li, Vicente Grau, Deng-Ping Fan, Fajin Dong, Dong Ni

TL;DR
This study evaluates the Segment Anything Model's performance on diverse medical images, revealing its strengths, limitations, and potential for aiding medical image segmentation and annotation tasks.
Contribution
It provides a comprehensive analysis of SAM's performance on a large, multi-modal medical dataset and offers insights into how to effectively adapt SAM for medical image segmentation.
Findings
SAM shows strong performance on specific objects but is inconsistent across different cases.
Large ViT-H backbone improves overall segmentation accuracy.
Manual hints enhance SAM's performance and annotation efficiency.
Abstract
The Segment Anything Model (SAM) is the first foundation model for general image segmentation. It has achieved impressive results on various natural image segmentation tasks. However, medical image segmentation (MIS) is more challenging because of the complex modalities, fine anatomical structures, uncertain and complex object boundaries, and wide-range object scales. To fully validate SAM's performance on medical data, we collected and sorted 53 open-source datasets and built a large medical segmentation dataset with 18 modalities, 84 objects, 125 object-modality paired targets, 1050K 2D images, and 6033K masks. We comprehensively analyzed different models and strategies on the so-called COSMOS 1050K dataset. Our findings mainly include the following: 1) SAM showed remarkable performance in some specific objects but was unstable, imperfect, or even totally failed in other situations.…
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Taxonomy
TopicsAdvanced Neural Network Applications · COVID-19 diagnosis using AI · Radiomics and Machine Learning in Medical Imaging
MethodsSegment Anything Model
