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Welcome Medical Adapters Zoo!
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Download an adapter for your target disease—trained on organs, lesions, and abnormalities—and effortlessly enhance SAM.
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Welcome Medical Adapters Zoo!
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## What
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Here are the pre-trained Adapters to transfer SAM (Segment Anything Model) for segmenting various organs/lesions from the medical images.
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## Why
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SAM (Segment Anything Model) is one of the most popular open model for the image segmentation. Unfortaintly, it does not perform well on the medical images.
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An efficient way to solve it is using Adapters, i.e., some layers with a few parameters to be added to the pre-trained SAM model to fine-tune it to the target down-stream tasks.
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Medical image segmentation includes many different organs, lesions, abnormalities as the targets.
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So we are training different adapter for each of the target, and share them here for the easy usage in the community.
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Download an adapter for your target disease—trained on organs, lesions, and abnormalities—and effortlessly enhance SAM.
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