SimSAM: Zero-shot Medical Image Segmentation via Simulated Interaction
Benjamin Towle, Xin Chen, Ke Zhou

TL;DR
SimSAM enhances zero-shot medical image segmentation by simulating user interactions to generate and aggregate multiple candidate masks, significantly improving contour accuracy without additional training.
Contribution
Introduces SimSAM, a novel method that leverages simulated interactions to improve zero-shot medical image segmentation with SAM, requiring no extra training.
Findings
Up to 15.5% improvement in segmentation accuracy
Effective across three medical imaging datasets
Operates without additional training or fine-tuning
Abstract
The recently released Segment Anything Model (SAM) has shown powerful zero-shot segmentation capabilities through a semi-automatic annotation setup in which the user can provide a prompt in the form of clicks or bounding boxes. There is growing interest around applying this to medical imaging, where the cost of obtaining expert annotations is high, privacy restrictions may limit sharing of patient data, and model generalisation is often poor. However, there are large amounts of inherent uncertainty in medical images, due to unclear object boundaries, low-contrast media, and differences in expert labelling style. Currently, SAM is known to struggle in a zero-shot setting to adequately annotate the contours of the structure of interest in medical images, where the uncertainty is often greatest, thus requiring significant manual correction. To mitigate this, we introduce \textbf{Sim}ulated…
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Taxonomy
TopicsAdvanced Neural Network Applications · Medical Image Segmentation Techniques · Brain Tumor Detection and Classification
MethodsSegment Anything Model
