FluoroSAM: A Language-promptable Foundation Model for Flexible X-ray Image Segmentation
Benjamin D. Killeen, Liam J. Wang, Blanca Inigo, Han Zhang, Mehran Armand, Russell H. Taylor, Greg Osgood, Mathias Unberath

TL;DR
FluoroSAM is a versatile, language-promptable foundation model for X-ray image segmentation, trained on synthetic data to enable broad, flexible, and natural language-guided analysis across various X-ray modalities and applications.
Contribution
We introduce FluoroSAM, a novel foundation model trained on synthetic X-ray images, capable of language-guided segmentation of diverse anatomical structures and tools.
Findings
Effective segmentation of real X-ray images using language prompts
Trained on 3 million synthetic images covering various anatomies and tools
Enables natural language interaction in X-ray image analysis
Abstract
Language promptable X-ray image segmentation would enable greater flexibility for human-in-the-loop workflows in diagnostic and interventional precision medicine. Prior efforts have contributed task-specific models capable of solving problems within a narrow scope, but expanding to broader use requires additional data, annotations, and training time. Recently, language-aligned foundation models (LFMs) -- machine learning models trained on large amounts of highly variable image and text data thus enabling broad applicability -- have emerged as promising tools for automated image analysis. Existing foundation models for medical image analysis focus on scenarios and modalities where large, richly annotated datasets are available. However, the X-ray imaging modality features highly variable image appearance and applications, from diagnostic chest X-rays to interventional fluoroscopy, with…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Machine Learning in Materials Science
MethodsSparse Evolutionary Training · Focus · Segment Anything Model
