A texture-based framework for foundational ultrasound models
Tal Grutman, Carmel Shinar, Tali Ilovitsh

TL;DR
This paper introduces TUSA, a texture-based self-supervised learning framework tailored for ultrasound images, improving generalization and diagnostic accuracy by integrating ultrasound-specific domain knowledge into the learning process.
Contribution
The paper presents TUSA, a novel texture analysis approach that enhances ultrasound model generalization by leveraging domain-specific contrastive learning on simple B-mode images.
Findings
TUSA outperforms larger foundation models on challenging ultrasound tasks.
Achieves high accuracy in detecting COVID, spinal hematoma, and vitreous hemorrhage.
Correlates strongly with clinical quantitative parameters.
Abstract
Ultrasound is the most widely used medical imaging modality, yet the images it produces are fundamentally unique, arising from tissue-dependent scattering, reflection, and speed-of-sound variations that produce a constrained set of characteristic textures that differ markedly from natural-image statistics. These acoustically driven patterns make ultrasound challenging for algorithms originally designed for natural images. To bridge this gap, the field has increasingly turned to foundation models, hoping to leverage their generalization capabilities. However, these models often falter in ultrasound applications because they are not designed for ultrasound physics, they are merely trained on ultrasound data. Therefore, it is essential to integrate ultrasound-specific domain knowledge into established learning frameworks. We achieve this by reformulating self-supervised learning as a…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Domain Adaptation and Few-Shot Learning · Ultrasound Imaging and Elastography
