SAMe: A Semantic Anatomy Mapping Engine for Robotic Ultrasound
Jing Zhang, Duojie Chen, Wentao Jiang, Zihan Lou, Jianxin Liu + 5 more
TLDR
SAMe is a semantic anatomy mapping engine that enables robotic ultrasound systems to autonomously initiate scans by understanding patient-specific anatomy.
Key contributions
- Grounds clinical complaints into structured target organs for autonomous scanning.
- Instantiates patient-specific anatomical models from a single external body image.
- Translates anatomy into 6-DoF probe initialization states without CT/MRI registration.
- Achieves 97.3% liver and 81.7% kidney organ-hit rates in real-robot initialization.
Why it matters
This paper introduces a crucial step towards fully autonomous robotic ultrasound by providing systems with an explicit anatomical understanding. SAMe reduces the need for expert intervention during scan initiation, making robotic ultrasonography more accessible and efficient. This advancement could significantly improve clinical workflows and patient care.
Original Abstract
Robotic ultrasound has advanced local image-driven control, contact regulation, and view optimization, yet current systems lack the anatomical understanding needed to determine what to scan, where to begin, and how to adapt to individual patient anatomy. These gaps make systems still reliant on expert intervention to initiate scanning. Here we present SAMe, a semantic anatomy mapping engine that provides robotic ultrasound with an explicit anatomical prior layer. SAMe addresses scan initiation as a target-to-anatomy-to-action process: it grounds under-specified clinical complaints into structured target organs, instantiates a patient-specific anatomical representation for the grounded targets from a single external body image, and translates this representation into control-facing 6-DoF probe initialization states without any additional registration using preoperative CT or MRI. The anatomical representation maintained by SAMe is explicit, lightweight (single-organ inference in 0.08s), and compatible with downstream control by design. Across semantic grounding, anatomical instantiation, and real-robot evaluation, SAMe shows strong performance across the full initialization pipeline. In real-robot experiments, SAMe achieved overall organ-hit rates of 97.3% for liver initialization and 81.7% for kidney initialization across the evaluated target sets. Even when restricted to the centroid target, SAMe outperformed the surface-heuristic baseline for both liver and kidney initialization. These results establish an explicit anatomical prior layer that addresses scan initialization and is designed to support broader downstream autonomous scanning pipelines, providing the anatomical foundation for complaint-driven, anatomically informed robotic ultrasonography.
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