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Towards expert-level autonomous carotid ultrasonography with large-scale learning-based robotic system

Author

Listed:
  • Haojun Jiang

    (Tsinghua University
    Tsinghua University)

  • Andrew Zhao

    (Tsinghua University
    Tsinghua University)

  • Qian Yang

    (Air Force Medical Center)

  • Xiangjie Yan

    (Tsinghua University
    Tsinghua University)

  • Teng Wang

    (Tsinghua University
    Tsinghua University)

  • Yulin Wang

    (Tsinghua University
    Tsinghua University)

  • Ning Jia

    (LeadVision Ltd)

  • Jiangshan Wang

    (Shenzhen International Graduate School, Tsinghua University)

  • Guokun Wu

    (Shenzhen International Graduate School, Tsinghua University)

  • Yang Yue

    (Tsinghua University
    Tsinghua University)

  • Shaqi Luo

    (Beijing Academy of Artificial Intelligence)

  • Huanqian Wang

    (Tsinghua University
    Tsinghua University)

  • Ling Ren

    (Chinese PLA General Hospital)

  • Siming Chen

    (Chinese PLA General Hospital)

  • Pan Liu

    (Chinese PLA General Hospital)

  • Guocai Yao

    (Beijing Academy of Artificial Intelligence)

  • Wenming Yang

    (Shenzhen International Graduate School, Tsinghua University)

  • Shiji Song

    (Tsinghua University
    Tsinghua University)

  • Xiang Li

    (Tsinghua University
    Tsinghua University)

  • Kunlun He

    (Chinese PLA General Hospital)

  • Gao Huang

    (Tsinghua University
    Tsinghua University)

Abstract

Carotid ultrasound requires skilled operators due to small vessel dimensions and high anatomical variability, exacerbating sonographer shortages and diagnostic inconsistencies. Prior automation attempts, including rule-based approaches with manual heuristics and reinforcement learning trained in simulated environments, demonstrate limited generalizability and fail to complete real-world clinical workflows. Here, we present UltraBot, a fully learning-based autonomous carotid ultrasound robot, achieving human-expert-level performance through four innovations: (1) A unified imitation learning framework for acquiring anatomical knowledge and scanning operational skills; (2) A large-scale expert demonstration dataset (247,000 samples, 100 × scale-up), enabling embodied foundation models with strong generalization; (3) A comprehensive scanning protocol ensuring full anatomical coverage for biometric measurement and plaque screening; (4) The clinical-oriented validation showing over 90% success rates, expert-level accuracy, up to 5.5 × higher reproducibility across diverse unseen populations. Overall, we show that large-scale deep learning offers a promising pathway toward autonomous, high-precision ultrasonography in clinical practice.

Suggested Citation

  • Haojun Jiang & Andrew Zhao & Qian Yang & Xiangjie Yan & Teng Wang & Yulin Wang & Ning Jia & Jiangshan Wang & Guokun Wu & Yang Yue & Shaqi Luo & Huanqian Wang & Ling Ren & Siming Chen & Pan Liu & Guoca, 2025. "Towards expert-level autonomous carotid ultrasonography with large-scale learning-based robotic system," Nature Communications, Nature, vol. 16(1), pages 1-21, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-62865-w
    DOI: 10.1038/s41467-025-62865-w
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