arXiv Open Access 2025

SRT-H: A Hierarchical Framework for Autonomous Surgery via Language Conditioned Imitation Learning

Ji Woong Kim Juo-Tung Chen Pascal Hansen Lucy X. Shi Antony Goldenberg +9 lainnya
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Abstrak

Research on autonomous surgery has largely focused on simple task automation in controlled environments. However, real-world surgical applications demand dexterous manipulation over extended durations and generalization to the inherent variability of human tissue. These challenges remain difficult to address using existing logic-based or conventional end-to-end learning approaches. To address this gap, we propose a hierarchical framework for performing dexterous, long-horizon surgical steps. Our approach utilizes a high-level policy for task planning and a low-level policy for generating robot trajectories. The high-level planner plans in language space, generating task-level or corrective instructions that guide the robot through the long-horizon steps and correct for the low-level policy's errors. We validate our framework through ex vivo experiments on cholecystectomy, a commonly-practiced minimally invasive procedure, and conduct ablation studies to evaluate key components of the system. Our method achieves a 100\% success rate across eight unseen ex vivo gallbladders, operating fully autonomously without human intervention. This work demonstrates step-level autonomy in a surgical procedure, marking a milestone toward clinical deployment of autonomous surgical systems.

Topik & Kata Kunci

Penulis (14)

J

Ji Woong Kim

J

Juo-Tung Chen

P

Pascal Hansen

L

Lucy X. Shi

A

Antony Goldenberg

S

Samuel Schmidgall

P

Paul Maria Scheikl

A

Anton Deguet

B

Brandon M. White

D

De Ru Tsai

R

Richard Cha

J

Jeffrey Jopling

C

Chelsea Finn

A

Axel Krieger

Format Sitasi

Kim, J.W., Chen, J., Hansen, P., Shi, L.X., Goldenberg, A., Schmidgall, S. et al. (2025). SRT-H: A Hierarchical Framework for Autonomous Surgery via Language Conditioned Imitation Learning. https://arxiv.org/abs/2505.10251

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Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓