Virtual-reality based patient-specific simulation of spine surgical procedures: A fast, highly automated and high-fidelity system for surgical education and planning

arXiv cs.CV / 4/30/2026

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Key Points

  • The paper presents an AI-driven VR platform that automatically generates patient-specific spine surgery simulations from CT and MRI data, addressing the limitations of standardized VR training scenarios.
  • It uses multimodal fusion for CT/MRI registration and segmentation of key anatomical structures, achieving high segmentation accuracy (DSC 0.95 for vertebral bone) and registration precision (mean TRE 1.73 mm).
  • The system supports realistic VR simulation of spine decompression procedures such as laminectomy, disc resection, and foraminotomy in a virtual operating room.
  • Building patient-specific 3D models is fast (about 2.5 minutes per case for N=15), and qualitative feedback from surgeons and trainees suggests improved spatial understanding and procedural confidence.
  • By cutting the time and cost of patient-specific modeling, the platform is positioned to enhance pre-operative planning, post-procedural assessment, and surgical education.

Abstract

Surgical training involves didactic teaching, mentor-led learning, surgical skills laboratories, and direct exposure to surgery; however, increasing clinical pressures have limited operating room (OR) exposure. This work leverages virtual reality (VR) to provide a safe and immersive training environment. Existing VR training is often based on standardized scenarios not tailored to individual clinical cases. This study addresses this limitation using artificial intelligence (AI) based computer vision methods to generate patient-specific simulations from computed tomography (CT) and magnetic resonance imaging (MRI). This study focuses on patient-specific spinal decompression simulation for spinal stenosis in a virtual operating room. The objectives were (1) automatic creation of 3D anatomical models and (2) VR simulation of spinal decompression procedures including laminectomy, disc resection, and foraminotomy. Model construction required multimodal fusion (registration) of CT and MRI and segmentation of relevant structures. Segmentation was evaluated using the Dice Similarity Coefficient (DSC), and registration accuracy using Target Registration Error (TRE). Qualitative feedback was obtained from surgeons and trainees. High-fidelity patient-specific 3D models were generated efficiently (approximately 2.5 minutes per case, N = 15). Segmentation accuracy was high, with a DSC of 0.95 (+/- 0.03) for vertebral bone and 0.895 (+/- 0.02) for soft tissue structures. Registration accuracy showed a mean TRE of 1.73 (+/- 0.42) mm. Semi-structured interviews indicated improved spatial understanding, increased procedural confidence, and strong perceived educational value. This platform significantly reduced the time and costs of patient-specific modelling, thereby facilitating pre-operative planning, post-procedural assessments, and comprehensive surgical simulation.