Enhancing Robotic Surgery with AI and Imaging Navigation: Bridging Precision and Efficiency

14 Aug 2025 08:45 09:00
Gang ZhuChina Speaker Enhancing Robotic Surgery with AI and Imaging Navigation: Bridging Precision and EfficiencyBackground: Robotic surgery faces persistent challenges in real-time anatomical navigation during complex procedures like partial nephrectomy (PN), where millimeter-scale precision impacts oncological and functional outcomes. Objective: This review explores the integration of artificial intelligence (AI) and augmented reality (AR)-based holographic imaging to overcome these limitations, synergistically advancing surgical precision and operational efficiency. Design, setting and participants: Holographic imaging, an AR technique reconstructed from CT/MRI via surface rendering, provides detailed 3D anatomical models for preoperative planning, patient counseling, surgical training, and intraoperative navigation. These models enable precise tumor localization, super-selective vascular clamping, and parenchymal preservation, in particular the PN. Results: Clinical outcomes demonstrate significant improvements. AI-automated modeling cuts 3D model reconstruction time while improving segmentation accuracy. AI enhanced holographic imaging in patient consultation, education and training, surgical planning, and surgical navigation have demonstrated value. Holographic imaging navigation overlays virtual models onto endoscopic views, reducing collecting system injury and increasing enucleation rates for endophytic tumors. AI-based holographic imaging visualization alters surgical strategy for complex cases, reducing conversion from partial to radical nephrectomy. Challenges persist in tracking robustness due to intraoperative organ deformation. Future directions include multimodal Integration: Combining holographic imaging and PET CT to define the metastatic lymph nodes, enabling personalized complete resection; Full-Cycle Coverage: Extending from preoperative assessment to postoperative recovery (e.g., recurrence prediction, customized rehabilitation plans); Telesurgery Empowerment: 5G + holographic imaging to support telesurgical guidance, promoting the decentralization of medical resources. Conclusions: AI-powered holographic imaging navigation bridges critical gaps in robotic surgery by transforming static anatomical data into dynamic, real-time guidance. This synergy enhances precision in tumor resection and vascular management while streamlining workflows—ultimately improving patient outcomes through reduced ischemia, fewer complications, and greater nephron preservation, enhancing survival and quality of life for cancer patients. Real-time navigation integrating “anatomy-function-metabolism”, advancing MIS from “precision resection” to “personalized treatment” and "functional preservation”.

Robotic surgery faces persistent challenges in real-time anatomical navigation during complex procedures like partial nephrectomy (PN), where millimeter-scale precision impacts oncological and functional outcomes. This review explores the integration of artificial intelligence (AI) and augmented reality (AR)-based holographic imaging to overcome these limitations, synergistically advancing surgical precision and operational efficiency.

Holographic imaging, an AR technique reconstructed from CT/MRI via surface rendering, provides detailed 3D anatomical models for preoperative planning, patient counseling, surgical training, and intraoperative navigation. These models enable precise tumor localization, super-selective vascular clamping, and parenchymal preservation, in particularly the PN.

Clinical outcomes demonstrate significant improvements. AI-automated modeling cuts 3D model reconstruction time while improving segmentation accuracy. AR navigation overlays virtual models onto endoscopic views, reducing collecting system injury and increasing enucleation rates for endophytic tumors. AI-based holographic imaging visualization alters surgical strategy for complex cases, reducing conversion from partial to radical nephrectomy.

Challenges persist in tracking robustness due to intraoperative organ deformation, but emerging innovations like fluorescence-guided AI registration and multi-sensor fusion—combining infrared markers and deformable algorithms—promise enhanced accuracy. Future directions include cloud-based AI platforms for scalable, real-time model generation; adaptive navigation systems trained on multi-institutional datasets to predict anatomical shifts; and cost-reduction strategies to broaden clinical adoption.

 

In conclusion, AI-powered imaging navigation bridges critical gaps in robotic surgery by transforming static anatomical data into dynamic, real-time guidance. This synergy enhances precision in tumor resection and vascular management while streamlining workflows—ultimately improving patient outcomes through reduced ischemia, fewer complications, and greater nephron preservation, enhancing survival and quality of life for cancer patients.