Augmented Reality and Human-Robot Collaboration Framework for Percutaneous Nephrolithotomy: System Design, Implementation, and Performance Metrics (2401.04492v2)
Abstract: During Percutaneous Nephrolithotomy (PCNL) operations, the surgeon is required to define the incision point on the patient's back, align the needle to a pre-planned path, and perform puncture operations afterward. The procedure is currently performed manually using ultrasound or fluoroscopy imaging for needle orientation, which, however, implies limited accuracy and low reproducibility. This work incorporates Augmented Reality (AR) visualization with an optical see-through head-mounted display (OST-HMD) and Human-Robot Collaboration (HRC) framework to empower the surgeon's task completion performance. In detail, Eye-to-Hand calibration, system registration, and hologram model registration are performed to realize visual guidance. A Cartesian impedance controller is used to guide the operator during the needle puncture task execution. Experiments are conducted to verify the system performance compared with conventional manual puncture procedures and a 2D monitor-based visualisation interface. The results showed that the proposed framework achieves the lowest median and standard deviation error across all the experimental groups, respectively. Furthermore, the NASA-TLX user evaluation results indicate that the proposed framework requires the lowest workload score for task completion compared to other experimental setups. The proposed framework exhibits significant potential for clinical application in the PCNL task, as it enhances the surgeon's perception capability, facilitates collision-free needle insertion path planning, and minimises errors in task completion.
- S. De, R. Autorino, F. J. Kim et al., “Percutaneous nephrolithotomy versus retrograde intrarenal surgery: a systematic review and meta-analysis,” European urology, vol. 67, no. 1, pp. 125–137, 2015.
- P. L. Rodrigues, N. F. Rodrigues, J. Fonseca, E. Lima, and J. L. Vilaça, “Kidney targeting and puncturing during percutaneous nephrolithotomy: recent advances and future perspectives,” Journal of endourology, vol. 27, no. 7, pp. 826–834, 2013.
- Z. Jiang, Z. Li, M. Grimm, M. Zhou, M. Esposito et al., “Autonomous robotic screening of tubular structures based only on real-time ultrasound imaging feedback,” IEEE Transactions on Industrial Electronics, vol. 69, no. 7, pp. 7064–7075, 2021.
- I. Paranawithana, H.-Y. Li, S. Foong, U.-X. Tan, L. Yang, T. S. K. Lim, and F. C. Ng, “Ultrasound-guided involuntary motion compensation of kidney stones in percutaneous nephrolithotomy surgery,” in 2018 IEEE 14th International Conference on Automation Science and Engineering (CASE), pp. 1123–1129. IEEE, 2018.
- H.-Y. Li, I. Paranawithana, Z. H. Chau, L. Yang et al., “Towards to a robotic assisted system for percutaneous nephrolithotomy,” in 2018 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), pp. 791–797. IEEE, 2018.
- P. Tu, C. Qin, Y. Guo, D. Li, A. J. Lungu, H. Wang, and X. Chen, “Ultrasound image guided and mixed reality-based surgical system with real-time soft tissue deformation computing for robotic cervical pedicle screw placement,” IEEE Transactions on Biomedical Engineering, vol. 69, no. 8, pp. 2593–2603, 2022.
- D. Stoianovici, L. L. Whitcomb, J. H. Anderson et al., “A modular surgical robotic system for image guided percutaneous procedures,” in Medical Image Computing and Computer-Assisted Intervention—MICCAI’98: First International Conference Cambridge, MA, USA, October 11–13, 1998 Proceedings 1, pp. 404–410. Springer, 1998.
- F. Ferraguti, S. Farsoni, and M. Bonfè, “Augmented reality and robotic systems for assistance in percutaneous nephrolithotomy procedures: Recent advances and future perspectives,” Electronics, vol. 11, no. 19, p. 2984, 2022.
- O. Wilz, B. Sainsbury, and C. Rossa, “Constrained haptic-guided shared control for collaborative human–robot percutaneous nephrolithotomy training,” Mechatronics, vol. 75, p. 102528, 2021.
- B. Sainsbury, O. Wilz, J. Ren, M. Green, M. Fergie, and C. Rossa, “Preoperative virtual reality surgical rehearsal of renal access during percutaneous nephrolithotomy: A pilot study,” Electronics, vol. 11, no. 10, p. 1562, 2022.
- M. Farcas, L. F. Reynolds, and J. Y. Lee, “Simulation-based percutaneous renal access training: evaluating a novel 3d immersive virtual reality platform,” Journal of Endourology, vol. 35, no. 5, pp. 695–699, 2021.
- J. Fu, A. Rota, S. Li, J. Zhao, Q. Liu, E. Iovene, G. Ferrigno, and E. De Momi, “Recent advancements in augmented reality for robotic applications: A survey,” in Actuators, vol. 12, no. 8, p. 323. MDPI, 2023.
- M. C. Palumbo, S. Saitta, M. Schiariti, M. C. Sbarra, E. Turconi, G. Raccuia, J. Fu, V. Dallolio, P. Ferroli, E. Votta et al., “Mixed reality and deep learning for external ventricular drainage placement: A fast and automatic workflow for emergency treatments,” in International Conference on Medical Image Computing and Computer-Assisted Intervention, pp. 147–156. Springer, 2022.
- R. Li, Y. Tong, T. Yang, J. Guo, W. Si, Y. Zhang, R. Klein, and P.-A. Heng, “Towards quantitative and intuitive percutaneous tumor puncture via augmented virtual reality,” Computerized Medical Imaging and Graphics, vol. 90, p. 101905, 2021.
- L. Wang, Z. Zhao, G. Wang et al., “Application of a three-dimensional visualization model in intraoperative guidance of percutaneous nephrolithotomy,” International Journal of Urology, vol. 29, no. 8, pp. 838–844, 2022.
- L. Qian, J. Y. Wu, S. P. DiMaio, N. Navab, and P. Kazanzides, “A review of augmented reality in robotic-assisted surgery,” IEEE Transactions on Medical Robotics and Bionics, vol. 2, no. 1, pp. 1–16, 2019.
- Z. Lin, A. Gao, X. Ai, H. Gao, Y. Fu, W. Chen, and G.-Z. Yang, “Arei: Augmented-reality-assisted touchless teleoperated robot for endoluminal intervention,” IEEE/ASME Transactions on Mechatronics, vol. 27, no. 5, pp. 3144–3154, 2021.
- R. Y. Tsai, R. K. Lenz et al., “A new technique for fully autonomous and efficient 3 d robotics hand/eye calibration,” IEEE Transactions on robotics and automation, vol. 5, no. 3, pp. 345–358, 1989.
- K. S. Arun, T. S. Huang, and S. D. Blostein, “Least-squares fitting of two 3-d point sets,” IEEE Transactions on pattern analysis and machine intelligence, no. 5, pp. 698–700, 1987.
- J. Fu, M. C. Palumbo, E. Iovene, L. Qingsheng, B. Ilaria, A. Redaelli, G. Ferrigno, and E. De Momi, “Augmented reality-assisted robot learning framework for minimally invasive surgery task,” in 2023 IEEE International Conference on Robotics and Automation (ICRA), pp. 11 647–11 653. IEEE, 2023.
- S. G. Hart, “Nasa-task load index (nasa-tlx); 20 years later,” in Proceedings of the human factors and ergonomics society annual meeting, vol. 50, no. 9, pp. 904–908. Sage publications Sage CA: Los Angeles, CA, 2006.
- M. Benmahdjoub, A. Thabit, M.-L. C. van Veelen, W. J. Niessen, E. B. Wolvius, and T. van Walsum, “Evaluation of ar visualization approaches for catheter insertion into the ventricle cavity,” IEEE Transactions on Visualization and Computer Graphics, 2023.
- A. Martin-Gomez, H. Li, T. Song, S. Yang, G. Wang, H. Ding, N. Navab, Z. Zhao, and M. Armand, “Sttar: surgical tool tracking using off-the-shelf augmented reality head-mounted displays,” IEEE Transactions on Visualization and Computer Graphics, 2023.
- H. Iqbal and F. R. y Baena, “Semi-automatic infrared calibration for augmented reality systems in surgery,” in 2022 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), pp. 4957–4964. IEEE, 2022.
- P.-f. Lei, S.-l. Su, L.-y. Kong, C.-g. Wang, D. Zhong, and Y.-h. Hu, “Mixed reality combined with three-dimensional printing technology in total hip arthroplasty: An updated review with a preliminary case presentation,” Orthopaedic Surgery, vol. 11, no. 5, pp. 914–920, 2019.
- Z. Lin, T. Zhang, Z. Sun, H. Gao, X. Ai, W. Chen, G.-Z. Yang, and A. Gao, “Robotic telepresence based on augmented reality and human motion mapping for interventional medicine,” IEEE Transactions on Medical Robotics and Bionics, vol. 4, no. 4, pp. 935–944, 2022.
- J. M. Fitzpatrick and J. B. West, “The distribution of target registration error in rigid-body point-based registration,” IEEE transactions on medical imaging, vol. 20, no. 9, pp. 917–927, 2001.