| Literature DB >> 36168513 |
Brenton Keller1, Mark Draelos1, Kevin Zhou1, Ruobing Qian1, Anthony Kuo2, George Konidaris3, Kris Hauser4, Joseph Izatt1.
Abstract
Ophthalmic microsurgery is technically difficult because the scale of required surgical tool manipulations challenge the limits of the surgeon's visual acuity, sensory perception, and physical dexterity. Intraoperative optical coherence tomography (OCT) imaging with micrometer-scale resolution is increasingly being used to monitor and provide enhanced real-time visualization of ophthalmic surgical maneuvers, but surgeons still face physical limitations when manipulating instruments inside the eye. Autonomously controlled robots are one avenue for overcoming these physical limitations. We demonstrate the feasibility of using learning from demonstration and reinforcement learning with an industrial robot to perform OCT-guided corneal needle insertions in an ex vivo model of deep anterior lamellar keratoplasty (DALK) surgery. Our reinforcement learning agent trained on ex vivo human corneas, then outperformed surgical fellows in reaching a target needle insertion depth in mock corneal surgery trials. This work shows the combination of learning from demonstration and reinforcement learning is a viable option for performing OCT guided robotic ophthalmic surgery.Entities:
Keywords: Deep Learning in Robotics and Automation; Learning from Demonstration; Medical Robots and Systems; Microsurgery
Year: 2020 PMID: 36168513 PMCID: PMC9511825 DOI: 10.1109/TRO.2020.2980158
Source DB: PubMed Journal: IEEE Trans Robot ISSN: 1552-3098 Impact factor: 6.835