| Literature DB >> 34621980 |
Changyeob Shin1, Matthew J Gerber2, Yu-Hsiu Lee1, Mercedes Rodriguez2, Sahba Aghajani Pedram1, Jean-Pierre Hubschman2, Tsu-Chin Tsao1, Jacob Rosen1.
Abstract
The overarching goal of this work is to demonstrate the feasibility of using optical coherence tomography (OCT) to guide a robotic system to extract lens fragments from ex vivo pig eyes. A convolutional neural network (CNN) was developed to semantically segment four intraocular structures (lens material, capsule, cornea, and iris) from OCT images. The neural network was trained on images from ten pig eyes, validated on images from eight different eyes, and tested on images from another ten eyes. This segmentation algorithm was incorporated into the Intraocular Robotic Interventional Surgical System (IRISS) to realize semi-automated detection and extraction of lens material. To demonstrate the system, the semi-automated detection and extraction task was performed on seven separate ex vivo pig eyes. The developed neural network exhibited 78.20% for the validation set and 83.89% for the test set in mean intersection over union metrics. Successful implementation and efficacy of the developed method were confirmed by comparing the preoperative and postoperative OCT volume scans from the seven experiments.Entities:
Keywords: Cataract Surgery; Computer Vision for Medical Robotics; Deep Learning; Medical Robots and Systems; Surgical Robotics: Planning
Year: 2021 PMID: 34621980 PMCID: PMC8492005 DOI: 10.1109/LRA.2021.3072574
Source DB: PubMed Journal: IEEE Robot Autom Lett