Sommersperger Michael, Martin-Gomez Alejandro, Mach Kristina, Gehlbach Peter Louis, Ali Nasseri M, Iordachita Iulian, Navab Nassir
Chair for Computer Aided Medical Procedures and Augmented Reality, Informatics Department, Technical University of Munich, Munich, Bayern, Germany.
These authors contributed equally to this work.
Biomed Opt Express. 2022 Mar 23;13(4):2414-2430. doi: 10.1364/BOE.454286. eCollection 2022 Apr 1.
The development and integration of intraoperative optical coherence tomography (iOCT) into modern operating rooms has motivated novel procedures directed at improving the outcome of ophthalmic surgeries. Although computer-assisted algorithms could further advance such interventions, the limited availability and accessibility of iOCT systems constrains the generation of dedicated data sets. This paper introduces a novel framework combining a virtual setup and deep learning algorithms to generate synthetic iOCT data in a simulated environment. The virtual setup reproduces the geometry of retinal layers extracted from real data and allows the integration of virtual microsurgical instrument models. Our scene rendering approach extracts information from the environment and considers iOCT typical imaging artifacts to generate cross-sectional label maps, which in turn are used to synthesize iOCT B-scans via a generative adversarial network. In our experiments we investigate the similarity between real and synthetic images, show the relevance of using the generated data for image-guided interventions and demonstrate the potential of 3D iOCT data synthesis.
术中光学相干断层扫描(iOCT)在现代手术室中的发展与整合,推动了旨在改善眼科手术效果的新手术方法的出现。尽管计算机辅助算法可以进一步推进此类干预措施,但iOCT系统的有限可用性和可及性限制了专用数据集的生成。本文介绍了一种新颖的框架,该框架结合了虚拟设置和深度学习算法,以在模拟环境中生成合成iOCT数据。虚拟设置再现了从真实数据中提取的视网膜层的几何形状,并允许集成虚拟显微手术器械模型。我们的场景渲染方法从环境中提取信息,并考虑iOCT典型的成像伪影以生成横截面标签图,进而通过生成对抗网络用于合成iOCT B扫描。在我们的实验中,我们研究了真实图像与合成图像之间的相似性,展示了使用生成的数据进行图像引导干预的相关性,并证明了3D iOCT数据合成的潜力。