Real-time Deformation-aware Control for Autonomous Robotic Subretinal Injection under iOCT Guidance

Robotic platforms provide consistent and precise tool positioning that significantly enhances retinal microsurgery. Integrating such systems with intraoperative optical coherence tomography (iOCT) enables image-guided robotic interventions, allowing autonomous performance of advanced treatments, such as injecting therapeutic agents into the subretinal space. However, tissue deformations due to tool-tissue interactions constitute a significant challenge in autonomous iOCT-guided robotic subretinal injections. Such interactions impact correct needle positioning and procedure outcomes. This paper presents a novel method for autonomous subretinal injection under iOCT guidance that considers tissue deformations during the insertion procedure. The technique is achieved through real-time segmentation and 3D reconstruction of the surgical scene from densely sampled iOCT B-scans, which we refer to as B-scans. Using B-scans we monitor the position of the instrument relative to a virtual target layer between the ILM and RPE. Our experiments on ex vivo porcine eyes demonstrate dynamic adjustment of the insertion depth and overall improved accuracy in needle positioning compared to prior autonomous insertion approaches. Compared to a 35% success rate in subretinal bleb generation with previous approaches, our method reliably created subretinal blebs in 90% our experiments.
View on arXiv@article{arikan2025_2411.06557, title={ Real-time Deformation-aware Control for Autonomous Robotic Subretinal Injection under iOCT Guidance }, author={ Demir Arikan and Peiyao Zhang and Michael Sommersperger and Shervin Dehghani and Mojtaba Esfandiari and Russel H. Taylor and M. Ali Nasseri and Peter Gehlbach and Nassir Navab and Iulian Iordachita }, journal={arXiv preprint arXiv:2411.06557}, year={ 2025 } }