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Towards Motion Compensation in Autonomous Robotic Subretinal Injections

13 March 2025
Demir Arikan
Peiyao Zhang
Michael Sommersperger
Shervin Dehghani
Mojtaba Esfandiari
Russel H. Taylor
M. A. Nasseri
Peter L. Gehlbach
Nassir Navab
I. Iordachita
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Abstract

Exudative (wet) age-related macular degeneration (AMD) is a leading cause of vision loss in older adults, typically treated with intravitreal injections. Emerging therapies, such as subretinal injections of stem cells, gene therapy, small molecules and RPE cells require precise delivery to avoid damaging delicate retinal structures. Robotic systems can potentially offer the necessary precision for these procedures. This paper presents a novel approach for motion compensation in robotic subretinal injections, utilizing real time Optical Coherence Tomography (OCT). The proposed method leverages B5^55-scans, a rapid acquisition of small-volume OCT data, for dynamic tracking of retinal motion along the Z-axis, compensating for physiological movements such as breathing and heartbeat. Validation experiments on ex vivo porcine eyes revealed challenges in maintaining a consistent tool-to-retina distance, with deviations of up to 200 μm\mu mμm for 100 μm\mu mμm amplitude motions and over 80 μm\mu mμm for 25 μm\mu mμm amplitude motions over one minute. Subretinal injections faced additional difficulties, with phase shifts causing the needle to move off-target and inject into the vitreous. These results highlight the need for improved motion prediction and horizontal stability to enhance the accuracy and safety of robotic subretinal procedures.

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@article{arikan2025_2411.18521,
  title={ Towards Motion Compensation in Autonomous Robotic Subretinal Injections },
  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:2411.18521},
  year={ 2025 }
}
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