Abstract

PurposeSustained delivery of regenerative retinal therapies by robotic systems requires intra-operative tracking of the retinal fundus. We propose a supervised deep convolutional neural network to densely predict semantic segmentation and optical flow of the retina as mutually supportive tasks, implicitly inpainting retinal flow information missing due to occlusion by surgical tools.MethodsAs manual annotation of optical flow is infeasible, we propose a flexible algorithm for generation of large synthetic training datasets on the basis of given intra-operative retinal images. We evaluate optical flow estimation by tracking a grid and sparsely annotated ground truth points on a benchmark of challenging real intra-operative clips obtained from an extensive internally acquired dataset encompassing representative vitreoretinal surgical cases.ResultsThe U-Net-based network trained on the synthetic dataset is shown to generalise well to the benchmark of real surgical videos. When used to track retinal points of interest, our flow estimation outperforms variational baseline methods on clips containing tool motions which occlude the points of interest, as is routinely observed in intra-operatively recorded surgery videos.ConclusionsThe results indicate that complex synthetic training datasets can be used to specifically guide optical flow estimation. Our proposed algorithm therefore lays the foundation for a robust system which can assist with intra-operative tracking of moving surgical targets even when occluded.

Highlights

  • Vitreoretinal surgery takes place within the gel-like vitreous humour of the eye, on top of the retinal surface, using a variety of tools of less than 0.7 mm diameter

  • Training on a fraction of the synthetic data increases s-end-point error (EPE) means to 3.0 px and 3.4 px: this suggests enriching the training dataset could lead to performance improvements

  • This paper presented a method to track points on challenging intra-operative retinal fundus videos through optical flow estimation

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Summary

Introduction

Vitreoretinal surgery takes place within the gel-like vitreous humour of the eye, on top of the retinal surface, using a variety of tools of less than 0.7 mm diameter. The surgeon operates without force perception, relying primarily on visual cues and feedback from stereo biomicroscopy providing a high-resolution view of the retinal surface. This en-face 2D view has been coupled with intra-operative optical coherence tomography. The precision requirement will be met with novel robotic tools that are under development, while the promise of sustained delivery requires intra-operative image analysis to track the retinal fundus and support semi-automated therapy delivery. As due to patient breathing, cardiac pulsation, and surgical manipulation the retina deforms in a non-rigid fashion, robust frame-to-frame retinal fundus tracking in a highly challenging interventional environment, illustrated in Fig. 2, is required

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