4.5 Article

CNN-based CP-OCT sensor integrated with a subretinal injector for retinal boundary tracking and injection guidance

Journal

JOURNAL OF BIOMEDICAL OPTICS
Volume 26, Issue 6, Pages -

Publisher

SPIE-SOC PHOTO-OPTICAL INSTRUMENTATION ENGINEERS
DOI: 10.1117/1.JBO.26.6.068001

Keywords

optical coherence tomography; convolutional neural network; retinal segmentation; microsurgery; surgical guidance

Funding

  1. Cohen Translational Engineering Fund
  2. JHU/Discovery Grant

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Real-time tracking and precise positioning of retinal boundaries for subretinal injection are successfully achieved using a CNN-based common-path OCT distal sensor, with the compensation of involuntary tremors and enhanced accuracy. The combination of GPU parallel computing and Kalman filter optimizes retinal boundary tracking and reduces standard deviations of boundary positions, showing promising potential for clinical applications.
Significance: Subretinal injection is an effective way of delivering transplant genes and cells to treat many degenerative retinal diseases. However, the technique requires high-dexterity and microscale precision of experienced surgeons, who have to overcome the physiological hand tremor and limited visualization of the subretinal space. Aim: To automatically guide the axial motion of microsurgical tools (i.e., a subretinal injector) with microscale precision in real time using a fiber-optic common-path swept-source optical coherence tomography distal sensor. Approach: We propose, implement, and study real-time retinal boundary tracking of A-scan optical coherence tomography (OCT) images using a convolutional neural network (CNN) for automatic depth targeting of a selected retinal boundary for accurate subretinal injection guidance. A simplified 1D U-net is used for the retinal layer segmentation on A-scan OCT images. A Kalman filter, combining retinal boundary position measurement by CNN and velocity measurement by cross correlation between consecutive A-scan images, is applied to optimally estimate the retinal boundary position. Unwanted axial motions of the surgical tools are compensated by a piezoelectric linear motor based on the retinal boundary tracking. Results: CNN-based segmentation on A-scan OCT images achieves the mean unsigned error (MUE) of similar to 3 pixels (8.1 mu m) using an ex vivo bovine retina model. GPU parallel computing allows real-time inference (similar to 2 ms) and thus real-time retinal boundary tracking. Involuntary tremors, which include low-frequency draft in hundreds of micrometers and physiological tremors in tens of micrometers, are compensated effectively. The standard deviations of photoreceptor (PR) and choroid (CH) boundary positions get as low as 10.8 mu m when the depth targeting is activated. Conclusions: A CNN-based common-path OCT distal sensor successfully tracks retinal boundaries, especially the PR/CH boundary for subretinal injection, and automatically guides the tooltip's axial position in real time. The microscale depth targeting accuracy of our system shows its promising possibility for clinical application. (C) The Authors.

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