Presentation + Paper
4 April 2022 Device specific SD-OCT retinal layer segmentation using cycle-generative adversarial networks in patients with AMD
Author Affiliations +
Abstract
Purpose: Spectral Domain Optical Coherence Tomography (SD-OCT) is a much utilized imaging modality in retina clinics to inspect the integrity of retinal layers in patients with age related macular degeneration. Spectralis and Cirrus are two of the most widely used SD-OCT vendors. Due to the stark difference in intensities and signal to noise ratio’s between the images captured by the two instruments, a model trained on images from one instrument performs poorly on the images of the other instrument. Methods: In this work, we explore the performance of an algorithm trained on images obtained from the Heidelberg Spectralis device on Cirrus images. Utilizing a dataset containing Heidelberg images and Cirrus images, we address the problem of accurately segmenting images on one domain with an algorithm developed on another domain. In our approach we use unpaired CycleGAN based domain adaptation network to transform the Cirrus volumes to the Spectralis volumes, before using our trained segmentation network. Results: We show that the intensity distribution shifts towards the Spectralis domain when we domain adapt Cirrus images to Spectralis images. Our results show that the segmentation model performs significantly better on the domain translated volumes (Total Retinal Volume Error: 0.17±0.27mm3, RPEDC Volume Error: 0.047±0.05mm3) compared to the raw volumes (Total Retinal VolumeError: 0.26±0.36mm3, RPEDC Volume Error: 0.13±0.15mm3) from the Cirrus domain and that such domain adaptation approaches are feasible solutions. Conclusions: Both our qualitative and quantitative results show that CycleGAN domain adaptation network can be used as an efficient technique to perform unpaired domain adaptation between SD-OCT images generated from different devices. We show that a 3D segmentation model trained on Spectralis volume performs better on domain adapted Cirrus volumes, compared to raw Cirrus volumes.
Conference Presentation
© (2022) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Souvick Mukherjee, Tharindu De Silva, Gopal Jayakar, Peyton Grisso, Henry Wiley, Tiarnan Keenan, Alisa Thavikulwat, Emily Chew, and Catherine Cukras "Device specific SD-OCT retinal layer segmentation using cycle-generative adversarial networks in patients with AMD", Proc. SPIE 12033, Medical Imaging 2022: Computer-Aided Diagnosis, 120333H (4 April 2022); https://doi.org/10.1117/12.2613066
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KEYWORDS
Image segmentation

3D modeling

Retina

Detection and tracking algorithms

Image processing algorithms and systems

Signal to noise ratio

3D image processing

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