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Optica Publishing Group
  • Optical Coherence Imaging Techniques and Imaging in Scattering Media V
  • Technical Digest Series (Optica Publishing Group, 2023),
  • paper 126321W
  • https://doi.org/10.1117/12.2671958

An AI-based algorithmic system that predicts missing A-scans in crosssectional retinal images

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Abstract

In this study, we present an artificial intelligence based algorithmic system that predicts missing A-scans of the edited OCT image by padding the A scan with zero. The developed artificial intelligence algorithmic system consists of two networks: convolutional neural network and generative adversarial network. The system theoretically suggests that skipping one-third of sequential A-scans and predicting the missing A-scan can increase the image acquisition rate by at least 33%. The structural similarity index measurement of the test data reaches an average of 82% between the ground truth images and the images predicted from the developed system. The mean squared error also is to 0.2%.

© 2023 SPIE

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