Rapid tissue oxygenation mapping from snapshot structured-light images with adversarial deep learning
Mason T. Chen, Nicholas J. Durr

TL;DR
This paper introduces OxyGAN, a deep learning method that rapidly and accurately maps tissue oxygenation from single structured-light images, outperforming traditional techniques and enabling real-time clinical imaging.
Contribution
OxyGAN is a novel adversarial deep learning approach that estimates tissue oxygenation directly from single images, reducing artifacts and increasing speed compared to existing methods.
Findings
Achieves 96.5% accuracy on human feet tissue oxygenation mapping.
Maintains 93.0% accuracy across different tissue types not in training.
Operates approximately 10 times faster, enabling video-rate imaging at 25Hz.
Abstract
Spatial frequency domain imaging (SFDI) is a powerful technique for mapping tissue oxygen saturation over a wide field of view. However, current SFDI methods either require a sequence of several images with different illumination patterns or, in the case of single snapshot optical properties (SSOP), introduce artifacts and sacrifice accuracy. To avoid this tradeoff, we introduce OxyGAN: a data-driven, content-aware method to estimate tissue oxygenation directly from single structured light images using end-to-end generative adversarial networks. Conventional SFDI is used to obtain ground truth tissue oxygenation maps for ex vivo human esophagi, in vivo hands and feet, and an in vivo pig colon sample under 659 nm and 851 nm sinusoidal illumination. We benchmark OxyGAN by comparing to SSOP and to a two-step hybrid technique that uses a previously-developed deep learning model to predict…
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