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Neural-network based high-speed volumetric dynamic optical coherence tomography

preprint
posted on 2024-01-25, 05:41 authored by Yoshiaki Yasuno, Yusong Liu, Ibrahim Abd El-Sadek, Shuichi Makita, Tomoko Mori, Atsuko Furukawa, Satoshi Matsusaka
We demonstrate deep-learning neural network (NN)-based dynamic optical coherence tomography (DOCT), which generates high-quality logarithmic-intensity-variance (LIV) DOCT images from only four OCT frames. The NN model is trained for tumor spheroid samples using a customized loss function: the weighted mean absolute error. This loss function enables highly accurate LIV image generation. The fidelity of the generated LIV images to the ground truth LIV images generated using 32 OCT frames is examined via subjective image observation and statistical analysis of image-based metrics. Fast volumetric DOCT imaging with an acquisition time of 6.55 s/volume is demonstrated using this NN-based method.

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Funder Name

Core Research for Evolutional Science and Technology (JPMJCR2105); Japan Society for the Promotion of Science (21H01836,22K04962,22KF0058)

Preprint ID

111593

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