Department of Biomedical Engineering, Stony Brook University, Stony Brook, New York, USA.
National Institute on Alcohol Abuse and Alcoholism, National Institutes of Health, Bethesda, Maryland, USA.
J Biophotonics. 2020 Oct;13(10):e202000084. doi: 10.1002/jbio.202000084. Epub 2020 Aug 12.
Optical coherence Doppler tomography (ODT) increasingly attracts attention because of its unprecedented advantages with respect to high contrast, capillary-level resolution and flow speed quantification. However, the trade-off between the signal-to-noise ratio of ODT images and A-scan sampling density significantly slows down the imaging speed, constraining its clinical applications. To accelerate ODT imaging, a deep-learning-based approach is proposed to suppress the overwhelming phase noise from low-sampling density. To handle the issue of limited paired training datasets, a generative adversarial network is performed to implicitly learn the distribution underlying Doppler phase noise and to generate the synthetic data. Then a 3D based convolutional neural network is trained and applied for the image denoising. We demonstrate this approach outperforms traditional denoise methods in noise reduction and image details preservation, enabling high speed ODT imaging with low A-scan sampling density.
光学相干多普勒断层成像(ODT)具有前所未有的高对比度、毛细血管级分辨率和流速量化优势,因此越来越受到关注。然而,ODT 图像的信噪比与 A 扫描采样密度之间的权衡关系极大地降低了成像速度,限制了其临床应用。为了加速 ODT 成像,提出了一种基于深度学习的方法来抑制低采样密度带来的压倒性相位噪声。为了解决配对训练数据集有限的问题,采用生成对抗网络来隐式学习多普勒相位噪声的分布,并生成合成数据。然后,训练并应用基于 3D 的卷积神经网络进行图像去噪。我们的实验结果表明,该方法在降噪和图像细节保留方面优于传统的去噪方法,可实现低 A 扫描采样密度的高速 ODT 成像。