Opt Express. 2023 Mar 13;31(6):10918-10935. doi: 10.1364/OE.485699.
Common light sheet microscopy comes with a trade-off between light sheet width defining the optical sectioning and the usable field of view arising from the divergence of the illuminating Gaussian beam. To overcome this, low-diverging Airy beams have been introduced. Airy beams, however, exhibit side lobes degrading image contrast. Here, we constructed an Airy beam light sheet microscope, and developed a deep learning image deconvolution to remove the effects of the side lobes without knowledge of the point spread function. Using a generative adversarial network and high-quality training data, we significantly enhanced image contrast and improved the performance of a bicubic upscaling. We evaluated the performance with fluorescently labeled neurons in mouse brain tissue samples. We found that deep learning-based deconvolution was about 20-fold faster than the standard approach. The combination of Airy beam light sheet microscopy and deep learning deconvolution allows imaging large volumes rapidly and with high quality.
常见的光片显微镜在光片宽度定义光学切片和照明高斯光束的发散产生的可用视场之间存在权衡。为了克服这个问题,已经引入了低发散的艾里光束。然而,艾里光束会产生降低图像对比度的旁瓣。在这里,我们构建了一个艾里光束光片显微镜,并开发了一种深度学习图像反卷积,在不知道点扩散函数的情况下去除旁瓣的影响。使用生成对抗网络和高质量的训练数据,我们显著提高了图像对比度,并提高了双三次上采样的性能。我们使用在小鼠脑组织样本中荧光标记的神经元评估了性能。我们发现,基于深度学习的反卷积比标准方法快约 20 倍。艾里光束光片显微镜和深度学习反卷积的结合允许快速、高质量地成像大体积。