Opt Lett. 2023 Jun 1;48(11):2949-2952. doi: 10.1364/OL.491899.
Deep learning has been used to reconstruct super-resolution structured illumination microscopy (SR-SIM) images with wide-field or fewer raw images, effectively reducing photobleaching and phototoxicity. However, the dependability of new structures or sample observation is still questioned using these methods. Here, we propose a dynamic SIM imaging strategy: the full raw images are recorded at the beginning to reconstruct the SR image as a keyframe, then only wide-field images are recorded. A deep-learning-based reconstruction algorithm, named KFA-RET, is developed to reconstruct the rest of the SR images for the whole dynamic process. With the structure at the keyframe as a reference and the temporal continuity of biological structures, KFA-RET greatly enhances the quality of reconstructed SR images while reducing photobleaching and phototoxicity. Moreover, KFA-RET has a strong transfer capability for observing new structures that were not included during network training.
深度学习已被用于通过使用更少的原始图像重建宽场或超分辨率结构光照明显微镜(SR-SIM)图像,有效减少了光漂白和光毒性。然而,这些方法在使用新结构或样本观察时的可靠性仍受到质疑。在这里,我们提出了一种动态 SIM 成像策略:在开始时记录完整的原始图像以重建 SR 图像作为关键帧,然后仅记录宽场图像。开发了一种基于深度学习的重建算法,称为 KFA-RET,用于重建整个动态过程的其余 SR 图像。通过将关键帧处的结构作为参考,并利用生物结构的时间连续性,KFA-RET 大大提高了重建 SR 图像的质量,同时减少了光漂白和光毒性。此外,KFA-RET 具有很强的转移能力,可以观察在网络训练过程中未包含的新结构。