显微镜
光学切片
光漂白
计算机科学
计算机视觉
生成对抗网络
人工智能
迭代重建
光学
薄层荧光显微镜
材料科学
物理
深度学习
扫描共焦电子显微镜
荧光
作者
Chang Qiao,Xingye Chen,Siwei Zhang,Di Li,Yuting Guo,Qionghai Dai,Dong Li
标识
DOI:10.1109/jstqe.2021.3060762
摘要
Three-dimensional (3D) structured illumination microscopy (SIM) plays an important role in biological volumetric imaging with the capabilities of doubling the lateral and axial resolution and optical sectioning. However, 3D-SIM suffers from more photobleaching and phototoxicity compared to other volumetric imaging modalities, such as light-sheet microscopy, because it requires 15 raw images per axial slice, which hampers its widespread application in live cell imaging. Here we report the design of a channel attention generative adversarial network (caGAN) that improves the quality of 3D-SIM reconstruction under low signal-to-noise-ratio (SNR) condition and enables reconstruction using fewer raw images. Compared to the conventional algorithm, caGAN-SIM achieves comparable or higher reconstruction fidelity while using 15-fold less signal level. We demonstrate the superior performance of caGAN-SIM for various subcellular structures and its ability in long-term multi-color 3D super-resolution imaging using the example of dynamic interactions between microtubules and lysosomes in live cells.
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