用于单帧活细胞超分辨率成像的无参数清晰图像解卷积(CLID)技术

Fudong Xue, Wenting He, Zuo ang Xiang, Jun Ren, Chunyan Shan, Lin Yuan, Pingyong Xu
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摘要

推动单帧成像技术超越衍射极限,并将传统的宽视场或共聚焦显微镜升级到超分辨率(SR)功能,是生物学家孜孜以求的目标。虽然通过解卷积无噪声图像来提高图像分辨率是有益的,但要获得保持信号强度分布的无噪声图像却是一项挑战。我们首先开发了一种去噪方法,通过同步信号切换(3S)利用可逆切换荧光蛋白。此外,我们还引入了一种去噪神经网络技术--3Snet,该技术结合了监督学习和自我监督学习,使用 3S 去噪图像作为基本真相。这些方法能有效消除噪声,同时保持荧光信号在相机像素间的分布。然后,我们在 3S 和 3Snet 去噪图像上实施了清晰图像去卷积(CLID),开发出 SR 技术,命名为 3S-CLID 和 3Snet-CLID。值得注意的是,3Snet-CLID 将来自宽视场和旋转盘共焦点显微镜的单个荧光图像的分辨率提高了 3.9 倍,实现了 65 nm 的空间分辨率,是此类成像场景中最高的分辨率,而无需额外的 SR 模块和复杂的参数设置。3Snet-CLID 能对用传统荧光蛋白和/或染料标记的各种亚细胞结构进行双色单帧活细胞成像,从而观察动态细胞过程。我们期待这些进步将推动创新,并揭示生物学的新见解。
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Parameter-free clear image deconvolution (CLID) technique for single-frame live-cell super-resolution imaging
Advancing single-frame imaging techniques beyond the diffraction limit and upgrading traditional wide-field or confocal microscopes to super-resolution (SR) capabilities are greatly sought after by biologists. While enhancing image resolution by deconvolving noise-free images is beneficial, achieving a noise-free image that maintains the distribution of signal intensity poses a challenge. We first developed a denoising method utilizing reversibly switchable fluorescent proteins through synchronized signal switching (3S). Additionally, we introduced a denoising neural network technique, 3Snet, which combines supervised and self-supervised learning using 3S denoised images as the ground truth. These approaches effectively eliminate noise while maintaining fluorescence signal distribution across camera pixels. We then implemented clear image deconvolution (CLID) on both 3S and 3Snet denoised images to develop SR techniques, named 3S-CLID and 3Snet-CLID. Notably, 3Snet-CLID boosts the resolution of single fluorescence images from wide-field and spinning-disk confocal microscopies by up to 3.9 times, achieving a spatial resolution of 65 nm, the highest in such imaging scenarios without an additional SR module and complex parameter setting. 3Snet-CLID enables dual-color single-frame live-cell imaging of various subcellular structures labeled with conventional fluorescent proteins and/or dyes, allowing observations of dynamic cellular processes. We expect that these advancements will drive innovation and uncover new insights in biology.
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