Self-supervised denoising for multimodal structured illumination microscopy enables long-term super-resolution live-cell imaging, Photonix, 1 Mar 2024

发布时间:2024-03-01

Photonix, 1 March, 2024, DOI:https://doi.org/10.1186/s43074-024-00121-y

Self-supervised denoising for multimodal structured illumination microscopy enables long-term super-resolution live-cell imaging

Xingye Chen, Chang Qiao, Tao Jiang, Jiahao Liu, Quan Meng, Yunmin Zeng, Haoyu Chen, Hui Qiao, Dong Li & Jiamin Wu

Abstract

Detection noise significantly degrades the quality of structured illumination microscopy (SIM) images, especially under low-light conditions. Although supervised learning based denoising methods have shown prominent advances in eliminating the noise-induced artifacts, the requirement of a large amount of high-quality training data severely limits their applications. Here we developed a pixel-realignment-based self-supervised denoising framework for SIM (PRS-SIM) that trains an SIM image denoiser with only noisy data and substantially removes the reconstruction artifacts. We demonstrated that PRS-SIM generates artifact-free images with 20-fold less fluorescence than ordinary imaging conditions while achieving comparable super-resolution capability to the ground truth (GT). Moreover, we developed an easy-to-use plugin that enables both training and implementation of PRS-SIM for multimodal SIM platforms including 2D/3D and linear/nonlinear SIM. With PRS-SIM, we achieved long-term super-resolution live-cell imaging of various vulnerable bioprocesses, revealing the clustered distribution of Clathrin-coated pits and detailed interaction dynamics of multiple organelles and the cytoskeleton.

文章链接:https://photonix.springeropen.com/articles/10.1186/s43074-024-00121-y



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