Quantitatively mapping local quality of super-resolution microscopy by rolling Fourier ring correlation

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作者
Weisong Zhao
Xiaoshuai Huang
Jianyu Yang
Liying Qu
Guohua Qiu
Yue Zhao
Xinwei Wang
Deer Su
Xumin Ding
Heng Mao
Yaming Jiu
Ying Hu
Jiubin Tan
Shiqun Zhao
Leiting Pan
Liangyi Chen
Haoyu Li
机构
[1] Harbin Institute of Technology,Innovation Photonics and Imaging Center, School of Instrumentation Science and Engineering
[2] Harbin Institute of Technology,Key Laboratory of Ultra
[3] Peking University Cancer Hospital and Institute,Precision Intelligent Instrumentation of Ministry of Industry and Information Technology
[4] Health Science Center,Biomedical Engineering Department, International Cancer Institute
[5] Peking University,The Key Laboratory of Weak
[6] Nankai University,Light Nonlinear Photonics of Education Ministry, School of Physics and TEDA Institute of Applied Physics, Frontiers Science Center for Cell Responses
[7] Peking University,State Key Laboratory of Membrane Biology, Beijing Key Laboratory of Cardiometabolic Molecular Medicine, Institute of Molecular Medicine, National Biomedical Imaging Center, School of Future Technology
[8] Harbin Institute of Technology,Department of Control Science and Engineering
[9] Peking University,School of Mathematical Sciences
[10] Chinese Academy of Sciences,Unit of Cell Biology and Imaging Study of Pathogen Host Interaction, The Center for Microbes, Development and Health, Key Laboratory of Molecular Virology and Immunology, Shanghai Institute of Immunity and Infection
[11] Harbin Institute of Technology,School of Life Science and Technology
[12] PKU-IDG/McGovern Institute for Brain Research,Frontiers Science Center for Matter Behave in Space Environment
[13] Beijing Academy of Artificial Intelligence,Key Laboratory of Micro
[14] Harbin Institute of Technology,Systems and Micro
[15] Harbin Institute of Technology,Structures Manufacturing of Ministry of Education
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摘要
In fluorescence microscopy, computational algorithms have been developed to suppress noise, enhance contrast, and even enable super-resolution (SR). However, the local quality of the images may vary on multiple scales, and these differences can lead to misconceptions. Current mapping methods fail to finely estimate the local quality, challenging to associate the SR scale content. Here, we develop a rolling Fourier ring correlation (rFRC) method to evaluate the reconstruction uncertainties down to SR scale. To visually pinpoint regions with low reliability, a filtered rFRC is combined with a modified resolution-scaled error map (RSM), offering a comprehensive and concise map for further examination. We demonstrate their performances on various SR imaging modalities, and the resulting quantitative maps enable better SR images integrated from different reconstructions. Overall, we expect that our framework can become a routinely used tool for biologists in assessing their image datasets in general and inspire further advances in the rapidly developing field of computational imaging.
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