Example-Based Super-Resolution Fluorescence Microscopy

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作者
Shu Jia
Boran Han
J. Nathan Kutz
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[1] Stony Brook University,Department of Biomedical Engineering
[2] State University of New York,Department of Chemistry and Chemical Biology
[3] Stony Brook,Department of Applied Mathematics
[4] Harvard University,undefined
[5] University of Washington,undefined
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摘要
Capturing biological dynamics with high spatiotemporal resolution demands the advancement in imaging technologies. Super-resolution fluorescence microscopy offers spatial resolution surpassing the diffraction limit to resolve near-molecular-level details. While various strategies have been reported to improve the temporal resolution of super-resolution imaging, all super-resolution techniques are still fundamentally limited by the trade-off associated with the longer image acquisition time that is needed to achieve higher spatial information. Here, we demonstrated an example-based, computational method that aims to obtain super-resolution images using conventional imaging without increasing the imaging time. With a low-resolution image input, the method provides an estimate of its super-resolution image based on an example database that contains super- and low-resolution image pairs of biological structures of interest. The computational imaging of cellular microtubules agrees approximately with the experimental super-resolution STORM results. This new approach may offer potential improvements in temporal resolution for experimental super-resolution fluorescence microscopy and provide a new path for large-data aided biomedical imaging.
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