Deep learning enables cross-modality super-resolution in fluorescence microscopy

被引:0
|
作者
Hongda Wang
Yair Rivenson
Yiyin Jin
Zhensong Wei
Ronald Gao
Harun Günaydın
Laurent A. Bentolila
Comert Kural
Aydogan Ozcan
机构
[1] University of California,Electrical and Computer Engineering Department
[2] University of California,Bioengineering Department
[3] California NanoSystems Institute,Computer Science Department
[4] University of California,Department of Chemistry and Biochemistry
[5] University of California,Department of Physics
[6] University of California,Biophysics Graduate Program
[7] Ohio State University,Department of Surgery
[8] Ohio State University,undefined
[9] David Geffen School of Medicine,undefined
[10] University of California,undefined
来源
Nature Methods | 2019年 / 16卷
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摘要
We present deep-learning-enabled super-resolution across different fluorescence microscopy modalities. This data-driven approach does not require numerical modeling of the imaging process or the estimation of a point-spread-function, and is based on training a generative adversarial network (GAN) to transform diffraction-limited input images into super-resolved ones. Using this framework, we improve the resolution of wide-field images acquired with low-numerical-aperture objectives, matching the resolution that is acquired using high-numerical-aperture objectives. We also demonstrate cross-modality super-resolution, transforming confocal microscopy images to match the resolution acquired with a stimulated emission depletion (STED) microscope. We further demonstrate that total internal reflection fluorescence (TIRF) microscopy images of subcellular structures within cells and tissues can be transformed to match the results obtained with a TIRF-based structured illumination microscope. The deep network rapidly outputs these super-resolved images, without any iterations or parameter search, and could serve to democratize super-resolution imaging.
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页码:103 / 110
页数:7
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