Three-dimensional virtual refocusing of fluorescence microscopy images using deep learning

Y Wu, Y Rivenson, H Wang, Y Luo, E Ben-David… - Nature …, 2019 - nature.com
Nature methods, 2019nature.com
We demonstrate that a deep neural network can be trained to virtually refocus a two-
dimensional fluorescence image onto user-defined three-dimensional (3D) surfaces within
the sample. Using this method, termed Deep-Z, we imaged the neuronal activity of a
Caenorhabditis elegans worm in 3D using a time sequence of fluorescence images
acquired at a single focal plane, digitally increasing the depth-of-field by 20-fold without any
axial scanning, additional hardware or a trade-off of imaging resolution and speed …
Abstract
We demonstrate that a deep neural network can be trained to virtually refocus a two-dimensional fluorescence image onto user-defined three-dimensional (3D) surfaces within the sample. Using this method, termed Deep-Z, we imaged the neuronal activity of a Caenorhabditis elegans worm in 3D using a time sequence of fluorescence images acquired at a single focal plane, digitally increasing the depth-of-field by 20-fold without any axial scanning, additional hardware or a trade-off of imaging resolution and speed. Furthermore, we demonstrate that this approach can correct for sample drift, tilt and other aberrations, all digitally performed after the acquisition of a single fluorescence image. This framework also cross-connects different imaging modalities to each other, enabling 3D refocusing of a single wide-field fluorescence image to match confocal microscopy images acquired at different sample planes. Deep-Z has the potential to improve volumetric imaging speed while reducing challenges relating to sample drift, aberration and defocusing that are associated with standard 3D fluorescence microscopy.
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