Machine learning assisted interferometric structured illumination microscopy for dynamic biological imaging

被引:0
|
作者
Edward N. Ward
Lisa Hecker
Charles N. Christensen
Jacob R. Lamb
Meng Lu
Luca Mascheroni
Chyi Wei Chung
Anna Wang
Christopher J. Rowlands
Gabriele S. Kaminski Schierle
Clemens F. Kaminski
机构
[1] University of Cambridge,Department of Chemical Engineering and Biotechnology
[2] Oxford University,Department of Physics
[3] Imperial College London,Department of Bioengineering
来源
Nature Communications | / 13卷
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摘要
Structured Illumination Microscopy, SIM, is one of the most powerful optical imaging methods available to visualize biological environments at subcellular resolution. Its limitations stem from a difficulty of imaging in multiple color channels at once, which reduces imaging speed. Furthermore, there is substantial experimental complexity in setting up SIM systems, preventing a widespread adoption. Here, we present Machine-learning Assisted, Interferometric Structured Illumination Microscopy, MAI-SIM, as an easy-to-implement method for live cell super-resolution imaging at high speed and in multiple colors. The instrument is based on an interferometer design in which illumination patterns are generated, rotated, and stepped in phase through movement of a single galvanometric mirror element. The design is robust, flexible, and works for all wavelengths. We complement the unique properties of the microscope with an open source machine-learning toolbox that permits real-time reconstructions to be performed, providing instant visualization of super-resolved images from live biological samples.
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