Deep learning multi-shot 3D localization microscopy using hybrid optical electronic computing

OPTICS LETTERS(2021)

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摘要
Current 3D localization microscopy approaches are fundamentally limited in their ability to image thick, densely labeled specimens. Here, we introduce a hybrid optical-electronic computing approach that jointly optimizes an optical encoder (a set of multiple, simultaneously imaged. 3D point spread functions) and an electronic decoder (a neural-network-based localization algorithm) to optimize 3D localization performance under these conditions. With extensive simulations and biological experiments, we demonstrate that our deep-learning-based microscope achieves significantly higher 3D localization accuracy than existing approaches, especially in challenging scenarios with high molecular density over large depth ranges. (C) 2021 Optical Society of America
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关键词
Shot (pellet),Microscopy,Optics,Deep learning,Physics,3d localization,Artificial intelligence
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