Scan-less machine-learning-enabled incoherent microscopy for minimally-invasive deep-brain imaging

  • Guo R
  • Nelson S
  • Regier M
  • et al.
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Abstract

Deep-brain microscopy is strongly limited by the size of the imaging probe, both in terms of achievable resolution and potential trauma due to surgery. Here, we show that a segment of an ultra-thin multi-mode fiber (cannula) can replace the bulky microscope objective inside the brain. By creating a self-consistent deep neural network that is trained to reconstruct anthropocentric images from the raw signal transported by the cannula, we demonstrate a single-cell resolution (< 10μm), depth sectioning resolution of 40 μm, and field of view of 200 μm, all with green-fluorescent-protein labelled neurons imaged at depths as large as 1.4 mm from the brain surface. Since ground-truth images at these depths are challenging to obtain in vivo, we propose a novel ensemble method that averages the reconstructed images from disparate deep-neural-network architectures. Finally, we demonstrate dynamic imaging of moving GCaMp-labelled C . elegans worms. Our approach dramatically simplifies deep-brain microscopy.

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Guo, R., Nelson, S., Regier, M., Davis, M. W., Jorgensen, E. M., Shepherd, J., & Menon, R. (2022). Scan-less machine-learning-enabled incoherent microscopy for minimally-invasive deep-brain imaging. Optics Express, 30(2), 1546. https://doi.org/10.1364/oe.446241

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