Fast light-field 3D microscopy with out-of-distribution detection and
adaptation through Conditional Normalizing Flows
- URL: http://arxiv.org/abs/2306.06408v2
- Date: Wed, 14 Jun 2023 10:05:14 GMT
- Title: Fast light-field 3D microscopy with out-of-distribution detection and
adaptation through Conditional Normalizing Flows
- Authors: Josu\'e Page Vizca\'ino, Panagiotis Symvoulidis, Zeguan Wang, Jonas
Jelten, Paolo Favaro, Edward S. Boyden, Tobias Lasser
- Abstract summary: Real-time 3D fluorescence microscopy is crucial for the analysis of live organisms.
We propose a novel architecture to perform fast 3D reconstructions of live immobilized zebrafish neural activity.
- Score: 16.928404625892625
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Real-time 3D fluorescence microscopy is crucial for the spatiotemporal
analysis of live organisms, such as neural activity monitoring. The eXtended
field-of-view light field microscope (XLFM), also known as Fourier light field
microscope, is a straightforward, single snapshot solution to achieve this. The
XLFM acquires spatial-angular information in a single camera exposure. In a
subsequent step, a 3D volume can be algorithmically reconstructed, making it
exceptionally well-suited for real-time 3D acquisition and potential analysis.
Unfortunately, traditional reconstruction methods (like deconvolution) require
lengthy processing times (0.0220 Hz), hampering the speed advantages of the
XLFM. Neural network architectures can overcome the speed constraints at the
expense of lacking certainty metrics, which renders them untrustworthy for the
biomedical realm. This work proposes a novel architecture to perform fast 3D
reconstructions of live immobilized zebrafish neural activity based on a
conditional normalizing flow. It reconstructs volumes at 8 Hz spanning
512x512x96 voxels, and it can be trained in under two hours due to the small
dataset requirements (10 image-volume pairs). Furthermore, normalizing flows
allow for exact Likelihood computation, enabling distribution monitoring,
followed by out-of-distribution detection and retraining of the system when a
novel sample is detected. We evaluate the proposed method on a cross-validation
approach involving multiple in-distribution samples (genetically identical
zebrafish) and various out-of-distribution ones.
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