Fast and robust single particle reconstruction in 3D fluorescence
microscopy
- URL: http://arxiv.org/abs/2301.09452v1
- Date: Mon, 23 Jan 2023 14:20:01 GMT
- Title: Fast and robust single particle reconstruction in 3D fluorescence
microscopy
- Authors: Thibaut Eloy, Etienne Baudrier, Marine Laporte, Virginie Hamel, Paul
Guichard, Denis Fortun
- Abstract summary: Single particle reconstruction is a powerful technique to improve the axial resolution and the degree of fluorescent labeling.
We propose a single particle reconstruction method dedicated to convolutional models in 3D fluorescence microscopy.
We demonstrate on synthetic approaches in terms of resolution and reconstruction error, while achieving a low computational cost.
- Score: 1.0625549557437526
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Single particle reconstruction has recently emerged in 3D fluorescence
microscopy as a powerful technique to improve the axial resolution and the
degree of fluorescent labeling. It is based on the reconstruction of an average
volume of a biological particle from the acquisition multiple views with
unknown poses. Current methods are limited either by template bias, restriction
to 2D data, high computational cost or a lack of robustness to low fluorescent
labeling. In this work, we propose a single particle reconstruction method
dedicated to convolutional models in 3D fluorescence microscopy that overcome
these issues. We address the joint reconstruction and estimation of the poses
of the particles, which translates into a challenging non-convex optimization
problem. Our approach is based on a multilevel reformulation of this problem,
and the development of efficient optimization techniques at each level. We
demonstrate on synthetic data that our method outperforms the standard
approaches in terms of resolution and reconstruction error, while achieving a
low computational cost. We also perform successful reconstruction on real
datasets of centrioles to show the potential of our method in concrete
applications.
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