Fast spline detection in high density microscopy data
- URL: http://arxiv.org/abs/2301.04460v2
- Date: Fri, 13 Jan 2023 10:05:00 GMT
- Title: Fast spline detection in high density microscopy data
- Authors: Albert Alonso and Julius B. Kirkegaard
- Abstract summary: In microscopy studies of multi-organism systems, the problem of collision and overlap remains challenging.
Here, we develop a novel end-to-end deep learning approach to extract precise shape trajectories of generally motile and overlapping splines.
We present it in the setting of and exemplify its usability on dense experiments of crawling Caenorhabditis elegans.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Computer-aided analysis of biological microscopy data has seen a massive
improvement with the utilization of general-purpose deep learning techniques.
Yet, in microscopy studies of multi-organism systems, the problem of collision
and overlap remains challenging. This is particularly true for systems composed
of slender bodies such as crawling nematodes, swimming spermatozoa, or the
beating of eukaryotic or prokaryotic flagella. Here, we develop a novel
end-to-end deep learning approach to extract precise shape trajectories of
generally motile and overlapping splines. Our method works in low resolution
settings where feature keypoints are hard to define and detect. Detection is
fast and we demonstrate the ability to track thousands of overlapping organisms
simultaneously. While our approach is agnostic to area of application, we
present it in the setting of and exemplify its usability on dense experiments
of crawling Caenorhabditis elegans. The model training is achieved purely on
synthetic data, utilizing a physics-based model for nematode motility, and we
demonstrate the model's ability to generalize from simulations to experimental
videos.
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