TL;DR
This paper introduces an automated computer vision pipeline that reliably tracks individual neurons in the moving and deforming brains of freely moving C. elegans, enabling accurate neural activity analysis during behavior.
Contribution
The authors present a novel machine learning-based method called Neuron Registration Vector Encoding for neuron identification in deformed brains, improving tracking accuracy over previous approaches.
Findings
Successfully tracked 150 neurons in 8-minute recordings
Outperformed manual and semi-automated methods in speed and accuracy
Effectively handled large brain deformations during animal movement
Abstract
Advances in optical neuroimaging techniques now allow neural activity to be recorded with cellular resolution in awake and behaving animals. Brain motion in these recordings pose a unique challenge. The location of individual neurons must be tracked in 3D over time to accurately extract single neuron activity traces. Recordings from small invertebrates like C. elegans are especially challenging because they undergo very large brain motion and deformation during animal movement. Here we present an automated computer vision pipeline to reliably track populations of neurons with single neuron resolution in the brain of a freely moving C. elegans undergoing large motion and deformation. 3D volumetric fluorescent images of the animal's brain are straightened, aligned and registered, and the locations of neurons in the images are found via segmentation. Each neuron is then assigned an…
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