| Literature DB >> 36215325 |
Yuxiang Wu1,2, Shang Wu1,2, Xin Wang3, Chengtian Lang4, Quanshi Zhang3, Quan Wen1,2, Tianqi Xu1,2.
Abstract
Advanced volumetric imaging methods and genetically encoded activity indicators have permitted a comprehensive characterization of whole brain activity at single neuron resolution in Caenorhabditis elegans. The constant motion and deformation of the nematode nervous system, however, impose a great challenge for consistent identification of densely packed neurons in a behaving animal. Here, we propose a cascade solution for long-term and rapid recognition of head ganglion neurons in a freely moving C. elegans. First, potential neuronal regions from a stack of fluorescence images are detected by a deep learning algorithm. Second, 2-dimensional neuronal regions are fused into 3-dimensional neuron entities. Third, by exploiting the neuronal density distribution surrounding a neuron and relative positional information between neurons, a multi-class artificial neural network transforms engineered neuronal feature vectors into digital neuronal identities. With a small number of training samples, our bottom-up approach is able to process each volume-1024 × 1024 × 18 in voxels-in less than 1 second and achieves an accuracy of 91% in neuronal detection and above 80% in neuronal tracking over a long video recording. Our work represents a step towards rapid and fully automated algorithms for decoding whole brain activity underlying naturalistic behaviors.Entities:
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Year: 2022 PMID: 36215325 PMCID: PMC9584436 DOI: 10.1371/journal.pcbi.1010594
Source DB: PubMed Journal: PLoS Comput Biol ISSN: 1553-734X Impact factor: 4.779