AI Article Synopsis

  • * The method uses a two-module system: a self-supervised pre-training network that prepares the encoder without annotated data and a segmentation network fine-tuned with minimal annotations.
  • * NeuroSeg-III incorporates advanced techniques such as YOLOv8s and efficient multi-scale attention, achieving faster and more precise segmentation than existing models, as demonstrated on various Ca indicators and imaging scales.

Article Abstract

Two-photon Ca imaging technology increasingly plays an essential role in neuroscience research. However, the requirement for extensive professional annotation poses a significant challenge to improving the performance of neuron segmentation models. Here, we present NeuroSeg-III, an innovative self-supervised learning approach specifically designed to achieve fast and precise segmentation of neurons in imaging data. This approach consists of two modules: a self-supervised pre-training network and a segmentation network. After pre-training the encoder of the segmentation network via a self-supervised learning method without any annotated data, we only need to fine-tune the segmentation network with a small amount of annotated data. The segmentation network is designed with YOLOv8s, FasterNet, efficient multi-scale attention mechanism (EMA), and bi-directional feature pyramid network (BiFPN), which enhanced the model's segmentation accuracy while reducing the computational cost and parameters. The generalization of our approach was validated across different Ca indicators and scales of imaging data. Significantly, the proposed neuron segmentation approach exhibits exceptional speed and accuracy, surpassing the current state-of-the-art benchmarks when evaluated using a publicly available dataset. The results underscore the effectiveness of NeuroSeg-III, with employing an efficient training strategy tailored for two-photon Ca imaging data and delivering remarkable precision in neuron segmentation.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11161377PMC
http://dx.doi.org/10.1364/BOE.521478DOI Listing

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