Two-photon Ca 2+ 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 2+ 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 2+ imaging data and delivering remarkable precision in neuron segmentation.
CITATION STYLE
Wu, Y., Xu, Z., Liang, S., Wang, L., Wang, M., Jia, H., … Liao, X. (2024). NeuroSeg-III: efficient neuron segmentation in two-photon Ca 2+ imaging data using self-supervised learning. Biomedical Optics Express, 15(5), 2910. https://doi.org/10.1364/boe.521478
Mendeley helps you to discover research relevant for your work.