Institute of Advanced Technology, University of Science and Technology of China, Hefei, China; Institute of Artificial Intelligence, Hefei Comprehensive National Science Center, Hefei, China.
State Key Laboratory of Brain and Cognitive Science, Institute of Biophysics, Chinese Academy of Sciences, Beijing, China; University of Chinese Academy of Sciences, Beijing, China.
Comput Biol Med. 2024 Apr;172:108298. doi: 10.1016/j.compbiomed.2024.108298. Epub 2024 Mar 13.
Detection and segmentation of neural synapses in electron microscopy images are the committed steps for analyzing neural ultrastructure. To date, manual annotation of the structure in synapses has been the primary method, which is time-consuming and restricts the throughput of data acquisition. Recent studies have utilized a series of deformations based on a segmentation model for the detection and segmentation of transmission electron microscope images. However, the analysis of synaptic segmentation and statistics still lacks sufficient automation and high-throughput. Therefore, we developed a dual-channel neural network instance segmentation model with weighted top-down and multi-scale bottom-up schemes, which aid in accurately detecting and segmenting synaptic vesicles and their active zones within presynaptic membranes in complex environments. In addition, we proposed a masked self-supervised pre-training model based on the latest convolutional architecture to improve performance in downstream segmentation tasks. By comparing our model to other state-of-the-art methods, we determined its viability and accuracy. The applicability of our model is thoroughly demonstrated by distinct application scenarios for neurobiological research. These findings indicate that the dual-channel neural network could facilitate the analysis of synaptic structures for the advancement of biomedical research and electron microscope reconstruction techniques.
在电子显微镜图像中检测和分割神经突触是分析神经超微结构的关键步骤。迄今为止,结构的手动注释一直是主要方法,但这种方法既耗时又限制了数据采集的通量。最近的研究已经利用了一系列基于分割模型的变形来检测和分割透射电子显微镜图像。然而,突触分割和统计分析仍然缺乏足够的自动化和高通量。因此,我们开发了一种双通道神经网络实例分割模型,具有加权自上而下和多尺度自下而上的方案,有助于在复杂环境中准确检测和分割突触小泡及其在前突触膜中的活性区。此外,我们提出了一种基于最新卷积架构的掩蔽自监督预训练模型,以提高下游分割任务的性能。通过将我们的模型与其他最先进的方法进行比较,我们确定了其可行性和准确性。我们的模型通过神经生物学研究的不同应用场景得到了彻底的验证。这些发现表明,双通道神经网络可以促进对突触结构的分析,从而推动生物医学研究和电子显微镜重建技术的发展。