Liu Yuanyang, Gao Ziyan, Xu Zhehao, Yang Chaoyue, Sun Pei, Li Longhui, Jia Hongbo, Chen Xiaowei, Liao Xiang, Pan Junxia, Wang Meng
Chongqing University, School of Medicine, Center for Neurointelligence, Chongqing, China.
Third Military Medical University, Brain Research Center, State Key Laboratory of Trauma and Chemical Poisoning, Chongqing, China.
Neurophotonics. 2025 Apr;12(2):025012. doi: 10.1117/1.NPh.12.2.025012. Epub 2025 May 20.
Mapping the spatial distribution of specific neurons across the entire brain is essential for understanding the neural circuits associated with various brain functions, which in turn requires automated and reliable neuron detection and mapping techniques.
To accurately identify somatic regions from 3D imaging data and generate reliable soma locations for mapping to diverse brain regions, we introduce NeuronMapper, a brain-wide 3D neuron detection and mapping approach that leverages the power of deep learning.
NeuronMapper is implemented as a four-stage framework encompassing preprocessing, classification, detection, and mapping. Initially, whole-brain imaging data is divided into 3D sub-blocks during the preprocessing phase. A lightweight classification network then identifies the sub-blocks containing somata. Following this, a Video Swin Transformer-based segmentation network delineates the soma regions within the identified sub-blocks. Last, the locations of the somata are extracted and registered with the Allen Brain Atlas for comprehensive whole-brain neuron mapping.
Through the accurate detection and localization of somata, we achieved the mapping of somata at the one million level within the mouse brain. Comparative analyses with other soma detection techniques demonstrated that our method exhibits remarkably superior performance for whole-brain 3D soma detection.
Our approach has demonstrated its effectiveness in detecting and mapping somata within whole-brain imaging data. This method can serve as a computational tool to facilitate a deeper understanding of the brain's complex networks and functions.
绘制特定神经元在整个大脑中的空间分布对于理解与各种脑功能相关的神经回路至关重要,而这反过来又需要自动化且可靠的神经元检测和映射技术。
为了从3D成像数据中准确识别体细胞区域并生成可靠的体细胞位置以映射到不同的脑区,我们引入了NeuronMapper,一种利用深度学习能力的全脑3D神经元检测和映射方法。
NeuronMapper被实现为一个包含预处理、分类、检测和映射的四阶段框架。最初,在预处理阶段将全脑成像数据划分为3D子块。然后,一个轻量级分类网络识别包含体细胞的子块。在此之后,一个基于Video Swin Transformer的分割网络描绘已识别子块内的体细胞区域。最后,提取体细胞的位置并与艾伦脑图谱进行配准,以进行全面的全脑神经元映射。
通过对体细胞的准确检测和定位,我们在小鼠大脑中实现了百万级别的体细胞映射。与其他体细胞检测技术的比较分析表明,我们的方法在全脑3D体细胞检测方面表现出显著优越的性能。
我们的方法已证明其在全脑成像数据中检测和映射体细胞的有效性。该方法可作为一种计算工具,以促进对大脑复杂网络和功能的更深入理解。