Department of Mathematics, Creighton University, Omaha, Nebraska 68178
Department of Neuroscience, Baylor College of Medicine, Houston, Texas 77030.
J Neurosci. 2023 Sep 13;43(37):6384-6400. doi: 10.1523/JNEUROSCI.0134-23.2023. Epub 2023 Aug 17.
The structure of neural circuitry plays a crucial role in brain function. Previous studies of brain organization generally had to trade off between coarse descriptions at a large scale and fine descriptions on a small scale. Researchers have now reconstructed tens to hundreds of thousands of neurons at synaptic resolution, enabling investigations into the interplay between global, modular organization, and cell type-specific wiring. Analyzing data of this scale, however, presents unique challenges. To address this problem, we applied novel community detection methods to analyze the synapse-level reconstruction of an adult female brain containing >20,000 neurons and 10 million synapses. Using a machine-learning algorithm, we find the most densely connected communities of neurons by maximizing a generalized modularity density measure. We resolve the community structure at a range of scales, from large (on the order of thousands of neurons) to small (on the order of tens of neurons). We find that the network is organized hierarchically, and larger-scale communities are composed of smaller-scale structures. Our methods identify well-known features of the fly brain, including its sensory pathways. Moreover, focusing on specific brain regions, we are able to identify subnetworks with distinct connectivity types. For example, manual efforts have identified layered structures in the fan-shaped body. Our methods not only automatically recover this layered structure, but also resolve finer connectivity patterns to downstream and upstream areas. We also find a novel modular organization of the superior neuropil, with distinct clusters of upstream and downstream brain regions dividing the neuropil into several pathways. These methods show that the fine-scale, local network reconstruction made possible by modern experimental methods are sufficiently detailed to identify the organization of the brain across scales, and enable novel predictions about the structure and function of its parts. The Hemibrain is a partial connectome of an adult female brain containing >20,000 neurons and 10 million synapses. Analyzing the structure of a network of this size requires novel and efficient computational tools. We applied a new community detection method to automatically uncover the modular structure in the Hemibrain dataset by maximizing a generalized modularity measure. This allowed us to resolve the community structure of the fly hemibrain at a range of spatial scales revealing a hierarchical organization of the network, where larger-scale modules are composed of smaller-scale structures. The method also allowed us to identify subnetworks with distinct cell and connectivity structures, such as the layered structures in the fan-shaped body, and the modular organization of the superior neuropil. Thus, network analysis methods can be adopted to the connectomes being reconstructed using modern experimental methods to reveal the organization of the brain across scales. This supports the view that such connectomes will allow us to uncover the organizational structure of the brain, which can ultimately lead to a better understanding of its function.
神经回路的结构在大脑功能中起着至关重要的作用。以前的大脑组织研究通常不得不权衡在大规模上进行粗略描述和在小范围内进行精细描述。研究人员现在已经以突触分辨率重建了数万到数十万神经元,从而能够研究全局、模块化组织与细胞类型特异性连接之间的相互作用。然而,分析这种规模的数据提出了独特的挑战。为了解决这个问题,我们应用了新的社区检测方法来分析包含超过 20000 个神经元和 1000 万个突触的成年雌性大脑的突触级重建。我们使用机器学习算法,通过最大化广义模块密度度量来找到最密集连接的神经元社区。我们在一系列尺度上解析社区结构,从大尺度(数千个神经元)到小尺度(数十个神经元)。我们发现网络是分层组织的,较大的社区由较小的结构组成。我们的方法识别了果蝇大脑的一些特征,包括其感觉通路。此外,我们专注于特定的脑区,能够识别具有不同连接类型的子网。例如,人工努力已经在扇形体中识别出分层结构。我们的方法不仅自动恢复了这种分层结构,还解析了下游和上游区域的更精细连接模式。我们还发现了高级神经节的一种新的模块化组织,具有明显的上游和下游脑区簇,将神经节分为几个通路。这些方法表明,现代实验方法实现的精细、局部网络重建足以识别整个大脑的组织,并能够对其各部分的结构和功能进行新的预测。半脑是包含超过 20000 个神经元和 1000 万个突触的成年雌性大脑的部分连接组。分析如此大小的网络的结构需要新颖且高效的计算工具。我们应用了一种新的社区检测方法,通过最大化广义模块度度量来自动揭示半脑数据集的模块化结构。这使我们能够在一系列空间尺度上解析果蝇半脑的社区结构,揭示网络的分层组织,其中较大的模块由较小的结构组成。该方法还使我们能够识别具有不同细胞和连接结构的子网,例如扇形体中的分层结构以及高级神经节的模块化组织。因此,网络分析方法可以应用于使用现代实验方法重建的连接组,以揭示整个大脑的组织,这支持这样的连接组将使我们能够揭示大脑的组织结构,最终有助于更好地理解其功能的观点。