Combined topological and spatial constraints are required to capture the structure of neural connectomes.

IF 3.6 3区 医学 Q2 NEUROSCIENCES
Network Neuroscience Pub Date : 2025-03-05 eCollection Date: 2025-01-01 DOI:10.1162/netn_a_00428
Anastasiya Salova, István A Kovács
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引用次数: 0

Abstract

Volumetric brain reconstructions provide an unprecedented opportunity to gain insights into the complex connectivity patterns of neurons in an increasing number of organisms. Here, we model and quantify the complexity of the resulting neural connectomes in the fruit fly, mouse, and human and unveil a simple set of shared organizing principles across these organisms. To put the connectomes in a physical context, we also construct contactomes, the network of neurons in physical contact in each organism. With these, we establish that physical constraints-either given by pairwise distances or the contactome-play a crucial role in shaping the network structure. For example, neuron positions are highly optimal in terms of distance from their neighbors. Yet, spatial constraints alone cannot capture the network topology, including the broad degree distribution. Conversely, the degree sequence alone is insufficient to recover the spatial structure. We resolve this apparent mismatch by formulating scalable maximum entropy models, incorporating both types of constraints. The resulting generative models have predictive power beyond the input data, as they capture several additional biological and network characteristics, like synaptic weights and graphlet statistics.

大脑容积重建为深入了解越来越多生物体神经元的复杂连接模式提供了前所未有的机会。在这里,我们对果蝇、小鼠和人类神经连接体的复杂性进行了建模和量化,并揭示了这些生物共有的一套简单的组织原则。为了将神经连接组置于物理环境中,我们还构建了接触组(contactomes),即每种生物体内有物理接触的神经元网络。通过这些,我们确定了物理约束条件--无论是配对距离还是接触组--在塑造网络结构中发挥着至关重要的作用。例如,神经元的位置与其邻居的距离非常接近。然而,仅有空间限制并不能捕捉到网络拓扑结构,包括广泛的度数分布。相反,仅凭神经元的度数序列也不足以恢复空间结构。我们通过建立可扩展的最大熵模型来解决这一明显的不匹配问题,并将这两种类型的约束都纳入其中。由此产生的生成模型具有超越输入数据的预测能力,因为它们能捕捉到一些额外的生物和网络特征,如突触权重和小图统计量。
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来源期刊
Network Neuroscience
Network Neuroscience NEUROSCIENCES-
CiteScore
6.40
自引率
6.40%
发文量
68
审稿时长
16 weeks
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