Generative Models For Large-Scale Simulations Of Connectome Development

Skylar J. Brooks, C. Stamoulis
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Abstract

Functional interactions and anatomic connections between brain regions form the connectome. Its mathematical representation in terms of a graph reflects the inherent neuroanatomical organization into structures and regions (nodes) that are interconnected through neural fiber tracts and/or interact functionally (edges). Without knowledge of the ground truth topology of the connectome, functional (directional or nondirectional) graphs represent estimates of signal correlations, from which underlying mechanisms and processes, such as development and aging, or neuropathologies, are difficult to unravel. Biologically meaningful simulations using synthetic graphs with controllable parameters can complement real data analyses and provide critical insights into mechanisms underlying the organization of the connectome. Generative models can be highly valuable tools for creating large datasets of synthetic graphs with known topological characteristics. However, for these graphs to be meaningful, the variation of model parameters needs to be driven by real data. This paper presents a novel, data-driven approach for tuning the parameters of the generative LancichinettiFortunato-Radicchi (LFR) model, using a large dataset of connectomes (n = 5566) estimated from resting-state fMRI from early adolescents in the historically large Adolescent Brain Cognitive Development Study (ABCD). It also presents an application, i.e., simulations using the LFR, to generate large datasets of synthetic graphs representing brains at different stages of neural maturation, and gain insights into developmental changes in their topological organization.
大规模连接体发育模拟的生成模型
脑区之间的功能相互作用和解剖连接形成了连接组。它在图形中的数学表示将固有的神经解剖学组织反映为通过神经纤维束相互连接和/或在功能上相互作用(边)的结构和区域(节点)。如果不了解连接组的基本真实拓扑结构,功能(定向或非定向)图表示信号相关性的估计,从中很难解开潜在的机制和过程,例如发育和衰老,或神经病理学。使用具有可控参数的合成图进行具有生物学意义的模拟,可以补充实际数据分析,并提供对连接体组织机制的关键见解。生成模型对于创建具有已知拓扑特征的合成图的大型数据集是非常有价值的工具。然而,为了使这些图有意义,模型参数的变化需要由实际数据驱动。本文提出了一种新颖的、数据驱动的方法,用于调整生成式lancichinettifortunatto - radicchi (LFR)模型的参数,该模型使用了一个大型数据集(n = 5566),该数据集是由历史上大型青少年大脑认知发展研究(ABCD)中来自早期青少年的静息状态fMRI估计的。它还提出了一个应用,即使用LFR进行模拟,以生成代表神经成熟不同阶段的大脑的合成图的大型数据集,并深入了解其拓扑组织的发育变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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