Department of Psychiatry, University of Pittsburgh School of Medicine, Pittsburgh, Pennsylvania, USA.
Department of Mathematics, University of Pittsburgh, Pittsburgh, Pennsylvania, USA.
Brain Connect. 2023 Sep;13(7):383-393. doi: 10.1089/brain.2022.0082. Epub 2023 Jun 14.
Structural and functional brain connectomes represent macroscale data collected through techniques such as magnetic resonance imaging (MRI). Connectomes may contain noise that contributes to false-positive edges, thereby obscuring structure-function relationships and data interpretation. Thresholding procedures can be applied to reduce network density by removing low-signal edges, but there is limited consensus on appropriate selection of thresholds. This article compares existing thresholding methods and introduces a novel alternative "objective function" thresholding method. The performance of thresholding approaches, based on percolation and objective functions, is assessed by (1) computing the normalized mutual information (NMI) of community structure between a known network and a simulated, perturbed networks to which various forms of thresholding have been applied, and by (2) comparing the density and the clustering coefficient (CC) between the baseline and thresholded networks. An application to empirical data is provided. Our proposed objective function-based threshold exhibits the best performance in terms of resulting in high similarity between the underlying networks and their perturbed, thresholded counterparts, as quantified by NMI and CC analysis on the simulated functional networks. Existing network thresholding methods yield widely different results when graph metrics are subsequently computed. Thresholding based on the objective function maintains a set of edges such that the resulting network shares the community structure and clustering features present in the original network. This outcome provides a proof of principle that objective function thresholding could offer a useful approach to reducing the network density of functional connectivity data.
结构和功能脑连接组代表通过磁共振成像(MRI)等技术收集的宏观数据。连接组可能包含导致假阳性边缘的噪声,从而掩盖结构-功能关系和数据解释。可以应用阈值处理程序通过去除低信号边缘来降低网络密度,但对于适当的阈值选择存在有限的共识。本文比较了现有的阈值处理方法,并介绍了一种新的替代“目标函数”阈值处理方法。基于渗流和目标函数的阈值处理方法的性能通过以下两种方式进行评估:(1)计算已知网络和经过各种形式阈值处理的模拟、扰动网络之间的社区结构的归一化互信息(NMI);(2)比较基线网络和阈值网络之间的密度和聚类系数(CC)。提供了对经验数据的应用。我们提出的基于目标函数的阈值在将潜在网络与其扰动、阈值化对应网络之间产生高相似性方面表现出最佳性能,这通过对模拟功能网络的 NMI 和 CC 分析进行量化。现有的网络阈值处理方法在随后计算图度量时会产生广泛不同的结果。基于目标函数的阈值保留了一组边缘,使得生成的网络共享原始网络中存在的社区结构和聚类特征。这一结果证明了目标函数阈值处理可能是一种有用的方法,可以降低功能连接数据的网络密度。