Interdepartmental Neuroscience Program, Yale School of Medicine, 333 Cedar Street, New Haven, CT 06510, USA.
Department of Radiology and Biomedical Imaging, Yale School of Medicine, 330 Cedar Street, New Haven, CT 06520, USA.
Neuroimage. 2022 Dec 1;264:119742. doi: 10.1016/j.neuroimage.2022.119742. Epub 2022 Nov 8.
The human connectome is modular with distinct brain regions clustering together to form large-scale communities, or networks. This concept has recently been leveraged in novel inferencing procedures by averaging the edge-level statistics within networks to induce more powerful inferencing at the network level. However, these networks are constructed based on the similarity between pairs of nodes. Emerging work has described novel edge-centric networks, which instead use the similarity between pairs of edges to construct networks. In this work, we use these edge-centric networks in a network-level inferencing procedure and compare this novel method to traditional inferential procedures and the network-level procedure using node-centric networks. We use data from the Human Connectome Project, the Healthy Brain Network, and the Philadelphia Neurodevelopmental Cohort and use a resampling technique with various sample sizes (n=40, 80, 120) to probe the power and specificity of each method. Across datasets and sample sizes, using the edge-centric networks outperforms using node-centric networks for inference as well as edge-level FDR correction and NBS. Additionally, the edge-centric networks were found to be more consistent in clustering effect sizes of similar values as compared to node-centric networks, although node-centric networks often had a lower average within-network effect size variability. Together, these findings suggest that using edge-centric networks for network-level inference can procure relatively powerful results while remaining similarly accurate to the underlying edge-level effects across networks, complementing previous inferential methods.
人类连接组是模块化的,不同的大脑区域聚集在一起形成大规模的社区或网络。最近,人们利用这一概念在新的推理程序中,通过平均网络内的边缘统计数据,在网络级别上进行更强大的推理。然而,这些网络是基于节点对之间的相似性构建的。新兴的工作描述了新颖的基于边的网络,这些网络不是使用节点对之间的相似性来构建网络,而是使用边对之间的相似性来构建网络。在这项工作中,我们在网络级别推理过程中使用这些基于边的网络,并将这种新方法与传统推理过程和使用基于节点的网络的网络级别过程进行比较。我们使用来自人类连接组计划、健康大脑网络和费城神经发育队列的数据,并使用各种样本大小(n=40、80、120)的重采样技术来探测每种方法的功效和特异性。在不同的数据集和样本大小下,使用基于边的网络进行推理的效果优于使用基于节点的网络,也优于使用基于边缘的 FDR 校正和 NBS。此外,与基于节点的网络相比,基于边的网络在聚类相似值的效应大小方面更加一致,尽管基于节点的网络通常具有较低的平均网络内效应大小变异性。总之,这些发现表明,使用基于边的网络进行网络级别推理可以获得相对强大的结果,同时保持与网络中底层边缘效应的相似准确性,补充了以前的推理方法。