An exponential random graph modeling approach to creating group-based representative whole-brain connectivity networks

Group-based brain connectivity networks have great appeal for researchers interested in gaining further insight into complex brain function and how it changes across different mental states and disease conditions. Accurately constructing these networks presents a daunting challenge given the difficu...

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Veröffentlicht in:NeuroImage (Orlando, Fla.) Fla.), 2012-04, Vol.60 (2), p.1117-1126
Hauptverfasser: Simpson, Sean L., Moussa, Malaak N., Laurienti, Paul J.
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Sprache:eng
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Zusammenfassung:Group-based brain connectivity networks have great appeal for researchers interested in gaining further insight into complex brain function and how it changes across different mental states and disease conditions. Accurately constructing these networks presents a daunting challenge given the difficulties associated with accounting for inter-subject topological variability. Viable approaches to this task must engender networks that capture the constitutive topological properties of the group of subjects' networks that it is aiming to represent. The conventional approach has been to use a mean or median correlation network (Achard et al., 2006; Song et al., 2009; Zuo et al., 2011) to embody a group of networks. However, the degree to which their topological properties conform with those of the groups that they are purported to represent has yet to be explored. Here we investigate the performance of these mean and median correlation networks. We also propose an alternative approach based on an exponential random graph modeling framework and compare its performance to that of the aforementioned conventional approach. Simpson et al. (2011) illustrated the utility of exponential random graph models (ERGMs) for creating brain networks that capture the topological characteristics of a single subject's brain network. However, their advantageousness in the context of producing a brain network that “represents” a group of brain networks has yet to be examined. Here we show that our proposed ERGM approach outperforms the conventional mean and median correlation based approaches and provides an accurate and flexible method for constructing group-based representative brain networks. ► Averaging connectivity values across subjects leads to a poor group network. ► Exponential random graph models are applied to construct group-based networks. ► ERGM group-based networks capture important properties of individual networks. ► ERGM group-based approach outperforms the mean/median approach.► These group networks can be used for many purposes including modularity analyses.
ISSN:1053-8119
1095-9572
DOI:10.1016/j.neuroimage.2012.01.071