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A New Measure of Centrality for Brain Networks

Overview of attention for article published in PLOS ONE, August 2010
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Title
A New Measure of Centrality for Brain Networks
Published in
PLOS ONE, August 2010
DOI 10.1371/journal.pone.0012200
Pubmed ID
Authors

Karen E. Joyce, Paul J. Laurienti, Jonathan H. Burdette, Satoru Hayasaka

Abstract

Recent developments in network theory have allowed for the study of the structure and function of the human brain in terms of a network of interconnected components. Among the many nodes that form a network, some play a crucial role and are said to be central within the network structure. Central nodes may be identified via centrality metrics, with degree, betweenness, and eigenvector centrality being three of the most popular measures. Degree identifies the most connected nodes, whereas betweenness centrality identifies those located on the most traveled paths. Eigenvector centrality considers nodes connected to other high degree nodes as highly central. In the work presented here, we propose a new centrality metric called leverage centrality that considers the extent of connectivity of a node relative to the connectivity of its neighbors. The leverage centrality of a node in a network is determined by the extent to which its immediate neighbors rely on that node for information. Although similar in concept, there are essential differences between eigenvector and leverage centrality that are discussed in this manuscript. Degree, betweenness, eigenvector, and leverage centrality were compared using functional brain networks generated from healthy volunteers. Functional cartography was also used to identify neighborhood hubs (nodes with high degree within a network neighborhood). Provincial hubs provide structure within the local community, and connector hubs mediate connections between multiple communities. Leverage proved to yield information that was not captured by degree, betweenness, or eigenvector centrality and was more accurate at identifying neighborhood hubs. We propose that this metric may be able to identify critical nodes that are highly influential within the network.

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The data shown below were compiled from readership statistics for 306 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
United States 9 3%
Germany 6 2%
United Kingdom 3 <1%
Mexico 3 <1%
Italy 3 <1%
Netherlands 2 <1%
Spain 2 <1%
Cuba 1 <1%
Colombia 1 <1%
Other 3 <1%
Unknown 273 89%

Demographic breakdown

Readers by professional status Count As %
Student > Ph. D. Student 86 28%
Researcher 66 22%
Student > Master 36 12%
Professor > Associate Professor 19 6%
Student > Bachelor 19 6%
Other 47 15%
Unknown 33 11%
Readers by discipline Count As %
Agricultural and Biological Sciences 40 13%
Neuroscience 39 13%
Computer Science 36 12%
Psychology 36 12%
Engineering 25 8%
Other 83 27%
Unknown 47 15%