Authors
Andrew Zalesky, Luca Cocchi, Alex Fornito, Micah M Murray, ED Bullmore
Publication date
2012/4/2
Journal
Neuroimage
Volume
60
Issue
2
Pages
1055-1062
Publisher
Academic Press
Description
The scenario considered here is one where brain connectivity is represented as a network and an experimenter wishes to assess the evidence for an experimental effect at each of the typically thousands of connections comprising the network. To do this, a univariate model is independently fitted to each connection. It would be unwise to declare significance based on an uncorrected threshold of α=0.05, since the expected number of false positives for a network comprising N=90 nodes and N(N−1)/2=4005 connections would be 200. Control of Type I errors over all connections is therefore necessary. The network-based statistic (NBS) and spatial pairwise clustering (SPC) are two distinct methods that have been used to control family-wise errors when assessing the evidence for an experimental effect with mass univariate testing. The basic principle of the NBS and SPC is the same as supra-threshold voxel clustering …
Total citations
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Scholar articles
A Zalesky, L Cocchi, A Fornito, MM Murray… - Neuroimage, 2012