Adjusting the neuroimaging statistical inferences for nonstationarity.
In neuroimaging cluster-based inference has generally been found to be more powerful than voxel-wise inference. However standard cluster-based methods assume stationarity (constant smoothness), while under nonstationarity clusters are larger in smooth regions just by chance, making false positive ri...
Main Authors: | Salimi-Khorshidi, G, Smith, S, Nichols, T |
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Format: | Journal article |
Jezik: | English |
Izdano: |
2009
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