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Is the distribution of coherence a test of the model?
Published online by Cambridge University Press: 04 February 2010
Abstract
Does the Wright & Liley model predict: (1) that subdural and hippocampal EEGs coherence tend to rise and fall in parallel for many frequencies, (2) that it is locally high or low within 10mm and falls steeply on average or, (3) that it is in constant flux, mostly rising and falling within 5–15 sec?
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References
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