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Science / Medical tests / Evoked potentials / Data analysis / Principal component analysis / Cognitive science / Primary auditory cortex / Memory / Electroencephalography / Neuroscience / Mind
Date: 2015-02-03 02:04:02
Science
Medical tests
Evoked potentials
Data analysis
Principal component analysis
Cognitive science
Primary auditory cortex
Memory
Electroencephalography
Neuroscience
Mind

Neural Delay and Cognitive Performance Over the Adult Lifespan Price, D.,1 Henson, R.,2 Clarke. A.,1 Treder, M. S.,1 Campbell, K.,1 Cam-CAN,1 Tyler, L. K.1 1) Centre for Speech Language and Brain, Department of Psycholog

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