Dynamic resting state fMRI analysis in mice reveals a set of Quasi-Periodic Patterns and illustrates their relationship with the global signal
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Annemarie van der Linden | Marleen Verhoye | Shella D. Keilholz | Georgios A. Keliris | Anzar Abbas | Maarten Naeyaert | Johan Van Audekerke | Michaël E. Belloy | Disha Shah | Verdi Vanreusel | S. Keilholz | M. Verhoye | M. Belloy | M. Naeyaert | Disha Shah | Anzar Abbas | Verdi Vanreusel | J. Audekerke | A. Linden
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