Perturbation of whole-brain dynamics in silico reveals mechanistic differences between brain states
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Morten L. Kringelbach | Gustavo Deco | Joana Cabral | Enzo Tagliazucchi | Helmut Laufs | Mélanie Boly | Angus Stevner | Victor M. Saenger | Eus Van Someren | Beatrice Jobst | Beatrice M. Jobst | M. Boly | M. Kringelbach | G. Deco | H. Laufs | E. Tagliazucchi | E. Someren | A. Stevner | J. Cabral | B. Jobst
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