ENIGMA and global neuroscience: A decade of large-scale studies of the brain in health and disease across more than 40 countries

Emily L. Dennis | Dan J Stein | Joanna K. Bright | Lauren E. Salminen | C. Francks | B. Franke | O. Andreassen | J. Turner | T. V. van Erp | P. Paschou | T. Nir | N. Jahanshad | P. Thompson | S. Liew | H. Walter | H. Völzke | A. Aleman | D. Tate | J. Kwon | P. Conrod | H. H. Hulshoff Pol | D. Glahn | A. Winkler | P. Kochunov | F. Hillary | Y. Gil | F. Piras | F. Piras | G. Spalletta | S. D. De Brito | A. Mayer | I. Agartz | J. Buitelaar | S. Frangou | D. Pine | S. Faraone | D. Hibar | U. Dannlowski | Y. D. van der Werf | E. V. van Someren | I. Veer | D. Veltman | N. V. D. Van der Wee | D. Dima | H. Garavan | L. Tozzi | B. Baune | J. Houenou | J. Stein | Daqiang Sun | C. Bearden | D. Smit | C. Esopenko | Guohao Zhang | S. Kelly | S. Sisodiya | S. Ehrlich | E. Walton | R. Althoff | P. Mukherjee | R. Knickmeyer | A. Altmann | G. Schumann | N. V. van Haren | L. Eyler | R. Brouwer | S. Fisher | N. Opel | C. McDonald | C. Soriano-Mas | S. Mackey | H. Grabe | G. Homuth | A. Teumer | S. Medland | M. Wright | E. Luders | J. Cole | K. Wittfeld | N. Hosten | T. Frodl | J. Rohrer | B. Gutman | K. Caeyenberghs | J. Villalon-Reina | F. Macciardi | T. Hajek | Lei Wang | P. Favre | N. Groenewold | L. Schmaal | M. Rentería | L. V. van Velzen | R. Bülow | P. Sämann | I. Koerte | S. Desrivières | J. Bralten | C. Ching | M. Hoogman | T. Jia | M. Klein | C. Whelan | G. Donohoe | O. A. van den Heuvel | M. Jalbrzikowski | P. Boedhoe | J. Fouche | L. Holleran | E. Wilde | R. Morey | S. Mueller | T. Hahn | S. Hatton | K. Grasby | G. Modinos | M. Aghajani | D. Garijo | Xiang-zhen Kong | A. Lin | I. Sønderby | M. Shiroishi | G. V. van Wingen | J. Yun | F. Pizzagalli | N. Shatokhina | S. D. de Zwarte | T. Gurholt | L. Salminen | S. Thomopoulos | Jian Chen | B. Adhikari | D. van Rooij | L. Namazova-Baranova | J. Bright | S. Bertolín | W. Bruin | Y. Chye | C. D. de Kovel | Courtney A. Filippi | Laura K. M. Han | K. Hilbert | T. Ho | I. Ivanov | Max A. Laansma | J. Leerssen | U. Lueken | A. Nunes | J. '. Neill | M. Postema | E. Pozzi | A. Tilot | C. van der Merwe | Y. Zhang‐James | David A. Baron | Brenda L Bartnik-Olson | Janna Marie Bas-Hoogendam | A. Baskin-Sommers | L. Berner | C. Cecil | R. A. Cohen | G. Fairchild | I. Harding | D. Hernaus | G. Karkashadze | E. Klapwijk | M. Logue | Agnes McMahon | A. Olsen | M. Tahmasian | M. Zarei | V. Zelman | N. J. van der Wee | E. Dennis | Abraham Nunes | B. Bartnik-Olson | Merel C. Postema

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