Genetic factors influencing a neurobiological substrate for psychiatric disorders
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Thomas W. Mühleisen | Till F. M. Andlauer | S. Cichon | T. Mühleisen | M. Nöthen | K. Amunts | A. Etkin | T. Kircher | S. Eickhoff | U. Dannlowski | S. Moebus | I. Nenadić | D. Grotegerd | S. Caspers | H. Grabe | A. Teumer | U. Völker | B. Müller-Myhsok | K. Wittfeld | K. Berger | T. Andlauer | C. Reinbold | R. Bülow | P. Sämann | P. Hoffmann | S. Herms | F. Hoffstaedter | H. Teismann | A. Teuber | H. Minnerup | H. Minnerup
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