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%T Mapping Research Domain Criteria using a transdiagnostic mini-RDoC assessment in mental disorders: a confirmatory factor analysis %A Förstner, Bernd R. %A Tschorn, Mira %A Reinoso-Schiller, Nicolas %A Maričić, Lea Mascarell %A Röcher, Erik %A Kalman, Janos L. %A Stroth, Sanna %A Mayer, Annalina V. %A Schwarz, Kristina %A Kaiser, Anna %A Pfennig, Andrea %A Manook, André %A Ising, Marcus %A Heinig, Ingmar %A Pittig, Andre %A Heinz, Andreas %A Mathiak, Klaus %A Schulze, Thomas G. %A Schneider, Frank %A Kamp-Becker, Inge %A Meyer-Lindenberg, Andreas %A Padberg, Frank %A Banaschewski, Tobias %A Bauer, Michael %A Rupprecht, Rainer %A Wittchen, Hans-Ulrich %A Rapp, Michael A. %J European Archives of Psychiatry and Clinical Neuroscience %N 3 %P 527-539 %V 273 %D 2022 %K diagnosis and classifcation; research domain criteria; PD-CAN; confrmatory factor analysis CFA; RDoC; transdiagnostic; Deutsche Version der Positive and Negative Affect Schedule PANAS (GESIS Panel) (ZIS 242) %@ 1433-8491 %~ FDB %> https://nbn-resolving.org/urn:nbn:de:0168-ssoar-98345-6 %X This study aimed to build on the relationship of well-established self-report and behavioral assessments to the latent constructs positive (PVS) and negative valence systems (NVS), cognitive systems (CS), and social processes (SP) of the Research Domain Criteria (RDoC) framework in a large transnosological population which cuts across DSM/ICD-10 disorder criteria categories. One thousand four hundred and thirty one participants (42.1% suffering from anxiety/fear-related, 18.2% from depressive, 7.9% from schizophrenia spectrum, 7.5% from bipolar, 3.4% from autism spectrum, 2.2% from other disorders, 18.4% healthy controls, and 0.2% with no diagnosis specified) recruited in studies within the German research network for mental disorders for the Phenotypic, Diagnostic and Clinical Domain Assessment Network Germany (PD-CAN) were examined with a Mini-RDoC-Assessment including behavioral and self-report measures. The respective data was analyzed with confirmatory factor analysis (CFA) to delineate the underlying latent RDoC-structure. A revised four-factor model reflecting the core domains positive and negative valence systems as well as cognitive systems and social processes showed a good fit across this sample and showed significantly better fit compared to a one factor solution. The connections between the domains PVS, NVS and SP could be substantiated, indicating a universal latent structure spanning across known nosological entities. This study is the first to give an impression on the latent structure and intercorrelations between four core Research Domain Criteria in a transnosological sample. We emphasize the possibility of using already existing and well validated self-report and behavioral measurements to capture aspects of the latent structure informed by the RDoC matrix. %C DEU %G en %9 Zeitschriftenartikel %W GESIS - http://www.gesis.org %~ SSOAR - http://www.ssoar.info