TY - JOUR
T1 - Brain-based classification of youth with anxiety disorders
T2 - transdiagnostic examinations within the ENIGMA-Anxiety database using machine learning
AU - Bruin, Willem B.
AU - Zhutovsky, Paul
AU - van Wingen, Guido A.
AU - Bas-Hoogendam, Janna Marie
AU - Groenewold, Nynke A.
AU - Hilbert, Kevin
AU - Winkler, Anderson M.
AU - Zugman, Andre
AU - Agosta, Federica
AU - Åhs, Fredrik
AU - Andreescu, Carmen
AU - Antonacci, Chase
AU - Asami, Takeshi
AU - Assaf, Michal
AU - Barber, Jacques P.
AU - Bauer, Jochen
AU - Bavdekar, Shreya Y.
AU - Beesdo-Baum, Katja
AU - Benedetti, Francesco
AU - Bernstein, Rachel
AU - Björkstrand, Johannes
AU - Blair, Robert J.
AU - Blair, Karina S.
AU - Blanco-Hinojo, Laura
AU - Böhnlein, Joscha
AU - Brambilla, Paolo
AU - Bressan, Rodrigo A.
AU - Breuer, Fabian
AU - Cano, Marta
AU - Canu, Elisa
AU - Cardinale, Elise M.
AU - Cardoner, Narcís
AU - Cividini, Camilla
AU - Cremers, Henk
AU - Dannlowski, Udo
AU - Diefenbach, Gretchen J.
AU - Domschke, Katharina
AU - Doruyter, Alexander G.G.
AU - Dresler, Thomas
AU - Erhardt, Angelika
AU - Filippi, Massimo
AU - Fonzo, Gregory A.
AU - Freitag, Gabrielle F.
AU - Furmark, Tomas
AU - Ge, Tian
AU - Gerber, Andrew J.
AU - Gosnell, Savannah N.
AU - Grabe, Hans J.
AU - Grotegerd, Dominik
AU - Gur, Ruben C.
AU - ENIGMA
N1 - Publisher Copyright:
© The Author(s), under exclusive licence to Springer Nature America, Inc. 2024.
PY - 2024/1
Y1 - 2024/1
N2 - Neuroanatomical findings on youth anxiety disorders are notoriously difficult to replicate, small in effect size and have limited clinical relevance. These concerns have prompted a paradigm shift toward highly powered (that is, big data) individual-level inferences, which are data driven, transdiagnostic and neurobiologically informed. Here we built and validated supervised neuroanatomical machine learning models for individual-level inferences, using a case–control design and the largest known neuroimaging database on youth anxiety disorders: the ENIGMA-Anxiety Consortium (N = 3,343; age = 10–25 years; global sites = 32). Modest, yet robust, brain-based classifications were achieved for specific anxiety disorders (panic disorder), but also transdiagnostically for all anxiety disorders when patients were subgrouped according to their sex, medication status and symptom severity (area under the receiver operating characteristic curve, 0.59–0.63). Classifications were driven by neuroanatomical features (cortical thickness, cortical surface area and subcortical volumes) in fronto-striato-limbic and temporoparietal regions. This benchmark study within a large, heterogeneous and multisite sample of youth with anxiety disorders reveals that only modest classification performances can be realistically achieved with machine learning using neuroanatomical data.
AB - Neuroanatomical findings on youth anxiety disorders are notoriously difficult to replicate, small in effect size and have limited clinical relevance. These concerns have prompted a paradigm shift toward highly powered (that is, big data) individual-level inferences, which are data driven, transdiagnostic and neurobiologically informed. Here we built and validated supervised neuroanatomical machine learning models for individual-level inferences, using a case–control design and the largest known neuroimaging database on youth anxiety disorders: the ENIGMA-Anxiety Consortium (N = 3,343; age = 10–25 years; global sites = 32). Modest, yet robust, brain-based classifications were achieved for specific anxiety disorders (panic disorder), but also transdiagnostically for all anxiety disorders when patients were subgrouped according to their sex, medication status and symptom severity (area under the receiver operating characteristic curve, 0.59–0.63). Classifications were driven by neuroanatomical features (cortical thickness, cortical surface area and subcortical volumes) in fronto-striato-limbic and temporoparietal regions. This benchmark study within a large, heterogeneous and multisite sample of youth with anxiety disorders reveals that only modest classification performances can be realistically achieved with machine learning using neuroanatomical data.
UR - http://www.scopus.com/inward/record.url?scp=105003047842&partnerID=8YFLogxK
U2 - 10.1038/s44220-023-00173-2
DO - 10.1038/s44220-023-00173-2
M3 - Journal article
AN - SCOPUS:105003047842
SN - 2731-6076
VL - 2
SP - 104
EP - 118
JO - Nature Mental Health
JF - Nature Mental Health
IS - 1
M1 - 100
ER -