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Brain-Based Classification of Youth with Anxiety Disorders: an ENIGMA-ANXIETY Transdiagnostic Examination using Machine Learning

Authors :
Willem B. Bruin
Paul Zhutovsky
Guido van Wingen
Janna Marie Bas-Hoogendam
Nynke A. Groenewold
Kevin Hilbert
Anderson M. Winkler
André Zugman
Federica Agosta
Fredrik Åhs
Carmen Andreescu
Chase Antonacci
Takeshi Asami
Michal Assaf
Jacques Barber
Jochen Bauer
Shreya Bavdekar
Katja Beesdo-Baum
Francesco Benedetti
Rachel Bernstein
Johannes Björkstrand
Robert Blair
Karina S. Blair
Laura Blanco-Hinojo
Joscha Böhnlein
Paolo Brambilla
Rodrigo Bressan
Fabian Breuer
Marta Cano
Elisa Canu
Elise M Cardinale
Narcís Cardoner
Camilla Cividini
Henk Cremers
Udo Dannlowski
Gretchen J. Diefenbach
Katharina Domschke
Alexander Doruyter
Thomas Dresler
Angelika Erhardt
Massimo Filippi
Gregory Fonzo
Gabrielle Felice Freitag
Tomas Furmark
Tian Ge
Andrew J. Gerber
Savannah Gosnell
Hans J. Grabe
Dominik Grotegerd
Ruben C. Gur
Raquel E. Gur
Alfons O. Hamm
Laura K. M. Han
Jennifer Harper
Anita Harrewijn
Alexandre Heeren
David Hoffman
Andrea P. Jackowski
Neda Jahanshad
Laura Jett
Antonia N. Kaczkurkin
Parmis Khosravi
Ellen Kingsley
Tilo Kircher
Milutin Kostić
Bart Larsen
Sang-Hyuk Lee
Elisabeth Leehr
Ellen Leibenluft
Christine Lochner
Su Lui
Eleonora Maggioni
Gisele Gus Manfro
Kristoffer Månsson
Claire Marino
Frances Meeten
Barbara Milrod
Ana Munjiza
Benson Irungu
Michael Myers
Susanne Neufang
Jared Nielsen
Patricia Ohrmann
Cristina Ottaviani
Martin P Paulus
Michael T. Perino
K Luan Phan
Sara Poletti
Daniel Porta-Casteràs
Jesus Pujol
Andrea Reinecke
Grace Ringlein
Pavel Rjabtsenkov
Karin Roelofs
Ramiro Salas
Giovanni Salum
Theodore D. Satterthwaite
Elisabeth Schrammen
Lisa Sindermann
Jordan Smoller
Jair Soares
Rudolf Stark
Frederike Stein
thomas straube
Benjamin Straube
Jeffrey Strawn
Benjamin Suarez-Jimenez
Chad M. Sylvester
Ardesheer Talati
Sophia I Thomopoulos
Raşit Tükel
Helena van Nieuwenhuizen
Katy E. Werwath
Katharina Wittfeld
Barry Wright
Mon-Ju Wu
Yunbo Yang
Anna Zilverstand
Peter Zwanzger
Jennifer Blackford
Suzanne Avery
Jacqueline Clauss
Ulrike Lueken
Paul Thompson
Daniel Pine
Dan J. Stein
Nic van der Wee
Dick Veltman
Moji Aghajani
Publication Year :
2022
Publisher :
Center for Open Science, 2022.

Abstract

Neuroimaging studies point to neurostructural abnormalities in youth with anxiety disorders. Yet, findings are based on small-scale studies, often with small effect sizes, and have limited generalizability and clinical relevance. These issues have prompted a paradigm shift in the field towards highly powered (i.e., big data) individual-level inferences, which are data-driven, transdiagnostic, and neurobiologically informed. Here, we built and validated neurostructural machine learning (ML) models for individual-level inferences based on the largest-ever multi-site neuroimaging sample of youth with anxiety disorders (age: 10-25 years, N=3,343 individuals from 32 global sites), as compiled by three ENIGMA Anxiety Working Groups: Panic Disorder (PD), Generalized Anxiety Disorder (GAD), and Social Anxiety Disorder (SAD). ML classifiers were trained on MRI-derived regional measures of cortical thickness, surface area, and subcortical volumes to classify patients and healthy controls (HC) for each anxiety disorder separately and across disorders (transdiagnostic classification). Modest, yet robust, classification performance was achieved for PD vs. HC (AUC=0.62), but other disorder-specific and transdiagnostic classifications were not significantly different from chance. However, above chance-level transdiagnostic classifications were obtained in exploratory subgroup analyses of male patients vs. male HC, unmedicated patients vs. HC, and patients with low anxiety severity vs. HC (AUC 0.59-0.63). The above chance-level classifications were based on plausible and specific neuroanatomical features in fronto-striato-limbic and temporo-parietal regions. This study provides a realistic estimate of classification performance in a large, ecologically valid, multi-site sample of youth with anxiety disorders, and may as such serve as a benchmark.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........8dd724f19791f7399350f7d54603cb23