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Classification of major depressive disorder using vertex-wise brain sulcal depth, curvature, and thickness with a deep and a shallow learning model

  • Roberto Goya-Maldonado
  • , Tracy Erwin-Grabner*
  • , ENIGMA Major Depressive Disorder working group
  • , Ling-Li Zeng
  • , Christopher R K Ching
  • , Andre Aleman
  • , Alyssa R Amod
  • , Zeynep Basgoze
  • , Francesco Benedetti
  • , Bianca Besteher
  • , Katharina Brosch
  • , Robin Bülow
  • , Romain Colle
  • , Colm G Connolly
  • , Emmanuelle Corruble
  • , Baptiste Couvy-Duchesne
  • , Kathryn Cullen
  • , Udo Dannlowski
  • , Christopher G Davey
  • , Annemiek Dols
  • Jan Ernsting, Jennifer W Evans, Lukas Fisch, Paola Fuentes-Claramonte, Ali Saffet Gonul, Ian H Gotlib, Hans J Grabe, Nynke A Groenewold, Dominik Grotegerd, Tim Hahn, J Paul Hamilton, Laura K M Han, Ben J Harrison, Tiffany C Ho, Neda Jahanshad, Alec J Jamieson, Andriana Karuk, Tilo Kircher, Bonnie Klimes-Dougan, Sheri-Michelle Koopowitz, Thomas Lancaster, Ramona Leenings, Meng Li, David E J Linden, Frank P MacMaster, David M A Mehler, Susanne Meinert, Elisa Melloni, Bryon A Mueller, Benson Mwangi, Yara J Toenders
*Corresponding author for this work
  • University of Göttingen
  • National University of Defense Technology
  • University of Southern California
  • University of Groningen
  • University of Cape Town
  • University of Minnesota Medical School
  • IRCCS Scientific Institute Ospedale San Raffaele
  • Jena University Hospital
  • University of Marburg
  • University Medicine Greifswald
  • MOODS Team
  • Florida State University
  • Sorbonne Université
  • University of Münster
  • University of Melbourne
  • Amsterdam Public Health Research Institute
  • National Institutes of Health
  • Sisters Hospitallers Research Foundation
  • Ege University
  • Stanford University
  • Linköping University
  • University of California
  • University of Minnesota
  • Cardiff University
  • University of Calgary
  • University of Texas Health Science Center at Houston
  • Leiden University

Research output: Contribution to journalArticleAcademicpeer-review

3 Citations (Scopus)
6 Downloads (Pure)

Abstract

Major depressive disorder (MDD) is a complex psychiatric disorder that affects the lives of hundreds of millions of individuals around the globe. Even today, researchers debate if morphological alterations in the brain are linked to MDD, likely due to the heterogeneity of this disorder. The application of deep learning tools to neuroimaging data, capable of capturing complex non-linear patterns, has the potential to provide diagnostic and predictive biomarkers for MDD. However, previous attempts to demarcate MDD patients and healthy controls (HC) based on segmented cortical features via linear machine learning approaches have reported low accuracies. In this study, we used globally representative data from the ENIGMA-MDD working group containing 7012 participants from 31 sites (N = 2772 MDD and N = 4240 HC), which allows a comprehensive analysis with generalizable results. Based on the hypothesis that integration of vertex-wise cortical features can improve classification performance, we evaluated the classification of a DenseNet and a Support Vector Machine (SVM), with the expectation that the former would outperform the latter. As we analyzed a multi-site sample, we additionally applied the ComBat harmonization tool to remove potential nuisance effects of site. We found that both classifiers exhibited close to chance performance (balanced accuracy DenseNet: 51%; SVM: 53%), when estimated on unseen sites. Slightly higher classification performance (balanced accuracy DenseNet: 58%; SVM: 55%) was found when the cross-validation folds contained subjects from all sites, indicating site effect. In conclusion, the integration of vertex-wise morphometric features and the use of the non-linear classifier did not lead to the differentiability between MDD and HC. Our results support the notion that MDD classification on this combination of features and classifiers is unfeasible. Future studies are needed to determine whether more sophisticated integration of information from other MRI modalities such as fMRI and DWI will lead to a higher performance in this diagnostic task.

Original languageEnglish
Pages (from-to)1517-1529
Number of pages13
JournalMolecular Psychiatry
Volume31
Issue number3
Early online date3 Oct 2025
DOIs
Publication statusPublished - Mar 2026

Bibliographical note

© 2025. This is a U.S. Government work and not under copyright protection in the US; foreign copyright protection may apply.

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

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