Brain aging in major depressive disorder: results from the ENIGMA major depressive disorder working group

Background Major depressive disorder (MDD) is associated with an increased risk of brain atrophy, aging-related diseases, and mortality. We examined potential advanced brain aging in MDD patients, and whether this process is associated with clinical characteristics in a large multi-center international dataset. Methods We performed a mega-analysis by pooling brain measures derived from T1-weighted MRI scans from 29 samples worldwide. Normative brain aging was estimated by predicting chronological age (10-75 years) from 7 subcortical volumes, 34 cortical thickness and 34 surface area, lateral ventricles and total intracranial volume measures separately in 1,147 male and 1,386 female controls from the ENIGMA MDD working group. The learned model parameters were applied to 1,089 male controls and 1,167 depressed males, and 1,326 female controls and 2,044 depressed females to obtain independent unbiased brain-based age predictions. The difference between predicted “brain age” and chronological age was calculated to indicate brain predicted age difference (brain-PAD). Findings On average, MDD patients showed a higher brain-PAD of +0.90 (SE 0.21) years (Cohen’s d=0.12, 95% CI 0.06-0.17) compared to controls. Relative to controls, first-episode and currently depressed patients showed higher brain-PAD (+1.2 [0.3] years), and the largest effect was observed in those with late-onset depression (+1.7 [0.7] years). In addition, higher brain-PAD was associated with higher self-reported depressive symptomatology (b=0.05, p=0.004). Interpretation This highly powered collaborative effort showed subtle patterns of abnormal structural brain aging in MDD. Substantial within-group variance and overlap between groups were observed. Longitudinal studies of MDD and somatic health outcomes are needed to further assess the predictive value of these brain-PAD estimates. Funding This work was supported, in part, by NIH grants U54 EB020403 and R01 MH116147.

Olaf Steinsträter | Tilo Kircher | Axel Krug | Henrik Walter | Liesbeth Reneman | Neda Jahanshad | Tim Hahn | Katharina Wittfeld | Richard Dinga | Henry Völzke | Theodore D Satterthwaite | Kathryn Cullen | Rayus Kuplicki | Torbjørn Elvsåshagen | Colm G. Connolly | Hans J Grabe | Joaquim Radua | Martin Ingvar | Knut Schnell | Ramona Leenings | Dominik Grotegerd | Udo Dannlowski | Bryon A Mueller | Erick Jorge Canales-Rodríguez | Peter R Schofield | Beny Lafer | Benson Mwangi | Kang Sim | Sarah E Medland | Dan J Stein | Gloria Roberts | Lianne Schmaal | Edith Pomarol-Clotet | Eduard Vieta | Danai Dima | Paul M Thompson | Jens Sommer | Andreas Jansen | Janice M. Fullerton | Josselin Houenou | Oliver Gruber | Tomas Hajek | Anne Uhlmann | Mon-Ju Wu | Dick J Veltman | Colm McDonald | Leila Nabulsi | Heather Whalley | Jim Lagopoulos | Norbert Hosten | Mircea Polosan | Klaus Berger | Baptiste Couvy-Duchesne | Lachlan T Strike | Katie L McMahon | Margaret J Wright | André Aleman | Marco Hermesdorf | Aart H Schene | Martin Alda | Dara Cannon | Marie-José van Tol | Thomas Frodl | Kathryn R. Cullen | Ian B Hickie | Xavier Caseras | Daniel H Wolf | Lachlan T. Strike | Anouk Schrantee | Raymond Salvador | Andre F Marquand | Bonnie Klimes-Dougan | James H Cole | Ben J Harrison | Elena Pozzi | Christopher G Davey | Chantal Henry | Bernhard T Baune | Mikael Landén | Tiffany M Chaim-Avancini | Ulrik F Malt | Jonathan Repple | Pauline Favre | Verena Enneking | Sophia I Thomopoulos | Glenda MacQueen | O. Andreassen | B. Mueller | M. Alda | I. Hickie | N. Jahanshad | P. Thompson | H. Walter | H. Völzke | A. Aleman | H. Whalley | R. Salvador | M. Ingvar | J. Fullerton | A. Jansen | G. Zubicaray | A. McIntosh | P. Mitchell | P. Schofield | J. Lagopoulos | K. Schnell | B. Penninx | I. Gotlib | U. Malt | M. Sacchet | T. Kircher | A. Marquand | B. Mwangi | Mon-Ju Wu | G. Zunta-Soares | J. Soares | U. Dannlowski | A. Schene | B. Harrison | I. Veer | M. van Tol | D. Veltman | D. Dima | B. Baune | J. Houenou | G. MacQueen | M. Portella | O. Gruber | B. Klimes-Dougan | L. Eyler | C. Mcdonald | C. H. Fu | L. Aftanas | D. Grotegerd | D. Wolf | H. Grabe | S. Medland | K. Mcmahon | M. Wright | J. Cole | K. Wittfeld | N. Hosten | T. Satterthwaite | T. Frodl | A. Carballedo | K. Berger | C. Henry | G. Hall | T. Hajek | J. Raduà | C. Davey | M. Polosan | K. Sim | P. Favre | G. Roberts | N. Groenewold | L. Schmaal | B. Krämer | B. Couvy-Duchesne | P. Sämann | C. Ching | L. Strike | D. Cannon | E. Vieta | M. Zanetti | A. Uhlmann | H. Ruhé | M. Serpa | R. Machado-Vieira | T. Hahn | L. Reneman | E. Bøen | X. Caseras | T. Elvsåshagen | B. Godlewska | S. Hatton | M. Landén | M. Aghajani | Pedro G. P. Rosa | E. Pomarol-Clotet | O. Steinsträter | C. Abé | S. Foley | J. Repple | S. Thomopoulos | A. Krug | T. Chaim-Avancini | A. Schrantee | Laura K. M. Han | T. Ho | E. Pozzi | Tony T. Yang | R. Vermeiren | F. Howells | J. Sommer | C. Bonnín | J. Goikolea | L. Nabulsi | B. Overs | H. Temmingh | M. Otaduy | B. Lafer | S. Sarró | M. M. Rive | V. Enneking | C. G. Connolly | S. V. D. van der Werff | R. Dinga | R. Kuplicki | F. Macmaster | F. Duran | Lisa T Eyler | Ole A Andreassen | Philip B Mitchell | Brenda W J H Penninx | Jair C Soares | Tony T Yang | Ian H Gotlib | Maria J Portella | Colm G Connolly | Tiffany C Ho | Matthew D Sacchet | Salvador Sarró | Philipp G Sämann | Nic J A van der Wee | Christopher R K Ching | Nynke A Groenewold | Moji Aghajani | Rodrigo Machado-Vieira | Sean N Hatton | Andrew McIntosh | B. Haarman | E. Filimonova | Q. McLellan | E. Osipov | E. Simulionyte | Cynthia H Y Fu | Bernd Krämer | Frank P MacMaster | S. Frenzel | Laura K M Han | Lyubomir Aftanas | Ivan Brak | Geraldo Busatto Filho | Angela Carballedo | Fabio L S Duran | Elena Filimonova | Stefan Frenzel | Beata R Godlewska | Geoffrey B Hall | Claas Kähler | Quinn McLellan | Evgeny Osipov | Pedro G P Rosa | Egle Simulionyte | Ilya M Veer | Robert R J M Vermeiren | Steven J A van der Werff | Nils R Winter | Vasileios Zannias | Greig I de Zubicaray | Giovana B Zunta-Soares | Christoph Abé | Erlend Bøen | Caterina M Bonnin | Erick J Canales-Rodriguez | Sonya F Foley | Janice M Fullerton | Jose M Goikolea | Bartholomeus C M Haarman | Fleur M Howells | Maria Concepcion Garcia Otaduy | Bronwyn J Overs | Maria M Rive | Henricus G Ruhe | Jonathan Savitz | Mauricio H Serpa | Marcio Gerhardt Soeiro-de-Souza | Ashley N Sutherland | Henk S Temmingh | Garrett M Timmons | Marcus V Zanetti | N. Winter | R. Leenings | Ashley N. Sutherland | N. J. van der Wee | J. Savitz | M. Hermesdorf | G. Timmons | I. Brak | Claas Kähler | Vasileios Zannias | M. Soeiro-de-Souza | M. Wright | Stefan Frenzel | P. Thompson | N. V. D. van der Wee | P. Thompson | B. Mueller | P. Thompson | Mauricio Serpa | P. Thompson

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