Результаты исследований: Научные публикации в периодических изданиях › статья › Рецензирование
A large-scale ENIGMA multisite replication study of brain age in depression. / Han, Laura K.M.; Dinga, Richard; Leenings, Ramona и др.
в: Neuroimage: Reports, Том 2, № 4, 100149, 2022.Результаты исследований: Научные публикации в периодических изданиях › статья › Рецензирование
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TY - JOUR
T1 - A large-scale ENIGMA multisite replication study of brain age in depression
AU - Han, Laura K.M.
AU - Dinga, Richard
AU - Leenings, Ramona
AU - Hahn, Tim
AU - Cole, James H.
AU - Aftanas, Lyubomir I.
AU - Amod, Alyssa R.
AU - Besteher, Bianca
AU - Colle, Romain
AU - Corruble, Emmanuelle
AU - Couvy-Duchesne, Baptiste
AU - Danilenko, Konstantin V.
AU - Fuentes-Claramonte, Paola
AU - Gonul, Ali Saffet
AU - Gotlib, Ian H.
AU - Goya-Maldonado, Roberto
AU - Groenewold, Nynke A.
AU - Hamilton, Paul
AU - Ichikawa, Naho
AU - Ipser, Jonathan C.
AU - Itai, Eri
AU - Koopowitz, Sheri Michelle
AU - Li, Meng
AU - Okada, Go
AU - Okamoto, Yasumasa
AU - Churikova, Olga S.
AU - Osipov, Evgeny A.
AU - Penninx, Brenda W.J.H.
AU - Pomarol-Clotet, Edith
AU - Rodríguez-Cano, Elena
AU - Sacchet, Matthew D.
AU - Shinzato, Hotaka
AU - Sim, Kang
AU - Stein, Dan J.
AU - Uyar-Demir, Aslihan
AU - Veltman, Dick J.
AU - Schmaal, Lianne
N1 - Публикация для корректировки.
PY - 2022
Y1 - 2022
N2 - Background: Several studies have evaluated whether depressed persons have older appearing brains than their nondepressed peers. However, the estimated neuroimaging-derived “brain age gap” has varied from study to study, likely driven by differences in training and testing sample (size), age range, and used modality/features. To validate our previously developed ENIGMA brain age model and the identified brain age gap, we aim to replicate the presence and effect size estimate previously found in the largest study in depression to date (N = 2126 controls & N = 2675 cases; +1.08 years [SE 0.22], Cohen's d = 0.14, 95% CI: 0.08–0.20), in independent cohorts that were not part of the original study. Methods: A previously trained brain age model (www.photon-ai.com/enigma_brainage) based on 77 FreeSurfer brain regions of interest was used to obtain unbiased brain age predictions in 751 controls and 766 persons with depression (18–75 years) from 13 new cohorts collected from 20 different scanners. Meta-regressions were used to examine potential moderating effects of basic cohort characteristics (e.g., clinical and scan technical) on the brain age gap. Results: Our ENIGMA MDD brain age model generalized reasonably well to controls from the new cohorts (predicted age vs. age: r = 0.73, R2 = 0.47, MAE = 7.50 years), although the performance varied from cohort to cohort. In these new cohorts, on average, depressed persons showed a significantly higher brain age gap of +1 year (SE 0.35) (Cohen's d = 0.15, 95% CI: 0.05–0.25) compared with controls, highly similar to our previous finding. Significant moderating effects of FreeSurfer version 6.0 (d = 0.41, p = 0.007) and Philips scanner vendor (d = 0.50, p < 0.0001) were found, leading to more positive effect size estimates. Conclusions: This study further validates our previously developed ENIGMA brain age algorithm. Importantly, we replicated the brain age gap in depression with a comparable effect size. Thus, two large-scale independent mega-analyses across in total 32 cohorts and >3400 patients and >2800 controls worldwide show reliable but subtle effects of brain aging in adult depression. Future studies are needed to identify factors that may further explain the brain age gap variance between cohorts.
AB - Background: Several studies have evaluated whether depressed persons have older appearing brains than their nondepressed peers. However, the estimated neuroimaging-derived “brain age gap” has varied from study to study, likely driven by differences in training and testing sample (size), age range, and used modality/features. To validate our previously developed ENIGMA brain age model and the identified brain age gap, we aim to replicate the presence and effect size estimate previously found in the largest study in depression to date (N = 2126 controls & N = 2675 cases; +1.08 years [SE 0.22], Cohen's d = 0.14, 95% CI: 0.08–0.20), in independent cohorts that were not part of the original study. Methods: A previously trained brain age model (www.photon-ai.com/enigma_brainage) based on 77 FreeSurfer brain regions of interest was used to obtain unbiased brain age predictions in 751 controls and 766 persons with depression (18–75 years) from 13 new cohorts collected from 20 different scanners. Meta-regressions were used to examine potential moderating effects of basic cohort characteristics (e.g., clinical and scan technical) on the brain age gap. Results: Our ENIGMA MDD brain age model generalized reasonably well to controls from the new cohorts (predicted age vs. age: r = 0.73, R2 = 0.47, MAE = 7.50 years), although the performance varied from cohort to cohort. In these new cohorts, on average, depressed persons showed a significantly higher brain age gap of +1 year (SE 0.35) (Cohen's d = 0.15, 95% CI: 0.05–0.25) compared with controls, highly similar to our previous finding. Significant moderating effects of FreeSurfer version 6.0 (d = 0.41, p = 0.007) and Philips scanner vendor (d = 0.50, p < 0.0001) were found, leading to more positive effect size estimates. Conclusions: This study further validates our previously developed ENIGMA brain age algorithm. Importantly, we replicated the brain age gap in depression with a comparable effect size. Thus, two large-scale independent mega-analyses across in total 32 cohorts and >3400 patients and >2800 controls worldwide show reliable but subtle effects of brain aging in adult depression. Future studies are needed to identify factors that may further explain the brain age gap variance between cohorts.
KW - Biological aging
KW - Brain age
KW - Depression
KW - ENIGMA consortium
KW - Replication study
UR - https://www.mendeley.com/catalogue/1eee8ba3-e625-34a7-976e-b72276fe684d/
U2 - 10.1016/j.ynirp.2022.100149
DO - 10.1016/j.ynirp.2022.100149
M3 - Article
VL - 2
JO - Neuroimage: Reports
JF - Neuroimage: Reports
SN - 2666-9560
IS - 4
M1 - 100149
ER -
ID: 55696362