- Yu, Yuetong;
- Cui, Hao‐Qi;
- Haas, Shalaila S;
- New, Faye;
- Sanford, Nicole;
- Yu, Kevin;
- Zhan, Denghuang;
- Yang, Guoyuan;
- Gao, Jia‐Hong;
- Wei, Dongtao;
- Qiu, Jiang;
- Banaj, Nerisa;
- Boomsma, Dorret I;
- Breier, Alan;
- Brodaty, Henry;
- Buckner, Randy L;
- Buitelaar, Jan K;
- Cannon, Dara M;
- Caseras, Xavier;
- Clark, Vincent P;
- Conrod, Patricia J;
- Crivello, Fabrice;
- Crone, Eveline A;
- Dannlowski, Udo;
- Davey, Christopher G;
- de Haan, Lieuwe;
- de Zubicaray, Greig I;
- Di Giorgio, Annabella;
- Fisch, Lukas;
- Fisher, Simon E;
- Franke, Barbara;
- Glahn, David C;
- Grotegerd, Dominik;
- Gruber, Oliver;
- Gur, Raquel E;
- Gur, Ruben C;
- Hahn, Tim;
- Harrison, Ben J;
- Hatton, Sean;
- Hickie, Ian B;
- Pol, Hilleke E Hulshoff;
- Jamieson, Alec J;
- Jernigan, Terry L;
- Jiang, Jiyang;
- Kalnin, Andrew J;
- Kang, Sim;
- Kochan, Nicole A;
- Kraus, Anna;
- Lagopoulos, Jim;
- Lazaro, Luisa;
- McDonald, Brenna C;
- McDonald, Colm;
- McMahon, Katie L;
- Mwangi, Benson;
- Piras, Fabrizio;
- Rodriguez‐Cruces, Raul;
- Royer, Jessica;
- Sachdev, Perminder S;
- Satterthwaite, Theodore D;
- Saykin, Andrew J;
- Schumann, Gunter;
- Sevaggi, Pierluigi;
- Smoller, Jordan W;
- Soares, Jair C;
- Spalletta, Gianfranco;
- Tamnes, Christian K;
- Trollor, Julian N;
- Ent, Dennis Van't;
- Vecchio, Daniela;
- Walter, Henrik;
- Wang, Yang;
- Weber, Bernd;
- Wen, Wei;
- Wierenga, Lara M;
- Williams, Steven CR;
- Wu, Mon‐Ju;
- Zunta‐Soares, Giovana B;
- Bernhardt, Boris;
- Thompson, Paul;
- Frangou, Sophia;
- Ge, Ruiyang;
- Group, ENIGMA‐Lifespan Working
Structural neuroimaging data have been used to compute an estimate of the biological age of the brain (brain-age) which has been associated with other biologically and behaviorally meaningful measures of brain development and aging. The ongoing research interest in brain-age has highlighted the need for robust and publicly available brain-age models pre-trained on data from large samples of healthy individuals. To address this need we have previously released a developmental brain-age model. Here we expand this work to develop, empirically validate, and disseminate a pre-trained brain-age model to cover most of the human lifespan. To achieve this, we selected the best-performing model after systematically examining the impact of seven site harmonization strategies, age range, and sample size on brain-age prediction in a discovery sample of brain morphometric measures from 35,683 healthy individuals (age range: 5-90 years; 53.59% female). The pre-trained models were tested for cross-dataset generalizability in an independent sample comprising 2101 healthy individuals (age range: 8-80 years; 55.35% female) and for longitudinal consistency in a further sample comprising 377 healthy individuals (age range: 9-25 years; 49.87% female). This empirical examination yielded the following findings: (1) the accuracy of age prediction from morphometry data was higher when no site harmonization was applied; (2) dividing the discovery sample into two age-bins (5-40 and 40-90 years) provided a better balance between model accuracy and explained age variance than other alternatives; (3) model accuracy for brain-age prediction plateaued at a sample size exceeding 1600 participants. These findings have been incorporated into CentileBrain (https://centilebrain.org/#/brainAGE2), an open-science, web-based platform for individualized neuroimaging metrics.