A. Abraham, F. Pedregosa, M. Eickenberg, P. Gervais, A. Mueller et al., , p.628

B. Thirion and G. Varoquaux, Machine learning for neuroimaging with scikit-learn. 629 Frontiers in Neuroinformatics, vol.8, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01093971

F. Alfaro-almagro, M. Jenkinson, N. K. Bangerter, J. L. Andersson, L. Griffanti et al., , p.632

M. Webster, P. Mccarthy, C. Rorden, A. Daducci, D. C. Alexander et al., , p.633

I. Matthews, P. M. Miller, K. L. Smith, and S. M. , Image processing and Quality 634 Control for the first 10,000 brain imaging datasets from UK Biobank, NeuroImage, vol.166, pp.400-635, 2018.

T. Behrens, M. Woolrich, M. Jenkinson, H. Johansen-berg, R. Nunes et al., Characterization and propagation of uncertainty in 638 diffusion-weighted mr imaging, Magnetic Resonance in Medicine, vol.50, pp.1077-1088, 2003.

P. Biecek, Dalex: explainers for complex predictive models in r. The Journal of 640, Machine Learning Research, vol.19, issue.1, pp.3245-3249, 2018.

A. J. Birley, N. A. Gillespie, A. C. Heath, P. F. Sullivan, D. I. Boomsma et al., Heritability and nineteen-year stability of long and short epq-r neuroticism scales. 643 Personality and individual differences, vol.40, pp.737-747, 2006.

B. Biswal, F. Z. Yetkin, V. M. Haughton, and J. S. Hyde, Functional connectivity in 645 the motor cortex of resting human brain using echo-planar mri. Magnetic Resonance in 646, Medicine, vol.34, issue.4, pp.537-541, 1995.

D. Borsboom, Measuring the mind: Conceptual issues in contemporary psychomet-648 rics, 2005.

D. Borsboom, G. J. Mellenbergh, and J. Van-heerden, The Concept of Validity, Psychological Review, vol.650, issue.4, pp.1061-1071, 2004.

L. Breiman, Random Forests. Machine Learning, vol.45, pp.5-32, 2001.

D. Bzdok, D. Engemann, O. Grisel, G. Varoquaux, and B. Thirion, Prediction and 653 inference diverge in biomedicine: Simulations and real-world data, 2018.

D. Bzdok and J. P. Ioannidis, Exploration, inference, and prediction in neuroscience 655 and biomedicine, Trends in neurosciences, vol.42, issue.4, pp.251-262, 2019.

D. Bzdok and A. Meyer-lindenberg, Machine learning for precision psychiatry: oppor-657 tunities and challenges, Biological Psychiatry: Cognitive Neuroscience and Neuroimaging, vol.658, issue.3, pp.223-230, 2018.

T. R. Carretta, Pilot candidate selection method. Aviation Psychology and Applied 660 Human Factors, 2011.

T. R. Carretta and M. J. Ree, Pilot-candidate selection method: Sources of validity, The International Journal of Aviation Psychology, vol.662, issue.2, pp.103-117, 1994.

R. B. Cattell, Theory of fluid and crystallized intelligence: A critical experiment, Journal of educational psychology, vol.664, issue.1, p.1, 1963.

R. B. Cattell and I. H. Scheier, The meaning and measurement of neuroticism and 666 anxiety, 1961.

E. Clarke and S. Sherrill-mix, ggbeeswarm: Categorical Scatter (Violin Point) Plots. 668, 2017.

J. H. Cole, Multi-modality neuroimaging brain-age in uk biobank: relationship to 670 biomedical, lifestyle and cognitive factors, Neurobiology of Aging, 2020.

J. H. Cole, R. Leech, D. J. Sharp, and A. D. Initiative, Prediction of brain age 672 suggests accelerated atrophy after traumatic brain injury, Annals of neurology, vol.77, issue.4, pp.571-673, 2015.

J. H. Cole, R. P. Poudel, D. Tsagkrasoulis, M. W. Caan, C. Steves et al., , p.675

G. Montana, Predicting brain age with deep learning from raw imaging data results 676 in a reliable and heritable biomarker, NeuroImage, vol.163, pp.115-124, 2017.

J. H. Cole, S. J. Ritchie, M. E. Bastin, M. V. Hernández, S. M. Maniega et al., Brain age predicts mortality, vol.23, p.1385, 2018.

R. Collins, What makes UK Biobank special? The Lancet, vol.379, pp.1173-1174, 2012.

L. Colodro-conde, B. Couvy-duchesne, G. Zhu, W. L. Coventry, E. M. Byrne et al., , p.682

M. J. Wright, G. W. Montgomery, P. A. Madden, and S. Ripke, A direct test of 683 the diathesis-stress model for depression, Molecular psychiatry, vol.23, issue.7, pp.1590-1596, 2018.

T. E. Conturo, N. F. Lori, T. S. Cull, E. Akbudak, A. Z. Snyder et al., , p.685

R. C. Burton, H. Raichle, and M. E. , Tracking neuronal fiber pathways in the living 686 human brain, Proceedings of the National Academy of Sciences, vol.96, pp.10422-10427, 1999.

P. T. Costa and R. R. Mccrae, Neo Pi-R, Psychological Assessment Resources, vol.688, 1992.

S. Cox, S. Ritchie, C. Fawns-ritchie, E. Tucker-drob, and I. Deary, Structural 690 brain imaging correlates of general intelligence in uk biobank, Intelligence, vol.76, 2019.

S. Cox, S. Ritchie, C. Fawns-ritchie, E. Tucker-drob, and I. Deary, Structural 692 brain imaging correlates of general intelligence in UK Biobank, Intelligence, vol.76, 2019.

L. J. Cronbach and P. E. Meehl, Construct validity in psychological tests, Psycholog-694 ical Bulletin, vol.52, issue.4, pp.281-302, 1955.

K. Dadi, M. Rahim, A. Abraham, D. Chyzhyk, M. Milham et al., Benchmarking functional connectome-based predictive models for resting-state 697 fMRI, NeuroImage, vol.192, pp.115-134, 2019.

M. De-groot, M. W. Vernooij, S. Klein, M. A. Ikram, F. M. Vos et al., , p.699

W. J. , A. , and J. L. , Improving alignment in Tract-based spatial statistics: 700 Evaluation and optimization of image registration, NeuroImage, vol.76, pp.400-411, 2013.

A. Demertzi, E. Tagliazucchi, S. Dehaene, G. Deco, P. Barttfeld et al., Human consciousness is 703 supported by dynamic complex patterns of brain signal coordination, Science advances, vol.704, issue.2, p.7603, 2019.

R. S. Desikan, F. Ségonne, B. Fischl, B. T. Quinn, B. C. Dickerson et al., An automated labeling 707 system for subdividing the human cerebral cortex on mri scans into gyral based regions of 708 interest, Neuroimage, vol.31, issue.3, pp.968-980, 2006.

J. Diedrichsen, J. H. Balsters, J. Flavell, E. Cussans, and N. Ramnani, A proba-710 bilistic mr atlas of the human cerebellum, NeuroImage, vol.46, issue.1, pp.39-46, 2009.

N. U. Dosenbach, B. Nardos, A. L. Cohen, D. A. Fair, J. D. Power et al., Prediction of 713 individual brain maturity using fmri, Science, vol.329, issue.5997, pp.1358-1361, 2010.

J. Dubois, P. Galdi, Y. Han, L. K. Paul, A. et al., Resting-State Functional 715 Brain Connectivity Best Predicts the Personality Dimension of Openness to Experience. 716 Personality Neuroscience, vol.1, 2018.

I. W. Eisenberg, P. G. Bissett, A. Z. Enkavi, J. Li, D. P. Mackinnon et al., Uncovering the structure of self-regulation through data-driven 722 ontology discovery, Nature Communications, vol.10, issue.1, pp.1-13, 2019.

D. A. Engemann, O. Kozynets, D. Sabbagh, G. Lemaître, G. Varoquaux et al., Combining magnetoencephalography with magnetic resonance 725 imaging enhances learning of surrogate-biomarkers. eLife, vol.9, p.54055, 2020.

D. A. Engemann, F. Raimondo, J. King, B. Rohaut, G. Louppe et al., , p.727

H. Cassol, O. Gosseries, D. Fernandez-slezak, S. Laureys, L. Naccache et al., Robust EEG-based cross-site and cross-protocol classification of 729 states of consciousness, Brain, vol.141, issue.11, pp.3179-3192, 2018.

A. Z. Enkavi, I. W. Eisenberg, P. G. Bissett, G. L. Mazza, D. P. Mackinnon et al., Large-scale analysis of test-retest reliabilities of self-regulation 732 measures, Proceedings of the National Academy of Sciences, vol.116, pp.5472-5477, 2019.

H. J. Eysenck, The continuity of abnormal and normal behavior, Psychological, vol.734, issue.6, pp.429-432, 1958.

S. Eysenck, H. Eysenck, and P. Barrett, A revised version of the psychoticism scale, Personality and Individual Differences, vol.736, pp.21-29, 1985.

A. Fry, T. J. Littlejohns, C. Sudlow, N. Doherty, L. Adamska et al., , p.738

N. E. Allen, Comparison of Sociodemographic and Health-Related Characteristics 739 of UK Biobank Participants With Those of the General Population, American Journal of 740 Epidemiology, vol.186, issue.9, pp.1026-1034, 2017.

A. Gelman and J. Hill, Data analysis using regression and multilevel/hierarchical 742 models, 2006.

A. Gelman and Y. Su, arm: Data Analysis Using Regression and Multi-744 level/Hierarchical Models. R package version 1, pp.11-12, 2020.

L. A. Gemein, R. T. Schirrmeister, P. Chrab?szcz, D. Wilson, and J. Boedecker, , p.746

A. Bonhage, F. Hutter, and T. Ball, Machine-learning-based diagnostics of eeg 747 pathology, NeuroImage, vol.220, p.117021, 2020.

J. Gonneaud, A. T. Baria, A. P. Binette, B. A. Gordon, J. P. Chhatwal et al., , p.749

M. Jucker, J. Levin, S. Salloway, and M. Farlow, Functional brain age prediction 750 suggests accelerated aging in preclinical familial alzheimer's disease, irrespective of fibrillar 751 amyloid-beta pathology, 2020.

M. Greicius, G. Srivastava, A. Reiss, and V. Menon, Default-mode network activity 753 distinguishes Alzheimer's disease from healthy aging: evidence from functional MRI, Proceedings of the National Academy of Sciences, vol.754, p.4637, 2004.

U. Hasson, R. Malach, and D. J. Heeger, Reliability of cortical activity during natural 756 stimulation, Trends in cognitive sciences, vol.14, issue.1, pp.40-48, 2010.

T. Hastie, R. Tibshirani, J. Friedman, F. , and J. , The elements of statistical 758 learning: data mining, inference and prediction, The Mathematical Intelligencer, vol.27, issue.2, pp.83-759, 2005.

T. He, L. An, J. Feng, D. Bzdok, A. J. Holmes et al., , p.761, 2020.

, Meta-matching: a simple framework to translate phenotypic predictive models from big to 762 small data

T. He, R. Kong, A. J. Holmes, M. R. Sabuncu, S. B. Eickhoff et al., , p.764

B. T. Yeo, Is deep learning better than kernel regression for functional connectivity 765 prediction of fluid intelligence?, 2018 International Workshop on Pattern Recognition in 766 Neuroimaging (PRNI), pp.1-4, 2018.

J. M. Hettema, M. C. Neale, J. M. Myers, C. A. Prescott, and K. S. Kendler, A 768 population-based twin study of the relationship between neuroticism and internalizing 769 disorders, American journal of Psychiatry, vol.163, issue.5, pp.857-864, 2006.

J. L. Horn, G. Donaldson, and R. Engstrom, Apprehension, memory, and fluid 771 intelligence decline in adulthood, Research on Aging, vol.3, issue.1, pp.33-84, 1981.

F. Hozer and J. Houenou, Can neuroimaging disentangle bipolar disorder?, Journal 773 of affective disorders, vol.195, pp.199-214, 2016.

T. Insel, B. Cuthbert, M. Garvey, R. Heinssen, D. S. Pine et al., Research Domain Criteria (RDoC): Toward a New Classification 776 Framework for Research on Mental Disorders, American Journal of Psychiatry, vol.167, issue.7, pp.748-777, 2010.

I. P. Jääskeläinen, J. Pajula, J. Tohka, H. Lee, W. Kuo et al., Brain 779 hemodynamic activity during viewing and re-viewing of comedy movies explained by 780 experienced humor, Scientific reports, vol.6, p.27741, 2016.

J. Josse, N. Prost, E. Scornet, and G. Varoquaux, On the consistency of supervised 782 learning with missing values, 2019.

S. Kapur, A. G. Phillips, and T. R. Insel, Why has it taken so long for biological 784 psychiatry to develop clinical tests and what to do about it? Molecular Psychiatry, vol.785, pp.1174-1179, 2012.

K. M. Keyes, J. Platt, A. S. Kaufman, and K. A. Mclaughlin, Association of 787 Fluid Intelligence and Psychiatric Disorders in a Population-Representative Sample of US 788 Adolescents, JAMA psychiatry, vol.74, issue.2, pp.179-188, 2017.

G. M. Khandaker, C. Dalman, N. Kappelmann, J. Stochl, H. Dal et al., , p.790

P. B. Karlsson and H. , Association of Childhood Infection With IQ and Adult 791, 2018.

, Nonaffective Psychosis in Swedish Men: A Population-Based Longitudinal Cohort and 792 Co-relative Study, JAMA Psychiatry, vol.75, issue.4, pp.356-362

R. A. Kievit, D. Fuhrmann, G. S. Borgeest, I. L. Simpson-kent, and R. N. Henson, 794 The neural determinants of age-related changes in fluid intelligence: a pre-registered, 795 longitudinal analysis in uk biobank, p.3, 2018.

R. A. Kievit, D. Fuhrmann, G. S. Borgeest, I. L. Simpson-kent, and R. N. Henson, The neural determinants of age-related changes in fluid intelligence: a pre-798 registered, longitudinal analysis in UK Biobank, Wellcome Open Research, vol.797, p.799, 2018.

N. Koutsouleris, C. Davatzikos, S. Borgwardt, C. Gaser, R. Bottlender et al., Accelerated brain ag-801 ing in schizophrenia and beyond: a neuroanatomical marker of psychiatric disorders, Schizophrenia bulletin, vol.802, issue.5, pp.1140-1153, 2014.

E. Krapohl, K. Rimfeld, N. G. Shakeshaft, M. Trzaskowski, A. Mcmillan et al., The high heritability of 805 educational achievement reflects many genetically influenced traits, vol.111, pp.15273-15278, 2014.

B. B. Lahey, Public health significance of neuroticism, American Psychologist, vol.808, issue.4, p.241, 2009.

T. T. Le, R. T. Kuplicki, B. A. Mckinney, H. Yeh, W. K. Thompson et al., , p.810

R. L. Aupperle, J. Bodurka, Y. Cha, J. S. Feinstein, S. S. Khalsa et al., , p.811

W. K. Victor and T. A. , A nonlinear simulation framework supports adjusting for 812 age when analyzing brainage, Frontiers in Aging Neuroscience, vol.10, p.317, 2018.

O. Ledoit and M. Wolf, Honey, i shrunk the sample covariance matrix. The Journal 814 of Portfolio Management, vol.30, pp.110-119, 2004.

J. Lerch, A. Van-der-kouwe, A. Raznahan, T. Paus, H. Johansen-berg et al., Studying neuroanatomy using mri, Nature, vol.817, pp.314-326, 2017.

F. Liem, G. Varoquaux, J. Kynast, F. Beyer, S. K. Masouleh et al., Predicting brain-age from 820 multimodal imaging data captures cognitive impairment, NeuroImage, vol.148, pp.179-188, 2017.

R. J. Little and D. B. Rubin, Statistical Analysis with Missing Data, 1986.

R. Lynn and T. Martin, Gender differences in extraversion, neuroticism, and psy-824 choticism in 37 nations, The Journal of social psychology, vol.137, issue.3, pp.369-373, 1997.

L. A. Maglanoc, T. Kaufmann, D. Meer, A. F. Marquand, T. Wolfers et al., , p.826

E. Hilland, O. A. Andreassen, N. I. Landrø, and L. T. Westlye, Brain Connectome 827 Mapping of Complex Human Traits and Their Polygenic Architecture Using Machine 828 Learning, Biological Psychiatry, vol.87, issue.8, pp.717-726, 2020.

K. L. Miller, F. Alfaro-almagro, N. K. Bangerter, D. L. Thomas, E. Yacoub et al., , p.830

A. J. Jbabdi, S. Sotiropoulos, S. N. Andersson, J. L. Griffanti, L. Douaud et al., , p.831

T. W. Weale, P. Dragonu, I. Garratt, S. Hudson, S. Collins et al., , p.832

P. M. Smith and S. M. , Multimodal population brain imaging in the UK Biobank 833 prospective epidemiological study, Nature neuroscience, vol.19, issue.11, pp.1523-1536, 2016.

G. Nave, W. H. Jung, R. K. Linnér, J. W. Kable, and P. D. Koellinger, Are Bigger 835 Brains Smarter? Evidence From a Large-Scale Preregistered Study, 2018.

L. Nummenmaa, E. Glerean, M. Viinikainen, I. P. Jääskeläinen, R. Hari et al., , p.838

, Emotions promote social interaction by synchronizing brain activity across 839 individuals, Proceedings of the National Academy of Sciences, vol.109, issue.24, pp.9599-9604, 2012.

S. J. Pan and Q. Yang, A survey on transfer learning, IEEE Transactions on 841 knowledge and data engineering, vol.22, issue.10, pp.1345-1359, 2009.

N. L. Pedersen, R. Plomin, G. E. Mcclearn, and L. Friberg, Neuroticism, ex-843 traversion, and related traits in adult twins reared apart and reared together, Journal of 844 personality and social psychology, vol.55, issue.6, p.950, 1988.

F. Pedregosa, G. Varoquaux, A. Gramfort, V. Michel, B. Thirion et al., , p.846

P. Prettenhofer, R. Weiss, V. Dubourg, J. Vanderplas, A. Passos et al., , p.847

M. Brucher, M. Perrot, and É. Duchesnay, Scikit-learn: Machine Learning in 848 Python, J. Mach. Learn. Res, vol.12, pp.2825-2830, 2011.

R. H. Perlis, Translating biomarkers to clinical practice, Molecular Psychiatry, vol.850, issue.11, pp.1076-1087, 2011.

U. Pervaiz, D. Vidaurre, M. W. Woolrich, and S. M. Smith, Optimising network 852 modelling methods for fmri, NeuroImage, vol.211, p.116604, 2020.

R. A. Poldrack, G. Huckins, and G. Varoquaux, Establishment of best practices for 854 evidence for prediction: a review, JAMA psychiatry, vol.77, issue.5, pp.534-540, 2020.

R. A. Power and M. Pluess, Heritability estimates of the Big Five personality traits 856 based on common genetic variants, Translational psychiatry, vol.5, issue.7, p.604, 2015.

D. Quercia, M. Kosinski, D. Stillwell, and J. Crowcroft, Our twitter profiles, our 858 selves: Predicting personality with twitter, pp.180-185, 2011.

. R-core-team, R: A Language and Environment for Statistical Computing. R Founda-860 tion for Statistical Computing, 2019.

S. J. Ritchie, D. A. Dickie, S. R. Cox, M. D. Valdes-hernandez, J. Corley et al., , p.862

A. Pattie, B. S. Aribisala, P. Redmond, S. Muñoz-maniega, A. M. Taylor et al., , p.863

A. J. Gow, J. M. Starr, M. E. Bastin, J. M. Wardlaw, and I. J. Deary, Brain 864 volumetric changes and cognitive ageing during the eighth decade of life. Human Brain 865 Mapping, vol.36, pp.4910-4925, 2015.

D. Sabbagh, P. Ablin, G. Varoquaux, A. Gramfort, and D. A. Engeman, Manifold-867 regression to predict from meg/eeg brain signals without source modeling, Advances in 868 Neural Information Processing Systems (NeurIPS), 2019.

Z. Saygin, D. Osher, E. Norton, D. Youssoufian, S. Beach et al., Connectivity precedes function in the development of the 871 visual word form area, Nature neuroscience, p.19, 2016.

A. J. Shackman, D. P. Tromp, M. D. Stockbridge, C. M. Kaplan, R. M. Tillman et al., Dispositional negativity: An integrative psychological and neurobiological 874 perspective, Psychological bulletin, vol.142, issue.12, p.1275, 2016.

J. T. Shelton, E. M. Elliott, R. A. Matthews, B. Hill, and W. Gouvier, 876 The relationships of working memory, secondary memory, and general fluid intelligence: 877 working memory is special, Journal of Experimental Psychology: Learning, Memory, and 878 Cognition, vol.36, issue.3, p.813, 2010.

S. M. Smith, L. T. Elliott, F. Alfaro-almagro, P. Mccarthy, T. E. Nichols et al., Brain aging comprises many modes of structural and functional change 881 with distinct genetic and biophysical associations, p.52677, 2020.

S. M. Smith, D. Vidaurre, F. Alfaro-almagro, T. E. Nichols, and K. L. Miller, 883 Estimation of brain age delta from brain imaging, NeuroImage, 2019.

S. M. Smith, D. Vidaurre, F. Alfaro-almagro, T. E. Nichols, and K. L. Miller, 885 Estimation of brain age delta from brain imaging, NeuroImage, vol.200, pp.528-539, 2019.

S. Sonkusare, M. Breakspear, and C. Guo, Naturalistic stimuli in neuroscience: 887 Critically acclaimed, Trends in cognitive sciences, vol.23, issue.8, pp.699-714, 2019.

S. S. Stevens, On the theory of scales of measurement, p.889, 1946.

C. Sudlow, J. Gallacher, N. Allen, V. Beral, P. Burton et al., , p.891

T. Sprosen, T. Peakman, C. , and R. , Uk biobank: An open access resource 892 for identifying the causes of a wide range of complex diseases of middle and old age, 893 PLOS Medicine, vol.12, issue.3, pp.1-10, 2015.

D. Szucs and J. P. Ioannidis, Empirical assessment of published effect sizes and 895 power in the recent cognitive neuroscience and psychology literature, PLoS biology, vol.896, issue.3, p.2000797, 2017.

A. Terracciano and P. T. Costa, Smoking and the five-factor model of personality, Addiction, vol.898, issue.4, pp.472-481, 2004.

P. Thompson, K. Hayashi, R. Dutton, M. Chiang, A. Leow et al., , p.900

J. Becker, O. Lopez, H. Aizenstein, and A. Toga, Tracking alzheimer's disease. 901, Annals of the New York Academy of Sciences, vol.1097, pp.183-214, 2007.

A. Topiwala, C. L. Allan, V. Valkanova, E. Zsoldos, N. Filippini et al., , p.903

P. Fooks, A. Singh-manoux, and C. E. Mackay, Moderate alcohol consumption 904 as risk factor for adverse brain outcomes and cognitive decline: longitudinal cohort study. 905 bmj, vol.357, p.2353, 2017.

P. Tyrer, G. M. Reed, C. , and M. J. , Classification, assessment, prevalence, 907 and effect of personality disorder, The Lancet, vol.385, issue.9969, pp.717-726, 2015.

G. Varoquaux, Cross-validation failure: Small sample sizes lead to large error bars, NeuroImage, vol.909, pp.68-77, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01545002

G. Varoquaux, F. Baronnet, A. Kleinschmidt, P. Fillard, and B. Thirion, Detection of 911 brain functional-connectivity difference in post-stroke patients using group-level covariance 912 modeling. Medical image computing and computer-assisted intervention: MICCAI, Inter-913 national Conference on Medical Image Computing and Computer-Assisted Intervention, vol.914, pp.200-208, 2010.

G. Varoquaux, P. R. Raamana, D. A. Engemann, A. Hoyos-idrobo, Y. Schwartz et al., Assessing and tuning brain decoders: Cross-validation, caveats, and 917 guidelines, NeuroImage, vol.145, pp.166-179, 2017.

G. Varoquaux, P. R. Raamana, D. A. Engemann, A. Hoyos-idrobo, Y. Schwartz et al., Assessing and tuning brain decoders: Cross-validation, caveats, and 920 guidelines, NeuroImage, pp.166-179, 2015.

M. Venkatesh, J. Jaja, and L. Pessoa, Capturing brain dynamics: latent spatiotem-922 poral patterns predict stimuli and individual differences, 2020.

T. Vukasovi? and D. Bratko, Heritability of personality: a meta-analysis of behavior 924 genetic studies, Psychological bulletin, vol.141, issue.4, p.769, 2015.

J. Wang, M. J. Knol, A. Tiulpin, F. Dubost, M. De-bruijne et al., , p.926

M. A. Ikram, W. J. Niessen, and G. V. Roshchupkin, Gray matter age prediction 927 as a biomarker for risk of dementia, Proceedings of the National Academy of Sciences, vol.928, pp.21213-21218, 2019.

H. Wickham, ggplot2: Elegant Graphics for Data Analysis, 2016.

C. Woo, L. J. Chang, M. A. Lindquist, and T. D. Wager, Building better biomark-932 ers: brain models in translational neuroimaging, Nature Neuroscience, vol.20, issue.3, pp.365-377, 2017.

T. Yarkoni, Neurobiological substrates of personality: A critical overview, vol.4, pp.61-83, 2015.

W. Youyou, M. Kosinski, and D. Stillwell, Computer-based personality judgments 936 are more accurate than those made by humans, Proceedings of the National Academy of 937 Sciences, vol.112, pp.1036-1040, 2015.