A. Abraham, M. P. Milham, A. Di-martino, R. C. Craddock, D. Samaras et al., Deriving reproducible biomarkers from multi-site resting-state data: An Autism-based example, Neuroimage, vol.147, pp.736-745, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01398867

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

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

A. Aleman and R. S. Kahn, Strange feelings: do amygdala abnormalities dysregulate the emotional brain in schizophrenia?, Progress in Neurobiology, vol.77, issue.5, pp.283-298, 2005.

P. Allen, G. Modinos, D. Hubl, G. Shields, A. Cachia et al.,

R. Hoffman, Neuroimaging auditory hallucinations in schizophrenia: from neuroanatomy to neurochemistry and beyond, Schizophrenia Bulletin, vol.38, issue.4, pp.695-703, 2012.

B. Ansoleaga, P. Garcia-esparcia, R. Pinacho, J. M. Haro, B. Ramos et al., Decrease in olfactory and taste receptor expression in the dorsolateral prefrontal cortex in chronic schizophrenia, Journal of Psychiatric Research, vol.60, pp.109-116, 2015.

M. R. Arbabshirani, S. Plis, J. Sui, and V. D. Calhoun, Single subject prediction of brain disorders in neuroimaging: Promises and pitfalls, Neuroimage, vol.145, pp.137-165, 2017.

M. Ardizzi, M. Ambrosecchia, L. Buratta, F. Ferri, M. Peciccia et al.,

V. Gallese, Interoception and Positive Symptoms in Schizophrenia. Frontiers in Human Neuroscience, p.10, 2016.

J. Ashburner and K. J. Friston, Unified segmentation, Neuroimage, vol.26, issue.3, pp.839-851, 2005.

C. Baethge, R. J. Baldessarini, K. Freudenthal, A. Streeruwitz, M. Bauer et al., Hallucinations in bipolar disorder: characteristics and comparison to unipolar depression and schizophrenia, Bipolar Disord, vol.7, issue.2, pp.136-145, 2005.

K. Balderston, P. Moberg, B. Turetsky, B. Palecanda, R. Doty et al., Deficits in regional taste sensitivity in patients with schizophrenia, Schizophrenia Research, vol.60, issue.1, 2003.

E. Bora, M. Yucel, and C. Pantelis, Theory of mind impairment in schizophrenia: meta-analysis, Schizophrenia Research, vol.109, issue.1-3, pp.1-9, 2009.

H. Bossier, R. Seurinck, S. Kühn, T. Banaschewski, G. J. Barker et al.,

B. Moerkerke, The Influence of Study-Level Inference Models and Study Set Size on CoordinateBased fMRI Meta-Analyses, Frontiers in Neuroscience, issue.745, p.11, 2018.

D. L. Braff, Information processing and attention dysfunctions in schizophrenia, Schizophrenia Bulletin, vol.19, issue.2, pp.233-259, 1993.

L. Breiman, Stacked regressions, Machine Learning, vol.24, pp.49-64, 1996.

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

D. Bzdok and A. Meyer-lindenberg, Machine learning for precision psychiatry: Opportunites and challenges, Biological Psychiatry, issue.0, p.0, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01643933

D. Bzdok, G. Varoquaux, O. Grisel, M. Eickenberg, C. Poupon et al., Formal models of the network co-occurrence underlying mental operations, PLoS Computational Biology, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01338307

D. Bzdok and B. T. Yeo, Inference in the age of big data: Future perspectives on neuroscience, Neuroimage, vol.14, issue.155, pp.549-564, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01516891

V. D. Calhoun, T. Adali, G. D. Pearlson, and J. J. Pekar, A method for making group inferences from functional MRI data using independent component analysis, Human Brain Mapping, vol.14, issue.3, pp.140-151, 2001.

R. E. Carrión, D. Demmin, A. M. Auther, D. Mclaughlin, R. Olsen et al.,

B. A. Cornblatt, Duration of attenuated positive and negative symptoms in individuals at clinical high risk: Associations with risk of conversion to psychosis and functional outcome, Journal of Psychiatric Research, vol.81, pp.95-101, 2016.

X. J. Chai, A. N. Castanon, D. Ongur, and S. Whitfield-gabrieli, Anticorrelations in resting state networks without global signal regression, Neuroimage, vol.59, issue.2, pp.1420-1428, 2012.

F. J. Charlson, A. J. Ferrari, D. F. Santomauro, S. Diminic, E. Stockings et al.,

H. A. Whiteford, Global Epidemiology and Burden of Schizophrenia: Findings From the Global Burden of Disease Study, Schizophrenia Bulletin, pp.58-058, 2016.

A. M. Chekroud, C. E. Lane, and D. A. Ross, Computational Psychiatry: Embracing Uncertainty and Focusing on Individuals, Not Averages, vol.82, 2017.

C. Chennubhotla and A. Jepson, Sparse PCA. Extracting multi-scale structure from data. Paper presented at the Computer Vision, Eighth IEEE International Conference on, 2001.

H. Y. Chong, L. T. Siew, D. B. Wu, S. Kotirum, C. F. Chiou et al., Global economic burden of schizophrenia: a systematic review, Neuropsychiatric Disease and Treatment, vol.12, pp.357-373, 2016.

M. W. Cole, D. S. Bassett, J. D. Power, T. S. Braver, and S. E. Petersen, Intrinsic and taskevoked network architectures of the human brain, Neuron, vol.83, issue.1, pp.238-251, 2014.

F. H. Connolly and N. L. Gittleson, The relationship between delusions of sexual change and olfactory and gustatory hallucinations in schizophrenia, British Journal of Psychiatry, vol.119, issue.551, pp.443-444, 1971.

S. G. Costafreda, M. J. Brammer, A. S. David, and C. H. Fu, Predictors of amygdala activation during the processing of emotional stimuli: a meta-analysis of 385 PET and fMRI studies, Brain research reviews, vol.58, issue.1, pp.57-70, 2008.

S. M. Couture, D. L. Penn, and D. L. Roberts, The Functional Significance of Social Cognition in Schizophrenia: A Review, Schizophrenia Bulletin, vol.32, pp.44-63, 2006.

B. Curcic-blake, J. M. Ford, D. Hubl, N. D. Orlov, I. E. Sommer et al.,

A. Aleman, Interaction of language, auditory and memory brain networks in auditory verbal hallucinations, Progress in Neurobiology, vol.148, pp.1-20, 2017.

C. Dansereau, Y. Benhajali, C. Risterucci, E. M. Pich, P. Orban et al., Statistical power and prediction accuracy in multisite resting-state fMRI connectivity, Neuroimage, vol.149, pp.220-232, 2017.

C. De-la-fuente-sandoval, R. Favila, D. Gomez-martin, F. Pellicer, and A. Graff-guerrero, Functional magnetic resonance imaging response to experimental pain in drug-free patients with schizophrenia, Psychiatry Research, vol.183, issue.2, pp.99-104, 2010.

B. Derntl, A. Finkelmeyer, T. K. Toygar, A. Hulsmann, F. Schneider et al., Generalized deficit in all core components of empathy in schizophrenia, Schizophrenia Research, vol.108, issue.1-3, pp.197-206, 2009.

B. Derntl, A. Finkelmeyer, B. Voss, S. B. Eickhoff, T. Kellermann et al., Neural correlates of the core facets of empathy in schizophrenia, Schizophrenia Research, vol.136, issue.1-3, pp.70-81, 2012.

R. S. Dhindsa and D. B. Goldstein, From genetics to physiology at last, Nature, vol.530, pp.162-163, 2016.

W. E. Donath and A. J. Hofman, Lower bounds for the partitioning of graphs, IBM J. Res. Develop, vol.17, pp.420-425, 1973.

R. H. Dworkin, Pain insensitivity in schizophrenia: a neglected phenomenon and some implications, Schizophrenia Bulletin, vol.20, issue.2, pp.235-248, 1994.

B. Efron, Large-scale inference: empirical Bayes methods for estimation, testing, and prediction, vol.1, 2012.

B. Efron and R. J. Tibshirani, An introduction to the bootstrap, 1994.

S. B. Eickhoff, D. Bzdok, A. R. Laird, F. Kurth, and P. T. Fox, Activation likelihood estimation meta-analysis revisited, Neuroimage, vol.59, issue.3, pp.2349-2361, 2012.

S. B. Eickhoff and A. Etkin, Going Beyond Finding the "Lesion": A Path for Maturation of Neuroimaging, American Journal of Psychiatry, vol.173, issue.3, pp.302-303, 2016.

S. B. Eickhoff, A. R. Laird, C. Grefkes, L. E. Wang, K. Zilles et al., Coordinate-Based Activation Likelihood Estimation Meta-Analysis of Neuroimaging Data: A Random-Effects Approach Based on Empirical Estimates of Spatial Uncertainty, Hum Brain Mapp, vol.30, issue.9, pp.2907-2926, 2009.

S. B. Eickhoff, T. E. Nichols, A. R. Laird, F. Hoffstaedter, K. Amunts et al., Behavior, sensitivity, and power of activation likelihood estimation characterized by massive empirical simulation, Neuroimage, vol.137, pp.70-85, 2016.

S. B. Eickhoff, B. Thirion, G. Varoquaux, and D. Bzdok, Connectivity-based parcellation: Critique and implications, Human Brain Mapping, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01184563

E. Elert, Searching for schizophrenia's roots, Nature, vol.508, pp.2-3, 2014.

I. Ellison-wright, D. C. Glahn, A. R. Laird, S. M. Thelen, and E. Bullmore, The anatomy of firstepisode and chronic schizophrenia: an anatomical likelihood estimation meta-analysis, 2008.

, American Journal of Psychiatry, vol.165, issue.8, pp.1015-1023

M. A. Erickson, A. Ruffle, and J. M. Gold, A Meta-Analysis of Mismatch Negativity in Schizophrenia: From Clinical Risk to Disease Specificity and Progression, Biological Psychiatry, vol.79, issue.12, pp.980-987, 2016.

A. K. Fett, W. Viechtbauer, M. D. Dominguez, D. L. Penn, J. Van-os et al., The relationship between neurocognition and social cognition with functional outcomes in schizophrenia: a meta-analysis, Neuroscience and Biobehavioral Reviews, vol.35, issue.3, pp.573-588, 2011.

E. S. Finn, X. Shen, D. Scheinost, M. D. Rosenberg, J. Huang et al.,

R. T. Constable, Functional connectome fingerprinting: identifying individuals using patterns of brain connectivity, Nature Neuroscience, vol.18, issue.11, pp.1664-1671, 2015.

P. C. Fletcher and C. D. Frith, Perceiving is believing: a Bayesian approach to explaining the positive symptoms of schizophrenia, Nature Reviews Neuroscience, vol.10, issue.1, pp.48-58, 2009.

N. F. Forbes, L. A. Carrick, A. M. Mcintosh, and S. M. Lawrie, Working memory in schizophrenia: a meta-analysis, Psychological Medicine, vol.39, pp.889-905, 2009.

D. F. Fox and M. E. Raichle, Spontaneous fluctuations in brain activity observed with functional magnetic resonance imaging, Nature Reviews: Neuroscience, vol.8, pp.700-711, 2007.

P. T. Fox, A. R. Laird, S. P. Fox, P. M. Fox, A. M. Uecker et al.,

J. L. Lancaster, BrainMap taxonomy of experimental design: description and evaluation, Human Brain Mapping, vol.25, issue.1, pp.185-198, 2005.

P. T. Fox and J. L. Lancaster, Neuroscience on the net, Science, vol.266, pp.994-996, 1994.

P. T. Fox and J. L. Lancaster, Opinion: Mapping context and content: the BrainMap model, Nature Reviews: Neuroscience, vol.3, issue.4, pp.319-321, 2002.

J. D. Gabrieli, S. S. Ghosh, and S. Whitfield-gabrieli, Prediction as a humanitarian and pragmatic contribution from human cognitive neuroscience, Neuron, vol.85, issue.1, pp.11-26, 2015.

D. C. Glahn, A. R. Laird, I. Ellison-wright, S. M. Thelen, J. L. Robinson et al., Meta-analysis of gray matter anomalies in schizophrenia: application of anatomic likelihood estimation and network analysis, Biological Psychiatry, vol.64, issue.9, pp.774-781, 2008.

M. F. Glasser, T. Coalson, E. Robinson, C. Hacker, J. Harwell et al.,

M. Jenkinson, A Multi-modal parcellation of human cerebral cortex, Nature, 2015.

M. F. Green, C. E. Bearden, T. D. Cannon, A. P. Fiske, G. S. Hellemann et al.,

K. H. Nuechterlein, Social cognition in schizophrenia, Part 1: performance across phase of illness, Schizophrenia Bulletin, vol.38, issue.4, pp.854-864, 2012.

M. F. Green, W. P. Horan, and J. Lee, Social cognition in schizophrenia, Nature Reviews: Neuroscience, vol.16, issue.10, pp.620-631, 2015.

T. Hastie, R. Tibshirani, and J. Friedman, The Elements of Statistical Learning, 2001.

T. Hastie, R. Tibshirani, and J. Friedman, The Elements of Statistical Learning, 2009.

J. D. Hegarty, R. J. Baldessarini, M. Tohen, C. Waternaux, and G. Oepen, One hundred years of schizophrenia: a meta-analysis of the outcome literature, Am J Psychiatry, vol.151, issue.10, pp.1409-1416, 1994.

R. Honea, T. J. Crow, D. Passingham, and C. E. Mackay, Regional deficits in brain volume in schizophrenia: a meta-analysis of voxel-based morphometry studies, American Journal of Psychiatry, vol.162, issue.12, pp.2233-2245, 2005.

Q. J. Huys, T. V. Maia, and M. J. Frank, Computational psychiatry as a bridge from neuroscience to clinical applications, Nature Neuroscience, vol.19, issue.3, pp.404-413, 2016.

A. Hyvarinen, Fast and robust fixed-point algorithms for independent component analysis, IEEE transactions on Neural Networks, vol.10, issue.3, pp.626-634, 1999.

R. Jardri, A. Pouchet, D. Pins, and P. Thomas, Cortical activations during auditory verbal hallucinations in schizophrenia: a coordinate-based meta-analysis, American Journal of Psychiatry, vol.168, issue.1, pp.73-81, 2011.

D. C. Javitt, When doors of perception close: bottom-up models of disrupted cognition in schizophrenia, Annual Review of Clinical Psychology, vol.5, pp.249-275, 2009.

D. C. Javitt and R. Freedman, Sensory processing dysfunction in the personal experience and neuronal machinery of schizophrenia, American Journal of Psychiatry, vol.172, issue.1, pp.17-31, 2015.

D. C. Javitt and R. A. Sweet, Auditory dysfunction in schizophrenia: integrating clinical and basic features, Nature Reviews: Neuroscience, vol.16, issue.9, pp.535-550, 2015.

S. C. Johnson, Hierarchical clustering schemes, Psychometrika, vol.32, issue.3, pp.241-254, 1967.

N. Kanwisher, Functional specificity in the human brain: a window into the functional architecture of the mind, Proceedings of the National Academy of Sciences of the United States of America, vol.107, 2010.

S. S. Khalsa, R. Adolphs, O. G. Cameron, H. D. Critchley, P. W. Davenport et al.,

M. P. Paulus, Interoception and Mental Health: A Roadmap, Biological Psychiatry: Cognitive Neuroscience and Neuroimaging, 2017.

C. G. Kohler, J. B. Walker, E. A. Martin, K. M. Healey, and P. J. Moberg, Facial emotion perception in schizophrenia: a meta-analytic review, Schizophrenia Bulletin, vol.36, issue.5, pp.1009-1019, 2010.

M. Kuhn and K. Johnson, Applied predictive modeling, vol.26, 2013.

M. M. Kurtz and C. L. Richardson, Social cognitive training for schizophrenia: a meta-analytic investigation of controlled research, Schizophrenia Bulletin, vol.38, issue.5, pp.1092-1104, 2012.

A. R. Laird, S. B. Eickhoff, P. M. Fox, A. M. Uecker, K. L. Ray et al., The BrainMap Strategy for Standardization, Sharing, and Meta-Analysis of Neuroimaging Data, BMC Research Notes, vol.4, issue.1, p.349, 2011.

A. R. Laird, S. B. Eickhoff, F. Kurth, P. M. Fox, A. M. Uecker et al., ALE Meta-Analysis Workflows Via the Brainmap Database: Progress Towards A Probabilistic Functional Brain Atlas, Front Neuroinformatics, vol.3, p.23, 2009.

A. R. Laird, S. B. Eickhoff, K. Li, D. A. Robin, D. C. Glahn et al., Investigating the functional heterogeneity of the default mode network using coordinate-based meta-analytic modeling, Journal of Neuroscience, vol.29, issue.46, pp.14496-14505, 2009.

A. R. Laird, P. M. Fox, S. B. Eickhoff, J. A. Turner, K. L. Ray et al., Behavioral interpretations of intrinsic connectivity networks, Journal of Cognitive Neuroscience, vol.23, issue.12, pp.4022-4037, 2011.

J. Lee and S. Park, Working memory impairments in schizophrenia: a meta-analysis, Journal of Abnormal Psychology, vol.114, issue.4, pp.599-611, 2005.

K. E. Lewandowski, J. Depaola, G. B. Camsari, B. M. Cohen, and D. Ongur, Tactile, olfactory, and gustatory hallucinations in psychotic disorders: a descriptive study, Annals of the Academy of Medicine, vol.38, issue.5, pp.383-385, 2009.

H. Li, R. C. Chan, G. M. Mcalonan, and Q. Y. Gong, Facial emotion processing in schizophrenia: a meta-analysis of functional neuroimaging data, Schizophr Bull, vol.36, issue.5, pp.1029-1039, 2010.

A. Lim, H. W. Hoek, M. L. Deen, and J. D. Blom, Prevalence and classification of hallucinations in multiple sensory modalities in schizophrenia spectrum disorders, Schizophrenia Research, vol.176, issue.2-3, pp.493-499, 2016.

P. M. Llorca, B. Pereira, R. Jardri, I. Chereau-boudet, G. Brousse et al., Hallucinations in schizophrenia and Parkinson's disease: an analysis of sensory modalities involved and the repercussion on patients, Scientific Reports, p.6, 2016.
URL : https://hal.archives-ouvertes.fr/hal-02155254

S. Lloyd, Least squares quantization in PCM, IEEE Transactions on Information Theory, Technical reports, vol.28, pp.128-137, 1957.

G. Louppe, Understanding random forests: From theory to practice, 2014.

G. Louppe, L. Wehenkel, A. Sutera, and P. Geurts, Understanding variable importances in forests of randomized trees. Paper presented at the Advances in Neural Information Processing Systems, 2013.

H. Lu, Y. Zuo, H. Gu, J. A. Waltz, W. Zhan et al.,

E. A. Stein, Synchronized delta oscillations correlate with the resting-state functional MRI signal, Proceedings of the National Academy of Sciences of the United States of America, vol.104, pp.18265-18269, 2007.

S. Mccarthy-jones, D. Smailes, A. Corvin, M. Gill, D. W. Morris et al.,

R. Dudley, Occurrence and co-occurrence of hallucinations by modality in schizophrenia-spectrum disorders, Psychiatry Research, vol.252, pp.154-160, 2017.

A. Mccleery, J. Lee, A. P. Fiske, L. Ghermezi, J. N. Hayata et al.,

B. J. Knowlton, Longitudinal stability of social cognition in schizophrenia: A 5-year follow-up of social perception and emotion processing, Schizophrenia Research, vol.176, issue.2, pp.467-472, 2016.

J. Mcgrath, S. Saha, D. Chant, and J. Welham, Schizophrenia: a concise overview of incidence, prevalence, and mortality, Epidemiologic Reviews, vol.30, pp.67-76, 2008.

P. J. Moberg, C. Mcgue, S. J. Kanes, D. R. Roalf, C. C. Balderston et al., Phenylthiocarbamide (PTC) perception in patients with schizophrenia and firstdegree family members: relationship to clinical symptomatology and psychophysical olfactory performance, Schizophrenia Research, vol.90, issue.1-3, pp.221-228, 2007.

P. J. Moberg, D. R. Roalf, C. C. Balderston, S. J. Kanes, R. E. Gur et al., Phenylthiocarbamide perception in patients with schizophrenia and first-degree family members, American Journal of Psychiatry, vol.162, issue.4, 2005.

G. Modinos, S. G. Costafreda, M. J. Van-tol, P. K. Mcguire, A. Aleman et al., Neuroanatomy of auditory verbal hallucinations in schizophrenia: a quantitative metaanalysis of voxel-based morphometry studies, Cortex, vol.49, issue.4, pp.1046-1055, 2013.

K. Murphy, R. M. Birn, D. A. Handwerker, T. B. Jones, and P. A. Bandettini, The impact of global signal regression on resting state correlations: are anti-correlated networks introduced?, Neuroimage, vol.44, issue.3, pp.893-905, 2009.

C. Namiki, K. Hirao, M. Yamada, T. Hanakawa, H. Fukuyama et al., Impaired facial emotion recognition and reduced amygdalar volume in schizophrenia, Psychiatry Research, vol.156, issue.1, pp.23-32, 2007.

L. Nanetti, L. Cerliani, V. Gazzola, R. Renken, and C. Keysers, Group analyses of connectivitybased cortical parcellation using repeated k-means clustering, Neuroimage, vol.47, issue.4, pp.1666-1677, 2009.

S. M. Nelson, N. U. Dosenbach, A. L. Cohen, M. E. Wheeler, B. L. Schlaggar et al., Role of the anterior insula in task-level control and focal attention, Brain Struct Funct, vol.214, issue.5-6, pp.669-680, 2010.

J. A. Nielsen, B. A. Zielinski, P. T. Fletcher, A. L. Alexander, N. Lange et al.,

J. S. Anderson, Multisite functional connectivity MRI classification of autism: ABIDE results, Frontiers in Human Neuroscience, vol.7, 2013.

K. N. Ochsner, The social-emotional processing stream: five core constructs and their translational potential for schizophrenia and beyond, Biol Psychiatry, vol.64, issue.1, pp.48-61, 2008.

M. A. Oquendo, E. Baca-garcia, A. Artes-rodriguez, F. Perez-cruz, H. C. Galfalvy et al., Machine learning and data mining: strategies for hypothesis generation, Molecular Psychiatry, vol.17, issue.10, pp.956-959, 2012.

A. P. Owens, M. Allen, S. Ondobaka, and K. J. Friston, Interoceptive inference: From computational neuroscience to clinic, Neuroscience and Biobehavioral Reviews, vol.90, pp.174-183, 2018.

R. E. Passingham, K. E. Stephan, and R. Kotter, The anatomical basis of functional localization in the cortex, Nature Reviews: Neuroscience, vol.3, issue.8, pp.606-616, 2002.

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

V. Dubourg, Scikit-learn: Machine learning in Python, Journal of machine learning research, vol.12, pp.2825-2830, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00650905

R. A. Poldrack and T. Yarkoni, From Brain Maps to Cognitive Ontologies: Informatics and the Search for Mental Structure, Annu Rev Psychol, vol.67, pp.587-612, 2016.

A. J. Rissling and G. A. Light, Neurophysiological measures of sensory registration, stimulus discrimination, and selection in schizophrenia patients, Behavioral neurobiology of schizophrenia and its treatment, pp.283-309, 2010.

T. D. Satterthwaite, M. A. Elliott, R. T. Gerraty, K. Ruparel, J. Loughead et al., An improved framework for confound regression and filtering for control of motion artifact in the preprocessing of resting-state functional connectivity data, Neuroimage, vol.64, pp.240-256, 2013.

G. N. Savla, L. Vella, C. C. Armstrong, D. L. Penn, and E. W. Twamley, Deficits in domains of social cognition in schizophrenia: a meta-analysis of the empirical evidence, Schizophrenia Bulletin, vol.39, issue.5, pp.979-992, 2013.

F. Schneider, U. Habel, M. Reske, T. Kellermann, T. Stocker et al.,

W. Gaebel, Neural correlates of working memory dysfunction in first-episode schizophrenia patients: an fMRI multi-center study, Schizophrenia Research, vol.89, issue.1-3, pp.198-210, 2007.

J. Shlens, To explain or to predict? Statistical science, pp.289-310, 2010.

R. F. Silva, E. Castro, C. N. Gupta, M. Cetin, M. Arbabshirani et al.,

V. D. Calhoun, The tenth annual MLSP competition: schizophrenia classification challenge. Paper presented at the Machine Learning for Signal Processing (MLSP), IEEE International Workshop on, 2014.

S. M. Smith, P. T. Fox, K. L. Miller, D. C. Glahn, P. M. Fox et al.,

C. F. Beckmann, Correspondence of the brain's functional architecture during activation and rest, vol.106, pp.13040-13045, 2009.

O. Sporns, Contributions and challenges for network models in cognitive neuroscience, Nature Neuroscience, vol.17, issue.5, pp.652-660, 2014.

K. E. Stephan, F. Schlagenhauf, Q. J. Huys, S. Raman, E. A. Aponte et al., Computational neuroimaging strategies for single patient predictions, Neuroimage, 2017.

M. Stone, Cross-validatory choice and assessment of statistical predictions, Journal of the royal statistical society. Series B (Methodological, pp.111-147, 1974.

M. Stone, Cross-validation: A review, Statistics: A Journal of Theoretical and Applied Statistics, vol.9, issue.1, pp.127-139, 1978.

B. Stubbs, A. J. Mitchell, M. De-hert, C. U. Correll, A. Soundy et al., The prevalence and moderators of clinical pain in people with schizophrenia: a systematic review and large scale meta-analysis, Schizophrenia Research, vol.160, issue.1-3, pp.1-8, 2014.

B. Stubbs, T. Thompson, S. Acaster, D. Vancampfort, F. Gaughran et al., Decreased pain sensitivity among people with schizophrenia: a meta-analysis of experimental pain induction studies, Pain, vol.156, issue.11, pp.2121-2131, 2015.

P. F. Sullivan, Schizophrenia as a pathway disease, Nature Medicine, vol.18, pp.210-211, 2012.

R. Tandon, W. Gaebel, D. M. Barch, J. Bustillo, R. E. Gur et al., Definition and description of schizophrenia in the DSM-5, Schizophrenia Research, vol.150, issue.1, pp.3-10, 2013.

I. Tavor, O. Parker-jones, R. B. Mars, S. M. Smith, T. E. Behrens et al., Task-free MRI predicts individual differences in brain activity during task performance, Science, vol.352, issue.6282, pp.216-220, 2016.

S. F. Taylor, J. Kang, I. S. Brege, I. F. Tso, A. Hosanagar et al., Meta-analysis of functional neuroimaging studies of emotion perception and experience in schizophrenia, Biological Psychiatry, vol.71, issue.2, pp.136-145, 2012.

B. Thirion, G. Varoquaux, E. Dohmatob, and J. B. Poline, Which fMRI clustering gives good brain parcellations? Frontiers in Neuroscience, vol.8, p.167, 2014.

M. L. Thomas, M. F. Green, G. Hellemann, C. A. Sugar, M. Tarasenko et al., Modeling Deficits From Early Auditory Information Processing to Psychosocial Functioning in Schizophrenia, JAMA psychiatry, vol.74, issue.1, pp.37-46, 2017.

P. Thomas, P. Mathur, . Gottesman, . Ii, R. Nagpal et al., Correlates of hallucinations in schizophrenia: A cross-cultural evaluation, Schizophrenia Research, vol.92, issue.1-3, pp.41-49, 2007.
URL : https://hal.archives-ouvertes.fr/hal-00337144

H. Tost and A. Meyer-lindenberg, Puzzling over schizophrenia: Schizophrenia, social environment and the brain, Nature Medicine, vol.18, issue.2, pp.211-213, 2012.

P. E. Turkeltaub, S. B. Eickhoff, A. R. Laird, M. Fox, M. Wiener et al., Minimizing withinexperiment and within-group effects in Activation Likelihood Estimation meta-analyses, Human Brain Mapping, vol.33, issue.1, pp.1-13, 2012.

D. Umbricht and S. Krljes, Mismatch negativity in schizophrenia: a meta-analysis, Schizophrenia Research, vol.76, issue.1, pp.1-23, 2005.

D. C. Van-essen, C. H. Anderson, and D. J. Felleman, Information processing in the primate visual system: an integrated systems perspective, Science, vol.255, issue.5043, pp.419-423, 1992.

U. Van-luxburg, A tutorial on spectral clustering, Statistics and Computing, vol.17, pp.395-416, 2007.

F. Waters, D. Collerton, D. H. Ffytche, R. Jardri, D. Pins et al., Visual Hallucinations in the Psychosis Spectrum and Comparative Information From Neurodegenerative Disorders and Eye Disease, Schizophrenia Bulletin, vol.40, 2014.

D. R. Weinberger and E. Radulescu, Finding the elusive psychiatric "lesion" with 21st-century neuroanatomy: a note of caution, American Journal of Psychiatry, vol.173, issue.1, pp.27-33, 2016.

A. M. Winkler, G. R. Ridgway, G. Douaud, T. E. Nichols, and S. M. Smith, Faster permutation inference in brain imaging, In Neuroimage, vol.141, pp.502-516, 2016.

H. U. Wittchen, F. Jacobi, J. Rehm, A. Gustavsson, M. Svensson et al.,

H. C. Steinhausen, The size and burden of mental disorders and other disorders of the brain in Europe, European Neuropsychopharmacology, vol.21, pp.655-679, 2010.

D. H. Wolpert, Stacked generalization, Neural Networks, vol.5, issue.2, pp.241-260, 1992.

T. Yarkoni, R. A. Poldrack, T. E. Nichols, D. C. Van-essen, and T. D. Wager, Large-scale automated synthesis of human functional neuroimaging data, Nat Methods, vol.8, issue.8, pp.665-670, 2011.

C. J. Yeh, Y. S. Tseng, Y. R. Lin, S. Y. Tsai, and T. Y. Huang, Resting-state functional magnetic resonance imaging: the impact of regression analysis, Journal of Neuroimaging, vol.25, issue.1, pp.117-123, 2015.

H. Zou, T. Hastie, and R. Tibshirani, validity of our approach. Brain maps were smoothed (FWHM = 6mmm) and thresholded for display, All results are based on combined sMRI and fMRI data, vol.15, pp.265-286, 2006.