O. Alkoby, A. Abu-rmileh, and O. Shriki, Can we predict who will respond to neurofeedback? 3 A review of the inefficacy problem and existing predictors for successful EEG neurofeedback 4 learning, 2017.

M. Arns, J. M. Batail, and S. Bioulac, One of today's techniques in psychiatry? 6, Encephale, vol.2017, issue.2, pp.135-145

M. Arns, C. K. Conners, and H. C. Kraemer, A decade of EEG Theta/Beta Ratio Research in ADHD: a 8 meta-analysis, J Atten Disord, vol.2013, issue.5, pp.374-83

M. Arns, S. De-ridder, and U. Strehl, Efficacy of neurofeedback treatment in ADHD: the effects 10 on inattention, impulsivity and hyperactivity: a meta-analysis, Clin EEG Neurosci, vol.40, issue.3, pp.11-180, 2009.

M. Arns and U. Strehl, Evidence for efficacy of neurofeedback in ADHD?, Am J Psychiatry, issue.7, pp.799-800, 2013.

A. Bandura, Auto-efficacité : Le sentiment d'efficacité personnelle, p.15, 2007.

A. Brandmeyer, M. Sadakata, and L. Spyrou, Decoding of single-trial auditory mismatch 16 responses for online perceptual monitoring and neurofeedback, Front Neurosci, 2013.

C. M. Butefisch, B. C. Davis, and S. P. Wise, Mechanisms of use-dependent plasticity in the human 18 motor cortex, Proc Natl Acad Sci, issue.7, pp.3661-3666, 2000.

A. Buttfield, P. Ferrez, and J. Del-r-millan, owards a Robust BCI: Error Potentials and Online 20 Learning, EEE Trans. Neural Syst. Rehabil. Eng, vol.14, pp.164-68, 2006.

R. L. Cannon, H. E. Pigott, and T. Surmeli, The problem of patient heterogeneity and lack of 22 proper training in a study of EEG neurofeedback in children, J Clin Psychiatry, vol.75, issue.3, pp.23-289, 2014.

E. J. Cheon, B. H. Koo, and J. H. Choi, The Efficacy of Neurofeedback in Patients with Major Depressive 25 Disorder: An Open Labeled Prospective Study, Appl Psychophysiol Biofeedback, vol.2016, issue.1, pp.26-103

S. W. Choi, S. E. Chi, and S. Y. Chung, Is alpha wave neurofeedback effective with randomized 28 clinical trials in depression? A pilot study, Neuropsychobiology, vol.2011, issue.1, pp.43-51

K. L. Coburn, E. C. Lauterbach, and N. N. Boutros, The value of quantitative 30 electroencephalography in clinical psychiatry: a report by the Committee on, p.31

, American Neuropsychiatric Association. J Neuropsychiatry Clin Neurosci, vol.18, issue.4, pp.460-492, 2006.

S. Cortese, M. Ferrin, and D. Brandeis, Neurofeedback for Attention-Deficit/Hyperactivity 34 Disorder: Meta-Analysis of Clinical and Neuropsychological Outcomes From Randomized 35 Controlled Trials, J Am Acad Child Adolesc Psychiatry, vol.2016, issue.6, pp.444-55

B. N. Cuthbert, The RDoC framework: facilitating transition from ICD/DSM to dimensional 37 approaches that integrate neuroscience and psychopathology, World Psychiatry, issue.13, pp.38-66, 2014.

E. Dagenais, A. Leroux-boudreault, and G. El-baalbaki, Doubting the efficacy/effectiveness of 40 electroencephalographic neurofeedback in treating children with attention-41 deficit/hyperactivity disorder is as yet unjustified, J Clin Psychiatry, vol.42, issue.7, pp.778-787, 2014.

A. K. Engel, C. Gerloff, and C. C. Hilgetag, Intrinsic coupling modes: multiscale interactions in 43 ongoing brain activity, Neuron, vol.2016, issue.4, pp.867-86

H. J. Engelbregt, D. Keeser, and L. Van-eijk, Short and long-term effects of sham-controlled 45 prefrontal EEG-neurofeedback training in healthy subjects, Clin Neurophysiol, vol.127, issue.4, pp.46-1931, 2016.

S. Enriquez-geppert, R. J. Huster, and C. S. Herrmann, EEG-Neurofeedback as a Tool to Modulate 48 Cognition and Behavior: A Review Tutorial, Front Hum Neurosci, issue.11, p.51, 2017.

C. Escolano, M. Navarro-gil, and J. Garcia-campayo, A controlled study on the cognitive effect 1 of alpha neurofeedback training in patients with major depressive disorder, Front Behav, vol.2, issue.8, p.296, 2014.

M. Fouillen, E. Maby, L. Carrer, and L. , ERP-based BCI training for children with ADHD: 4 motivations and trial design. Proceeding 7th Int. Brain-Comput. Interface Conf, 2017.

T. Fovet, J. A. Micoulaud-franchi, and F. B. Vialatte, On assessing neurofeedback effects: should 6 double-blind replace neurophysiological mechanisms, Brain, vol.2017, issue.10, p.63

J. Frey, R. Gervais, and S. Fleck, Teegi: tangible EEG interface, Proceedings of the 27th annual 8 ACM symposium on User interface software and technology, pp.301-309, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01025621

J. Fruitet, A. Carpentier, and R. Munos, Automatic motor task selection via a bandit algorithm 10 for a brain-controlled button, J Neural Eng, vol.2013, issue.10, p.16012

A. Gaume, A. Vialatte, and A. Mora-sánchez, A psychoengineering paradigm for the 12 neurocognitive mechanisms of biofeedback and neurofeedback, Neurosci Biobehav Rev, vol.13, 2016.

H. Gevensleben, A. Rothenberger, and G. H. Moll, Neurofeedback in children with ADHD: 15 validation and challenges, Expert Rev Neurother, vol.2012, issue.4, pp.447-60

J. Ghaziri, A. Tucholka, and V. Larue, Neurofeedback training induces changes in white and 17 gray matter, Clin EEG Neurosci, vol.2013, issue.4, pp.265-72

S. Halder, B. Varkuti, and M. Bogdan, Prediction of brain-computer interface aptitude from 19 individual brain structure, Front Hum Neurosci, issue.7, p.105, 2013.

U. Hegerl and T. Hensch, The vigilance regulation model of affective disorders and ADHD

, Neurosci Biobehav Rev, vol.44, pp.45-57, 2012.

S. R. Heilbronner and B. Y. Hayden, Dorsal Anterior Cingulate Cortex: A Bottom-Up View, Annu Rev, vol.23, pp.149-70, 2016.

T. Insel, B. Cuthbert, and M. Garvey, Research domain criteria (RDoC): toward a new 25 classification framework for research on mental disorders, Am J Psychiatry, issue.7, pp.26-748, 2010.

C. Jeunet, B. Glize, and A. Mcgonigal, Using EEG-based brain computer interface and 28 neurofeedback targeting sensorimotor rhythms to improve motor skills: Theoretical 29 background, applications and prospects, Neurophysiol Clin, 2018.

C. Jeunet, E. Jahanpour, and L. F. , Why Standard Brain-Computer Interface (BCI) Training 31

, Protocols Should be Changed: An Experimental Study, Journal of Neural Engineering, issue.13, p.32, 2016.

C. Jeunet, L. F. Batail, and J. , How to improve clinical neurofeedback using a human-34 factor centered standpoint? A short review of the insights provided by the literature on BCI. 35 Neuroscience In revision

C. Jeunet, F. Lotte, and J. M. Batail, Using Recent BCI Literature to Deepen our Understanding 37 of Clinical Neurofeedback: A Short Review, Neuroscience, vol.378, pp.225-233, 2018.

C. Jeunet, N. 'kaoua, B. , and L. F. , Advances in user-training for mental-imagery-based BCI control: 39 Psychological and cognitive factors and their neural correlates, Prog Brain Res, vol.228, pp.3-40, 2016.

R. Johnson, Scalp-recorded P300 activity in patients following unilateral temporal 42 lobectomy, Brain, vol.1988, pp.1517-1546

S. J. Johnstone, R. J. Barry, and A. R. Clarke, Ten years on: a follow-up review of ERP research in 44 attention-deficit/hyperactivity disorder, Clin Neurophysiol, vol.2013, issue.4, pp.644-57

J. Kamiya, Biofeedback training in voluntary control of EEG alpha rhythms, Calif Med, vol.115, issue.3, p.44, 1971.

R. C. Kluetsch, R. T. Theberge, and J. , Plastic modulation of PTSD resting-state networks and 48 subjective wellbeing by EEG neurofeedback, Acta Psychiatr Scand, vol.130, issue.2, pp.123-159, 2014.

A. Kubler, A. Furdea, and S. Halder, A brain-computer interface controlled auditory event-50 related potential (p300) spelling system for locked-in patients, Ann N Y Acad Sci, pp.51-90, 1157.

J. Levesque, M. Beauregard, and B. Mensour, Effect of neurofeedback training on the neural 1 substrates of selective attention in children with attention-deficit/hyperactivity disorder: a 2 functional magnetic resonance imaging study, Neurosci Lett, vol.394, issue.3, pp.216-237, 2006.

D. E. Linden, Neurofeedback and networks of depression, Dialogues Clin Neurosci, vol.2014, issue.1, pp.4-103

F. Lotte, L. Bougrain, and A. Cichocki, A review of classification algorithms for EEG-based 6 brain-computer interfaces: a 10 year update, Journal of neural engineering, vol.2018, issue.3, p.31005

F. Lotte, J. Faller, and C. Guger, Combining BCI with virtual reality: towards new applications 9 and improved BCI, Towards Practical Brain-Computer Interfaces, vol.2012, pp.197-220

F. Lotte and C. Jeunet, Defining and quantifying users' mental imagery-based BCI skills: a first step. 11, Journal of neural engineering, vol.2018, issue.4, p.46030
URL : https://hal.archives-ouvertes.fr/hal-01846434

F. Lotte, C. Jeunet, and J. Mladenovic, A BCI challenge for the signal processing community: 13 considering the user in the loop. IET Book 'Signal Processing and Machine Learning for Brain-14 Machine Interfaces, 2018.

F. Lotte, F. Larrue, and C. Muhl, Flaws in current human training protocols for spontaneous Brain-16

, Computer Interfaces: lessons learned from instructional design, Front Hum Neurosci, pp.7-17, 2013.

E. Maby, M. Perrin, and O. Bertrand, BCI Could Make Old Two-Player Games Even More Fun: 19 A Proof of Concept with, Connect Four". . Adv. Hum.-Comput. Interact, vol.2012, pp.1-8

M. Mano, A. Lecuyer, and E. Bannier, How to Build a Hybrid Neurofeedback Platform 21 Combining EEG and fMRI, Front Neurosci, issue.11, p.140, 2017.

J. Mattout, M. Perrin, and O. Bertrand, Improving BCI performance through co-adaptation: 23 applications to the P300-speller, Ann Phys Rehabil Med, vol.2015, issue.1, pp.23-31

D. J. Mcfarland, W. A. Sarnacki, and J. R. Wolpaw, Electroencephalographic (EEG) control of three-25 dimensional movement, J Neural Eng, vol.2010, issue.3, p.36007

D. Mehler, M. O. Sokunbi, and I. Habes, Targeting the affective brain-a randomized 27 controlled trial of real-time fMRI neurofeedback in patients with depression, Neuropsychopharmacology, vol.28, issue.13, pp.2578-2585, 2018.

M. Franchi, J. Geoffroy, P. Fond, and G. , EEG Neurofeedback treatments in children 30 with ADHD: An updated meta-analysis of Randomized Controlled Trials. Front Hum Neurosc, vol.31, 2014.

M. Franchi, J. A. , and P. O. Neurofeedback, Vion Dury J, p.33

J. A. Franchi, Neurophysiologie clinique en psychiatrie, p.212, 2015.

J. A. Micoulaud-franchi and T. Fovet, Neurofeedback: time needed for a promising non-36 pharmacological therapeutic method, Lancet Psychiatry, vol.2016, issue.9, p.16

J. A. Micoulaud-franchi, A. Mcgonigal, and R. Lopez, Electroencephalographic neurofeedback: 38 Level of evidence in mental and brain disorders and suggestions for good clinical practice, Neurophysiol Clin, vol.39, issue.6, pp.423-456, 2015.

J. Mladenovic, J. Frey, and M. Bonnet-save, The Impact of Flow in an EEG-based Brain 41 Computer Interface. 7th International Graz BCI Conference, 2017.

J. Mladenovic, J. Mattout, and L. F. , A Generic Framework for EEG based BCI training and 43 operation. BCI Handbook: Technological and Theoretical Advances, 2917.

S. Olbrich, C. Mulert, and S. Karch, EEG-vigilance and BOLD effect during simultaneous 45 EEG/fMRI measurement, Neuroimage, issue.2, pp.319-351, 2009.

M. Papoutsi, N. Weiskopf, and D. Langbehn, Stimulating neural plasticity with real-time fMRI 47 neurofeedback in Huntington's disease: A proof of concept study, Hum Brain Mapp, issue.3, pp.1339-1353, 2018.

L. Perronnet, A. Lecuyer, and M. Mano, Unimodal Versus Bimodal EEG-fMRI Neurofeedback 50 of a Motor Imagery Task, Front Hum Neurosci, issue.11, p.193, 2017.

L. Pillette, C. Jeunet, and B. Mansencal, PEANUT: Personalised Emotional Agent for 1 Neurotechnology User-Training, 7th International BCI Conference, 2017.

J. Polich, Updating P300: an integrative theory of P3a and P3b, Clin Neurophysiol, vol.3, issue.118, pp.2128-2176, 2007.

G. Rayner, G. Jackson, and S. Wilson, Cognition-related brain networks underpin the symptoms of 5 unipolar depression: Evidence from a systematic review, Neurosci Biobehav Rev, pp.61-67, 2016.

A. Rémond and A. Rémond, Biofeedback : principes et applications, 1997.

T. Ros, B. Jb, and R. A. Lanius, Tuning pathological brain oscillations with neurofeedback: a 9 systems neuroscience framework, Front Hum Neurosci, issue.8, p.1008, 2014.

T. Ros, B. Jb, and R. A. Lanius, Tuning pathological brain oscillations with neurofeedback: a 11 systems neuroscience framework, Front Hum Neurosci, issue.8, p.1008, 2016.

T. Ros, M. A. Munneke, and D. Ruge, Endogenous control of waking brain rhythms induces 13 neuroplasticity in humans, Eur J Neurosci, issue.4, pp.770-778, 2010.

T. Ros, J. Theberge, and P. A. Frewen, Mind over chatter: plastic up-regulation of the fMRI 15 salience network directly after EEG neurofeedback, Neuroimage, vol.65, pp.324-359, 2013.

J. B. Savitz, S. L. Rauch, and W. C. Drevets, Clinical application of brain imaging for the diagnosis of 17 mood disorders: the current state of play, Mol Psychiatry, vol.2013, issue.5, pp.528-567

J. Seifert, P. Scheuerpflug, and K. E. Zillessen, Electrophysiological investigation of the 19 effectiveness of methylphenidate in children with and without ADHD, J Neural Transm, vol.20, issue.7, pp.821-830, 2003.

L. H. Sherlin, M. Arns, and J. Lubar, Neurofeedback and basic lerning therory: implications for 22 research and practice, Journal of Neurotherapy, vol.15, issue.4, pp.292-304, 2011.

R. Sitaram, R. T. Stoeckel, and L. , Closed-loop brain training: the science of neurofeedback

, Nat Rev Neurosci, vol.2016, issue.2, pp.86-100

E. Sonuga-barke, D. Brandeis, and S. Cortese, Response to Chronis-Tuscano et al. and Arns 26 and Strehl, Am J Psychiatry, vol.2013, issue.7, pp.800-802

E. J. Sonuga-barke, D. Brandeis, and S. Cortese, Nonpharmacological interventions for ADHD: 28 systematic review and meta-analyses of randomized controlled trials of dietary and 29 psychological treatments, Am J Psychiatry, vol.2013, issue.3, pp.275-89

M. B. Sterman, R. C. Howe, and L. R. Macdonald, Facilitation of spindle-burst sleep by conditioning of 31 electroencephalographic activity while awake, Science, vol.1970, issue.3921, p.167

U. Strehl, What learning theories can teach us in designing neurofeedback treatments. Front 33 Hum Neurosci, vol.8, p.894, 2014.

R. T. Thibault and A. Raz, Neurofeedback: the power of psychosocial therapeutics, Psychiatry, vol.35, issue.11, p.18

R. T. Thibault and A. Raz, When can neurofeedback join the clinical armamentarium?, Psychiatry, vol.37, issue.6, pp.497-505

M. Van-dongen-boomsma, Dr van Dongen-Boomsma replies, J Clin Psychiatry, vol.2014, issue.7, pp.39-779

M. Van-dongen-boomsma, M. A. Vollebregt, and D. Slaats-willemse, Dr van Dongen-Boomsma 41 and colleagues reply, J Clin Psychiatry, vol.75, issue.3, p.290, 2014.

C. Vidaurre, C. Sannelli, and K. R. Müller, Co-adaptive calibration to improve BCI efficiency, Journal of neural engineering, vol.43, issue.2, p.25009

J. Vion-dury, C. Balzani, and M. Cermolaccce, Modalités d'acquisition et d'analyse du signal EEG, p.45

, Neurophysiologie clinique en psychiatrie, vol.46, 2015.

M. A. Vollebregt, M. Van-dongen-boomsma, and D. Slaats-willemse, What future research 48 should bring to help resolving the debate about the efficacy of EEG-neurofeedback in 49 children with ADHD, Front Hum Neurosci, issue.8, p.321, 2014.

M. Witte, S. E. Kober, and M. Ninaus, Control beliefs can predict the ability to up-regulate 51 sensorimotor rhythm during neurofeedback training, Front Hum Neurosci, 2013.

J. R. Wolpaw, N. Birbaumer, and D. J. Mcfarland, Brain-computer interfaces for communication 1 and control, Clin Neurophysiol, issue.6, pp.767-91, 2002.

G. F. Woodman, A brief introduction to the use of event-related potentials in studies of 3 perception and attention, Atten Percept Psychophys, vol.2010, issue.8, pp.2031-2077

K. D. Young, G. J. Siegle, and V. Zotev, Randomized Clinical Trial of Real-Time fMRI Amygdala 5 Neurofeedback for Major Depressive Disorder: Effects on Symptoms and Autobiographical 6 Memory Recall, Am J Psychiatry, vol.2017, issue.8, pp.748-755

K. D. Young, V. Zotev, and R. Phillips, Real-time FMRI neurofeedback training of amygdala 8 activity in patients with major depressive disorder, PLoS One, vol.2014, issue.2, p.88785

C. Zich, S. Debener, and C. Schweinitz, High-Intensity Chronic Stroke Motor Imagery 10

, Neurofeedback Training at Home: Three Case Reports, Clin EEG Neurosci, vol.2017, issue.6, pp.403-414

B. Zoefel, R. J. Huster, and C. S. Herrmann, Neurofeedback training of the upper alpha frequency band 13 in EEG improves cognitive performance, Neuroimage, vol.2011, issue.2, pp.1427-1458

V. Zotev, R. Phillips, and H. Yuan, Self-regulation of human brain activity using simultaneous 15 real-time fMRI and EEG neurofeedback, Neuroimage, vol.3, pp.985-95, 2014.

V. Zotev, H. Yuan, and M. Misaki, Correlation between amygdala BOLD activity and frontal 17 EEG asymmetry during real-time fMRI neurofeedback training in patients with depression, Neuroimage Clin, vol.18, pp.224-262, 2016.

A. Zuberer, D. Drandeis, and R. Drechsler, Are treatment effects of neurofeedback training in 20 children with ADHD related to the successful regulation of brain activity? A review on the 21 learning of regulation of brain activity and a contribution to the discussion on specificity. 22 Front Hum Neurosc, 2015.