A subject-independent pattern-based Brain-Computer Interface

While earlier Brain-Computer Interface (BCI) studies have mostly focused on modulating specific brain regions or signals, new developments in pattern classification of brain states are enabling real-time decoding and modulation of an entire functional network. The present study proposes a new method for real-time pattern classification and neurofeedback of brain states from electroencephalographic (EEG) signals. It involves the creation of a fused classification model based on the method of Common Spatial Patterns (CSPs) from data of several healthy individuals. The subject-independent model is then used to classify EEG data in real-time and provide feedback to new individuals. In a series of offline experiments involving training and testing of the classifier with individual data from 27 healthy subjects, a mean classification accuracy of 75.30% was achieved, demonstrating that the classification system at hand can reliably decode two types of imagery used in our experiments, i.e., happy emotional imagery and motor imagery. In a subsequent experiment it is shown that the classifier can be used to provide neurofeedback to new subjects, and that these subjects learn to “match” their brain pattern to that of the fused classification model in a few days of neurofeedback training. This finding can have important implications for future studies on neurofeedback and its clinical applications on neuropsychiatric disorders.

[1]  Thomas M. Cover,et al.  Elements of Information Theory , 2005 .

[2]  Z J Koles,et al.  The quantitative extraction and topographic mapping of the abnormal components in the clinical EEG. , 1991, Electroencephalography and clinical neurophysiology.

[3]  P. Lang International Affective Picture System (IAPS) : Technical Manual and Affective Ratings , 1995 .

[4]  Bernhard Schölkopf,et al.  Support vector learning , 1997 .

[5]  B. Schölkopf,et al.  Advances in kernel methods: support vector learning , 1999 .

[6]  G. Pfurtscheller,et al.  Designing optimal spatial filters for single-trial EEG classification in a movement task , 1999, Clinical Neurophysiology.

[7]  J Gruzelier,et al.  Learned control of slow potential interhemispheric asymmetry in schizophrenia. , 1998, International journal of psychophysiology : official journal of the International Organization of Psychophysiology.

[8]  G. Pfurtscheller,et al.  Optimal spatial filtering of single trial EEG during imagined hand movement. , 2000, IEEE transactions on rehabilitation engineering : a publication of the IEEE Engineering in Medicine and Biology Society.

[9]  G Pfurtscheller,et al.  Real-time EEG analysis with subject-specific spatial patterns for a brain-computer interface (BCI). , 2000, IEEE transactions on rehabilitation engineering : a publication of the IEEE Engineering in Medicine and Biology Society.

[10]  K. Luan Phan,et al.  Functional Neuroanatomy of Emotion: A Meta-Analysis of Emotion Activation Studies in PET and fMRI , 2002, NeuroImage.

[11]  David D. Cox,et al.  Functional magnetic resonance imaging (fMRI) “brain reading”: detecting and classifying distributed patterns of fMRI activity in human visual cortex , 2003, NeuroImage.

[12]  Kevin N. Ochsner,et al.  For better or for worse: neural systems supporting the cognitive down- and up-regulation of negative emotion , 2004, NeuroImage.

[13]  N. Birbaumer,et al.  BCI2000: a general-purpose brain-computer interface (BCI) system , 2004, IEEE Transactions on Biomedical Engineering.

[14]  Stephen C. Strother,et al.  Support vector machines for temporal classification of block design fMRI data , 2005, NeuroImage.

[15]  Michael S. Lazar,et al.  Spatial patterns underlying population differences in the background EEG , 2005, Brain Topography.

[16]  Pavel Pudil,et al.  Introduction to Statistical Pattern Recognition , 2006 .

[17]  N. Birbaumer,et al.  Self-regulation of Slow Cortical Potentials: A New Treatment for Children With Attention-Deficit/Hyperactivity Disorder , 2006, Pediatrics.

[18]  Yul-Wan Sung,et al.  Functional magnetic resonance imaging , 2004, Scholarpedia.

[19]  K.-R. Muller,et al.  Optimizing Spatial filters for Robust EEG Single-Trial Analysis , 2008, IEEE Signal Processing Magazine.

[20]  Cuntai Guan,et al.  Filter Bank Common Spatial Pattern (FBCSP) in Brain-Computer Interface , 2008, 2008 IEEE International Joint Conference on Neural Networks (IEEE World Congress on Computational Intelligence).

[21]  S. Patten,et al.  Canadian Network for Mood and Anxiety Treatments (CANMAT) Clinical guidelines for the management of major depressive disorder in adults. V. Complementary and alternative medicine treatments. , 2009, Journal of affective disorders.

[22]  S. Ruiz,et al.  The Aberrant Connectivity Hypothesis in Schizophrenia , 2009 .

[23]  S. Patten,et al.  Canadian Network for Mood and Anxiety Treatments (CANMAT) clinical guidelines for the management of major depressive disorder in adults. Introduction. , 2009, Journal of affective disorders.

[24]  Douglas C. Noll,et al.  Support vector machine classification of complex fMRI data , 2009, 2009 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[25]  Cuntai Guan,et al.  Unsupervised Brain Computer Interface Based on Intersubject Information and Online Adaptation , 2009, IEEE Transactions on Neural Systems and Rehabilitation Engineering.

[26]  Klaus-Robert Müller,et al.  Subject-independent mental state classification in single trials , 2009, Neural Networks.

[27]  Z. Segal,et al.  Canadian Network for Mood and Anxiety Treatments (CANMAT) clinical guidelines for the management of major depressive disorder in adults. II. Psychotherapy alone or in combination with antidepressant medication. , 2009, Journal of affective disorders.

[28]  S. Patten,et al.  Canadian Network for Mood and Anxiety Treatments (CANMAT) clinical guidelines for the management of major depressive disorder in adults. III. Pharmacotherapy. , 2009, Journal of affective disorders.

[29]  S. Patten,et al.  Canadian Network for Mood and Anxiety Treatments (CANMAT) clinical guidelines for the management of major depressive disorder in adults. Introduction. , 2009, Journal of affective disorders.

[30]  Sun-Yong Chung,et al.  Is Alpha Wave Neurofeedback Effective with Randomized Clinical Trials in Depression? A Pilot Study , 2010, Neuropsychobiology.

[31]  L. Shah,et al.  Functional magnetic resonance imaging. , 2010, Seminars in roentgenology.

[32]  Niels Birbaumer,et al.  Real-time support vector classification and feedback of multiple emotional brain states , 2011, NeuroImage.

[33]  Robert Oostenveld,et al.  FieldTrip: Open Source Software for Advanced Analysis of MEG, EEG, and Invasive Electrophysiological Data , 2010, Comput. Intell. Neurosci..

[34]  Stephen LaConte,et al.  Decoding fMRI brain states in real-time , 2011, NeuroImage.

[35]  Á. Dias,et al.  A New Neurofeedback Protocol for Depression , 2011, The Spanish journal of psychology.

[36]  J. Rieger,et al.  Predicting Decisions in Human Social Interactions Using Real-Time fMRI and Pattern Classification , 2011, PloS one.

[37]  R. Goebel,et al.  Real-Time Functional Magnetic Resonance Imaging Neurofeedback for Treatment of Parkinson's Disease , 2011, The Journal of Neuroscience.

[38]  Vicente L. Malave,et al.  Autism as a neural systems disorder: A theory of frontal-posterior underconnectivity , 2012, Neuroscience & Biobehavioral Reviews.

[39]  Cuntai Guan,et al.  Mutual information-based selection of optimal spatial-temporal patterns for single-trial EEG-based BCIs , 2012, Pattern Recognit..

[40]  Bettina Sorger,et al.  Real-Time Self-Regulation of Emotion Networks in Patients with Depression , 2012, PloS one.

[41]  J. Bodurka,et al.  Real-time fMRI Neurofeedback Training of Amygdala Modulates Frontal EEG Asymmetry in MDD Patients , 2012 .

[42]  Dean J. Krusienski,et al.  BCI Signal Processing: Feature Extraction , 2012 .

[43]  Ivanei E. Bramati,et al.  Real-Time fMRI Pattern Decoding and Neurofeedback Using FRIEND: An FSL-Integrated BCI Toolbox , 2013, PloS one.

[44]  M. Kubicki,et al.  Review of functional and anatomical brain connectivity findings in schizophrenia , 2013, Current opinion in psychiatry.

[45]  Andrzej Cichocki,et al.  Whether generic model works for rapid ERP-based BCI calibration , 2013, Journal of Neuroscience Methods.

[46]  Sangkyun Lee,et al.  A toolbox for real-time subject-independent and subject-dependent classification of brain states from fMRI signals , 2013, Front. Neurosci..

[47]  Sven Haller,et al.  Real-time fMRI neurofeedback: Progress and challenges , 2013, NeuroImage.

[48]  Niels Birbaumer,et al.  Abnormal Neural Connectivity in Schizophrenia and fMRI-Brain-Computer Interface as a Potential Therapeutic Approach , 2012, Front. Psychiatry.

[49]  Tilo Kircher,et al.  Acquired self‐control of insula cortex modulates emotion recognition and brain network connectivity in schizophrenia , 2013, Human brain mapping.

[50]  Rajesh K. Kana,et al.  The Implications of Brain Connectivity in the Neuropsychology of Autism , 2014, Neuropsychology Review.

[51]  Ranganatha Sitaram,et al.  Volitional Control of Neural Connectivity , 2014 .

[52]  Angela R. Laird,et al.  Neural network of cognitive emotion regulation — An ALE meta-analysis and MACM analysis , 2014, NeuroImage.

[53]  Klaus-Robert Müller,et al.  Integrating dynamic stopping, transfer learning and language models in an adaptive zero-training ERP speller , 2014, Journal of neural engineering.

[54]  Mannes Poel,et al.  Online decoding of object‐based attention using real‐time fMRI , 2014, The European journal of neuroscience.

[55]  Niels Birbaumer,et al.  Real-time fMRI brain computer interfaces: Self-regulation of single brain regions to networks , 2014, Biological Psychology.

[56]  Niels Birbaumer,et al.  Volitional control of the anterior insula in criminal psychopaths using real-time fMRI neurofeedback: a pilot study , 2014, Front. Behav. Neurosci..

[57]  Kymberly D. Young,et al.  Real-Time fMRI Neurofeedback Training of Amygdala Activity in Patients with Major Depressive Disorder , 2014, PloS one.

[58]  M. Congedo,et al.  A controlled study on the cognitive effect of alpha neurofeedback training in patients with major depressive disorder , 2014, Front. Behav. Neurosci..

[59]  Daniel J. Müller,et al.  Canadian Network for Mood and Anxiety Treatments (CANMAT) 2016 Clinical Guidelines for the Management of Adults with Major Depressive Disorder , 2016, Canadian journal of psychiatry. Revue canadienne de psychiatrie.