EEG-based methods for recovery prognosis of patients with disorders of consciousness: A systematic review

[1]  M. Carrozza,et al.  Merging Clinical and EEG Biomarkers in an Elastic-Net Regression for Disorder of Consciousness Prognosis Prediction , 2022, IEEE Transactions on Neural Systems and Rehabilitation Engineering.

[2]  Yu-Chu Tian,et al.  An ensemble of Xgboost models for detecting disorders of consciousness in brain injuries through EEG connectivity , 2022, Expert Syst. Appl..

[3]  P. Rossini,et al.  Brain network modulation in transradial amputee with finger perception restored through biomimetic intraneural stimulation , 2021, Neurological Sciences.

[4]  T. Bekinschtein,et al.  Delta band activity contributes to the identification of command following in disorder of consciousness , 2021, Scientific Reports.

[5]  Maria Chiara Carrozza,et al.  Data-driven prediction of decannulation probability and timing in patients with severe acquired brain injury , 2021, Comput. Methods Programs Biomed..

[6]  S. Golaszewski,et al.  Narrative Review: Quantitative EEG in Disorders of Consciousness , 2021, Brain sciences.

[7]  L. Naccache,et al.  Preservation of Brain Activity in Unresponsive Patients Identifies MCS Star , 2021, Annals of neurology.

[8]  Hideki Nakano,et al.  Electroencephalography - From Basic Research to Clinical Applications , 2021 .

[9]  Hiba A. Haider,et al.  American Clinical Neurophysiology Society's Standardized Critical Care EEG Terminology: 2021 Version. , 2021, Journal of clinical neurophysiology : official publication of the American Electroencephalographic Society.

[10]  S. Marino,et al.  Multi-center study on overall clinical complexity of patients with prolonged disorders of consciousness of different etiologies , 2020, Brain injury.

[11]  N. Schiff,et al.  Recovery from disorders of consciousness: mechanisms, prognosis and emerging therapies , 2020, Nature Reviews Neurology.

[12]  L. Vega-Zelaya,et al.  Necessity of Quantitative EEG for Daily Clinical Practice , 2020, Electroencephalography - From Basic Research to Clinical Applications.

[13]  Jan Weber,et al.  Shifts in broadband power and alpha peak frequency observed during long-term isolation , 2020, Scientific Reports.

[14]  Yelena G. Bodien,et al.  Behavioral and electrophysiological effects of network-based frontoparietal tDCS in patients with severe brain injury: A randomized controlled trial , 2020, NeuroImage: Clinical.

[15]  U. Ziemann,et al.  Managing disorders of consciousness: the role of electroencephalography , 2020, Journal of Neurology.

[16]  M. Boly,et al.  Clinical and advanced neurophysiology in the prognostic and diagnostic evaluation of disorders of consciousness: review of an IFCN-endorsed expert group , 2020, Clinical Neurophysiology.

[17]  Elliot Voss,et al.  Review of Machine Learning Algorithms for Brain Stroke Diagnosis and Prognosis by EEG Analysis , 2020, ArXiv.

[18]  Corinne A. Bareham,et al.  Bedside EEG predicts longitudinal behavioural changes in disorders of consciousness , 2020, NeuroImage: Clinical.

[19]  C. Schnakers,et al.  Multicenter prospective study on predictors of short-term outcome in disorders of consciousness , 2020, Neurology.

[20]  L. Naccache,et al.  Multimodal FDG-PET and EEG assessment improves diagnosis and prognostication of disorders of consciousness , 2020, NeuroImage: Clinical.

[21]  P. M. Abeyasinghe,et al.  Consciousness and the Dimensionality of DOC Patients via the Generalized Ising Model , 2020, Journal of clinical medicine.

[22]  K. P. Ayodele,et al.  Supervised domain generalization for integration of disparate scalp EEG datasets for automatic epileptic seizure detection , 2020, Comput. Biol. Medicine.

[23]  Zülfikar Aslan,et al.  Automatic Detection of Schizophrenia by Applying Deep Learning over Spectrogram Images of EEG Signals , 2020, Traitement du Signal.

[24]  Padmavati Khandnor,et al.  A comparative analysis of signal processing and classification methods for different applications based on EEG signals , 2020 .

[25]  Xiaowei Li,et al.  A Deep Learning Approach for Mild Depression Recognition Based on Functional Connectivity Using Electroencephalography , 2020, Frontiers in Neuroscience.

[26]  A. Grippo,et al.  EEG and Coma Recovery Scale-revised prediction of neurological outcome in Disorder of Consciousness patients. , 2020, Acta neurologica Scandinavica.

[27]  J. Weber,et al.  Quantitative and Qualitative EEG as a Prediction Tool for Outcome and Complications in Acute Stroke Patients , 2020, Clinical EEG and neuroscience.

[28]  A. Cichocki,et al.  Prognosis for patients with cognitive motor dissociation identified by brain-computer interface , 2020, Brain : a journal of neurology.

[29]  L. Naccache,et al.  European Academy of Neurology guideline on the diagnosis of coma and other disorders of consciousness , 2020, European journal of neurology.

[30]  Terence O'Brien,et al.  Machine Learning for Predicting Epileptic Seizures Using EEG Signals: A Review , 2020, IEEE Reviews in Biomedical Engineering.

[31]  A. Grippo,et al.  What is the role of post acute EEG in prediction of late neurological outcome in severe disorders of consciousness? , 2020, Future Neurology.

[32]  S. Majerus,et al.  Brain Metabolism but Not Gray Matter Volume Underlies the Presence of Language Function in the Minimally Conscious State (MCS): MCS+ Versus MCS− Neuroimaging Differences , 2020, Neurorehabilitation and neural repair.

[33]  Kay A. Robbins,et al.  How Sensitive are EEG Results to Preprocessing Methods: A Benchmarking Study , 2020, bioRxiv.

[34]  Yong Wang,et al.  Electroencephalography quadratic phase self-coupling correlates with consciousness states and restoration in patients with disorders of consciousness , 2019, Clinical Neurophysiology.

[35]  A. Grippo,et al.  Prognostic value of post-acute EEG in severe disorders of consciousness, using American Clinical Neurophysiology Society terminology , 2019, Neurophysiologie Clinique.

[36]  C. Schnakers,et al.  An International survey on diagnostic and prognostic protocols in patients with disorder of consciousness , 2019, Brain injury.

[37]  F. Cincotti,et al.  Language-Related Brain Potentials in Patients With Disorders of Consciousness: A Follow-up Study to Detect “Covert” Language Disorders , 2019, Neurorehabilitation and neural repair.

[38]  A. Berthoz,et al.  Exploring Self-Consciousness From Self- and Other-Image Recognition in the Mirror: Concepts and Evaluation , 2019, Front. Psychol..

[39]  L. Craighero,et al.  Bilateral M1 anodal transcranial direct current stimulation in post traumatic chronic minimally conscious state: a pilot EEG-tDCS study , 2019, Brain injury.

[40]  Fabrice Wendling,et al.  Decreased integration of EEG source-space networks in disorders of consciousness , 2018, NeuroImage: Clinical.

[41]  Cornelis J Stam,et al.  Clinical correlates of quantitative EEG in Parkinson disease , 2018, Neurology.

[42]  Gilles Louppe,et al.  Robust EEG-based cross-site and cross-protocol classification of states of consciousness , 2018, Brain : a journal of neurology.

[43]  Tove Faber Frandsen,et al.  The impact of patient, intervention, comparison, outcome (PICO) as a search strategy tool on literature search quality: a systematic review , 2018, Journal of the Medical Library Association : JMLA.

[44]  Steven Laureys,et al.  Practice Guideline Update Recommendations Summary: Disorders of Consciousness: Report of the Guideline Development, Dissemination, and Implementation Subcommittee of the American Academy of Neurology; the American Congress of Rehabilitation Medicine; and the National Institute on Disability, Indepen , 2018, Archives of physical medicine and rehabilitation.

[45]  Corinne A. Bareham,et al.  Longitudinal Bedside Assessments of Brain Networks in Disorders of Consciousness: Case Reports From the Field , 2018, Front. Neurol..

[46]  D. Annane,et al.  Value and mechanisms of EEG reactivity in the prognosis of patients with impaired consciousness: a systematic review , 2018, Critical Care.

[47]  B. Kotchoubey,et al.  A Systematic Review and Meta-Analysis of the Relationship Between Brain Data and the Outcome in Disorders of Consciousness , 2018, Front. Neurol..

[48]  A. Grippo,et al.  Improvement on the Coma Recovery Scale-Revised During the First Four Weeks of Hospital Stay Predicts Outcome at Discharge in Intensive Rehabilitation After Severe Brain Injury. , 2018, Archives of Physical Medicine and Rehabilitation.

[49]  Krishna V. Shenoy,et al.  Frequency Shifts and Depth Dependence of Premotor Beta Band Activity during Perceptual Decision-Making , 2018, The Journal of Neuroscience.

[50]  Andreas Bender,et al.  Consciousness Indexing and Outcome Prediction with Resting-State EEG in Severe Disorders of Consciousness , 2018, Brain Topography.

[51]  Steven Laureys,et al.  Personalized objects can optimize the diagnosis of EMCS in the assessment of functional object use in the CRS-R: a double blind, randomized clinical trial , 2018, BMC Neurology.

[52]  A. Grippo,et al.  Score on Coma Recovery Scale-Revised at admission predicts outcome at discharge in intensive rehabilitation after severe brain injury , 2018, Brain injury.

[53]  T. Zhang,et al.  Assessment of mismatch negativity and P300 response in patients with disorders of consciousness. , 2017, European review for medical and pharmacological sciences.

[54]  Steven Laureys,et al.  Brain networks predict metabolism, diagnosis and prognosis at the bedside in disorders of consciousness , 2017, Brain : a journal of neurology.

[55]  Lizette Heine,et al.  The repetition of behavioral assessments in diagnosis of disorders of consciousness , 2017, Annals of neurology.

[56]  M. V. van Putten,et al.  Early EEG for outcome prediction of postanoxic coma: prospective cohort study with cost-minimization analysis , 2017, Critical Care.

[57]  S. Micera,et al.  Spatiotemporal Dynamics of the Cortical Responses Induced by a Prolonged Tactile Stimulation of the Human Fingertips , 2017, Brain Topography.

[58]  Marcello Massimini,et al.  Measures of metabolism and complexity in the brain of patients with disorders of consciousness , 2017, NeuroImage: Clinical.

[59]  R. Calabró,et al.  Towards a method to differentiate chronic disorder of consciousness patients' awareness: The Low-Resolution Brain Electromagnetic Tomography Analysis , 2016, Journal of the Neurological Sciences.

[60]  L. Trojano,et al.  Long-term outcome of patients with disorders of consciousness with and without epileptiform activity and seizures: a prospective single centre cohort study , 2016, Journal of Neurology.

[61]  Enrico Amico,et al.  Neural correlates of consciousness in patients who have emerged from a minimally conscious state: a cross-sectional multimodal imaging study , 2016, The Lancet Neurology.

[62]  Steven Laureys,et al.  The Role of Neuroimaging Techniques in Establishing Diagnosis, Prognosis and Therapy in Disorders of Consciousness , 2016, The open neuroimaging journal.

[63]  R. Calabró,et al.  Transcranial Alternating Current Stimulation in Patients with Chronic Disorder of Consciousness: A Possible Way to Cut the Diagnostic Gordian Knot? , 2016, Brain Topography.

[64]  A. Sant'angelo,et al.  EEG epileptiform abnormalities at admission to a rehabilitation department predict the risk of seizures in disorders of consciousness following a coma , 2016, Epilepsy & Behavior.

[65]  R. Calabró,et al.  Cortical connectivity modulation induced by cerebellar oscillatory transcranial direct current stimulation in patients with chronic disorders of consciousness: A marker of covert cognition? , 2016, Clinical Neurophysiology.

[66]  F. Nobili,et al.  The prognostic value of sleep patterns in disorders of consciousness in the sub-acute phase , 2016, Clinical Neurophysiology.

[67]  Manuel Schabus,et al.  EEG entropy measures indicate decrease of cortical information processing in Disorders of Consciousness , 2016, Clinical Neurophysiology.

[68]  Nikesh I Ardeshna EEG and Coma , 2016, The Neurodiagnostic journal.

[69]  E. Parati,et al.  Significance of multiple neurophysiological measures in patients with chronic disorders of consciousness , 2015, Clinical Neurophysiology.

[70]  G. Collins,et al.  Critical Appraisal and Data Extraction for Systematic Reviews of Prediction Modelling Studies: The CHARMS Checklist , 2014, PLoS medicine.

[71]  Guy B. Williams,et al.  Spectral Signatures of Reorganised Brain Networks in Disorders of Consciousness , 2014, PLoS Comput. Biol..

[72]  A. Grippo,et al.  P830: Short-term habituation in disorders of consciousness: a diagnostic/prognostic tool? , 2014, Clinical Neurophysiology.

[73]  Jonathan D Victor,et al.  Large-scale brain dynamics in disorders of consciousness , 2014, Current Opinion in Neurobiology.

[74]  Arthur C. Grant,et al.  EEG interpretation reliability and interpreter confidence: A large single-center study , 2014, Epilepsy & Behavior.

[75]  Steven Laureys,et al.  Disorders of consciousness after acquired brain injury: the state of the science , 2014, Nature Reviews Neurology.

[76]  M. Balconi,et al.  Disorders of consciousness and N400 ERP measures in response to a semantic task. , 2013, The Journal of neuropsychiatry and clinical neurosciences.

[77]  Wolfgang Klimesch,et al.  CRS-R score in disorders of consciousness is strongly related to spectral EEG at rest , 2013, Journal of Neurology.

[78]  S. Eickhoff,et al.  N400 predicts recovery from disorders of consciousness , 2013, Annals of neurology.

[79]  Steven Laureys,et al.  Coma and Disorders of Consciousness: Scientific Advances and Practical Considerations for Clinicians Evolution in Neuroimaging Techniques , 2022 .

[80]  W. Klimesch,et al.  Cognitive processes in disorders of consciousness as revealed by EEG time–frequency analyses , 2011, Clinical Neurophysiology.

[81]  Steven Laureys,et al.  From unresponsive wakefulness to minimally conscious PLUS and functional locked-in syndromes: recent advances in our understanding of disorders of consciousness , 2011, Journal of Neurology.

[82]  Gui Cai,et al.  Application of nonlinear dynamics analysis in assessing unconsciousness: A preliminary study , 2011, Clinical Neurophysiology.

[83]  Ross Zafonte,et al.  Assessment scales for disorders of consciousness: evidence-based recommendations for clinical practice and research. , 2010, Archives of physical medicine and rehabilitation.

[84]  M. Boly,et al.  Diagnostic accuracy of the vegetative and minimally conscious state: Clinical consensus versus standardized neurobehavioral assessment , 2009, BMC neurology.

[85]  D. Moher,et al.  Preferred Reporting Items for Systematic Reviews and Meta-Analyses: The PRISMA Statement , 2009, BMJ : British Medical Journal.

[86]  Francesco Piccione,et al.  Post-acute P300 predicts recovery of consciousness from traumatic vegetative state , 2009, Brain injury.

[87]  Steven Laureys,et al.  Mismatch negativity to the patient’s own name in chronic disorders of consciousness , 2008, Neuroscience Letters.

[88]  S. Sigurdsson,et al.  Reliability of quantitative EEG features , 2007, Clinical Neurophysiology.

[89]  David A. Kaiser,et al.  What Is Quantitative EEG , 2007 .

[90]  A. Ragazzoni,et al.  Prediction of ‘awakening’ and outcome in prolonged acute coma from severe traumatic brain injury: evidence for validity of short latency SEPs , 2005, Clinical Neurophysiology.

[91]  J. Giacino,et al.  The minimally conscious state: Definition and diagnostic criteria , 2002, Neurology.

[92]  I. Winkler,et al.  Mismatch negativity , 1998, Clinical Neurophysiology.

[93]  S. Greenhut,et al.  A Comparative Analysis of Signal Processing Methods for Motion‐Based Rate Responsive Pacing , 1996, Pacing and clinical electrophysiology : PACE.

[94]  Schuster,et al.  Easily calculable measure for the complexity of spatiotemporal patterns. , 1987, Physical review. A, General physics.

[95]  R. Bridges,et al.  VERSION , 1922, Greece and Rome.

[96]  &NA; &NA;,et al.  Practice Guideline , 2020, Encyclopedia of Behavioral Medicine.

[97]  Gan Huang EEG/ERP Data Analysis Toolboxes , 2019, EEG Signal Processing and Feature Extraction.

[98]  G. Collins,et al.  PROBAST: A Tool to Assess the Risk of Bias and Applicability of Prediction Model Studies , 2019, Annals of Internal Medicine.

[99]  M. Balconi State of consciousness and ERP (event-related potential) measures. Diagnostic and prognostic value of electrophysiology for disorders of consciousness , 2011 .

[100]  Rita Formisano,et al.  Vegetative state, minimally conscious state, akinetic mutism and Parkinsonism as a continuum of recovery from disorders of consciousness: an exploratory and preliminary study. , 2011, Functional neurology.

[101]  Steven Laureys,et al.  Automated EEG entropy measurements in coma, vegetative state/unresponsive wakefulness syndrome and minimally conscious state. , 2011, Functional neurology.

[102]  James D. Frost,et al.  Long-Term Outcome , 2003 .

[103]  D. Shewmon,et al.  The minimally conscious state: definition and diagnostic criteria. , 2002, Neurology.