Processed by HBI: Russia/Switzerland/USA

Similar documents
Human Brain Institute Russia-Switzerland-USA

Matrix Energetics Research Brainwaves and Heart waves Research on Matrix Energetics in Action

Seizure onset can be difficult to asses in scalp EEG. However, some tools can be used to increase the seizure onset activity over the EEG background:

Neurotechnology for Special Needs Children

Clinical Validation of the NeuroGuide QEEG Normative Database. Phase Reset Duration Means. abs(out-phase) Cross Spectral Power. Burst Amplitude Means

NeXus: Z-Score for Neurofeedback

The EEG Analysis of Auditory Emotional Stimuli Perception in TBI Patients with Different SCG Score

Building an Evidence Based Practice: Use of Brain Imaging in Clinical Assessment and Evaluation of Treatment Outcomes

Using ERPs to evaluate neurofeedback for PTSD Date 03/11/18

Quantitative EEG Analysis Report. Color coded key for reading the color brain maps and understanding standard deviation:

EEG Analysis on Brain.fm (Focus)

Northeast Center for Special Care Grant Avenue Lake Katrine, NY

4-CHANNEL Z-SCORE NEUROFEEDBACK: A SINGLE CASE STUDY

Neurophysiology & EEG

QEEG Informed Protocol Recommendation

To link to this article: PLEASE SCROLL DOWN FOR ARTICLE

Beyond the Basics in EEG Interpretation: Throughout the Life Stages

Principles of Science

Modeling EEG-band Neurofeedback: Modulating Internal States without Conditioning of EEG Sources

This presentation is the intellectual property of the author. Contact them for permission to reprint and/or distribute.

The Sonification of Human EEG and other Biomedical Data. Part 3

Introduction to EEG del Campo. Introduction to EEG. J.C. Martin del Campo, MD, FRCP University Health Network Toronto, Canada

Development of 2-Channel Eeg Device And Analysis Of Brain Wave For Depressed Persons

Neurofeedback for ASD AND ADHD

Nov versus Fam. Fam 1 versus. Fam 2. Supplementary figure 1

Practical 3 Nervous System Physiology 2 nd year English Module. Dept. of Physiology, Carol Davila University of Medicine and Pharmacy

Heads Temporal Lobe Disconnect Name: Amostra adulto Age: Trainer: Amostra Date: 10/26/2015. Results very high in range very low

EEG anomalies in Attention- Deficit/Hyperactivity disorder: linking brain and behaviour.

EEG in the ICU: Part I

EEG Changes (Research Abstracts)

Neonatal EEG Maturation

The AASM Manual for the Scoring of Sleep and Associated Events

Source localisation in the clinical practice: spontaneous EEG examinations with LORETA. Ph.D. thesis. Márton Tamás Tóth M.D.

Power-Based Connectivity. JL Sanguinetti

Normal EEG of wakeful resting adults of years of age. Alpha rhythm. Alpha rhythm. Alpha rhythm. Normal EEG of the wakeful adult at rest

Localization a quick look

EEG History. Where and why is EEG used? 8/2/2010

Outline of Talk. Introduction to EEG and Event Related Potentials. Key points. My path to EEG

Exploratory Investigation into Mild Brain Injury and Discriminant Analysis with High Frequency Bands (32-64 Hz)

EEG SPIKE CLASSIFICATION WITH TEMPLATE MATCHING ALGORITHM. Çamlık Caddesi No:44 Sarnıç Beldesi İZMİR 2 Elektrik ve Elektronik Müh.

The electrophysiological effects of a brain injury on auditory memory functioning The QEEG correlates of impaired memory

PSD Analysis of Neural Spectrum During Transition from Awake Stage to Sleep Stage

Asian Epilepsy Academy (ASEPA) EEG Certification Examination

NeuroGuide EEG and QEEG Analysis System

Separation Of,, & Activities In EEG To Measure The Depth Of Sleep And Mental Status

The Normal EEG, Normal Variants, Artifacts. Bassel Abou-Khalil, M.D.

CHAPTER 6 INTERFERENCE CANCELLATION IN EEG SIGNAL

Introduction of Neurofeedback and QEEG at The Hong Kong Polytechnic University

BIOPAC Systems, Inc BIOPAC Inspiring people and enabling discovery about life

Z-Values Beta. Alpha. Theta. Delta

A Study of Smartphone Game Users through EEG Signal Feature Analysis

Supplementary materials for: Executive control processes underlying multi- item working memory

Effects of Light Stimulus Frequency on Phase Characteristics of Brain Waves

Linda Walker, MHR, LPC, BCN, BCB

DATA MANAGEMENT & TYPES OF ANALYSES OFTEN USED. Dennis L. Molfese University of Nebraska - Lincoln

6 Correlation of Biometric Variables Measured with Biograph Infinity Biofeedback Device and Psychometric Scores of Burnout and Anxiety

Figure 1. Source localization results for the No Go N2 component. (a) Dipole modeling

Biomedical Research 2013; 24 (3): ISSN X

Spectral and brain mapping analysis of EEG based on Pwelch in schizophrenic patients

Automated Detection of Epileptic Seizures in the EEG

Selection of Feature for Epilepsy Seizer Detection Using EEG

Maria Estefania Brau Chazarra

Functional Analysis of MINI Q II positions, and Use with Live Z scores. A Window to 4 channel EEG Assessment and Training. Thomas F. Collura, Ph.D.

EEG based biomarkers in pediatric neuropsychiatry: ADHD autism (ASD)

Nature Neuroscience: doi: /nn Supplementary Figure 1. Large-scale calcium imaging in vivo.

Event Related Potentials: Significant Lobe Areas and Wave Forms for Picture Visual Stimulus

NEURAL NETWORK CLASSIFICATION OF EEG SIGNAL FOR THE DETECTION OF SEIZURE

BCIA NEUROFEEDBACK CERTIFICATION PROGRAM

Top-Down versus Bottom-up Processing in the Human Brain: Distinct Directional Influences Revealed by Integrating SOBI and Granger Causality

Spectral Analysis of EEG Patterns in Normal Adults

WAVELET ENERGY DISTRIBUTIONS OF P300 EVENT-RELATED POTENTIALS FOR WORKING MEMORY PERFORMANCE IN CHILDREN

PARAFAC: a powerful tool in EEG monitoring

ANALYSIS OF BRAIN SIGNAL FOR THE DETECTION OF EPILEPTIC SEIZURE

EEG Instrumentation, Montage, Polarity, and Localization

Emotion Detection Using Physiological Signals. M.A.Sc. Thesis Proposal Haiyan Xu Supervisor: Prof. K.N. Plataniotis

Rewiring the Brain: Neurofeedback Insights from The Body Keeps the Score

The neurolinguistic toolbox Jonathan R. Brennan. Introduction to Neurolinguistics, LSA2017 1

Asian Epilepsy Academy (ASEPA) & ASEAN Neurological Association (ASNA) EEG Certification Examination

SedLine Sedation Monitor

SPECTRAL ANALYSIS OF LIFE-THREATENING CARDIAC ARRHYTHMIAS

Analysis of the Effect of Cell Phone Radiation on the Human Brain Using Electroencephalogram

Montages are logical and orderly arrangements of channels

Submitted report on Sufi recordings at AAPB 2013 in Portland. Not for general distribution. Thomas F. Collura, Ph.D. July, 2013

Beyond Blind Averaging: Analyzing Event-Related Brain Dynamics. Scott Makeig. sccn.ucsd.edu

Brain Computer Interface. Mina Mikhail

The use of neurofeedback as a clinical intervention for refugee children and adolescents FASSTT conference 2017

The EEG in focal epilepsy. Bassel Abou-Khalil, M.D. Vanderbilt University Medical Center

A Brain Computer Interface System For Auto Piloting Wheelchair

Electroencephalography & Neurofeedback

SLEEP STAGING AND AROUSAL. Dr. Tripat Deep Singh (MBBS, MD, RPSGT, RST) International Sleep Specialist (World Sleep Federation program)

Mental State Recognition by using Brain Waves

Biopac Student Lab Lesson 3 ELECTROENCEPHALOGRAPHY (EEG) I Analysis Procedure. Rev

Electroencephalography System

Stefan Debener a,b, *, Scott Makeig c, Arnaud Delorme c, Andreas K. Engel a,b. Research report

EEG- A Brief Introduction

Toward Constructing an Electroencephalogram Measurement Method for Usability Evaluation

EEG, ECG Measurement and Data Analysis. Carlo Lucignoli. ATSiP Teesside 2006

QEEG markers in stroke, ageing and cognitive decline

Classification of EEG signals in an Object Recognition task

Transcription:

1 CONTENTS I Personal and clinical data II Conclusion. III Recommendations for therapy IV Report. 1. Procedures of EEG recording and analysis 2. Search for paroxysms 3. Eyes Open background EEG rhythms 4. Eyes Closed background EEG rhythms I. Personal and clinical data Sample report Name (family name, given name) Date of birth (Day.Month.Year) 30/03/1995 Gender (M-male, F-female) Handed (L- left, R right) Diagnosis Reason of having QEEG assessment Medication Source of referral Report date 11-3-2012 Severe chronic anxiety and social phobia; major depression in partial remission, panic disorder; rule out OCD hundreds of complaints lexapro 10 mg q day; seroquel 12.5 mg prn anxiety; ambien 10 qhs just prn insomnia; Doctor AAAAAA

II. Conclusion: 2 The background alpha is seen at 9-10 Hz, with mu seen centrally at 10-11 Hz. There are transient semirhythmic slower changes seen at the frontal midline overlying the anterior cingulate, as well as bitemporally. The theta/beta ratio is increased significantly at the fronto-central midline and temporally. The mu noted is a normal neurological variant, though it is also reported disproportionately in those with mirror neuron disturbances frontally. The temporal slower content suggests a local disturbance in areas involved in comprehension as well as memory. The cingulate issues are consistent with the report of anxiety as well as OCD/ODD/perseverative disorders. III. Recommendations for therapy: Based on these findings, the vertex SMR training should be considered for general stabilization. The posterior temporal training may be added symptomatically**. The midline suppression training may be used to target the anterior cingulate, as well as whenever needed to counter-act any under-activation noted due to the SMR type training. The faster beta suppression band is intended to catch any EMG activity noted during the training. The specific frequencies, montages, and the sequencing of sessions will likely require modification based on client response. Suggestions may be implemented differently depending on instrumentation used. All decisions regarding implementing these suggestions are the responsibility of the practitioner. I recognize the need for on-going consultation and welcome discussion concerning clinical progress of individual patients, or related questions and suggestions. Active Reference train inhibit 1 C4 Pz (12-15) (4-11) + (22-30) 2 T5 Cz (12-15) (4-11) + (22-30) and/or T6** 3 Fz Linked ears none (4-11) + (22-30) ** The T5 is for language and linear logic comprehension, as well as verbal memory. T6 is more oriented to spatial and emotional contextual comprehension, such as facial expression and body language, as well as non-verbal memory. Quantitative report reviewed by:

3 IV. Report: description of the QEEG and ERPs data. 1. Procedures of EEG recording and analysis. EEG was recorded digitally and converted by means of the WinEEG software 1 from 19 electrodes (Fp1, Fp2, F7, F3, Fz, F4, F8, T3, C3, Cz, C4, T4, T5, P3, Pz, P4, T6, O1, O2 sites in the International 10-20 system) with a 0.3 70 Hz frequency range in the following conditions: 1) eyes opened (EO) at least 3 minutes, 2) eyes closed (EC) at least 3 minutes. The data were stored on the hard disk and processed offline by means of WinEEG software. The software is based on the 30 years experience obtained in the laboratory at the Institute of the Human Brain of Russian Academy of Sciences (director Prof. Dr. Juri Kropotov). Absolute and relative magnitude spectra and coherences in all conditions computed and compared with the corresponding parameters from the Human Brain Institute (HBI) normative database. The normative database includes data of about 1000 healthy people of 7-89 years old age. EEG was recorded in Chur, Switzerland (under supervision of Dr. Andreas Mueller) in the Institute of the Human Brain, St. Petersburg, Russia (under supervision of Prof., Dr. Juri Kropotov). 1 The analysis software is hardware independent and can read any EEG files recorded in ASCI, European data format (EDF), universal data format (UDF).

2. Search for paroxysms Visual inspection of raw EEG was made in order to search for paroxysmal patterns that pop out of the background EEG. Besides the visual inspection an automated spike detection was performed. The method of automated spike detection is based on temporal parameters of spikes as well on spatial location of the corresponding spike dipole 2. The amplitude-temporal parameters have defined on the basis of comparison spike detection by the program and by experienced experts on the data base of more than 300 EEG recordings in epileptic patients. There are three characteristics that define a spike or a sharp wave in EEG. They are paroxysmal character, high degree of sharpness and short duration. These parameters are presented in Fig 3. 4 The relative residual energy for dipole approximation of the detected spike is chosen less than 0.2. For this client the automatic spike detection was performed on EEG in the common average montage for both eyes open and eyes closed conditions. NO statistically and clinically significant spikes were observed. 2 P.Y.Ktonas Automated spike and sharp wave (SSW) detection. In Methods of analysis of brain electrical and Magnetic signals. EEG handbook (revised series, Vol 1) A.S.Gevins and A.Remond (Eds). 1987, Elsevier Science Publishers B.V. 211-241 pp 3 The parameters are taken from the paper Ktonas P.Y. Automated spike and sharp wave (SSW) detection. In Methods of analysis of brain electrical and Magnetic signals. EEG handbook (revised series, Vol 1) A.S.Gevins and A.Remond (Eds). 1987, Elsevier Science Publishers B.V. 211-241 pp.)

3. Eyes Open background EEG rhythms. Fragments. Two fragments of EEG recorded in Eyes Opened (EO) condition in a reference-free montage - common average are presented below. This montage will be further referred to as the data base montage. Scale: 50 mcv/cm, speed 30mm/sec, time constant 0.3 sec, low frequency filter 30 Hz. Vertical and horizontal eye movement artifact correction was done by means of Independent Component Analysis (ICA) Note: muscle artifacts at: O1, O2 5

Spectra (EEG power vs. EEG frequency) in Eyes Open condition for all 19 electrodes in the database montage are presented below. The spectra are computed as follows 4 : 1) The interval in EO condition is divided into equal parts (epochs). The length of an epoch is 4 s. Overlapping of the epochs is set to 50% so that the first 50% of each epoch overlaps the final 50% of the next epoch. 2) To suppress energy infiltration through boundaries of epochs, each epoch is filtered by the Hanning time window. 3) The power spectra are computed by means of "fast Fourier transformation" (FFT) algorithm. 4) Finally the averaged (over time of recording) spectra are calculated for each EEG channel separately. EEG rhythms are expressed in form of spectra peaks. Maps of EEG rhythms with their frequencies are presented at the bottom. 6 4 J.Bendat, A.Pirsol «Random data. Analysis and measurement procedure», John Wiley and Sons, NY 1986, 540 pp

Spectra differences: patient-norms. Absolute EEG power. The bins with statistically significant (t-test) differences are marked by bars at the bottom of each curve. The smallest ones correspond to p<0.05 (z-score>2), the largest ones - to p<0.001 (zscore>3), the medium ones to p<0.01 (z-score>2.6). Topographies of significant deviations from normality are presented at the bottom. 7

Maps for absolute power spectra deviations from normality in 1 Hs windows (uv^2) 8

Spectra differences: patient-norms. Relative EEG power. Relative amplitude was computed as a ratio of the EEG amplitude in the corresponding frequency to the EEG amplitude averaged over 3-30 Hz 5 range. The bins with statistically significant (t-test) differences are marked by bars at the bottom of each curve. The smallest ones correspond to p<0.05 (z-score>2), the largest ones - to p<0.001 (z-score>3), the medium ones to p<0.01 (zscore>2.6). Topographies of significant deviations from normality are presented at the bottom. 9 5 EEG in the frequency band below 3 Hz is subjected to uncontrolled artifacts (such as movements) and has a low coefficient of replicate ability.

Maps for relative power spectra deviations from normality in 1 Hs windows. 10

11 Map of theta/beta ratio. Theta=4-8 Hz. Beta 13-21 Hz. Left patient, right norms. Theta beta ratio is called inattention index because it negatively correlates with age and positively correlates with errors in continuous performance tasks (such as TOVA Test for variances of attention or IVA ). In ADHD patients this index is elevated in comparison to norms 6. Note significant relative increase (about 150%) of this index at Cz in this patient in comparison to norms. 6 Monastra et al., 1999

Asymmetry maps of power spectra in eyes open conditions for 1 Hz bands. Note that an asymmetry higher than 50% may be a sign of abnormality 7. 12 7 Asymmetry may be due to asymmetrical muscle, cardioballistic, or other artifacts which must be evaluated before making any interpretive conclusions.

Diagrams of excessive (in red) or reduced (in blue) coherence 13

4. Eyes Closed background EEG rhythms. 14 Fragments. Two fragments of EEG recorded in Eyes Closed (EC) condition in a reference-free montage - common average are presented below. This montage will be further referred to as the data base montage. Scale: 50 mcv/cm, speed 30mm/sec, time constant 0.3 sec, low frequency filter 30 Hz. Vertical and horizontal eye movement artifact correction was done by means of Independent Component Analysis (ICA) Note: muscle artifacts at: T4

Spectra (EEG power vs. EEG frequency) in Eyes Closed condition for all 19 electrodes in the database montage are presented below. The spectra are computed as follows 8 : 1) The interval in EO condition is divided into equal parts (epochs). The length of an epoch is 4 s. Overlapping of the epochs is set to 50% so that the first 50% of each epoch overlaps the final 50% of the next epoch. 2) To suppress energy infiltration through boundaries of epochs, each epoch is filtered by the Hanning time window. 3) The power spectra are computed by means of "fast Fourier transformation" (FFT) algorithm. 4) Finally the averaged (over time of recording) spectra are calculated for each EEG channel separately. EEG rhythms are expressed in form of spectra peaks. Maps of EEG rhythms with their frequencies are presented at the bottom. 15 8 J.Bendat, A.Pirsol «Random data. Analysis and measurement procedure», John Wiley and Sons, NY 1986, 540 pp

Spectra differences: patient-norms. Absolute EEG power. The bins with statistically significant (t-test) differences are marked by bars at the bottom of each curve. The smallest ones correspond to p<0.05 (z-score>2), the largest ones - to p<0.001 (zscore>3), the medium ones to p<0.01 (z-score>2.6). Topographies of significant deviations from normality are presented at the bottom. 16

Maps for absolute power spectra deviations from normality in 1 Hs windows (uv^2) 17

Spectra differences: patient-norms. Relative EEG power. Relative amplitude was computed as a ratio of the EEG amplitude in the corresponding frequency to the EEG amplitude averaged over 3-30 Hz 9 range. The bins with statistically significant (t-test) differences are marked by bars at the bottom of each curve. The smallest ones correspond to p<0.05 (z-score>2), the largest ones - to p<0.001 (z-score>3), the medium ones to p<0.01 (zscore>2.6). Topographies of significant deviations from normality are presented at the bottom. 18 9 EEG in the frequency band below 3 Hz is subjected to uncontrolled artifacts (such as movements) and has a low coefficient of replicate ability.

Maps for relative power spectra deviations from normality in 2 Hs windows. 19

20 Asymmetry maps of power spectra in eyes closed conditions for 2 Hz bands. Note that an asymmetry higher than 50% may be a sign of abnormality 10. 10 Asymmetry may be due to asymmetrical muscle, cardioballistic, or other artifacts which must be evaluated before making any interpretive conclusions.

Diagrams of excessive (in red) or reduced (in blue) coherence. 21