Identification of EEG signal features of normal and dyslexic children using wavelet transform and predictive analysis / Zulkifli Mahmoodin

This study looks into the differences in electroencephalograph (EEG) signal features of normal children, poor and capable dyslexic by investigating the alternate pathway created during writing-related tasks. Previous researches have only concentrated on functional magnetic resonance imaging (fMRI) a...

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Main Author: Mahmoodin, Zulkifli
Format: Thesis
Language:English
Published: 2019
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Online Access:https://ir.uitm.edu.my/id/eprint/83127/1/83127.pdf
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spelling my-uitm-ir.831272024-02-20T03:24:15Z Identification of EEG signal features of normal and dyslexic children using wavelet transform and predictive analysis / Zulkifli Mahmoodin 2019 Mahmoodin, Zulkifli RC Internal Medicine This study looks into the differences in electroencephalograph (EEG) signal features of normal children, poor and capable dyslexic by investigating the alternate pathway created during writing-related tasks. Previous researches have only concentrated on functional magnetic resonance imaging (fMRI) and positron emission tomography (PET) that are not practical to be applied in a real working scenario. Unique signal features that are extracted from an optimum wavelet transform found between normal children, poor and capable dyslexic enables the design of a diagnosis technique to complement the available time-consuming and labour-intensive manual assessment of dyslexia. The current assessment method requires a skilled diagnostician to be on hand, coupled with the fact that early symptoms are very diverse and too subtle to be recognized. With a total of 33 subjects between the age of 7 to 12 years old, EEG was acquired during writing tasks of words and non-words through a minimal eight electrode locations of C3, C4, P3, P4, T7, T8, FC5, and FC6. Brain activation areas were studied through 2D topography mapping of the EEG subjects and identification of active frequency components were found through power spectrum density (PSD). Results revealed that right brain activation of electrode location FC6, C4, P4, and T8 in a person with dyslexia could be applied as a marker to indicate their ability to overcome learning disability of reading and writing. This gives an indication of the learning pathway within the brain for normal children and establishing the existence of a compensatory alternate activation in capable dyslexic. Features of band power, approximate entropy (ApEN), and variance were extracted, and its suitability was tested through analysis of variance (ANOVA) and observation of hemisphere dominance. Band power was found to agree with the hypothesized activation for all three groups of normal children, poor and capable dyslexic but requires an additional within electrode measurement in the form of theta/beta ratio to differentiate similar activation areas observed in normal children and poor dyslexic. The addition of the theta/beta ratio has also improved on the overall classification results. The optimization of mother wavelet function and order was performed by analyzing the area under the curve (AUC) of receiver operating characteristics curve (ROC) measurements of support vector machine (SVM) classifier of both linear and radial basis function (RBF) kernel. 10-fold cross-validation was performed on all classification to ensure result validity. Extraction of features through Daubechies wavelet transform of order 8 produced the highest AUC of ROC average measurement of 0.9996 and became the mother wavelet function and order of choice. In learning task simplification, subjects were observed to see words and non-words as a geometric shape based on their EEG readings. Classifier performance based on the identification of the three groups under study, i.e., normal children, poor and capable dyslexic, stands at 89% for accuracy and sensitivity. In a one against all evaluation, classification of normal children achieved an accuracy of 91%, poor dyslexic with an accuracy of 93% and capable dyslexic at 94% accuracy. The overall findings of the dyslexic’s EEG enable an objective assessment to be made of the child’s progress and effectiveness of an intervention program. It also allows for the design of a neurofeedback protocol that utilizes the capable dyslexic brain activation areas as the benchmark. 2019 Thesis https://ir.uitm.edu.my/id/eprint/83127/ https://ir.uitm.edu.my/id/eprint/83127/1/83127.pdf text en public phd doctoral Universiti Teknologi MARA (UiTM) Faculty of Electrical Engineering
institution Universiti Teknologi MARA
collection UiTM Institutional Repository
language English
topic RC Internal Medicine
spellingShingle RC Internal Medicine
Mahmoodin, Zulkifli
Identification of EEG signal features of normal and dyslexic children using wavelet transform and predictive analysis / Zulkifli Mahmoodin
description This study looks into the differences in electroencephalograph (EEG) signal features of normal children, poor and capable dyslexic by investigating the alternate pathway created during writing-related tasks. Previous researches have only concentrated on functional magnetic resonance imaging (fMRI) and positron emission tomography (PET) that are not practical to be applied in a real working scenario. Unique signal features that are extracted from an optimum wavelet transform found between normal children, poor and capable dyslexic enables the design of a diagnosis technique to complement the available time-consuming and labour-intensive manual assessment of dyslexia. The current assessment method requires a skilled diagnostician to be on hand, coupled with the fact that early symptoms are very diverse and too subtle to be recognized. With a total of 33 subjects between the age of 7 to 12 years old, EEG was acquired during writing tasks of words and non-words through a minimal eight electrode locations of C3, C4, P3, P4, T7, T8, FC5, and FC6. Brain activation areas were studied through 2D topography mapping of the EEG subjects and identification of active frequency components were found through power spectrum density (PSD). Results revealed that right brain activation of electrode location FC6, C4, P4, and T8 in a person with dyslexia could be applied as a marker to indicate their ability to overcome learning disability of reading and writing. This gives an indication of the learning pathway within the brain for normal children and establishing the existence of a compensatory alternate activation in capable dyslexic. Features of band power, approximate entropy (ApEN), and variance were extracted, and its suitability was tested through analysis of variance (ANOVA) and observation of hemisphere dominance. Band power was found to agree with the hypothesized activation for all three groups of normal children, poor and capable dyslexic but requires an additional within electrode measurement in the form of theta/beta ratio to differentiate similar activation areas observed in normal children and poor dyslexic. The addition of the theta/beta ratio has also improved on the overall classification results. The optimization of mother wavelet function and order was performed by analyzing the area under the curve (AUC) of receiver operating characteristics curve (ROC) measurements of support vector machine (SVM) classifier of both linear and radial basis function (RBF) kernel. 10-fold cross-validation was performed on all classification to ensure result validity. Extraction of features through Daubechies wavelet transform of order 8 produced the highest AUC of ROC average measurement of 0.9996 and became the mother wavelet function and order of choice. In learning task simplification, subjects were observed to see words and non-words as a geometric shape based on their EEG readings. Classifier performance based on the identification of the three groups under study, i.e., normal children, poor and capable dyslexic, stands at 89% for accuracy and sensitivity. In a one against all evaluation, classification of normal children achieved an accuracy of 91%, poor dyslexic with an accuracy of 93% and capable dyslexic at 94% accuracy. The overall findings of the dyslexic’s EEG enable an objective assessment to be made of the child’s progress and effectiveness of an intervention program. It also allows for the design of a neurofeedback protocol that utilizes the capable dyslexic brain activation areas as the benchmark.
format Thesis
qualification_name Doctor of Philosophy (PhD.)
qualification_level Doctorate
author Mahmoodin, Zulkifli
author_facet Mahmoodin, Zulkifli
author_sort Mahmoodin, Zulkifli
title Identification of EEG signal features of normal and dyslexic children using wavelet transform and predictive analysis / Zulkifli Mahmoodin
title_short Identification of EEG signal features of normal and dyslexic children using wavelet transform and predictive analysis / Zulkifli Mahmoodin
title_full Identification of EEG signal features of normal and dyslexic children using wavelet transform and predictive analysis / Zulkifli Mahmoodin
title_fullStr Identification of EEG signal features of normal and dyslexic children using wavelet transform and predictive analysis / Zulkifli Mahmoodin
title_full_unstemmed Identification of EEG signal features of normal and dyslexic children using wavelet transform and predictive analysis / Zulkifli Mahmoodin
title_sort identification of eeg signal features of normal and dyslexic children using wavelet transform and predictive analysis / zulkifli mahmoodin
granting_institution Universiti Teknologi MARA (UiTM)
granting_department Faculty of Electrical Engineering
publishDate 2019
url https://ir.uitm.edu.my/id/eprint/83127/1/83127.pdf
_version_ 1794191966475386880