Literature DB >> 23536113

Identification of resting and active state EEG features of Alzheimer's disease using discrete wavelet transform.

Parham Ghorbanian1, David M Devilbiss, Ajay Verma, Allan Bernstein, Terry Hess, Adam J Simon, Hashem Ashrafiuon.   

Abstract

Alzheimer's disease (AD) is associated with deficits in a number of cognitive processes and executive functions. Moreover, abnormalities in the electroencephalogram (EEG) power spectrum develop with the progression of AD. These features have been traditionally characterized with montage recordings and conventional spectral analysis during resting eyes-closed and resting eyes-open (EO) conditions. In this study, we introduce a single lead dry electrode EEG device which was employed on AD and control subjects during resting and activated battery of cognitive and sensory tasks such as Paced Auditory Serial Addition Test (PASAT) and auditory stimulations. EEG signals were recorded over the left prefrontal cortex (Fp1) from each subject. EEG signals were decomposed into sub-bands approximately corresponding to the major brain frequency bands using several different discrete wavelet transforms and developed statistical features for each band. Decision tree algorithms along with univariate and multivariate statistical analysis were used to identify the most predictive features across resting and active states, separately and collectively. During resting state recordings, we found that the AD patients exhibited elevated D4 (~4-8 Hz) mean power in EO state as their most distinctive feature. During the active states, however, the majority of AD patients exhibited larger minimum D3 (~8-12 Hz) values during auditory stimulation (18 Hz) combined with increased kurtosis of D5 (~2-4 Hz) during PASAT with 2 s interval. When analyzed using EEG recording data across all tasks, the most predictive AD patient features were a combination of the first two feature sets. However, the dominant discriminating feature for the majority of AD patients were still the same features as the active state analysis. The results from this small sample size pilot study indicate that although EEG recordings during resting conditions are able to differentiate AD from control subjects, EEG activity recorded during active engagement in cognitive and auditory tasks provide important distinct features, some of which may be among the most predictive discriminating features.

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Year:  2013        PMID: 23536113     DOI: 10.1007/s10439-013-0795-5

Source DB:  PubMed          Journal:  Ann Biomed Eng        ISSN: 0090-6964            Impact factor:   3.934


  10 in total

1.  Exploration of EEG features of Alzheimer's disease using continuous wavelet transform.

Authors:  Parham Ghorbanian; David M Devilbiss; Terry Hess; Allan Bernstein; Adam J Simon; Hashem Ashrafiuon
Journal:  Med Biol Eng Comput       Date:  2015-04-12       Impact factor: 2.602

2.  Analysis of long range dependence in the EEG signals of Alzheimer patients.

Authors:  T Nimmy John; Subha D Puthankattil; Ramshekhar Menon
Journal:  Cogn Neurodyn       Date:  2018-01-05       Impact factor: 5.082

3.  Prediction of Periventricular Leukomalacia in Neonates after Cardiac Surgery Using Machine Learning Algorithms.

Authors:  Ali Jalali; Allan F Simpao; Jorge A Gálvez; Daniel J Licht; Chandrasekhar Nataraj
Journal:  J Med Syst       Date:  2018-08-17       Impact factor: 4.460

4.  Single-Channel EEG Features Reveal an Association With Cognitive Decline in Seniors Performing Auditory Cognitive Assessment.

Authors:  Lior Molcho; Neta B Maimon; Noa Regev-Plotnik; Sarit Rabinowicz; Nathan Intrator; Ady Sasson
Journal:  Front Aging Neurosci       Date:  2022-05-30       Impact factor: 5.702

5.  Stochastic non-linear oscillator models of EEG: the Alzheimer's disease case.

Authors:  Parham Ghorbanian; Subramanian Ramakrishnan; Hashem Ashrafiuon
Journal:  Front Comput Neurosci       Date:  2015-04-24       Impact factor: 2.380

6.  Brain MR Image Classification for Alzheimer's Disease Diagnosis Based on Multifeature Fusion.

Authors:  Zhe Xiao; Yi Ding; Tian Lan; Cong Zhang; Chuanji Luo; Zhiguang Qin
Journal:  Comput Math Methods Med       Date:  2017-05-22       Impact factor: 2.238

7.  Diagnosis of Encephalopathy Based on Energies of EEG Subbands Using Discrete Wavelet Transform and Support Vector Machine.

Authors:  Jisu Elsa Jacob; Gopakumar Kuttappan Nair; Thomas Iype; Ajith Cherian
Journal:  Neurol Res Int       Date:  2018-07-02

8.  Systematic Review on Resting-State EEG for Alzheimer's Disease Diagnosis and Progression Assessment.

Authors:  Raymundo Cassani; Mar Estarellas; Rodrigo San-Martin; Francisco J Fraga; Tiago H Falk
Journal:  Dis Markers       Date:  2018-10-04       Impact factor: 3.434

9.  Effects of Exercise on EEG Activity and Standard Tools Used to Assess Concussion.

Authors:  David M Devilbiss; Jena L Etnoyer-Slaski; Emily Dunn; Christopher R Dussourd; Mayuresh V Kothare; Stephen J Martino; Adam J Simon
Journal:  J Healthc Eng       Date:  2019-04-30       Impact factor: 2.682

10.  Feasibility of Repeated Assessment of Cognitive Function in Older Adults Using a Wireless, Mobile, Dry-EEG Headset and Tablet-Based Games.

Authors:  Esther C McWilliams; Florentine M Barbey; John F Dyer; Md Nurul Islam; Bernadette McGuinness; Brian Murphy; Hugh Nolan; Peter Passmore; Laura M Rueda-Delgado; Alison R Buick
Journal:  Front Psychiatry       Date:  2021-06-25       Impact factor: 4.157

  10 in total

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