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Dive into the research topics where Hashem Ashrafiuon is active.

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Featured researches published by Hashem Ashrafiuon.


Annals of Biomedical Engineering | 2013

Identification of Resting and Active State EEG Features of Alzheimer’s Disease using Discrete Wavelet Transform

Parham Ghorbanian; David M. Devilbiss; Ajay Verma; Allan L. Bernstein; Terry Hess; Adam J. Simon; Hashem Ashrafiuon

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 (~4–8xa0Hz) mean power in EO state as their most distinctive feature. During the active states, however, the majority of AD patients exhibited larger minimum D3 (~8–12xa0Hz) values during auditory stimulation (18xa0Hz) combined with increased kurtosis of D5 (~2–4xa0Hz) 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.


international conference of the ieee engineering in medicine and biology society | 2012

Discrete wavelet transform EEG features of Alzheimer'S disease in activated states

Parham Ghorbanian; David M. Devilbiss; Adam J. Simon; Allan L. Bernstein; Terry Hess; Hashem Ashrafiuon

In this study, electroencephalogram (EEG) signals obtained by a single-electrode device from 24 subjects - 10 with Alzheimers disease (AD) and 14 age-matched Controls (CN) - were analyzed using Discrete Wavelet Transform (DWT). The focus of the study is to determine the discriminating EEG features of AD patients while subjected to cognitive and auditory tasks, since AD is characterized by progressive impairments in cognition and memory. At each recording block, DWT extracts EEG features corresponding to major brain frequency bands. T-test and Kruskal-Wallis methods were used to determine the statistically significant features of EEG signals from AD patients compared to Controls. A decision tree algorithm was then used to identify the dominant features for AD patients. It was determined that the mean value of the low-δ (1 - 2 Hz) frequency band during the Paced Auditory Serial Addition Test with 2.0 (s) interval and the mean value of the δ frequency band (12 - 30 Hz) during 6 Hz auditory stimulation have higher mean values in AD patients than Controls. Due to artifacts, the less reliable low-δ features were removed and it was determined that the mean value of β frequency band during 6 Hz auditory stimulation followed by the standard deviation of θ (4 - 8 Hz) frequency band of one card learning cognitive task are higher for AD patients compared to Controls and thus the most dominant discriminating features of the disease.


Medical & Biological Engineering & Computing | 2015

Exploration of EEG features of Alzheimer’s disease using continuous wavelet transform

Parham Ghorbanian; David M. Devilbiss; Terry Hess; Allan L. Bernstein; Adam J. Simon; Hashem Ashrafiuon

We have developed a novel approach to elucidate several discriminating EEG features of Alzheimer’s disease. The approach is based on the use of a variety of continuous wavelet transforms, pairwise statistical tests with multiple comparison correction, and several decision tree algorithms, in order to choose the most prominent EEG features from a single sensor. A pilot study was conducted to record EEG signals from Alzheimer’s disease (AD) patients and healthy age-matched control (CTL) subjects using a single dry electrode device during several eyes-closed (EC) and eyes-open (EO) resting conditions. We computed the power spectrum distribution properties and wavelet and sample entropy of the wavelet coefficients time series at scale ranges approximately corresponding to the major brain frequency bands. A predictive index was developed using the results from statistical tests and decision tree algorithms to identify the most reliable significant features of the AD patients when compared to healthy controls. The three most dominant features were identified as larger absolute mean power and larger standard deviation of the wavelet scales corresponding to 4–8xa0Hz (


northeast bioengineering conference | 2012

Power based analysis of single-electrode human EEG recordings using continuous wavelet transform

Parham Ghorbanian; David M. Devilbiss; Adam J. Simon; Hashem Ashrafiuon


Biomedical Signal Processing and Control | 2015

A phenomenological model of EEG based on the dynamics of a stochastic Duffing-van der Pol oscillator network

Parham Ghorbanian; Subramanian Ramakrishnan; Alan M. Whitman; Hashem Ashrafiuon

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ASME 2013 Dynamic Systems and Control Conference, DSCC 2013 | 2013

STOCHASTIC DYNAMIC MODELING OF THE HUMAN BRAIN EEG SIGNAL

Parham Ghorbanian; Subramanian Ramakrishnan; Adam J. Simon; Hashem Ashrafiuon


ASME 2012 5th Annual Dynamic Systems and Control Conference joint with the JSME 2012 11th Motion and Vibration Conference | 2012

Continuous Wavelet Transform EEG Features of Alzheimer’s Disease

Parham Ghorbanian; David M. Devilbiss; Adam J. Simon; Allan L. Bernstein; Terry Hess; Hashem Ashrafiuon

θ) during EO and lower wavelet entropy of the wavelet scales corresponding to 8–12xa0Hz (


international conference of the ieee engineering in medicine and biology society | 2014

Stochastic Coupled Oscillator Model of EEG for Alzheimer's Disease

Parham Ghorbanian; Subramanian Ramakrishnan; Hashem Ashrafiuon


Volume 2: Dynamic Modeling and Diagnostics in Biomedical Systems; Dynamics and Control of Wind Energy Systems; Vehicle Energy Management Optimization; Energy Storage, Optimization; Transportation and Grid Applications; Estimation and Identification Methods, Tracking, Detection, Alternative Propulsion Systems; Ground and Space Vehicle Dynamics; Intelligent Transportation Systems and Control; Energy Harvesting; Modeling and Control for Thermo-Fluid Applications, IC Engines, Manufacturing | 2014

Nonlinear Dynamic Analysis of EEG Using a Stochastic Duffing-van der Pol Oscillator Model

Parham Ghorbanian; Subramanian Ramakrishnan; Alan M. Whitman; Hashem Ashrafiuon

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Volume 2: Dynamic Modeling and Diagnostics in Biomedical Systems; Dynamics and Control of Wind Energy Systems; Vehicle Energy Management Optimization; Energy Storage, Optimization; Transportation and Grid Applications; Estimation and Identification Methods, Tracking, Detection, Alternative Propulsion Systems; Ground and Space Vehicle Dynamics; Intelligent Transportation Systems and Control; Energy Harvesting; Modeling and Control for Thermo-Fluid Applications, IC Engines, Manufacturing | 2014

Stochastic Oscillator Model of EEG Based on Information Content and Complexity

Parham Ghorbanian; Subramanian Ramakrishnan; Hashem Ashrafiuon

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Adam J. Simon

United States Military Academy

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