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Dive into the research topics where Ali Syed Saad Azhar is active.

Publication


Featured researches published by Ali Syed Saad Azhar.


PLOS ONE | 2017

A wavelet-based technique to predict treatment outcome for Major Depressive Disorder.

Mumtaz Wajid; Xia Likun; Yasin Mohd Azhar Mohd; Ali Syed Saad Azhar; Malik Aamir Saeed

Treatment management for Major Depressive Disorder (MDD) has been challenging. However, electroencephalogram (EEG)-based predictions of antidepressant’s treatment outcome may help during antidepressant’s selection and ultimately improve the quality of life for MDD patients. In this study, a machine learning (ML) method involving pretreatment EEG data was proposed to perform such predictions for Selective Serotonin Reuptake Inhibitor (SSRIs). For this purpose, the acquisition of experimental data involved 34 MDD patients and 30 healthy controls. Consequently, a feature matrix was constructed involving time-frequency decomposition of EEG data based on wavelet transform (WT) analysis, termed as EEG data matrix. However, the resultant EEG data matrix had high dimensionality. Therefore, dimension reduction was performed based on a rank-based feature selection method according to a criterion, i.e., receiver operating characteristic (ROC). As a result, the most significant features were identified and further be utilized during the training and testing of a classification model, i.e., the logistic regression (LR) classifier. Finally, the LR model was validated with 100 iterations of 10-fold cross-validation (10-CV). The classification results were compared with short-time Fourier transform (STFT) analysis, and empirical mode decompositions (EMD). The wavelet features extracted from frontal and temporal EEG data were found statistically significant. In comparison with other time-frequency approaches such as the STFT and EMD, the WT analysis has shown highest classification accuracy, i.e., accuracy = 87.5%, sensitivity = 95%, and specificity = 80%. In conclusion, significant wavelet coefficients extracted from frontal and temporal pre-treatment EEG data involving delta and theta frequency bands may predict antidepressant’s treatment outcome for the MDD patients.


PLOS ONE | 2017

Computation of AUC = sum(Y.*X)-0.5.

Mumtaz Wajid; Xia Likun; Yasin Mohd Azhar Mohd; Ali Syed Saad Azhar; Malik Aamir Saeed


PLOS ONE | 2017

Comparison of classification (R Vs NR) methods among the proposed ML method and the methods presented in the related literature.

Mumtaz Wajid; Xia Likun; Yasin Mohd Azhar Mohd; Ali Syed Saad Azhar; Malik Aamir Saeed


PLOS ONE | 2017

The Matlab code to compute the wavelet coefficients for delta and theta bands.

Mumtaz Wajid; Xia Likun; Yasin Mohd Azhar Mohd; Ali Syed Saad Azhar; Malik Aamir Saeed


PLOS ONE | 2017

A list of discriminating features (Frontal = 9, Temporal = 3, Parietal = 1 and Central = 2).

Mumtaz Wajid; Xia Likun; Yasin Mohd Azhar Mohd; Ali Syed Saad Azhar; Malik Aamir Saeed


PLOS ONE | 2017

Pseudo code for feature ranking method.

Mumtaz Wajid; Xia Likun; Yasin Mohd Azhar Mohd; Ali Syed Saad Azhar; Malik Aamir Saeed


PLOS ONE | 2017

Computation of X = (fp(2:n)-fp(1:n-1)).

Mumtaz Wajid; Xia Likun; Yasin Mohd Azhar Mohd; Ali Syed Saad Azhar; Malik Aamir Saeed


PLOS ONE | 2017

Wavelet Coefficients in the delta and theta frequency bands.

Mumtaz Wajid; Xia Likun; Yasin Mohd Azhar Mohd; Ali Syed Saad Azhar; Malik Aamir Saeed


PLOS ONE | 2017

Multi-resolution decomposition of EEG signal (delta and theta bands) into detail and approximate coefficients.

Mumtaz Wajid; Xia Likun; Yasin Mohd Azhar Mohd; Ali Syed Saad Azhar; Malik Aamir Saeed


PLOS ONE | 2017

Summary of MDD patient’s clinical characteristics.

Mumtaz Wajid; Xia Likun; Yasin Mohd Azhar Mohd; Ali Syed Saad Azhar; Malik Aamir Saeed

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