Abstract

The basic function of the brain is severely affected by alcoholism. For the easy depiction and assessment of the mental condition of a human brain, Electroencephalography (EEG) signals are highly useful as it can record and measure the electrical activities of the brain much to the satisfaction of doctors and researchers. Utilizing the standard conventional techniques is quite hectic to derive the useful information as these signals are highly non-linear and non-stationary in nature. While recording the EEG signals, the activities of the neurons are recorded from various scalp regions which has varied characteristics and has a very low magnitude. Therefore, human interpretation of such signals is very difficult and consumes a lot of time. Hence, with the advent of Computer Aided Diagnosis (CAD) Techniques, identifying the normal versus alcoholic EEG signals has been of great utility in the medical field. In this work, we perform the initial clustering of the alcoholic EEG signals by means of using Correlation Dimension (CD) for easy feature extraction and then the suitable features are selected in it by means of employing various distance metrics like correlation distance, city block distance, cosine distance and chebyshev distance. Proceeding in such a methodology aids and assures that a good discrimination could be achieved between normal and alcoholic EEG signals using non-linear features. Finally, classification is then carried out with the suitable classifiers chosen such as Adaboost.RT classifier, the proposed Modified Adaboost.RT classifier by means of introducing Ridge and Lasso based soft thresholding technique, Random Forest with bootstrap resampling technique, Artificial Neural Networks (ANN) such as Radial Basis Functions (RBF) and Multi-Layer Perceptron (MLP), Support Vector Machine (SVM) with Linear, Polynomial and RBF Kernel, Naïve Bayesian Classifier (NBC), K-means classifier, and K Nearest Neighbor (KNN) Classifier and the results are analyzed. Results report a comparatively high classification accuracy of about 98.99% when correlation distance metrics are utilized with CD and the proposed Modified Adaboost.RT classifier using Ridge based soft thresholding technique.

Highlights

  • One of the most common kinds of mental abuse is by means of both acute and chronic alcoholism [1]

  • By utilizing the clustering technique through means of Correlation Dimension (CD) method and utilizing distance metrics as suitable feature extraction technique, it is classified with the help of post classifiers

  • About twelve different classifiers were utilized for the classification of alcoholism from EEG signals and the results show that when CD is utilized with correlation distance metrics and classified with Ridge based Modified Adaboost.RT with soft thresholding a good classification accuracy of 98.99% is obtained and when it is classified with Lasso based Modified Adaboost.RT with soft thresholding a good classification accuracy of 98.22% is obtained

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Summary

Introduction

One of the most common kinds of mental abuse is by means of both acute and chronic alcoholism [1]. Too much of alcohol consumption leads to serious behavioral and cognitive problems in the human body by especially affecting the peripheral and central nervous systems. Alcohol-related cancers are on the significant rise affecting vital organs like stomach, liver, kidneys etc [4]. Alcoholism is partially responsible for causing stomach ulcers, liver cirrhosis, pancreatic and gall bladder problems too. Genes and psychology contribute a lot to alcoholism. Because of such problems, alcoholism has to be definitely addressed in prominence so that early detection of it through simple and non-invasive techniques can save precious human lives [6]. It is difficult to assess the cases related to alcoholism.

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