Abstract

Alcoholism is a widely affected disorder that leads to critical brain deficiencies such as emotional and behavioural impairments. One of the prominent sources to detect alcoholism is by analysing Electroencephalogram (EEG) signals. Previously, most of the works have focused on detecting alcoholism using various machine and deep learning algorithms. This paper has used a novel algorithm named Sliding Singular Spectrum Analysis (S-SSA) to decompose and de-noise the EEG signals. We have considered independent component analysis (ICA) to select the prominent alcoholic and non-alcoholic components from the preprocessed EEG data. Later, these components were used to train and test various machine learning models like SVM, KNN, ANN, GBoost, AdaBoost and XGBoost to classify alcoholic and non-alcoholic EEG signals. The sliding SSA-ICA algorithm helps in reducing the computational time and complexity of the machine learning models. To validate the performance of the ICA algorithm, we have compared the computational time and accuracy of ICA with its counterpart, like principal component analysis (PCA) and linear discriminant analysis (LDA). The proposed algorithm is tested on a publicly available UCI alcoholic EEG dataset. To verify the performance of machine learning models, we have calculated various metrics like accuracy, precision, recall and F1 score. Our work reported the highest accuracy of 98.97% with the XGBoost classifier. The validation of the proposed method is done by comparing the classification metrics with the latest state-of-the-art works.

Highlights

  • E LECTROENCEPHALOGRAM signals are the most important factors to measure the electrical activity of brain which helps in detecting various diseases like epileptic seizures, sleep disorders, alcoholism, Alzheimer’s disease and Parkinson’s disease [1]

  • The output of five ICs for both alcoholic and non-alcoholic EEG signals are shown in Fig. 5 and Fig. 3 respectively

  • To overcome the issues discussed in the above studies, we have proposed a novel algorithm to classify alcoholic and non-alcoholic EEG signals by using sliding singular spectrum analysis (SSA) and independent component analysis (ICA)

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Summary

Introduction

E LECTROENCEPHALOGRAM signals are the most important factors to measure the electrical activity of brain which helps in detecting various diseases like epileptic seizures, sleep disorders, alcoholism, Alzheimer’s disease and Parkinson’s disease [1]. The most concerning disease in the society is alcoholism. This disease is the main cause for various incidents like road accidents, harassments, rapes and violence. As per the reports by world health organisation (WHO), humanity witnesses over 3.3 million deaths a year. Manuscript received October 6, 2021; accepted October 14, 2021. Date of publication October 15, 2021; date of current version November 30, 2021. The associate editor coordinating the review of this article and approving it for publication was Dr Ravibabu Mulaveesala.

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