Sadiq Muhammad Tariq, Siuly Siuly, Almogren Ahmad, Li Yan, Wen Paul
Advanced Engineering Centre, School of Architecture, Technology and Engineering, University of Brighton, Brighton, BN2 4AT UK.
Institute for Sustainable Industries and Liveable Cities, Victoria University, Melbourne, 3011 Australia.
Health Inf Sci Syst. 2023 Jun 17;11(1):27. doi: 10.1007/s13755-023-00227-w. eCollection 2023 Dec.
Alcoholism is a catastrophic condition that causes brain damage as well as neurological, social, and behavioral difficulties.
This illness is often assessed using the Cut down, Annoyed, Guilty, and Eye-opener examination technique, which assesses the intensity of an alcohol problem. This technique is protracted, arduous, error-prone, and errant.
As a result, the intention of this paper is to design a cutting-edge system for automatically identifying alcoholism utilizing electroencephalography (EEG) signals, that can alleviate these problems and aid practitioners and investigators. First, we investigate the feasibility of using the Fast Walsh-Hadamard transform of EEG signals to explore the unpredictable essence and variability of EEG indicators in the suggested framework. Second, thirty-six linear and nonlinear features for deciphering the dynamic pattern of healthy and alcoholic EEG signals are discovered. Subsequently, we suggested a strategy for selecting powerful features. Finally, nineteen machine learning algorithms and five neural network classifiers are used to assess the overall performance of selected attributes.
The extensive experiments show that the suggested method provides the best classification efficiency, with 97.5% accuracy, 96.7% sensitivity, and 98.3% specificity for the features chosen using the correlation-based FS approach with Recurrent Neural Networks. With recently introduced matrix determinant features, a classification accuracy of 93.3% is also attained. Moreover, we developed a novel index that uses clinically meaningful features to differentiate between healthy and alcoholic categories with a unique integer. This index can assist health care workers, commercial companies, and design engineers in developing a real-time system with 100% classification results for the computerized framework.
酒精中毒是一种灾难性疾病,会导致脑损伤以及神经、社会和行为方面的问题。
这种疾病通常使用“减少饮酒量、烦恼、内疚和晨醒”检查技术进行评估,该技术用于评估酒精问题的严重程度。此技术耗时、费力、容易出错且不准确。
因此,本文旨在设计一种利用脑电图(EEG)信号自动识别酒精中毒的先进系统,该系统可以缓解这些问题并帮助从业者和研究人员。首先,我们研究了在建议的框架中使用EEG信号的快速沃尔什 - 哈达玛变换来探索EEG指标不可预测的本质和变异性的可行性。其次,发现了36个用于解读健康和酒精中毒EEG信号动态模式的线性和非线性特征。随后,我们提出了一种选择强大特征的策略。最后,使用19种机器学习算法和5种神经网络分类器来评估所选属性的整体性能。
广泛的实验表明,所提出的方法提供了最佳的分类效率,对于使用基于相关性的特征选择方法与递归神经网络选择的特征,准确率为97.5%,灵敏度为96.7%,特异性为98.3%。对于最近引入的矩阵行列式特征,也达到了93.3%的分类准确率。此外,我们开发了一种新颖的指标,该指标使用具有临床意义的特征以唯一整数区分健康和酒精中毒类别。该指标可以帮助医护人员、商业公司和设计工程师开发一个针对计算机化框架具有100%分类结果的实时系统。