Classifying Alcoholics and Control Patients Using Deep Learning and Peak Visualization Method

Asim Fayyaz, Muaz Maqbool, M. Saeed
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引用次数: 5

Abstract

A lot of advancements have been made in the field of Brain Computer Interfaces (BCI) using machine and deep learning. This paper presents a novel preprocessing technique to process Electroencephalography (EEG) signals in time domain. The proposed methodology, (Peak Visualization Method) (PVM) is based on selecting peaks with distinctive width and height range in order to perform better classification. PVM uses multiple machine learning techniques such as Random Forest, Logistic Regression and Support Vector Machine (SVM), Naive Bayes in order to find the most discriminating ranges. Moreover, selected range peaks are further used to compute features like indices of peaks, prominence of peak, contour heights, relative maxima, relative minima, local maxima and local minima. The extracted features were used as training and test data for a competitive 5-fold cross-validated analysis with Long Short Term Memory (LSTM) network. A publicly available EEG dataset for alcoholic and non-alcoholic classification was used to compare the proposed technique with state of the art EEG-NET deep learning model. In order to visualize the generalized performance of proposed system we use award winning dimensionality reduction technique t-Distributed Stochastic Neighbor Embedding (t-SNE) on the features extracted by EEGLSTM and show how our model's activations are classified in alcoholic and non-alcoholic categories. The reduced features are visualized into two dimensions.Features extracted using PVM gives an average accuracy of 90% on 5 folds beating the current state of the art EEG-NET, which manages to achieve an average accuracy of 88% on this dataset.
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利用深度学习和峰值可视化方法对酗酒者和对照患者进行分类
利用机器学习和深度学习,脑机接口(BCI)领域取得了许多进展。提出了一种对脑电图信号进行时域预处理的新方法。本文提出的峰可视化方法(Peak Visualization Method, PVM)是基于选择具有不同宽度和高度范围的峰来进行更好的分类。PVM使用多种机器学习技术,如随机森林,逻辑回归和支持向量机(SVM),朴素贝叶斯,以找到最具判别性的范围。此外,选择的范围峰值进一步用于计算峰值指数、峰值突出、轮廓高度、相对最大值、相对最小值、局部最大值和局部最小值等特征。提取的特征被用作训练和测试数据,用于与长短期记忆(LSTM)网络进行竞争性的5倍交叉验证分析。使用公开可用的酒精和非酒精分类脑电图数据集将所提出的技术与最先进的EEG- net深度学习模型进行比较。为了可视化所提出系统的总体性能,我们在EEGLSTM提取的特征上使用了获奖的降维技术t-分布随机邻居嵌入(t-SNE),并展示了我们的模型的激活如何被分类为酒精和非酒精类别。简化后的特征被可视化为二维。使用PVM提取的特征在5倍上给出了90%的平均准确率,超过了目前最先进的EEG-NET,后者在该数据集上实现了88%的平均准确率。
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