A Depression Prediction Algorithm Based on Spatiotemporal Feature of EEG Signal.

IF 2.7 Q2 MANAGEMENT
Wei Liu, Kebin Jia, Zhuozheng Wang, Zhuo Ma
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引用次数: 0

Abstract

Depression has gradually become the most common mental disorder in the world. The accuracy of its diagnosis may be affected by many factors, while the primary diagnosis seems to be difficult to define. Finding a way to identify depression by satisfying both objective and effective conditions is an urgent issue. In this paper, a strategy for predicting depression based on spatiotemporal features is proposed, and is expected to be used in the auxiliary diagnosis of depression. Firstly, electroencephalogram (EEG) signals were denoised through the filter to obtain the power spectra of the three corresponding frequency ranges, Theta, Alpha and Beta. Using orthogonal projection, the spatial positions of the electrodes were mapped to the brainpower spectrum, thereby obtaining three brain maps with spatial information. Then, the three brain maps were superimposed on a new brain map with frequency domain and spatial characteristics. A Convolutional Neural Network (CNN) and Gated Recurrent Unit (GRU) were applied to extract the sequential feature. The proposed strategy was validated with a public EEG dataset, achieving an accuracy of 89.63% and an accuracy of 88.56% with the private dataset. The network had less complexity with only six layers. The results show that our strategy is credible, less complex and useful in predicting depression using EEG signals.

基于脑电信号时空特征的抑郁预测算法
抑郁症已逐渐成为世界上最常见的精神疾病。其诊断的准确性可能受到多种因素的影响,而主要诊断似乎又难以界定。找到一种既能满足客观条件又能有效识别抑郁症的方法是一个亟待解决的问题。本文提出了一种基于时空特征的抑郁症预测策略,有望用于抑郁症的辅助诊断。首先,通过滤波器对脑电图(EEG)信号进行去噪处理,得到 Theta、Alpha 和 Beta 三个相应频率范围的功率谱。利用正交投影法,将电极的空间位置映射到脑功率谱上,从而得到三个具有空间信息的脑图。然后,将这三个脑图叠加到一个具有频域和空间特征的新脑图上。卷积神经网络(CNN)和门控递归单元(GRU)被用于提取序列特征。所提出的策略在公共脑电图数据集上进行了验证,准确率达到 89.63%,在私人数据集上的准确率为 88.56%。该网络只有六层,复杂度较低。结果表明,我们的策略在利用脑电信号预测抑郁症方面可信度高、复杂度低且有用。
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来源期刊
CiteScore
5.60
自引率
12.00%
发文量
53
期刊介绍: In today''s competitive business and industrial environment, it is essential to have an academic journal offering the most current theoretical knowledge on quality and reliability to ensure that top management is fully conversant with new thinking, techniques and developments in the field. The International Journal of Quality & Reliability Management (IJQRM) deals with all aspects of business improvements and with all aspects of manufacturing and services, from the training of (senior) managers, to innovations in organising and processing to raise standards of product and service quality. It is this unique blend of theoretical knowledge and managerial relevance that makes IJQRM a valuable resource for managers striving for higher standards.Coverage includes: -Reliability, availability & maintenance -Gauging, calibration & measurement -Life cycle costing & sustainability -Reliability Management of Systems -Service Quality -Green Marketing -Product liability -Product testing techniques & systems -Quality function deployment -Reliability & quality education & training -Productivity improvement -Performance improvement -(Regulatory) standards for quality & Quality Awards -Statistical process control -System modelling -Teamwork -Quality data & datamining
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