Graph-based EEG approach for depression prediction: integrating time-frequency complexity and spatial topology

Wei Liu, Kebin Jia, Zhuozheng Wang
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Abstract

Depression has become the prevailing global mental health concern. The accuracy of traditional depression diagnosis methods faces challenges due to diverse factors, making primary identification a complex task. Thus, the imperative lies in developing a method that fulfills objectivity and effectiveness criteria for depression identification. Current research underscores notable disparities in brain activity between individuals with depression and those without. The Electroencephalogram (EEG), as a biologically reflective and easily accessible signal, is widely used to diagnose depression. This article introduces an innovative depression prediction strategy that merges time-frequency complexity and electrode spatial topology to aid in depression diagnosis. Initially, time-frequency complexity and temporal features of the EEG signal are extracted to generate node features for a graph convolutional network. Subsequently, leveraging channel correlation, the brain network adjacency matrix is employed and calculated. The final depression classification is achieved by training and validating a graph convolutional network with graph node features and a brain network adjacency matrix based on channel correlation. The proposed strategy has been validated using two publicly available EEG datasets, MODMA and PRED+CT, achieving notable accuracy rates of 98.30 and 96.51%, respectively. These outcomes affirm the reliability and utility of our proposed strategy in predicting depression using EEG signals. Additionally, the findings substantiate the effectiveness of EEG time-frequency complexity characteristics as valuable biomarkers for depression prediction.
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基于图谱的脑电图抑郁预测方法:整合时间频率复杂性和空间拓扑结构
抑郁症已成为全球普遍关注的精神健康问题。由于各种因素的影响,传统抑郁症诊断方法的准确性面临挑战,使得初级识别成为一项复杂的任务。因此,当务之急是开发一种符合客观性和有效性标准的抑郁症识别方法。目前的研究强调,抑郁症患者和非抑郁症患者的大脑活动存在显著差异。脑电图(EEG)作为一种反映生物特征且易于获取的信号,被广泛用于诊断抑郁症。本文介绍了一种创新的抑郁症预测策略,该策略将时间频率复杂性与电极空间拓扑学相结合,以帮助抑郁症诊断。首先,提取脑电信号的时频复杂性和时间特征,为图卷积网络生成节点特征。随后,利用信道相关性,采用并计算大脑网络邻接矩阵。通过训练和验证具有图节点特征的图卷积网络和基于信道相关性的脑网络邻接矩阵,最终实现抑郁分类。我们使用 MODMA 和 PRED+CT 这两个公开的脑电图数据集对所提出的策略进行了验证,准确率分别达到 98.30% 和 96.51%。这些结果肯定了我们提出的策略在利用脑电信号预测抑郁症方面的可靠性和实用性。此外,研究结果还证实了脑电图时频复杂性特征作为有价值的生物标志物在预测抑郁症方面的有效性。
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