MDD-SSTNet: detecting major depressive disorder by exploring spectral-spatial-temporal information on resting-state electroencephalography data based on deep neural network.

IF 2.9 2区 医学 Q2 NEUROSCIENCES Cerebral cortex Pub Date : 2025-01-22 DOI:10.1093/cercor/bhae505
Qiurong Chen, Min Xia, Jinfei Li, Yiqian Luo, Xiuzhu Wang, Fali Li, Yi Liang, Yangsong Zhang
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Abstract

Major depressive disorder (MDD) is a psychiatric disorder characterized by persistent lethargy that can lead to suicide in severe cases. Hence, timely and accurate diagnosis and treatment are crucial. Previous neuroscience studies have demonstrated that major depressive disorder subjects exhibit topological brain network changes and different temporal electroencephalography (EEG) characteristics compared to healthy controls. Based on these phenomena, we proposed a novel model, termed as MDD-SSTNet, for detecting major depressive disorder by exploring spectral-spatial-temporal information from resting-state EEG with deep convolutional neural network. Firstly, MDD-SSTNet used the Sinc filter to obtain specific frequency band features from pre-processed EEG data. Secondly, two parallel branches were used to extract temporal and spatial features through convolution and other operations. Finally, the model was trained with a combined loss function of center loss and Binary Cross-Entropy Loss. Using leave-one-subject-out cross-validation on the HUSM dataset and MODMA dataset, the MDD-SSTNet model outperformed six baseline models, achieving average classification accuracies of 93.85% and 65.08%, respectively. These results indicate that MDD-SSTNet could effectively mine spatial-temporal difference information between major depressive disorder subjects and healthy control subjects, and it holds promise to provide an efficient approach for MDD detection with EEG data.

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MDD-SSTNet:基于深度神经网络的静息状态脑电图数据的频谱-时空信息挖掘检测重度抑郁症。
重度抑郁症(MDD)是一种以持续嗜睡为特征的精神疾病,严重时可导致自杀。因此,及时准确的诊断和治疗至关重要。先前的神经科学研究表明,与健康对照相比,重度抑郁症患者表现出脑拓扑网络变化和不同的颞叶脑电图特征。基于这些现象,我们提出了一种基于深度卷积神经网络挖掘静息状态脑电图频谱-时空信息的重性抑郁症检测模型MDD-SSTNet。首先,MDD-SSTNet利用Sinc滤波器从预处理的脑电数据中获取特定频带特征;其次,利用两个平行分支,通过卷积等操作提取时空特征;最后,利用中心损失和二元交叉熵损失的组合损失函数对模型进行训练。通过对HUSM数据集和MODMA数据集进行留一主体交叉验证,MDD-SSTNet模型优于6个基线模型,平均分类准确率分别达到93.85%和65.08%。上述结果表明,MDD- sstnet能够有效挖掘重度抑郁症被试与健康对照组的时空差异信息,有望为重度抑郁症脑电检测提供一种有效的方法。
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来源期刊
Cerebral cortex
Cerebral cortex 医学-神经科学
CiteScore
6.30
自引率
8.10%
发文量
510
审稿时长
2 months
期刊介绍: Cerebral Cortex publishes papers on the development, organization, plasticity, and function of the cerebral cortex, including the hippocampus. Studies with clear relevance to the cerebral cortex, such as the thalamocortical relationship or cortico-subcortical interactions, are also included. The journal is multidisciplinary and covers the large variety of modern neurobiological and neuropsychological techniques, including anatomy, biochemistry, molecular neurobiology, electrophysiology, behavior, artificial intelligence, and theoretical modeling. In addition to research articles, special features such as brief reviews, book reviews, and commentaries are included.
期刊最新文献
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