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Resting-state global EEG connectivity predicts depression and anxiety severity

机译:静止状态的全球脑电连通性可预测抑郁症和焦虑症的严重程度

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There is a recent interest in finding neurophysiological biomarkers which will facilitate the diagnosis and understanding of the neural basis of different psychiatric disorders. In this paper, we evaluated the resting-state global EEG connectivity as a potential biomarker for depressive and anxiety symptoms. For this, we evaluated a population of 119 subjects, including 75 healthy subjects and 44 patients with major depressive disorder. We calculated the global connectivity (spectral coherence) in a setup of 60 EEG channels, for six different spectral bands: theta, alpha1, alpha2, beta1, beta2, and gamma. These global connectivity scores were used to train a Support Vector Regressor to predict symptoms measured by the Beck Depression Inventory (BDI) and the Spielberger Trait Anxiety Inventory (TAI). Experiments showed a significant prediction of both symptoms, with a mean absolute error (MAE) of 8.07±6.98 and 11.52±8.7 points, respectively. Among the most discriminating features, the global connectivity in the alpha2 band (10.0-12.0Hz) presented significantly positive Spearman’s correlation with the depressive (rho = 0.32, pFDR <0.01), and the anxiety symptoms (rho = 0.26, pFDR<0.01).Clinical relevance—This study demonstrates that EEG global connectivity can be used to predict depression and anxiety symptoms measured by widely used questionnaires.
机译:最近对寻找神经生理生物标记物感兴趣,这将有助于对不同精神疾病的神经基础的诊断和理解。在本文中,我们评估了静息状态下的全脑电图连通性,将其作为抑郁和焦虑症状的潜在生物标记。为此,我们评估了119名受试者的人群,其中包括75名健康受试者和44名重度抑郁症患者。我们在60个EEG通道的设置中,针对六个不同的光谱带:theta,alpha1,alpha2,beta1,beta2和gamma,计算了全局连通性(光谱相干性)。这些全局连通性分数用于训练支持向量回归器,以预测由贝克抑郁量表(BDI)和斯皮尔伯格特质焦虑量表(TAI)测得的症状。实验表明,两种症状都有明显的预测,平均绝对误差(MAE)分别为8.07±6.98和11.52±8.7点。在最明显的特征中,alpha2频段(10.0-12.0Hz)的全局连通性显示出Spearman与抑郁症的正相关性(rho = 0.32,p FDR <0.01)和焦虑症状(rho = 0.26,p FDR <0.01)。临床相关性—这项研究表明,EEG的整体连通性可用于预测由广泛使用的调查表测得的抑郁和焦虑症状。

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