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脑电图网络拓扑预测重度抑郁症患者的抗抑郁反应。

Electroencephalographic Network Topologies Predict Antidepressant Responses in Patients With Major Depressive Disorder.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2022;30:2577-2588. doi: 10.1109/TNSRE.2022.3203073. Epub 2022 Sep 15.

DOI:10.1109/TNSRE.2022.3203073
PMID:36044502
Abstract

Medication therapy seems to be an effective treatment for major depressive disorder (MDD). However, although the efficacies of various medicines are equal or similar on average, they vary widely among individuals. Therefore, an understanding of methods for the timely evaluation of short-term therapeutic response and prediction of symptom improvement after a specific course of medication at the individual level at the initial stage of treatment is very important. In our present study, we sought to identify a neurobiological signature of the response to short-term antidepressant treatment. Related brain network analysis was applied in resting-state electroencephalogram (EEG) datasets from patients with MDD. The corresponding EEG networks were constructed accordingly and then quantitatively measured to predict the efficacy after eight weeks of medication, as well as to distinguish the therapeutic responders from non-responders. The results of our present study revealed that the corresponding resting-state EEG networks became significantly weaker after one week of treatment, and the eventual medication efficacy was reliably predicted using the changes in those network properties within the one-week medication regimen. Moreover, the corresponding resting-state networks at baseline were also proven to precisely distinguish those responders from other individuals with an accuracy of 96.67% when using the spatial network topologies as the discriminative features. These findings consistently provide a deeper neurobiological understanding of antidepressant treatment and a reliable and quantitative approach for personalized treatment of MDD.

摘要

药物治疗似乎是治疗重度抑郁症(MDD)的有效方法。然而,尽管各种药物的疗效在平均水平上相等或相似,但在个体之间却有很大的差异。因此,了解在治疗初期如何及时评估短期治疗反应以及预测特定疗程药物治疗后症状改善的方法非常重要。在我们目前的研究中,我们试图确定对短期抗抑郁治疗反应的神经生物学特征。对 MDD 患者的静息态脑电图(EEG)数据集进行了相关的脑网络分析。相应的 EEG 网络被构建出来,并进行定量测量,以预测八周药物治疗后的疗效,以及区分治疗应答者和非应答者。我们目前研究的结果表明,在治疗一周后,相应的静息态 EEG 网络变得明显减弱,并且可以使用该治疗方案中网络特性的变化来可靠地预测最终的药物疗效。此外,在使用空间网络拓扑结构作为鉴别特征时,基线时的相应静息态网络也被证明可以准确地区分那些应答者和其他个体,准确率为 96.67%。这些发现为抗抑郁治疗提供了更深入的神经生物学理解,并为 MDD 的个性化治疗提供了可靠和定量的方法。

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Electroencephalographic Network Topologies Predict Antidepressant Responses in Patients With Major Depressive Disorder.脑电图网络拓扑预测重度抑郁症患者的抗抑郁反应。
IEEE Trans Neural Syst Rehabil Eng. 2022;30:2577-2588. doi: 10.1109/TNSRE.2022.3203073. Epub 2022 Sep 15.
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