利用脑电图信号预测重度抑郁症患者重复经颅磁刺激治疗反应的图解分析法

IF 1 Q4 NEUROSCIENCES
Behrouz Nobakhsh, Ahmad Shalbaf, Reza Rostami, Reza Kazemi
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引用次数: 0

摘要

简介重复经颅磁刺激(rTMS)是治疗耐药性重度抑郁症(MDD)患者的一种非药物疗法。由于经颅磁刺激治疗的成功率约为 50%-55%,因此有必要在开始治疗前根据脑电图(EEG)信号预测治疗结果,从而确定有效的生物标志物,减轻医疗中心的负担:为此,研究人员记录了 34 名耐药 MDD 患者静息状态下 19 个通道的预处理脑电图数据。然后,所有患者都接受了20次经颅磁刺激治疗,并将经颅磁刺激治疗前后贝克抑郁量表(BDI-II)总分减少至少50%作为参考。本研究采用直接定向传递函数(dDTF)方法,从患者治疗前的脑电图数据中分别确定所有频段的有效脑连接特征。然后,用dDTF方法将大脑功能连接模式建模为图,并用局部图论指标(包括度数、外度数、内度数、强度、外强度、内强度和间度中心性)进行检验:结果表明,Fp2节点和δ频段的间度中心性指数是预测耐药MDD患者经颅磁刺激治疗结果的最佳生物标志物,其接收者工作特征曲线下面积值最高,为0.85:结论:所提出的方法研究了可用于预测耐药 MDD 患者经颅磁刺激治疗效果的重要生物标志物,有助于临床决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph-based Analysis to Predict Repetitive Transcranial Magnetic Stimulation Treatment Response in Patients With Major Depressive Disorder Using EEG Signals.

Introduction: Repetitive transcranial magnetic stimulation (rTMS) is a non-pharmacological treatment for drug-resistant major depressive disorder (MDD) patients. Since the success rate of rTMS treatment is about 50%-55%, it is essential to predict the treatment outcome before starting based on electroencephalogram (EEG) signals, leading to identifying effective biomarkers and reducing the burden of health care centers.

Methods: To this end, pretreatment EEG data with 19 channels in the resting state from 34 drug-resistant MDD patients were recorded. Then, all patients received 20 sessions of rTMS treatment, and a reduction of at least 50% in the total beck depression inventory (BDI-II) score before and after the rTMS treatment was defined as a reference. In the current study, effective brain connectivity features were determined by the direct directed transfer function (dDTF) method from patients' pretreatment EEG data in all frequency bands separately. Then, the brain functional connectivity patterns were modeled as graphs by the dDTF method and examined with the local graph theory indices, including degree, out-degree, in-degree, strength, out-strength, in-strength, and betweenness centrality.

Results: The results indicated that the betweenness centrality index in the Fp2 node and the δ frequency band are the best biomarkers, with the highest area under the receiver operating characteristic curve value of 0.85 for predicting the rTMS treatment outcome in drug-resistant MDD patients.

Conclusion: The proposed method investigated the significant biomarkers that can be used to predict the rTMS treatment outcome in drug-resistant MDD patients and help clinical decisions.

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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
64
审稿时长
4 weeks
期刊介绍: BCN is an international multidisciplinary journal that publishes editorials, original full-length research articles, short communications, reviews, methodological papers, commentaries, perspectives and “news and reports” in the broad fields of developmental, molecular, cellular, system, computational, behavioral, cognitive, and clinical neuroscience. No area in the neural related sciences is excluded from consideration, although priority is given to studies that provide applied insights into the functioning of the nervous system. BCN aims to advance our understanding of organization and function of the nervous system in health and disease, thereby improving the diagnosis and treatment of neural-related disorders. Manuscripts submitted to BCN should describe novel results generated by experiments that were guided by clearly defined aims or hypotheses. BCN aims to provide serious ties in interdisciplinary communication, accessibility to a broad readership inside Iran and the region and also in all other international academic sites, effective peer review process, and independence from all possible non-scientific interests. BCN also tries to empower national, regional and international collaborative networks in the field of neuroscience in Iran, Middle East, Central Asia and North Africa and to be the voice of the Iranian and regional neuroscience community in the world of neuroscientists. In this way, the journal encourages submission of editorials, review papers, commentaries, methodological notes and perspectives that address this scope.
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