关于抑郁症患者接受抗抑郁治疗后 QEEG 变化的 Meta 分析。

IF 1.9 Q3 PSYCHIATRY
Anamika Srivastava, Soumyajit Sanyal, Seema Jaiswal, Shrikant Srivastava
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引用次数: 0

摘要

简介抑郁症诊断和治疗的准确性可使患者获得更好、可能更早的反应和缓解。文献虽然不多,但似乎表明定量脑电图(QEEG)可以预测抗抑郁效果的结果:方法:纳入1990年1月至2019年7月期间发表的文章,包括那些涉及开始服用抗抑郁药物前后的QEEG记录的文章。计算汇总效应大小和波形的亚组分析,以预测对抗抑郁药物的反应:共检索到 572 项结果,其中包括 20 项研究。使用随机效应模型(REM)对数据进行汇总,计算出的效应大小为 0.80(95% CI [0.64-0.97])。样本的异质性较低,Tau² = 0.02; df = 18 (P = .30); I² = 12%。此外,亚组分析表明,θ波段频率比α波段频率更能预测反应(θ波段的标准平均差[SMD]为0.91,而α波段为0.68):结论:QEEG是预测抗抑郁反应的重要指标。在脑电图频率中,θ波段在治疗过程中的变化最为显著。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Meta-analysis on QEEG Changes to Antidepressant Treatment Among Patients with Depression.

Introduction: Diagnostic and treatment accuracy of depression can lead to a better and possibly earlier response and remission in patients. The literature, though scanty, seems to suggest that quantitative electroencephalography (QEEG) can predict the outcome of antidepressant effects.

Methodology: Articles published between January 1990 and July 2019, including those dealing with QEEG recordings before and after the initiation of antidepressant medication, were included. The pooled effect size and subgroup analysis of waveforms were calculated to predict response to antidepressants.

Result: In all, 572 results were retrieved from the searches, of which 20 studies were included. Pooled data using a random-effects model (REM) calculated an effect size of 0.80 (95% CI [0.64-0.97]). Heterogeneity of the sample was low with Tau² = 0.02; df = 18 (P = .30); I² = 12%. Moreover, subgroup analysis showed that theta band frequencies were better at predicting response than alpha band frequencies (the standard mean difference [SMD] for theta was 0.91 compared to 0.68 for alpha waves).

Conclusions: QEEG is a valuable predictor of the antidepressant response. Among the EEG frequencies, the theta band showed the most significant change with treatment.

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来源期刊
CiteScore
4.80
自引率
7.10%
发文量
116
审稿时长
12 weeks
期刊介绍: The Indian Journal of Psychological Medicine (ISSN 0253-7176) was started in 1978 as the official publication of the Indian Psychiatric Society South Zonal Branch. The journal allows free access (Open Access) and is published Bimonthly. The Journal includes but is not limited to review articles, original research, opinions, and letters. The Editor and publisher accept no legal responsibility for any opinions, omissions or errors by the authors, nor do they approve of any product advertised within the journal.
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