关键慢化作为抑郁症复发早期预警信号的潜在临床应用研究

IF 1.7 4区 医学 Q3 PSYCHIATRY Journal of Behavior Therapy and Experimental Psychiatry Pub Date : 2023-10-27 DOI:10.1016/j.jbtep.2023.101922
Natasha A. Tonge , J. Philip Miller , Evan D. Kharasch , Eric J. Lenze , Thomas L. Rodebaugh
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引用次数: 0

摘要

背景和目的抑郁症的负担很大程度上是由于治疗进入缓解期后的复发。预测一个人即将复发的抑郁症可以导致及时的干预,以防止复发,减少抑郁症的残疾,成本和自杀风险的沉重负担。抑郁症状之间的自相关关系越来越强,这是一种被称为临界减缓(CSD)现象的信号,已被提出作为预测复发的一种手段。在目前的研究中,四名抑郁症缓解的参与者(其中一人复发)对每天的智能手机调查有抑郁症状。我们使用p-技术因子分析从100多个调查回复中确定抑郁因素。然后,我们使用时变向量自回归和去趋势波动分析来检验CSD的存在。结果我们发现证据表明,CSD为复发的参与者提供了抑郁的早期预警信号,但我们也在未复发的参与者中发现了CSD的假阳性迹象。时变向量自回归分析结果与去趋势波动分析结果不一致。局限性局限性包括使用次要数据和少数参与者每天对抑郁症状的子集有反应。结论scsd为预测抑郁复发提供了一个令人信服的框架,未来的研究应侧重于提高早期预警信号的可靠检测。改善抑郁症的早期检测方法在临床上具有重要意义,因为它将允许及时干预的发展。
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An investigation of the potential clinical utility of critical slowing down as an early warning sign for recurrence of depression

Background and objectives

Much of the burden of depressive illness is due to relapses that occur after treatment into remission. Prediction of an individual's imminent depressive relapse could lead to just-in-time interventions to prevent relapse, reducing depression's substantial burden of disability, costs, and suicide risk. Increasingly strong relationships in the form of autocorrelations between depressive symptoms, a signal of a phenomenon described as critical slowing down (CSD), have been proposed as a means of predicting relapse.

Methods

In the current study, four participants in remission from depression, one of whom relapsed, responded to daily smartphone surveys with depression symptoms. We used p-technique factor analysis to identify depression factors from over 100 survey responses. We then tested for the presence of CSD using time-varying vector autoregression and detrended fluctuation analysis.

Results

We found evidence that CSD provided an early warning sign for depression in the participant who relapsed, but we also detected false positive indications of CSD in participants who did not relapse. Results from time-varying vector autoregression and detrended fluctuation analysis were not in agreement.

Limitations

Limitations include use of secondary data and a small number of participants with daily responding to a subset of depression symptoms.

Conclusions

CSD provides a compelling framework for predicting depressive relapse and future research should focus on improving detection of early warning signs reliably. Improving early detection methods for depression is clinically significant, as it would allow for the development of just-in-time interventions.

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来源期刊
CiteScore
3.60
自引率
5.60%
发文量
48
期刊介绍: The publication of the book Psychotherapy by Reciprocal Inhibition (1958) by the co-founding editor of this Journal, Joseph Wolpe, marked a major change in the understanding and treatment of mental disorders. The book used principles from empirical behavioral science to explain psychopathological phenomena and the resulting explanations were critically tested and used to derive effective treatments. The second half of the 20th century saw this rigorous scientific approach come to fruition. Experimental approaches to psychopathology, in particular those used to test conditioning theories and cognitive theories, have steadily expanded, and experimental analysis of processes characterising and maintaining mental disorders have become an established research area.
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