Early Warning Signals Based on Momentary Affect Dynamics can Expose Nearby Transitions in Depression: A Confirmatory Single-Subject Time-Series Study.

Q2 Psychology
Journal for Person-Oriented Research Pub Date : 2020-09-10 eCollection Date: 2020-01-01 DOI:10.17505/jpor.2020.22042
Marieke Wichers, Arnout C Smit, Evelien Snippe
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引用次数: 39

Abstract

Background: In complex systems early warning signals such as rising autocorrelation, variance and network connectivity are hypothesized to anticipate relevant shifts in a system. For direct evidence hereof in depression, designs are needed in which early warning signals and symptom transitions are prospectively assessed within an individual. Therefore, this study aimed to detect personalized early warning signals preceding the occurrence of a major symptom transition.

Methods: Six single-subject time-series studies were conducted, collecting frequent observations of momentary affective states during a time-period when participants were at increased risk of a symptom transition. Momentary affect states were reported three times a day over three to six months (95-183 days). Depressive symptoms were measured weekly using the Symptom CheckList-90. Presence of sudden symptom transitions was assessed using change point analysis. Early warning signals were analysed using moving window techniques.

Results: As change point analysis revealed a significant and sudden symptom transition in one participant in the studied period, early warning signals were examined in this person. Autocorrelation (r=0·51; p<2.2e-16), and variance (r=0·53; p<2.2e-16) in 'feeling down', and network connectivity (r=0·42; p<2.2e-16) significantly increased a month before this transition occurred. These early warnings also preceded the rise in absolute levels of 'feeling down' and the participant's personal indication of risk for transition.

Conclusions: This study replicated the findings of a previous study and confirmed the presence of rising early warning signals a month before the symptom transition occurred. Results show the potential of early warning signals to improve personalized risk assessment in the field of psychiatry.

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基于瞬时情感动力学的早期预警信号可以揭示抑郁症的近期转变:一项验证性单受试者时间序列研究。
背景:在复杂系统的早期预警信号,如上升的自相关,方差和网络连接被假设为预测系统的相关变化。为了在抑郁症中直接证明这一点,需要设计早期预警信号和症状转变在个体内进行前瞻性评估。因此,本研究旨在检测主要症状转变发生前的个性化预警信号。方法:进行了六项单受试者时间序列研究,收集了参与者在症状转变风险增加的时间段内的瞬时情感状态的频繁观察。在三到六个月(95-183天)的时间里,每天报告三次瞬时影响状态。每周使用症状检查表-90测量抑郁症状。使用变化点分析评估突然症状转变的存在。利用移动窗技术对早期预警信号进行了分析。结果:由于变化点分析显示,在研究期间,一名参与者出现了显著而突然的症状转变,因此对该患者进行了早期预警信号检测。自相关(r = 0·51;P-16),方差(r= 0.53;P-16),网络连通性(r=0·42;P-16)在这种转变发生前一个月显著增加。这些早期预警也先于“情绪低落”的绝对水平上升和参与者个人对转变风险的指示。结论:这项研究重复了先前的研究结果,并证实了在症状转变发生前一个月出现的早期预警信号。结果表明,早期预警信号有可能改善精神病学领域的个性化风险评估。
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来源期刊
Journal for Person-Oriented Research
Journal for Person-Oriented Research Psychology-Psychology (miscellaneous)
CiteScore
2.90
自引率
0.00%
发文量
9
审稿时长
23 weeks
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