Depression Clinical and Research Program at Massachusetts General Hospital, Boston, MA, USA.
Harvard Medical School, Boston, MA, USA.
Psychol Med. 2023 May;53(7):3124-3132. doi: 10.1017/S0033291721005183. Epub 2021 Dec 23.
Predicting future states of psychopathology such as depressive episodes has been a hallmark initiative in mental health research. Dynamical systems theory has proposed that rises in certain 'early warning signals' (EWSs) in time-series data (e.g. auto-correlation, temporal variance, network connectivity) may precede impending changes in disorder severity. The current study investigates whether in these EWSs over time are associated with future changes in disorder severity among a group of patients with major depressive disorder (MDD).
Thirty-one patients with MDD completed the study, which consisted of daily smartphone-delivered surveys over 8 weeks. Daily positive and negative affect were collected for the time-series analyses. A rolling window approach was used to determine whether rises in auto-correlation of total affect, temporal standard deviation of total affect, and overall network connectivity in individual affect items were predictive of increases in depression symptoms.
Results suggested that rises in auto-correlation were significantly associated with worsening in depression symptoms ( = 0.41, = 0.02). Results indicated that neither rises in temporal standard deviation ( = -0.23, = 0.23) nor in network connectivity ( = -0.12, = 0.59) were associated with changes in depression symptoms.
This study more rigorously examines whether rises in EWSs were associated with future depression symptoms in a larger group of patients with MDD. Results indicated that rises in auto-correlation were the only EWS that was associated with worsening future changes in depression.
预测精神病理学的未来状态,如抑郁发作,一直是精神健康研究的一个标志性举措。动力系统理论提出,时间序列数据中某些“早期预警信号”(EWS)的上升(例如自相关、时间方差、网络连通性)可能预示着疾病严重程度即将发生变化。本研究调查了在一组患有重度抑郁症(MDD)的患者中,这些 EWS 是否与未来疾病严重程度的变化有关。
31 名 MDD 患者完成了这项研究,该研究包括 8 周的智能手机每日问卷调查。每日积极和消极情绪都被收集起来进行时间序列分析。采用滚动窗口方法来确定个体情感项目中总情感的自相关、总情感的时间标准差和整体网络连通性的上升是否预示着抑郁症状的增加。
结果表明,自相关的上升与抑郁症状的恶化显著相关( = 0.41, = 0.02)。结果表明,时间标准差的上升( = -0.23, = 0.23)和网络连通性的上升( = -0.12, = 0.59)均与抑郁症状的变化无关。
这项研究更严格地考察了 EWS 的上升是否与 MDD 患者未来的抑郁症状有关。结果表明,自相关的上升是唯一与未来抑郁变化恶化相关的 EWS。