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基于自我报告问卷和脑电图生物标志物对非临床样本中季节性情绪波动的可预测性

Predictability of Seasonal Mood Fluctuations Based on Self-Report Questionnaires and EEG Biomarkers in a Non-clinical Sample.

作者信息

Höller Yvonne, Urbschat Maeva Marlene, Kristófersson Gísli Kort, Ólafsson Ragnar Pétur

机构信息

Faculty of Psychology, University of Akureyri, Akureyri, Iceland.

School of Health Sciences, University of Akureyri, Akureyri, Iceland.

出版信息

Front Psychiatry. 2022 Apr 8;13:870079. doi: 10.3389/fpsyt.2022.870079. eCollection 2022.

Abstract

Induced by decreasing light, people affected by seasonal mood fluctuations may suffer from low energy, have low interest in activities, experience changes in weight, insomnia, difficulties in concentration, depression, and suicidal thoughts. Few studies have been conducted in search for biological predictors of seasonal mood fluctuations in the brain, such as EEG oscillations. A sample of 64 participants was examined with questionnaires and electroencephalography in summer. In winter, a follow-up survey was recorded and participants were grouped into those with at least mild ( = 18) and at least moderate ( = 11) mood decline and those without self-reported depressive symptoms both in summer and in winter ( = 46). A support vector machine was trained to predict mood decline by either EEG biomarkers alone, questionnaire data from baseline alone, or a combination of the two. Leave-one-out-cross validation with lasso regularization was used with logistic regression to fit a model. The accuracy for classification for at least mild/moderate mood decline was 77/82% for questionnaire data, 72/82% for EEG alone, and 81/86% for EEG combined with questionnaire data. Self-report data was more conclusive than EEG biomarkers recorded in summer for prediction of worsening of depressive symptoms in winter but it is advantageous to combine EEG with psychological assessment to boost predictive performance.

摘要

受光照减少影响,患有季节性情绪波动的人可能会出现精力不足、对活动兴趣低落、体重变化、失眠、注意力不集中、抑郁以及自杀念头等症状。针对大脑中季节性情绪波动的生物学预测指标,如脑电图振荡,进行的研究较少。在夏季,对64名参与者进行了问卷调查和脑电图检查。冬季进行了随访调查,参与者被分为至少有轻度(=18)和至少有中度(=11)情绪下降的人群,以及在夏季和冬季均无自我报告抑郁症状的人群(=46)。训练了一个支持向量机,通过单独的脑电图生物标志物、单独的基线问卷数据或两者的组合来预测情绪下降。使用带有套索正则化的留一法交叉验证和逻辑回归来拟合模型。对于至少轻度/中度情绪下降的分类准确率,问卷数据为77/82%,单独脑电图为72/82%,脑电图与问卷数据组合为81/86%。在预测冬季抑郁症状恶化方面,自我报告数据比夏季记录的脑电图生物标志物更具决定性,但将脑电图与心理评估相结合有利于提高预测性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b564/9030950/e661f1f8e1ce/fpsyt-13-870079-g0001.jpg

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