University of California, Berkeley, USA.
University of California, Berkeley, USA.
Behav Res Ther. 2020 May;128:103596. doi: 10.1016/j.brat.2020.103596. Epub 2020 Feb 27.
The present study tested a novel, person-specific method for identifying discrete mood profiles from time-series data, and examined the degree to which these profiles could be predicted by lagged mood and anxiety variables and time-based variables, including trends (linear, quadratic, cubic), cycles (12-hr, 24-hr, and 7-day), day of the week, and time of day. We analyzed ambulatory data from 45 individuals with mood and anxiety disorders prior to therapy. Data were collected four-times-daily for at least 30 days. Latent profile analysis was applied person-by-person to discretize each individual's continuous multivariate time series of rumination, worry, fear, anger, irritability, anhedonia, hopelessness, depressed mood, and avoidance. That is, each time point was classified according to its unique blend of emotional states, and latent classes representing discrete mood profiles were identified for each participant. We found that the modal number of latent classes per person was three (mean = 3.04, median = 3), with a range of two to four classes. After splitting each individual's time series into random halves for training and testing, we used elastic net regularization to identify the temporal and lagged predictors of each mood profile's presence or absence in the training set. Prediction accuracy was evaluated in the testing set. Across 127 models, the average area under the curve was 0.77, with sensitivity of 0.81 and specificity of 0.75. Brier scores indicated an average prediction accuracy of 83%.
本研究测试了一种新颖的、个体特异性的方法,用于从时间序列数据中识别离散的情绪特征,并考察了这些特征在多大程度上可以通过滞后的情绪和焦虑变量以及基于时间的变量(包括趋势(线性、二次、三次)、周期(12 小时、24 小时和 7 天)、星期几和一天中的时间)来预测。我们分析了 45 名患有情绪和焦虑障碍的个体在治疗前的动态数据。数据至少每天收集四次,持续 30 天以上。个体逐一进行潜在特征分析,将每个个体连续的多维时间序列的沉思、担忧、恐惧、愤怒、易怒、快感缺失、绝望、抑郁情绪和回避离散化。也就是说,每个时间点根据其独特的情绪状态组合进行分类,并为每个参与者确定代表离散情绪特征的潜在类别。我们发现,每个人的潜在类别数的模态为三(平均值=3.04,中位数=3),范围为两到四个类别。在将每个个体的时间序列随机分成两半进行训练和测试后,我们使用弹性网正则化来识别每个情绪特征在训练集中存在或不存在的时间和滞后预测因子。在测试集中评估预测准确性。在 127 个模型中,平均曲线下面积为 0.77,灵敏度为 0.81,特异性为 0.75。Brier 分数表明平均预测准确率为 83%。