Wallace Meredith L, Frank Ellen, McClung Colleen A, Cote Sarah E, Kendrick Jeremy, Payne Skylar, Frost-Pineda Kimberly, Leach Jeremy, Matthews Mark J, Choudhury Tanzeem, Kupfer David J
Departments of Psychiatry, Statistics and Biostatistics, University of Pittsburgh, Pittsburgh, PA, USA.
Departments of Psychiatry and Psychology, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA.
NPP Digit Psychiatry Neurosci. 2024;2. doi: 10.1038/s44277-024-00015-8. Epub 2024 Aug 26.
The nature of data obtainable from the commercial smartphone - bolstered by a translational model emphasizing the impact of social and physical zeitgebers on circadian rhythms and mood - offers the possibility of scalable and objective vital signs for major depression. Our objective was to explore associations between passively sensed behavioral smartphone data and repeatedly measured depressive symptoms to suggest which features could eventually lead towards vital signs for depression. We collected continuous behavioral data and bi-weekly depressive symptoms (PHQ-8) from 131 psychiatric outpatients with a lifetime DSM-5 diagnosis of depression and/or anxiety over a 16-week period. Using linear mixed-effects models, we related depressive symptoms to concurrent passively sensed behavioral summary features (mean and variability of sleep, activity, and social engagement metrics), considering both between- and within-person associations. Individuals with more variable wake-up times across the study reported higher depressive symptoms relative to individuals with less variable wake-up times (B [95% CI] = 1.53 [0.13, 2.93]). On a given week, having a lower step count (-0.16 [-0.32, -0.01]), slower walking rate (-1.46 [-2.60, -0.32]), lower normalized location entropy (-3.01 [-5.51, -0.52]), more time at home (0.05 [0.00, 0.10]), and lower distances traveled (-0.97 [-1.72, -0.22]), relative to one's own typical levels, were each associated with higher depressive symptoms. With replication in larger samples and a clear understanding of how these components are best combined, a behavioral composite measure of depression could potentially offer the kinds of vital signs for psychiatric medicine that have proven invaluable to assessment and decision-making in physical medicine. Clinical Trials Registration: The data that form the basis of this report were collected as part of clinical trial number NCT03152864.
通过强调社会和自然时间线索对昼夜节律和情绪影响的转化模型得到支持的商用智能手机所获取的数据,为重度抑郁症提供了可扩展且客观的生命体征的可能性。我们的目标是探索被动感知的行为智能手机数据与重复测量的抑郁症状之间的关联,以表明哪些特征最终可能导向抑郁症的生命体征。我们在16周的时间里,从131名有终生DSM-5诊断的抑郁症和/或焦虑症的精神科门诊患者中收集了连续的行为数据和每两周一次的抑郁症状(PHQ-8)。使用线性混合效应模型,我们将抑郁症状与同时期被动感知的行为汇总特征(睡眠、活动和社交参与指标的均值和变异性)相关联,同时考虑个体间和个体内的关联。在整个研究中,醒来时间变化较大的个体相对于醒来时间变化较小的个体报告了更高的抑郁症状(B [95% CI] = 1.53 [0.13, 2.93])。在给定的一周内,相对于自己的典型水平,步数较低(-0.16 [-0.32, -0.01])、步行速度较慢(-1.46 [-2.60, -0.32])、归一化位置熵较低(-3.01 [-5.51, -0.52])、在家时间较多(0.05 [0.00, 0.10])以及出行距离较短(-0.97 [-1.72, -0.22]),均与更高的抑郁症状相关。通过在更大样本中进行重复验证以及清楚了解这些成分如何最佳组合,抑郁症的行为综合测量可能潜在地为精神医学提供对身体医学评估和决策已证明非常宝贵的那种生命体征。临床试验注册:构成本报告基础的数据是作为临床试验编号NCT03152864的一部分收集的。