Department of Psychiatry (CA, HJA, MAB, HTK), University of Pittsburgh, Pittsburgh, PA.
Department of Psychiatry (OA), University of Illinois, Chicago, IL.
Am J Geriatr Psychiatry. 2019 Dec;27(12):1316-1330. doi: 10.1016/j.jagp.2019.07.016. Epub 2019 Aug 7.
The significant public health burden associated with late-life depression (LLD) is magnified by the high rates of recurrence. In this manuscript, we review what is known about recurrence risk factors, conceptualize recurrence within a model of homeostatic disequilibrium, and discuss the potential significance and challenges of new research into LLD recurrence. The proposed model is anchored in the allostatic load theory of stress. We review the allostatic response characterized by neural changes in network function and connectivity and physiologic changes in the hypothalamic-pituitary-adrenal axis, autonomic nervous system, immune system, and circadian rhythm. We discuss the role of neural networks' instability following treatment response as a source of downstream disequilibrium, triggering and/or amplifying abnormal stress response, cognitive dysfunction and behavioral changes, ultimately precipitating a full-blown recurrent episode of depression. We propose strategies to identify and capture early change points that signal recurrence risk through mobile technology to collect ecologically measured symptoms, accompanied by automated algorithms that monitor for state shifts (persistent worsening) and variance shifts (increased variability) relative to a patient's baseline. Identifying such change points in relevant sensor data could potentially provide an automated tool that could alert clinicians to at-risk individuals or relevant symptom changes even in a large practice.
与老年期抑郁症(LLD)相关的重大公共卫生负担因高复发率而加剧。在本文中,我们回顾了复发风险因素的相关知识,在体内平衡失衡模型中对复发进行概念化,并讨论了老年期抑郁症复发新研究的潜在意义和挑战。该模型以压力的应激适应理论为基础。我们回顾了神经功能和连接的变化以及下丘脑-垂体-肾上腺轴、自主神经系统、免疫系统和昼夜节律的生理变化为特征的应激适应反应。我们讨论了治疗反应后神经网络不稳定作为下游失衡的来源的作用,引发和/或放大异常应激反应、认知功能障碍和行为改变,最终导致抑郁症的全面复发。我们提出了通过移动技术来识别和捕捉预示复发风险的早期变化点的策略,通过移动技术收集生态测量的症状,同时伴随自动算法来监测相对于患者基线的状态转移(持续恶化)和方差转移(增加的可变性)。在相关传感器数据中识别这些变化点可能提供了一种自动化工具,即使在大型实践中,也可以提醒临床医生注意高危人群或相关症状变化。