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构建抑郁症早期预警系统:WARN-D研究的基本原理、目标与方法

Building an Early Warning System for Depression: Rationale, Objectives, and Methods of the WARN-D Study.

作者信息

Fried Eiko I, Proppert Ricarda K K, Rieble Carlotta L

机构信息

Department of Clinical Psychology, Leiden University, Leiden, The Netherlands.

出版信息

Clin Psychol Eur. 2023 Sep 29;5(3):e10075. doi: 10.32872/cpe.10075. eCollection 2023 Sep.

Abstract

BACKGROUND

Depression is common, debilitating, often chronic, and affects young people disproportionately. Given that only 50% of patients improve under initial treatment, experts agree that prevention is the most effective way to change depression's global disease burden. The biggest barrier to successful prevention is to identify individuals at risk for depression in the near future. To close this gap, this protocol paper introduces the WARN-D study, our effort to build a personalized early warning system for depression.

METHOD

To develop the system, we follow around 2,000 students over 2 years. Stage 1 comprises an extensive baseline assessment in which we collect a broad set of predictors for depression. Stage 2 lasts 3 months and zooms into participants' daily experiences that may predict depression; we use smartwatches to collect digital phenotype data such as sleep and activity, and we use a smartphone app to query participants about their experiences 4 times a day and once every Sunday. In Stage 3, we follow participants for 21 months, assessing transdiagnostic outcomes (including stress, functional impairment, anxiety, and depression) as well as additional predictors for future depression every 3 months. Collected data will be utilized to build a personalized prediction model for depression onset.

DISCUSSION

Overall, WARN-D will function similarly to a weather forecast, with the core difference that one can only seek shelter from a thunderstorm and clean up afterwards, while depression may be successfully prevented before it occurs.

摘要

背景

抑郁症很常见,会导致虚弱,通常呈慢性,且对年轻人的影响尤为严重。鉴于只有50%的患者在初始治疗下病情有所改善,专家们一致认为预防是改变抑郁症全球疾病负担的最有效方法。成功预防的最大障碍是识别近期有抑郁症风险的个体。为了弥补这一差距,本方案文件介绍了WARN-D研究,即我们构建抑郁症个性化预警系统的努力。

方法

为了开发该系统,我们在两年内跟踪了约2000名学生。第一阶段包括广泛的基线评估,我们收集了一系列广泛的抑郁症预测因素。第二阶段持续3个月,聚焦于参与者可能预测抑郁症的日常经历;我们使用智能手表收集睡眠和活动等数字表型数据,并使用智能手机应用程序每天4次、每周日1次询问参与者的经历。在第三阶段,我们对参与者进行21个月的跟踪,每3个月评估一次跨诊断结果(包括压力、功能损害、焦虑和抑郁)以及未来抑郁症的其他预测因素。收集到的数据将用于构建抑郁症发作的个性化预测模型。

讨论

总体而言,WARN-D的功能类似于天气预报,核心区别在于人们只能在雷雨后寻求庇护并进行清理,而抑郁症可以在其发生之前成功预防。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/40fa/10863640/7955088df43a/cpe-05-10075-g01.jpg

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