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远程评估重度抑郁症(RADAR-MDD)的疾病和复发情况:一项多中心前瞻性队列研究方案。

Remote assessment of disease and relapse in major depressive disorder (RADAR-MDD): a multi-centre prospective cohort study protocol.

机构信息

King's College London, Institute of Psychiatry, Psychology and Neuroscience, London, UK.

IRCCS Istituto Centro San Giovanni di Dio Fatebenefratelli, Brescia, Italy.

出版信息

BMC Psychiatry. 2019 Feb 18;19(1):72. doi: 10.1186/s12888-019-2049-z.

Abstract

BACKGROUND

There is a growing body of literature highlighting the role that wearable and mobile remote measurement technology (RMT) can play in measuring symptoms of major depressive disorder (MDD). Outcomes assessment typically relies on self-report, which can be biased by dysfunctional perceptions and current symptom severity. Predictors of depressive relapse include disrupted sleep, reduced sociability, physical activity, changes in mood, prosody and cognitive function, which are all amenable to measurement via RMT. This study aims to: 1) determine the usability, feasibility and acceptability of RMT; 2) improve and refine clinical outcome measurement using RMT to identify current clinical state; 3) determine whether RMT can provide information predictive of depressive relapse and other critical outcomes.

METHODS

RADAR-MDD is a multi-site prospective cohort study, aiming to recruit 600 participants with a history of depressive disorder across three sites: London, Amsterdam and Barcelona. Participants will be asked to wear a wrist-worn activity tracker and download several apps onto their smartphones. These apps will be used to either collect data passively from existing smartphone sensors, or to deliver questionnaires, cognitive tasks, and speech assessments. The wearable device, smartphone sensors and questionnaires will collect data for up to 2-years about participants' sleep, physical activity, stress, mood, sociability, speech patterns, and cognitive function. The primary outcome of interest is MDD relapse, defined via the Inventory of Depressive Symptomatology- Self-Report questionnaire (IDS-SR) and the World Health Organisation's self-reported Composite International Diagnostic Interview (CIDI-SF).

DISCUSSION

This study aims to provide insight into the early predictors of major depressive relapse, measured unobtrusively via RMT. If found to be acceptable to patients and other key stakeholders and able to provide clinically useful information predictive of future deterioration, RMT has potential to change the way in which depression and other long-term conditions are measured and managed.

摘要

背景

越来越多的文献强调可穿戴和移动远程测量技术 (RMT) 在测量重度抑郁症 (MDD) 症状方面的作用。结果评估通常依赖于自我报告,而自我报告可能会受到功能障碍的感知和当前症状严重程度的影响。抑郁复发的预测因素包括睡眠中断、社交减少、身体活动减少、情绪、韵律和认知功能的变化,这些都可以通过 RMT 进行测量。本研究旨在:1) 确定 RMT 的可用性、可行性和可接受性;2) 使用 RMT 改进和完善临床结果测量,以确定当前的临床状态;3) 确定 RMT 是否可以提供与抑郁复发和其他关键结果相关的信息。

方法

RADAR-MDD 是一项多站点前瞻性队列研究,旨在招募来自伦敦、阿姆斯特丹和巴塞罗那三个地点的 600 名有抑郁病史的参与者。参与者将被要求佩戴腕戴式活动追踪器,并在智能手机上下载几个应用程序。这些应用程序将用于从现有智能手机传感器被动收集数据,或提供问卷、认知任务和语音评估。可穿戴设备、智能手机传感器和问卷将在长达 2 年的时间内收集有关参与者睡眠、身体活动、压力、情绪、社交、语音模式和认知功能的数据。主要研究结果是 MDD 复发,通过抑郁症状自评量表(IDS-SR)和世界卫生组织的自我报告综合国际诊断访谈(CIDI-SF)来定义。

讨论

本研究旨在通过 RMT 提供对重度抑郁症复发的早期预测因素的深入了解。如果被患者和其他利益相关者接受,并能够提供可预测未来恶化的有临床价值的信息,那么 RMT 有可能改变测量和管理抑郁症和其他长期疾病的方式。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/90bc/6379954/313bf717a010/12888_2019_2049_Fig1_HTML.jpg

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