以患者为中心开发新型数字睡眠评估工具治疗重度抑郁症的案例。

Q1 Computer Science Digital Biomarkers Pub Date : 2023-09-11 eCollection Date: 2023-01-01 DOI:10.1159/000533523
Nele Peerenboom, Suvekshya Aryal, Jennifer M Blankenship, Tracy Swibas, Yaya Zhai, Ieuan Clay, Kate Lyden
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引用次数: 0

摘要

背景:抑郁症作为全球残疾的主要原因,给公共卫生带来了重大负担。睡眠障碍是影响绝大多数患者的抑郁症的核心症状。尽管如此,它通常无法通过抑郁症治疗得到解决,甚至可能通过一些药物干预而恶化。睡眠障碍会对患者的生活质量产生负面影响,持续的睡眠障碍会增加复发、复发甚至自杀的风险。然而,由于缺乏可靠的低负担客观指标来充分评估这一人群的睡眠障碍,可能改善睡眠问题的新疗法的开发受到了阻碍。总结:开发适用于重度抑郁症临床试验的改进的数字测量工具,可以促进将睡眠作为治疗、临床药物开发和研究的重点。这篇前瞻性文章探索了新的数字测量方法的发展道路,回顾了关于抑郁症患者睡眠意义的现有证据,并总结了现有的睡眠评估方法,包括数字健康技术的使用。关键信息:我们的目标是明确呼吁采取行动并确定新的数字结果指标的资格,这将使评估睡眠障碍成为对患者真正重要的健康方面,促进睡眠成为临床发展的重要结果,并最终确保睡眠紊乱不会成为被遗忘的抑郁症症状。
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The Case for the Patient-Centric Development of Novel Digital Sleep Assessment Tools in Major Depressive Disorder.

Background: Depression imposes a major burden on public health as the leading cause of disability worldwide. Sleep disturbance is a core symptom of depression that affects the vast majority of patients. Nonetheless, it is frequently not resolved by depression treatment and may even be worsened through some pharmaceutical interventions. Disturbed sleep negatively impact patients' quality of life, and persistent sleep disturbance increases the risk of recurrence, relapse, and even suicide. However, the development of novel treatments that might improve sleep problems is hindered by the lack of reliable low-burden objective measures that can adequately assess disturbed sleep in this population.

Summary: Developing improved digital measurement tools that are fit for use in clinical trials for major depressive disorder could promote the inclusion of sleep as a focus for treatment, clinical drug development, and research. This perspective piece explores the path toward the development of novel digital measures, reviews the existing evidence on the meaningfulness of sleep in depression, and summarizes existing methods of sleep assessments, including the use of digital health technologies.

Key messages: Our objective was to make a clear call to action and path forward for the qualification of new digital outcome measures which would enable assessment of sleep disturbance as an aspect of health that truly matters to patients, promoting sleep as an important outcome for clinical development, and ultimately ensure that disturbed sleep will not remain the forgotten symptom of depression.

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来源期刊
Digital Biomarkers
Digital Biomarkers Medicine-Medicine (miscellaneous)
CiteScore
10.60
自引率
0.00%
发文量
12
审稿时长
23 weeks
期刊最新文献
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