开发睡眠算法以支持数字医学系统:非介入性、观察性睡眠研究。

IF 4.8 2区 医学 Q1 PSYCHIATRY
Jmir Mental Health Pub Date : 2024-12-20 DOI:10.2196/62959
Jeffrey M Cochran
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引用次数: 0

摘要

背景:睡眠-觉醒模式是严重精神疾病(SMI)患者重要的行为生物标志物,可以洞察他们的健康状况。监测睡眠的黄金标准是多导睡眠图(PSG),这需要睡眠实验室设备;然而,可穿戴传感器技术的进步使现实世界的睡眠-觉醒监测成为可能。目的:本研究的目的是开发一种psg验证的睡眠算法,该算法使用来自可穿戴贴片的加速度计(ACC)和心电图(ECG)数据来准确量化现实环境中的睡眠。方法:在这项非介入性、无显著风险、简化的研究器械豁免、单站点研究中,参与者佩戴可重复使用的可穿戴传感器版本2 (RW2)贴片。RW2贴片是数字医学系统(带传感器的阿立哌唑)的一部分,旨在为精神分裂症、双相I型障碍和重度抑郁症患者提供客观的药物摄入记录。这项研究根据贴片数据开发了一种睡眠算法,不包含任何与研究相关的或数字化的药物。将贴片获取的ACC和ECG数据与PSG数据进行比较,建立机器学习分类模型,以区分清醒和睡眠时间段。PSG数据每隔30秒提供睡眠阶段分类,将其合并为5分钟窗口,并根据窗口内的大多数睡眠阶段标记为睡眠或清醒。每个5分钟窗口的ACC和ECG特征。根据PSG数据最准确预测睡眠参数的算法与市售可穿戴设备进行了比较,以进一步对模型性能进行基准测试。结果:在80名参与者中,60名至少有1晚可分析的ACC和ECG数据(25名健康志愿者和35名诊断为重度精神分裂症的参与者)。总体而言,确定了10,574个有效的5分钟窗口(5854个来自重度精神障碍参与者),84% (n=8830)被归类为睡眠时间超过一半。在测试的3个模型中,条件随机场算法提供了最稳健的睡眠-觉醒分类。性能与最近发表的一篇文章中评估的商用设备的中间50%相当,在预测概率阈值为0.75的情况下,睡眠检测性能为0.93(灵敏度),清醒检测性能为0.60(特异性)。条件随机场算法保留了单个睡眠参数的性能,包括总睡眠时间、睡眠效率和睡眠开始后的觉醒(在评估设备的中间50%到前25%之间)。模型性能较低的唯一参数是睡眠开始延迟(在所有比较器设备的最后25%内)。结论:利用业界最佳实践,我们开发了一种用于RW2补丁的睡眠算法,与psg标记的睡眠数据相比,该算法可以准确地检测睡眠和唤醒窗口。该算法可用于在现实环境中更全面地了解重度精神障碍患者的健康状况,而无需PSG和睡眠实验室。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a Sleep Algxorithm to Support a Digital Medicine System: Noninterventional, Observational Sleep Study.

Background: Sleep-wake patterns are important behavioral biomarkers for patients with serious mental illness (SMI), providing insight into their well-being. The gold standard for monitoring sleep is polysomnography (PSG), which requires a sleep lab facility; however, advances in wearable sensor technology allow for real-world sleep-wake monitoring.

Objective: The goal of this study was to develop a PSG-validated sleep algorithm using accelerometer (ACC) and electrocardiogram (ECG) data from a wearable patch to accurately quantify sleep in a real-world setting.

Methods: In this noninterventional, nonsignificant-risk, abbreviated investigational device exemption, single-site study, participants wore the reusable wearable sensor version 2 (RW2) patch. The RW2 patch is part of a digital medicine system (aripiprazole with sensor) designed to provide objective records of medication ingestion for patients with schizophrenia, bipolar I disorder, and major depressive disorder. This study developed a sleep algorithm from patch data and did not contain any study-related or digitized medication. Patch-acquired ACC and ECG data were compared against PSG data to build machine learning classification models to distinguish periods of wake from sleep. The PSG data provided sleep stage classifications at 30-second intervals, which were combined into 5-minute windows and labeled as sleep or wake based on the majority of sleep stages within the window. ACC and ECG features were derived for each 5-minute window. The algorithm that most accurately predicted sleep parameters against PSG data was compared to commercially available wearable devices to further benchmark model performance.

Results: Of 80 participants enrolled, 60 had at least 1 night of analyzable ACC and ECG data (25 healthy volunteers and 35 participants with diagnosed SMI). Overall, 10,574 valid 5-minute windows were identified (5854 from participants with SMI), and 84% (n=8830) were classified as greater than half sleep. Of the 3 models tested, the conditional random field algorithm provided the most robust sleep-wake classification. Performance was comparable to the middle 50% of commercial devices evaluated in a recent publication, providing a sleep detection performance of 0.93 (sensitivity) and wake detection performance of 0.60 (specificity) at a prediction probability threshold of 0.75. The conditional random field algorithm retained this performance for individual sleep parameters, including total sleep time, sleep efficiency, and wake after sleep onset (within the middle 50% to top 25% of the assessed devices). The only parameter where the model performance was lower was sleep onset latency (within the bottom 25% of all comparator devices).

Conclusions: Using industry-best practices, we developed a sleep algorithm for use with the RW2 patch that can accurately detect sleep and wake windows compared to PSG-labeled sleep data. This algorithm may be used for a more complete understanding of well-being for patients with SMI in a real-world setting, without the need for PSG and a sleep lab.

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来源期刊
Jmir Mental Health
Jmir Mental Health Medicine-Psychiatry and Mental Health
CiteScore
10.80
自引率
3.80%
发文量
104
审稿时长
16 weeks
期刊介绍: JMIR Mental Health (JMH, ISSN 2368-7959) is a PubMed-indexed, peer-reviewed sister journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR Mental Health focusses on digital health and Internet interventions, technologies and electronic innovations (software and hardware) for mental health, addictions, online counselling and behaviour change. This includes formative evaluation and system descriptions, theoretical papers, review papers, viewpoint/vision papers, and rigorous evaluations.
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