对坚持使用 CPAP 的数据进行的新评估揭示了独特的昼夜模式。

IF 3.5 3区 医学 Q1 CLINICAL NEUROLOGY
Matthew T Scharf, Ioannis P Androulakis
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引用次数: 0

摘要

研究目的:阻塞性睡眠呼吸暂停(OSA)是一种通过持续气道正压(CPAP)疗法有效治疗的普遍病症。临床实践中定期收集的 CPAP 依从性数据包括有关使用持续时间和时间的详细信息。本研究的目的是开发一种系统的方法来测量 CPAP 坚持率数据的昼夜模式,并观察临床队列中是否存在不同的模式:方法:采用机器学习技术分析 CPAP 坚持率数据。方法: 采用机器学习技术分析 CPAP 坚持率数据,评估了 200 名未入选患者的队列,随后进行了聚类分析。将此方法应用于 17 名具有不同视觉模式的患者,以进一步评估其性能:每位患者使用 CPAP 的每个 30 天期间都有四个变量,分别描述开始使用和停止使用 CPAP 的时间,以及在这些时间内使用的一致性。进一步分析发现了六个不同的群组,反映了不同的时间和坚持模式。具体来说,确定了使用时间相对正常的群组和使用时间相对延迟的群组。最后,该方法的应用显示出总体良好的性能,但在描述轮班工人和非 24 节律的能力方面存在局限性:本研究展示了一种从坚持使用 CPAP 的数据中分析昼夜模式的方法。此外,还展示了不同的时间和坚持模式。这些模式对 CPAP 的有益效果的潜在影响需要加以阐明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel assessment of CPAP adherence data reveals distinct diurnal patterns.

Study objectives: Obstructive sleep apnea (OSA) is a prevalent condition effectively treated by continuous positive airway pressure (CPAP) therapy. CPAP adherence data, routinely gathered in clinical practice, include detailed information regarding both duration and timing of use. The purpose of the present study was to develop a systematic way to measure the diurnal pattern of CPAP adherence data and to see if distinct patterns exist in a clinical cohort.

Methods: Machine learning techniques were employed to analyze CPAP adherence data. A cohort of 200 unselected patients was assessed and a cluster analysis was subsequently performed. Application of this methodology to 17 patients with different visually noted patterns was carried out to further assess performance.

Results: Each 30-day period of CPAP use for each patient was characterized by four variables describing the time of day of initiation and discontinuation of CPAP use, as well as the consistency of use during those times. Further analysis identified six distinct clusters, reflecting different timing and adherence patterns. Specifically, clusters with relatively normal timing versus delayed timing were identified. Finally, application of this methodology showed generally good performance with limitations in the ability to characterize shift worker and non-24 rhythms.

Conclusions: This study demonstrates a methodology for analysis of diurnal patterns from CPAP adherence data. Furthermore, distinct timing and adherence patterns are demonstrated. The potential impact of these patterns on the beneficial effects of CPAP requires elucidation.

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来源期刊
CiteScore
6.20
自引率
7.00%
发文量
321
审稿时长
1 months
期刊介绍: Journal of Clinical Sleep Medicine focuses on clinical sleep medicine. Its emphasis is publication of papers with direct applicability and/or relevance to the clinical practice of sleep medicine. This includes clinical trials, clinical reviews, clinical commentary and debate, medical economic/practice perspectives, case series and novel/interesting case reports. In addition, the journal will publish proceedings from conferences, workshops and symposia sponsored by the American Academy of Sleep Medicine or other organizations related to improving the practice of sleep medicine.
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