人工智能增强的智能手表AHI估计和人工智能评分的多导睡眠图用于阻塞性睡眠呼吸暂停:真实世界验证。

IF 3.4 2区 医学 Q2 CLINICAL NEUROLOGY
Nature and Science of Sleep Pub Date : 2025-09-22 eCollection Date: 2025-01-01 DOI:10.2147/NSS.S540460
Donghyeok Kim, Jeong Yup Han, Hyunjun Jung, Da Yeun Song, Changhee Lee, Gwanghui Ryu, Sang Duk Hong, Hyo-Yeol Kim, Yong Gi Jung
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引用次数: 0

摘要

目的:本研究验证了人工智能(AI)智能手表算法的准确性,该算法通过将其性能与韩国成年人AI评分的 1级多导睡眠图(PSG)进行比较,直接估计呼吸暂停-低通气指数(AHI)。该模型在南美队列中进行训练,允许跨种族验证。方法:90名成人同时进行1级PSG和智能手表记录。分析了53个≥ 3 小时有效手表数据的数据集。AHI值获得如下:专家评分PSG (pAHI), AI评分PSG (aiAHI)和智能手表输出(eAHI)。采用Spearman相关、类内相关系数和受试者工作特征曲线评估一致性。结果:eAHI与aiAHI (ρ = 0.88,ICC = 0.87)、pAHI (ρ = 0.85,ICC = 0.82)相关性强。对于检测中重度OSA (aiAHI ≥ 15 事件/小时),智能手表算法的灵敏度为92.3%,特异性为92.6%,总体准确率为92.5%。Bland-Altman分析显示,智能手表系统性地低估了实际AHI,尤其是在轻度OSA患者中。结论:本研究表明,评估后的基于智能手表的AHI估计算法与psg衍生值具有较高的一致性,特别是对于中重度OSA的检测和分类。但需要注意的是,由于评分单位和记录时长计算的限制,该智能手表算法容易低估OSA的AHI。这些研究结果支持可穿戴技术作为一种实用且可扩展的工具,在现实环境中早期识别和纵向监测OSA,同时强调需要进一步优化以准确检测轻度病例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI‑Enhanced Smartwatch AHI Estimation and AI‑Scored Polysomnography for Obstructive Sleep Apnea: Real‑World Validation.

Objective: This study validated the accuracy of an artificial‑intelligence (AI) smartwatch algorithm that directly estimates the apnea-hypopnea index (AHI) by comparing its performance with AI-scored Level 1 polysomnography (PSG) in Korean adults. The model was trained in South‑American cohorts, allowing inter‑ethnic validation.

Methods: A total of 90 adults underwent simultaneous Level 1 PSG and smartwatch recording. Fifty‑three datasets with ≥ 3 hours of valid watch data were analyzed. AHI values were obtained as follows: expert‑scored PSG (pAHI), AI‑scored PSG (aiAHI), and smartwatch output (eAHI). Agreement was assessed with Spearman correlation, intraclass correlation coefficients, and receiver‑operating‑characteristic curves.

Results: eAHI correlated strongly with aiAHI (ρ = 0.88, ICC = 0.87) and pAHI (ρ = 0.85, ICC = 0.82). For detecting moderate‑to‑severe OSA (aiAHI ≥ 15 events/h), the smartwatch algorithm yielded 92.3% sensitivity, 92.6% specificity, and 92.5% overall accuracy. Bland-Altman analysis revealed systematic underestimation of actual AHI by the smartwatch, particularly in mild OSA.

Conclusion: This study demonstrates that the evaluated smartwatch-based AHI estimation algorithm shows high concordance with PSG-derived values, particularly for the detection and classification of moderate to severe OSA. However, it should be noted that this smartwatch algorithm tends to underestimate the AHI of OSA due to limitations in scoring unit and recording duration calculation. These findings support the clinical utility of wearable technology as a practical and scalable tool for early identification and longitudinal monitoring of OSA in real-world environments, while highlighting the need for further optimization to accurately detect mild cases.

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来源期刊
Nature and Science of Sleep
Nature and Science of Sleep Neuroscience-Behavioral Neuroscience
CiteScore
5.70
自引率
5.90%
发文量
245
审稿时长
16 weeks
期刊介绍: Nature and Science of Sleep is an international, peer-reviewed, open access journal covering all aspects of sleep science and sleep medicine, including the neurophysiology and functions of sleep, the genetics of sleep, sleep and society, biological rhythms, dreaming, sleep disorders and therapy, and strategies to optimize healthy sleep. Specific topics covered in the journal include: The functions of sleep in humans and other animals Physiological and neurophysiological changes with sleep The genetics of sleep and sleep differences The neurotransmitters, receptors and pathways involved in controlling both sleep and wakefulness Behavioral and pharmacological interventions aimed at improving sleep, and improving wakefulness Sleep changes with development and with age Sleep and reproduction (e.g., changes across the menstrual cycle, with pregnancy and menopause) The science and nature of dreams Sleep disorders Impact of sleep and sleep disorders on health, daytime function and quality of life Sleep problems secondary to clinical disorders Interaction of society with sleep (e.g., consequences of shift work, occupational health, public health) The microbiome and sleep Chronotherapy Impact of circadian rhythms on sleep, physiology, cognition and health Mechanisms controlling circadian rhythms, centrally and peripherally Impact of circadian rhythm disruptions (including night shift work, jet lag and social jet lag) on sleep, physiology, cognition and health Behavioral and pharmacological interventions aimed at reducing adverse effects of circadian-related sleep disruption Assessment of technologies and biomarkers for measuring sleep and/or circadian rhythms Epigenetic markers of sleep or circadian disruption.
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