BreathFinder:利用胸廓呼吸电感搏动图信号对呼吸周期进行非侵入式隔离的方法。

IF 3 2区 医学 Q2 CLINICAL NEUROLOGY Nature and Science of Sleep Pub Date : 2024-08-21 eCollection Date: 2024-01-01 DOI:10.2147/NSS.S468431
Benedikt Holm, Michal Borsky, Erna S Arnardottir, Marta Serwatko, Jacky Mallett, Anna Sigridur Islind, María Óskarsdóttir
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引用次数: 0

摘要

简介自动呼吸分析领域主要关注录音或鼻流量测量等信号上的呼吸检测,这些信号存在背景噪声和其他干扰问题。在此,我们介绍一种新型算法,该算法旨在利用呼吸电感胸透带的无创信号,在胸腔呼吸电感胸透信号上分离出单个呼吸周期:该算法针对 31 名健康和确诊患有阻塞性睡眠呼吸暂停的参与者进行了评估。数据集包括 13 名女性和 18 名男性参与者,年龄在 20 岁至 69 岁之间。对该算法进行评估的是 7.3 个小时的人工标注数据,即总共 8782 次单独呼吸。该算法特别在包含大量睡眠呼吸障碍事件的数据集上进行了评估,以确认其在检测存在睡眠呼吸障碍的呼吸时准确性不会受到影响。我们还在多名参与者中对该算法进行了评估,发现其准确性在不同人群中保持一致。该算法的源代码通过开源 Python 库公开:在检测呼吸信号中的呼吸时,所提出的算法估计达到了 94% 的准确率,而产生的误报仅占检测总数的 5%。准确率不受呼吸相关事件(如阻塞性呼吸暂停或打鼾)的影响:这项研究提出了一种自动呼吸周期算法,适合用作基于睡眠记录(包括呼吸电感胸透)中单个呼吸的研究分析工具。
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BreathFinder: A Method for Non-Invasive Isolation of Respiratory Cycles Utilizing the Thoracic Respiratory Inductance Plethysmography Signal.

Introduction: The field of automatic respiratory analysis focuses mainly on breath detection on signals such as audio recordings, or nasal flow measurement, which suffer from issues with background noise and other disturbances. Here we introduce a novel algorithm designed to isolate individual respiratory cycles on a thoracic respiratory inductance plethysmography signal using the non-invasive signal of the respiratory inductance plethysmography belts.

Purpose: The algorithm locates breaths using signal processing and statistical methods on the thoracic respiratory inductance plethysmography belt and enables the analysis of sleep data on an individual breath level.

Patients and methods: The algorithm was evaluated against a cohort of 31 participants, both healthy and diagnosed with obstructive sleep apnea. The dataset consisted of 13 female and 18 male participants between the ages of 20 and 69. The algorithm was evaluated on 7.3 hours of hand-annotated data from the cohort, or 8782 individual breaths in total. The algorithm was specifically evaluated on a dataset containing many sleep-disordered breathing events to confirm that it did not suffer in terms of accuracy when detecting breaths in the presence of sleep-disordered breathing. The algorithm was also evaluated across many participants, and we found that its accuracy was consistent across people. Source code for the algorithm was made public via an open-source Python library.

Results: The proposed algorithm achieved an estimated 94% accuracy when detecting breaths in respiratory signals while producing false positives that amount to only 5% of the total number of detections. The accuracy was not affected by the presence of respiratory related events, such as obstructive apneas or snoring.

Conclusion: This work presents an automatic respiratory cycle algorithm suitable for use as an analytical tool for research based on individual breaths in sleep recordings that include respiratory inductance plethysmography.

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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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