利用不同数据粒度的隔夜 SpO2 数据,开发用于家庭睡眠呼吸暂停筛查的概率集合机器学习模型。

IF 2.1 4区 医学 Q3 CLINICAL NEUROLOGY
Zilu Liang
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引用次数: 0

摘要

目的:本研究旨在利用夜间 SpO2 数据开发睡眠呼吸暂停筛查模型,并探讨 SpO2 数据粒度对模型性能的影响:方法:共使用了来自 SHHS 和 MESA 数据集的 7,718 条 SpO2 记录。采用概率集合机器学习预测三个AHI临界点的睡眠呼吸暂停状态:≥5、≥15和≥30次/小时。为了研究数据粒度的影响,SpO2 数据在 30 秒、60 秒和 300 秒时进行了汇总:我们的模型在内部测试中表现出良好到卓越的性能,在数据粒度为 1 秒时,截断值≥ 5、≥ 15 和≥ 30 的平均曲线下面积 (AUC) 值分别为 0.91、0.93 和 0.96。三个临界值的灵敏度(0.76、0.84、0.89)和特异度(0.87、0.86、0.90)从良好到优秀不等。阳性预测值(PPV)从优秀到一般(0.97、0.83、0.66)不等,阴性预测值(NPV)从低到优秀(0.43、0.87、0.98)不等。与内部测试相比,模型在外部测试中的表现略有下降,但在所有数据粒度和所有三个截止值中,AUC 仍达到了 0.80 以上的良好至优秀水平。数据粒度为 300 秒时,所有截止值的性能指标都有所下降:与现有的大型睡眠呼吸暂停筛查模型相比,即使考虑到不同的 SpO2 数据粒度,我们的模型在所有三个 AHI 临界值上都表现出卓越的性能。然而,较低的数据粒度与筛查性能下降有关,这表明需要在这一领域开展进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Developing probabilistic ensemble machine learning models for home-based sleep apnea screening using overnight SpO2 data at varying data granularity.

Developing probabilistic ensemble machine learning models for home-based sleep apnea screening using overnight SpO2 data at varying data granularity.

Purpose: This study aims to develop sleep apnea screening models with overnight SpO2 data, and to investigate the impact of the SpO2 data granularity on model performance.

Methods: A total of 7,718 SpO2 recordings from the SHHS and MESA datasets were used. Probabilistic ensemble machine learning was employed to predict sleep apnea status at three AHI cutoff points: ≥ 5, ≥ 15, and ≥ 30 events/hour. To investigate the impact of data granularity, SpO2 data were aggregated at 30, 60, and 300 s.

Results: Our models demonstrated good to excellent performance on internal test, with average area under the curve (AUC) values of 0.91, 0.93, and 0.96 for cutoffs ≥ 5, ≥ 15, and ≥ 30 at data granularity of 1 s, respectively. Both sensitivity (0.76, 0.84, 0.89) and specificity (0.87, 0.86, 0.90) ranged from good to excellent across three cutoffs. Positive predictive values (PPV) ranged from excellent to fair (0.97, 0.83, 0.66), and negative predictive values (NPV) ranged from low to excellent (0.43, 0.87, 0.98). Model performance on external test slightly dropped compared to internal test, but still achieved good to excellent AUC above 0.80 across all data granularity and all the three cutoffs. Data granularity of 300 s led to a reduction in performance metrics across all cutoffs.

Conclusion: Our models demonstrated superior performance across all three AHI cutoff thresholds compared to existing large sleep apnea screening models, even when considering varying SpO2 data granularity. However, lower data granularity was associated with decreased screening performance, indicating a need for further research in this area.

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来源期刊
Sleep and Breathing
Sleep and Breathing 医学-呼吸系统
CiteScore
5.20
自引率
4.00%
发文量
222
审稿时长
3-8 weeks
期刊介绍: The journal Sleep and Breathing aims to reflect the state of the art in the international science and practice of sleep medicine. The journal is based on the recognition that management of sleep disorders requires a multi-disciplinary approach and diverse perspectives. The initial focus of Sleep and Breathing is on timely and original studies that collect, intervene, or otherwise inform all clinicians and scientists in medicine, dentistry and oral surgery, otolaryngology, and epidemiology on the management of the upper airway during sleep. Furthermore, Sleep and Breathing endeavors to bring readers cutting edge information about all evolving aspects of common sleep disorders or disruptions, such as insomnia and shift work. The journal includes not only patient studies, but also studies that emphasize the principles of physiology and pathophysiology or illustrate potentially novel approaches to diagnosis and treatment. In addition, the journal features articles that describe patient-oriented and cost-benefit health outcomes research. Thus, with peer review by an international Editorial Board and prompt English-language publication, Sleep and Breathing provides rapid dissemination of clinical and clinically related scientific information. But it also does more: it is dedicated to making the most important developments in sleep disordered breathing easily accessible to clinicians who are treating sleep apnea by presenting well-chosen, well-written, and highly organized information that is useful for patient care.
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