Suppr超能文献

基于心率变异性、血氧饱和度和身体特征预测睡眠唤醒反应的机器学习方法。

Machine learning approaches for predicting sleep arousal response based on heart rate variability, oxygen saturation, and body profiles.

作者信息

Kuo Chih-Fan, Tsai Cheng-Yu, Cheng Wun-Hao, Hs Wen-Hua, Majumdar Arnab, Stettler Marc, Lee Kang-Yun, Kuan Yi-Chun, Feng Po-Hao, Tseng Chien-Hua, Chen Kuan-Yuan, Kang Jiunn-Horng, Lee Hsin-Chien, Wu Cheng-Jung, Liu Wen-Te

机构信息

School of Medicine, China Medical University, Taichung City, Taichung, Taiwan.

Artificial Intelligence Center, China Medical University Hospital, Taichung, Taiwan.

出版信息

Digit Health. 2023 Oct 13;9:20552076231205744. doi: 10.1177/20552076231205744. eCollection 2023 Jan-Dec.

Abstract

OBJECTIVE

Obstructive sleep apnea is a global health concern, and several tools have been developed to screen its severity. However, most tools focus on respiratory events instead of sleep arousal, which can also affect sleep efficiency. This study employed easy-to-measure parameters-namely heart rate variability, oxygen saturation, and body profiles-to predict arousal occurrence.

METHODS

Body profiles and polysomnography recordings were collected from 659 patients. Continuous heart rate variability and oximetry measurements were performed and then labeled based on the presence of sleep arousal. The dataset, comprising five body profiles, mean heart rate, six heart rate variability, and five oximetry variables, was then split into 80% training/validation and 20% testing datasets. Eight machine learning approaches were employed. The model with the highest accuracy, area under the receiver operating characteristic curve, and area under the precision recall curve values in the training/validation dataset was applied to the testing dataset and to determine feature importance.

RESULTS

InceptionTime, which exhibited superior performance in predicting sleep arousal in the training dataset, was used to classify the testing dataset and explore feature importance. In the testing dataset, InceptionTime achieved an accuracy of 76.21%, an area under the receiver operating characteristic curve of 84.33%, and an area under the precision recall curve of 86.28%. The standard deviations of time intervals between successive normal heartbeats and the square roots of the means of the squares of successive differences between normal heartbeats were predominant predictors of arousal occurrence.

CONCLUSIONS

The established models can be considered for screening sleep arousal occurrence or integrated in wearable devices for home-based sleep examination.

摘要

目的

阻塞性睡眠呼吸暂停是一个全球性的健康问题,目前已开发出多种工具来筛查其严重程度。然而,大多数工具关注的是呼吸事件而非睡眠觉醒,而睡眠觉醒也会影响睡眠效率。本研究采用易于测量的参数,即心率变异性、血氧饱和度和身体特征,来预测觉醒的发生。

方法

收集了659例患者的身体特征和多导睡眠图记录。进行连续的心率变异性和血氧饱和度测量,然后根据睡眠觉醒的存在进行标记。该数据集包括五个身体特征、平均心率、六个心率变异性和五个血氧饱和度变量,随后被分为80%的训练/验证集和20%的测试集。采用了八种机器学习方法。将在训练/验证数据集中具有最高准确率、受试者工作特征曲线下面积和精确召回率曲线下面积值的模型应用于测试数据集,并确定特征重要性。

结果

InceptionTime在训练数据集中预测睡眠觉醒方面表现优异,被用于对测试数据集进行分类并探索特征重要性。在测试数据集中,InceptionTime的准确率为76.21%,受试者工作特征曲线下面积为84.33%,精确召回率曲线下面积为86.28%。连续正常心跳之间的时间间隔标准差和正常心跳之间连续差值平方的平均值的平方根是觉醒发生的主要预测因素。

结论

所建立的模型可用于筛查睡眠觉醒的发生,或集成到可穿戴设备中用于家庭睡眠检查。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7933/10576931/98e305e03b3b/10.1177_20552076231205744-fig1.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验