睡眠(系统调用)
深度学习
人工智能
计算机科学
医学
医疗保健
安眠药
可扩展性
机器学习
情感(语言学)
多导睡眠图
物理医学与康复
学习迁移
数据科学
衡平法
夜行的
睡眠阶段
资源(消歧)
卫生专业人员
呼吸系统
梅德林
远程病人监护
卫生公平
作者
Zhongxu Zhuang,Biao Xue,Q. An,Hui Chu,Yue Zhang,Rui Chen,Jing Xu,Ning Ding,Xiaochuan Cui,E Wang,Meilin Wang,Junyi Xin,Xuan Yang,Yan Xu,Yan Li,Chang–Hong Fu,Xiaohua Zhu,Mugen Peng,Hong Hong
标识
DOI:10.1038/s41467-025-64340-y
摘要
Sleep disorders affect billions globally, yet diagnostic access remains limited by healthcare resource constraints. Here, we develop a deep learning framework that analyzes respiratory signals for remote sleep health monitoring, trained on 15,785 nights of data across diverse populations. Our approach achieves robust performance in four-stage sleep classification (82.13% accuracy on internal validation; 79.62% on external validation) and apnea-hypopnea index estimation (intraclass correlation coefficients 0.90 and 0.94, respectively). Through transfer learning, we adapt the model to radar-derived respiratory signals, enabling contactless monitoring in home environments. The framework demonstrates consistent performance across demographic subgroups, supports real-time processing through self-supervised learning techniques, and integrates with a remote sleep health management platform for clinical deployment. This approach bridges critical gaps in sleep healthcare accessibility, supporting population-level screening and monitoring, paving the way for scalable sleep healthcare, and advancing sleep health equity.
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