Passive heart-rate monitoring during smartphone use in everyday life

可穿戴计算机 心率 日常生活 限制 医学 可穿戴技术 心率监护仪 计算机科学 智能手机应用 物理医学与康复 光容积图 平均绝对误差 加速度计 语调(文学) 平均绝对百分比误差 语音识别 血压 模拟 心理学 听力学
作者
Shun Liao,Paolo Di Achille,Jiang Wu,Silviu Borac,Jonathan Wang,Xin Liu,Eric S. Teasley,Lawrence Cai,Yuzhe Yang,Yun Liu,Daniel McDuff,Hao-Wei Su,Brent Winslow,Anupam Pathak,Shwetak Patel,James A. Taylor,Jameson K. Rogers,Ming‐Zher Poh,Ming‐Zher Poh
出处
期刊:Nature [Nature Portfolio]
标识
DOI:10.1038/s41586-026-10507-6
摘要

Resting heart rate (RHR) is a key biomarker of cardiovascular health and mortality1–3, but passively tracking it longitudinally generally requires a wearable device, limiting its availability. Here we present passive heart-rate monitoring (PHRM), a deep-learning system that uses facial video-based photoplethysmography for passive measurements of heart rate (HR) and RHR during everyday smartphone interactions. Our system was developed using 192,353 videos from 485 participants and validated on 162,546 videos from 211 participants in laboratory and free-living conditions, representing, to our knowledge, the largest validation study of its kind. PHRM outperformed state-of-the-art methods on our benchmarks. Compared with reference electrocardiograms, PHRM achieved a mean absolute percentage error (MAPE) lower than 10% for HR measurements across three skin-tone groups of light, medium and dark pigmentation, meeting industry accuracy standards; MAPE for each skin-tone group was non-inferior versus the others. Daily RHR measured by PHRM had a mean absolute error of less than five beats per minute, compared with a wearable HR tracker, and was associated with known risk factors for cardiovascular disease. These results highlight the potential of smartphones for enabling passive and equitable monitoring of heart health. To facilitate further research, we publicly release a large, annotated smartphone video dataset along with a pre-trained HR model. A machine-learning model that uses smartphone cameras to measure heart rate in the background during normal daily phone use and subsequently estimate resting heart rate could make it easier for people to monitor heart health.
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