Department of Patient Care and Monitoring, Philips Research, Eindhoven, 5656 AE, The Netherlands.
Department of AI, Data Science & Digital Twin, Philips Research, Eindhoven, 5656 AE, The Netherlands.
Physiol Meas. 2022 Jul 7;43(7). doi: 10.1088/1361-6579/ac5b49.
. Measuring the respiratory signal from a video based on body motion has been proposed and recently matured in products for contactless health monitoring. The core algorithm for this application is the measurement of tiny chest/abdominal motions induced by respiration (i.e. capturing sub-pixel displacement caused by subtle motion between subsequent video frames), and the fundamental challenge is motion sensitivity. Though prior art reported on the validation with real human subjects, there is no thorough or rigorous benchmark to quantify the sensitivities and boundary conditions of motion-based core respiratory algorithms.. A set-up was designed with a fully-controllable physical phantom to investigate the essence of core algorithms, together with a mathematical model incorporating two motion estimation strategies and three spatial representations, leading to six algorithmic combinations for respiratory signal extraction. Their promises and limitations are discussed and clarified through the phantom benchmark.. With the variation of phantom motion intensity between 0.5 mm and 8 mm, the recommended approach obtains an average precision, recall, coverage and MAE of 88.1%, 91.8%, 95.5% and 2.1 bpm in the day-light condition, and 81.7%, 90.0%, 93.9% and 4.4 bpm in the night condition.. The insights gained in this paper are intended to improve the understanding and applications of camera-based respiration measurement in health monitoring. The limitations of this study stem from the used physical phantom that does not consider human factors like body shape, sleeping posture, respiratory diseases, etc., and the investigated scenario is focused on sleep monitoring, not including scenarios with a sitting or standing patient like in clinical ward and triage.
. 已经提出并在最近的非接触式健康监测产品中成熟了一种基于身体运动的视频呼吸信号测量方法。该应用的核心算法是测量呼吸引起的微小胸部/腹部运动(即捕捉后续视频帧之间细微运动引起的亚像素位移),其基本挑战是运动灵敏度。虽然之前的研究报告了与真实人体对象的验证,但没有全面或严格的基准来量化基于运动的核心呼吸算法的灵敏度和边界条件。. 设计了一个完全可控的物理体模来研究核心算法的本质,同时结合了一个数学模型,该模型包含两种运动估计策略和三种空间表示,从而产生了六种用于提取呼吸信号的算法组合。通过体模基准测试讨论并阐明了它们的优缺点。. 在体模运动强度在 0.5 毫米到 8 毫米之间变化的情况下,推荐的方法在白天条件下获得了平均精度、召回率、覆盖率和 MAE 分别为 88.1%、91.8%、95.5%和 2.1 bpm,在夜间条件下分别为 81.7%、90.0%、93.9%和 4.4 bpm。. 本文获得的见解旨在提高对基于摄像机的健康监测中呼吸测量的理解和应用。本研究的局限性源于所使用的物理体模没有考虑人体因素,如体型、睡眠姿势、呼吸疾病等,并且所研究的场景主要集中在睡眠监测上,不包括临床病房和分诊中患者坐姿或站姿的场景。