Janssen Rik, Wang Wenjin, Moço Andreia, de Haan Gerard
Eindhoven University of Technology, PO Box 513, 5600MB, Eindhoven, The Netherlands.
Physiol Meas. 2016 Jan;37(1):100-14. doi: 10.1088/0967-3334/37/1/100. Epub 2015 Dec 7.
Vital signs monitoring is ubiquitous in clinical environments and emerging in home-based healthcare applications. Still, since current monitoring methods require uncomfortable sensors, respiration rate remains the least measured vital sign. In this paper, we propose a video-based respiration monitoring method that automatically detects a respiratory region of interest (RoI) and signal using a camera. Based on the observation that respiration induced chest/abdomen motion is an independent motion system in a video, our basic idea is to exploit the intrinsic properties of respiration to find the respiratory RoI and extract the respiratory signal via motion factorization. We created a benchmark dataset containing 148 video sequences obtained on adults under challenging conditions and also neonates in the neonatal intensive care unit (NICU). The measurements obtained by the proposed video respiration monitoring (VRM) method are not significantly different from the reference methods (guided breathing or contact-based ECG; p-value = 0.6), and explain more than 99% of the variance of the reference values with low limits of agreement (-2.67 to 2.81 bpm). VRM seems to provide a valid solution to ECG in confined motion scenarios, though precision may be reduced for neonates. More studies are needed to validate VRM under challenging recording conditions, including upper-body motion types.
生命体征监测在临床环境中无处不在,并且正在出现在家庭医疗保健应用中。然而,由于当前的监测方法需要使用让人感觉不舒服的传感器,呼吸频率仍然是测量最少的生命体征。在本文中,我们提出了一种基于视频的呼吸监测方法,该方法使用摄像头自动检测呼吸感兴趣区域(RoI)和信号。基于呼吸引起的胸部/腹部运动是视频中一个独立运动系统的观察结果,我们的基本思想是利用呼吸的固有特性来找到呼吸RoI,并通过运动分解提取呼吸信号。我们创建了一个基准数据集,其中包含在具有挑战性的条件下对成年人以及新生儿重症监护病房(NICU)中的新生儿获取的148个视频序列。所提出的视频呼吸监测(VRM)方法获得的测量结果与参考方法(引导呼吸或基于接触的心电图;p值 = 0.6)没有显著差异,并且在较低的一致性界限(-2.67至2.81次/分钟)下解释了超过99%的参考值方差。在受限运动场景中,VRM似乎为心电图提供了一个有效的解决方案,尽管新生儿的精度可能会降低。需要更多的研究来在具有挑战性的记录条件下验证VRM,包括上身运动类型。