Amelard Robert, Clausi David A, Wong Alexander
University of Waterloo, Department of Systems Design Engineering, 200 University Ave W, Waterloo, N2L 3G1, Canada.
Biomed Opt Express. 2016 Nov 1;7(12):4874-4885. doi: 10.1364/BOE.7.004874. eCollection 2016 Dec 1.
Photoplethysmographic imaging is an optical solution for non-contact cardiovascular monitoring from a distance. This camera-based technology enables physiological monitoring in situations where contact-based devices may be problematic or infeasible, such as ambulatory, sleep, and multi-individual monitoring. However, automatically extracting the blood pulse waveform signal is challenging due to the unknown mixture of relevant (pulsatile) and irrelevant pixels in the scene. Here, we propose a signal fusion framework, FusionPPG, for extracting a blood pulse waveform signal with strong temporal fidelity from a scene without requiring anatomical priors. The extraction problem is posed as a Bayesian least squares fusion problem, and solved using a novel probabilistic pulsatility model that incorporates both physiologically derived spectral and spatial waveform priors to identify pulsatility characteristics in the scene. Evaluation was performed on a 24-participant sample with various ages (9-60 years) and body compositions (fat% 30.0 ± 7.9, muscle% 40.4 ± 5.3, BMI 25.5 ± 5.2 kg·m). Experimental results show stronger matching to the ground-truth blood pulse waveform signal compared to the FaceMeanPPG ( < 0.001) and DistancePPG ( < 0.001) methods. Heart rates predicted using FusionPPG correlated strongly with ground truth measurements ( = 0.9952). A cardiac arrhythmia was visually identified in FusionPPG's waveform via temporal analysis.
光电容积脉搏波成像技术是一种用于远距离非接触式心血管监测的光学解决方案。这种基于摄像头的技术能够在基于接触的设备可能存在问题或不可行的情况下进行生理监测,例如动态监测、睡眠监测和多人监测。然而,由于场景中相关(搏动性)像素和无关像素的未知混合,自动提取血容量脉搏波形信号具有挑战性。在此,我们提出了一种信号融合框架FusionPPG,用于从场景中提取具有强时间保真度的血容量脉搏波形信号,而无需解剖学先验知识。提取问题被表述为贝叶斯最小二乘融合问题,并使用一种新颖的概率搏动性模型来解决,该模型结合了生理推导的频谱和空间波形先验知识,以识别场景中的搏动性特征。对24名年龄各异(9 - 60岁)、身体组成不同(脂肪百分比30.0 ± 7.9,肌肉百分比40.4 ± 5.3,体重指数25.5 ± 5.2 kg·m²)的参与者样本进行了评估。实验结果表明,与FaceMeanPPG(< 0.001)和DistancePPG(< 0.001)方法相比,FusionPPG与真实血容量脉搏波形信号的匹配度更高。使用FusionPPG预测的心率与真实测量值高度相关(r = 0.9952)。通过时间分析在FusionPPG的波形中直观地识别出了心律失常。