Foo Jong Yong A, Wilson Stephen J
Biomedical Engineering Research Centre, Nanyang Technological University, 50 Nanyang Drive, Research Techno Plaza, 6th Storey, Xfrontiers Block, Singapore, 637553 Singapore.
Med Biol Eng Comput. 2006 Mar;44(1-2):140-5. doi: 10.1007/s11517-005-0008-y.
Photoplethysmography (PPG) signals can be used in clinical assessment such as heart rate (HR) estimations and extraction of arterial flow waveforms. Motion artefact and/or poor peripheral perfusion can contaminate the PPG during monitoring. A computational system is presented here to minimise these two intrinsic weaknesses of the PPG signals. Specifically, accelerometers are used to detect the presence of motion artefacts and an adaptive filter is employed to minimise induced errors. Zero-phase digital filtering is engaged to reduce inaccuracy on the PPG signals when measured from a poorly perfused periphery. In this system, a decision matrix adopts the appropriate technique to improve the PPG signal-to-noise ratio dynamically. Statistical analyses show promising results (maximum error < 7.63%) when computed HR is compared to corresponding estimates from the electrocardiogram. Hence, the results here suggest that this dual-mode approach has potential for use in relevant clinical measurements.
光电容积脉搏波描记法(PPG)信号可用于临床评估,如心率(HR)估计和动脉血流波形提取。在监测过程中,运动伪影和/或外周灌注不良会干扰PPG信号。本文提出了一种计算系统,以最小化PPG信号的这两个固有弱点。具体而言,加速度计用于检测运动伪影的存在,并采用自适应滤波器来最小化由此产生的误差。当从灌注不良的外周测量PPG信号时,采用零相位数字滤波来减少误差。在该系统中,决策矩阵采用适当的技术动态提高PPG信号的信噪比。将计算得到的心率与心电图相应估计值进行比较时,统计分析显示出有前景的结果(最大误差<7.63%)。因此,这里的结果表明这种双模式方法在相关临床测量中具有应用潜力。