Javaid Abdul Q, Ashouri Hazar, Dorier Alexis, Etemadi Mozziyar, Heller J Alex, Roy Shuvo, Inan Omer T
IEEE Trans Biomed Eng. 2017 Jun;64(6):1277-1286. doi: 10.1109/TBME.2016.2600945. Epub 2016 Aug 16.
Our objective is to provide a framework for extracting signals of interest from the wearable seismocardiogram (SCG) measured during walking at normal (subject's preferred pace) and moderately fast (1.34-1.45 m/s) speeds.
We demonstrate, using empirical mode decomposition (EMD) and feature tracking algorithms, that the pre-ejection period (PEP) can be accurately estimated from a wearable patch that simultaneously measures electrocardiogram and sternal acceleration signals. We also provide a method to determine the minimum number of heartbeats required for an accurate estimate to be obtained for the PEP from the accelerometer signals during walking.
The EMD-based denoising approach provides a statistically significant increase in the signal-to-noise ratio of wearable SCG signals and also improves estimation of PEP during walking.
The algorithms described in this paper can be used to provide hemodynamic assessment from wearable SCG during walking.
A major limitation in the use of the SCG, a measure of local chest vibrations caused by cardiac ejection of blood in the vasculature, is that a user must remain completely still for high-quality measurements. The motion can create artifacts and practically render the signal unreadable. Addressing this limitation could allow, for the first time, SCG measurements to be obtained reliably during movement-aside from increasing the coverage throughout the day of cardiovascular monitoring, analyzing SCG signals during movement would quantify the cardiovascular system's response to stress (exercise), and thus provide a more holistic assessment of overall health.
我们的目的是提供一个框架,用于从在正常(受试者偏好的步速)和适度快速(1.34 - 1.45米/秒)行走过程中测量的可穿戴地震心音图(SCG)中提取感兴趣的信号。
我们使用经验模态分解(EMD)和特征跟踪算法证明,射血前期(PEP)可以从同时测量心电图和胸骨加速度信号的可穿戴贴片准确估计。我们还提供了一种方法,用于确定在行走过程中从加速度计信号准确估计PEP所需的最少心跳次数。
基于EMD的去噪方法在可穿戴SCG信号的信噪比方面提供了统计学上的显著提高,并且还改善了行走过程中PEP的估计。
本文中描述的算法可用于在行走过程中从可穿戴SCG提供血液动力学评估。
SCG是一种用于测量血管系统中心脏射血引起的局部胸部振动的方法,其使用的一个主要限制是用户必须完全静止才能进行高质量测量。运动可能会产生伪影,实际上会使信号无法读取。解决这一限制首次可以在运动期间可靠地获得SCG测量结果——除了增加全天心血管监测的覆盖范围之外,分析运动期间的SCG信号将量化心血管系统对压力(运动)的反应,从而提供对整体健康状况更全面的评估。