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Automatic Detection of Seismocardiogram Sensor Misplacement for Robust Pre-Ejection Period Estimation in Unsupervised Settings

机译:在无人值守的情况下自动检测地震心电图传感器错位以进行可靠的射血前估计

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摘要

Seismocardiography (SCG), the measurement of the local chest vibrations due to the movements of blood and the heart, is a non-invasive technique for assessing myocardial contractility via the pre-ejection period (PEP). Recently, SCG-based extraction of PEP has been shown to be an effective means of classifying decompensated from compensated heart failure patients, and thus can be potentially used for monitoring such patients at home. Accurate extraction of PEP from SCG signals hinges on lab-based population data (i.e., regression curves) linking particular time-domain features of the SCG signal to corresponding features from reference standard bulky instruments such as impedance cardiography (ICG). Such regression curves, in the case of SCG, have always been estimated based on the “ideal” positioning of the SCG sensor on the chest. However, in settings such as the home where users may position the SCG measurement hardware on the chest without supervision, it is likely that the sensor will not always be placed exactly on this “ideal” location on the sternum, but rather on other positions on the chest as well. In this study, we show for the first time that the regression curve for estimating PEP from SCG signals differs significantly as the position of the sensor changes. We further devise a method to automatically detect when the sensor is placed in any position other than the desired one in order to avoid inaccurate systolic time interval estimation. Our classification algorithm for this purpose resulted in 0.83 precision and 0.82 recall when classifying whether the sensor is placed in the desired position or not. The classifier was tested with heartbeats taken both at rest, and also during exercise recovery to ensure that waveform changes due to positioning could be accurately discriminated from those due to physiological effects.
机译:地震心动图(SCG)是一种由于血液和心脏运动而引起的局部胸部振动的测量方法,是一种用于通过射血前期(PEP)评估心肌收缩力的非侵入性技术。最近,基于SCG的PEP提取已被证明是对代偿性心力衰竭患者代偿失代进行分类的有效手段,因此可潜在地用于在家中监测此类患者。从SCG信号中准确提取PEP取决于基于实验室的人群数据(即回归曲线),该数据将SCG信号的特定时域特征与参考标准笨重仪器(例如阻抗心动图(ICG))的相应特征联系起来。对于SCG,此类回归曲线始终基于SCG传感器在胸部的“理想”位置进行估算。但是,在诸如用户可以将SCG测量硬件放置在胸部而无需监督的家庭之类的设置中,传感器可能不会总是准确地放置在胸骨的“理想”位置上,而是放置在胸骨上的其他位置上胸部也一样。在这项研究中,我们首次展示了从SCG信号估计PEP的回归曲线随传感器位置的变化而显着不同。我们进一步设计了一种方法,该方法可以自动检测传感器何时放置在所需位置以外的任何位置,以避免收缩期间隔估计不准确。为此目的,我们的分类算法在对传感器是否放置在所需位置进行分类时可达到0.83的精度和0.82的调用率。测试了分类器的静止和运动恢复期间的心跳,以确保可以将由于定位引起的波形变化与由于生理效应引起的波形变化准确区分开。

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  • 作者

    Hazar Ashouri; Omer T. Inan;

  • 作者单位
  • 年(卷),期 -1(17),12
  • 年度 -1
  • 页码 3805–3813
  • 总页数 20
  • 原文格式 PDF
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