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Universal Pre-Ejection Period Estimation Using Seismocardiography: Quantifying the Effects of Sensor Placement and Regression Algorithms

机译:使用地震心动图估计普遍的射血前期:量化传感器放置和回归算法的影响

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摘要

Seismocardiography (SCG), the measurement of local chest vibrations due to the heart and blood movement, is a non-invasive technique to assess cardiac contractility via systolic time intervals such as the pre-ejection period (PEP). Recent studies show that SCG signals measured before and after exercise can effectively classify compensated and decompensated heart failure (HF) patients through PEP estimation. However, the morphology of the SCG signal varies from person to person and sensor placement making it difficult to automatically estimate PEP from SCG and electrocardiogram signals using a global model. In this proof-of-concept study, we address this problem by extracting a set of timing features from SCG signals measured from multiple positions on the upper body. We then test global regression models that combine all the detected features to identify the most accurate model for PEP estimation obtained from the best performing regressor and the best sensor location or combination of locations. Our results show that ensemble regression using XGBoost with a combination of sensors placed on the sternum and below the left clavicle provide the best RMSE = 11.6 ± 0.4 ms across all subjects. We also show that placing the sensor below the left or right clavicle rather than the conventional placement on the sternum results in more accurate PEP estimates.
机译:地震心动图(SCG)是由于心脏和血液运动而引起的局部胸部振动的测量方法,是一种通过收缩期间隔(例如射血前期(PEP))评估心脏收缩力的非侵入性技术。最近的研究表明,运动前和运动后测量的SCG信号可以通过PEP估计有效地对代偿性和代偿性心力衰竭(HF)患者进行分类。但是,SCG信号的形态因人而异,并且传感器位置不同,因此很难使用全局模型根据SCG和心电图信号自动估计PEP。在此概念验证研究中,我们通过从上身多个位置测量的SCG信号中提取一组定时特征来解决此问题。然后,我们测试结合所有检测到的特征的全局回归模型,以确定从性能最佳的回归器和最佳传感器位置或位置组合中获得的最准确的PEP估计模型。我们的结果表明,使用XGBoost并结合在胸骨上和左锁骨下方的传感器进行整体回归,可在所有受试者中提供最佳的RMSE = 11.6±0.4 ms。我们还表明,将传感器放置在左锁骨或右锁骨下方,而不是在胸骨上的常规放置会导致更准确的PEP估计。

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