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Extracting Cardiac Information From Medical Radar Using Locally Projective Adaptive Signal Separation

机译:使用局部投影自适应信号分离从医疗雷达中提取心脏信息

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摘要

Electrocardiography is the gold standard for electrical heartbeat activity, but offers no direct measurement of mechanical activity. Mechanical cardiac activity can be assessed non-invasively using, e.g., ballistocardiography and recently, medical radar has emerged as a contactless alternative modality. However, all modalities for measuring the mechanical cardiac activity are affected by respiratory movements, requiring a signal separation step before higher-level analysis can be performed. This paper adapts a non-linear filter for separating the respiratory and cardiac signal components of radar recordings. In addition, we present an adaptive algorithm for estimating the parameters for the non-linear filter. The novelty of our method lies in the combination of the non-linear signal separation method with a novel, adaptive parameter estimation method specifically designed for the non-linear signal separation method, eliminating the need for manual intervention and resulting in a fully adaptive algorithm. Using the two benchmark applications of (i) cardiac template extraction from radar and (ii) peak timing analysis, we demonstrate that the non-linear filter combined with adaptive parameter estimation delivers superior results compared to linear filtering. The results show that using locally projective adaptive signal separation (LoPASS), we are able to reduce the mean standard deviation of the cardiac template by at least a factor of 2 across all subjects. In addition, using LoPASS, 9 out of 10 subjects show significant (at a confidence level of 2.5%) correlation between the R-T-interval and the R-radar-interval, while using linear filters this ratio drops to 6 out of 10. Our analysis suggests that the improvement is due to better preservation of the cardiac signal morphology by the non-linear signal separation method. Hence, we expect that the non-linear signal separation method introduced in this paper will mostly benefit analysis methods investigating the cardiac radar signal morphology on a beat-to-beat basis.
机译:心电图是心跳电活动的金标准,但不能直接测量机械活动。可以使用例如心动描记法以非侵入性的方式评估机械性心脏活动,最近,医疗雷达已经成为一种非接触式替代方式。但是,用于测量心脏机械活动的所有方式都会受到呼吸运动的影响,因此在执行更高级别的分析之前需要信号分离步骤。本文采用了一种非线性滤波器来分离雷达记录的呼吸和心脏信号成分。另外,我们提出了一种自适应算法,用于估计非线性滤波器的参数。我们方法的新颖之处在于将非线性信号分离方法与专门为非线性信号分离方法设计的新型自适应参数估计方法相结合,从而消除了人工干预的需要,从而实现了完全自适应的算法。使用(i)从雷达提取心脏模板和(ii)峰时序分析这两个基准应用程序,我们证明与线性滤波相比,将非线性滤波器与自适应参数估计结合起来可提供更好的结果。结果表明,使用局部投射自适应信号分离(LoPASS),我们能够在所有受试者中将心脏模板的平均标准差降低至少2倍。此外,使用LoPASS,每10名受试者中有9名在RT间隔和R雷达间隔之间显示出显着的相关性(置信度为2.5%),而使用线性滤波器时,该比例下降到10名中的6名。分析表明,这种改善归因于非线性信号分离方法可更好地保留心脏信号形态。因此,我们希望本文介绍的非线性信号分离方法将最有利于基于心跳对心跳信号形态研究的分析方法。

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