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Continuous Estimation of Left Ventricular Hemodynamic Parameters Based on Heart Sound and PPG Signals Using Deep Neural Network

机译:基于深层神经网络的心音和PPG信号连续估计左心室血流动力学参数

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Continuous estimation of left ventricular hemodynamic parameters is helpful to early diagnosis of cardiovascular diseases. Current non-invasive methods are somewhat inconvenient to monitor these parameters. Here, a deep neural network is built to noninvasively estimate left ventricular systolic pressure (LVSP), left ventricular diastolic pressure (LVDP), maximum rate of left ventricular pressure rise (+ dp/dt(max)) and minimum rate of left ventricular pressure drop (- dp/dt(min)) based on heart sound and PPG signals. The model consists of residual network and bidirectional recurrent neural network. Performance is evaluated on 2 beagle dogs’ experiment data with large ranges induced by epinephrine. Mean absolute errors and standard deviations between the estimated and the measured LVSP, LVDP, + dp/dt(max) and - dp/dt(min) are 7.23±8.33 mmHg, 2.12±3.0 mmHg, 298±406 mmHg/s, and 172±386 mmHg/s, respectively. The average correlation coefficients for LVSP, LVDP, + dp/dt(max) and - dp/dt(min) are 0.94, 0.86, 0.95 and 0.92. The results show that accurate intraventricular hemodynamic parameters can be achieved by non-invasive heart sound and PPG signals with deep neural networks. This technique suggests an easy way for real-time monitoring of intraventricular hemodynamics.
机译:连续估计左心室血流动力学参数有助于心血管疾病的早期诊断。当前的非侵入性方法在监视这些参数方面有些不便。在这里,建立了一个深层神经网络来无创地估算左心室收缩压(LVSP),左心室舒张压(LVDP),最大左心室压力升高率(+ dp / dt(max))和最小左心室压力率根据心音和PPG信号下降(-dp / dt(min))。该模型由残差网络和双向递归神经网络组成。在2条比格犬的实验数据中评估了其性能,这些数据是肾上腺素引起的。估计和测得的LVSP,LVDP,+ dp / dt(max)和-dp / dt(min)之间的平均绝对误差和标准偏差为7.23±8.33 mmHg,2.12±3.0 mmHg,298±406 mmHg / s和分别为172±386 mmHg / s。 LVSP,LVDP,+ dp / dt(max)和-dp / dt(min)的平均相关系数为0.94、0.86、0.95和0.92。结果表明,通过具有深层神经网络的非侵入性心音和PPG信号可以实现准确的心室内血流动力学参数。该技术为脑室内血流动力学的实时监测提供了一种简便的方法。

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