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一种利用心音特征对心室血压进行无创检测的方法。

A non-invasive approach to investigation of ventricular blood pressure using cardiac sound features.

作者信息

Tang Hong, Zhang Jinghui, Chen Huaming, Mondal Ashok, Park Yongwan

机构信息

Department of Biomedical Engineering, Dalian University of Technology, Dalian 116024, People's Republic of China.

出版信息

Physiol Meas. 2017 Feb;38(2):289-309. doi: 10.1088/1361-6579/aa552a. Epub 2017 Jan 18.

Abstract

Heart sounds (HSs) are produced by the interaction of the heart valves, great vessels, and heart wall with blood flow. Previous researchers have demonstrated that blood pressure can be predicted by exploring the features of cardiac sounds. These features include the amplitude of the HSs, the ratio of the amplitude, the systolic time interval, and the spectrum of the HSs. A single feature or combinations of several features have been used for prediction of blood pressure with moderate accuracy. Experiments were conducted with three beagles under various levels of blood pressure induced by different doses of epinephrine. The HSs, blood pressure in the left ventricle and electrocardiograph signals were simultaneously recorded. A total of 31 records (18 262 cardiac beats) were collected. In this paper, 91 features in various domains are extracted and their linear correlations with the measured blood pressures are examined. These features are divided into four groups and applied individually at the input of a neural network to predict the left ventricular blood pressure (LVBP). The analysis shows that non-spectral features can track changes of the LVBP with lower standard deviation. Consequently, the non-spectral feature set gives the best prediction accuracy. The average correlation coefficient between the measured and the predicted blood pressure is 0.92 and the mean absolute error is 6.86 mmHg, even when the systolic blood pressure varies in the large range from 90 mmHg to 282 mmHg. Hence, systolic blood pressure can be accurately predicted even when using fewer HS features. This technique can be used as an alternative to real-time blood pressure monitoring and it has promising applications in home health care environments.

摘要

心音(HSs)是由心脏瓣膜、大血管和心脏壁与血流相互作用产生的。先前的研究人员已经证明,通过探索心音的特征可以预测血压。这些特征包括心音的幅度、幅度比、收缩期时间间隔以及心音的频谱。单个特征或几个特征的组合已被用于预测血压,准确性一般。在三只比格犬身上进行了实验,通过不同剂量的肾上腺素诱导出不同水平的血压。同时记录了心音、左心室血压和心电图信号。总共收集了31条记录(18262次心跳)。在本文中,提取了各个领域的91个特征,并检查了它们与测量血压的线性相关性。这些特征被分为四组,并分别应用于神经网络的输入以预测左心室血压(LVBP)。分析表明,非频谱特征能够以较低的标准差跟踪LVBP的变化。因此,非频谱特征集给出了最佳的预测准确性。即使收缩压在90 mmHg至282 mmHg的大范围内变化,测量血压与预测血压之间的平均相关系数仍为0.92,平均绝对误差为6.86 mmHg。因此,即使使用较少的心音特征也能准确预测收缩压。这项技术可以用作实时血压监测的替代方法,并且在家庭医疗保健环境中有广阔的应用前景。

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