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心音信号中噪声/尖峰的检测作为具有非平稳周期间隔的循环随机过程。

Noise/spike detection in phonocardiogram signal as a cyclic random process with non-stationary period interval.

机构信息

Department of Mechanical Engineering, K.N. Toosi University of Technology, Tehran, Iran.

出版信息

Comput Biol Med. 2013 Sep;43(9):1205-13. doi: 10.1016/j.compbiomed.2013.05.020. Epub 2013 Jun 1.

DOI:10.1016/j.compbiomed.2013.05.020
PMID:23930815
Abstract

The major aim of this study is to describe a unified procedure for detecting noisy segments and spikes in transduced signals with a cyclic but non-stationary periodic nature. According to this procedure, the cycles of the signal (onset and offset locations) are detected. Then, the cycles are clustered into a finite number of groups based on appropriate geometrical- and frequency-based time series. Next, the median template of each time series of each cluster is calculated. Afterwards, a correlation-based technique is devised for making a comparison between a test cycle feature and the associated time series of each cluster. Finally, by applying a suitably chosen threshold for the calculated correlation values, a segment is prescribed to be either clean or noisy. As a key merit of this research, the procedure can introduce a decision support for choosing accurately orthogonal-expansion-based filtering or to remove noisy segments. In this paper, the application procedure of the proposed method is comprehensively described by applying it to phonocardiogram (PCG) signals for finding noisy cycles. The database consists of 126 records from several patients of a domestic research station acquired by a 3M Littmann(®) 3200, 4KHz sampling frequency electronic stethoscope. By implementing the noisy segments detection algorithm with this database, a sensitivity of Se=91.41% and a positive predictive value, PPV=92.86% were obtained based on physicians assessments.

摘要

本研究的主要目的是描述一种统一的方法,用于检测具有循环但非平稳周期性特性的转导信号中的噪声段和尖峰。根据该程序,检测信号的周期(起始和结束位置)。然后,根据适当的几何和基于频率的时间序列,将周期聚类为有限数量的组。接下来,计算每个簇的每个时间序列的中位数模板。然后,设计一种基于相关的技术,以便在测试周期特征与每个簇的相关时间序列之间进行比较。最后,通过为计算的相关值选择适当的阈值,可以将一段指定为干净或噪声。作为这项研究的一个关键优点,该程序可以为准确选择基于正交展开的滤波或去除噪声段提供决策支持。在本文中,通过将其应用于心音图(PCG)信号以找到噪声周期,全面描述了所提出方法的应用程序。该数据库由国内研究站的多个患者的 126 个记录组成,使用的是 3M Littmann(®)3200,4KHz 采样频率的电子听诊器采集。通过使用该数据库实现噪声段检测算法,基于医生评估,获得了 91.41%的敏感性 Se 和 92.86%的阳性预测值 PPV。

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