PCG signal analysis using teager energy operator & autocorrelation function

Mohannad K. Sabir
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引用次数: 2

Abstract

PCG signal got a great interest during the last few years due to the huge progress in digital signal processing methods and hardware. It is required to enhance the doctor's skill to improve their diagnoses for detecting heart diseases. In this work Teager energy operator and autocorrelation function are investigated to analyze the PCG signal and extract different parameters such as S1-Systole and S2-Diastole signals their timing, and heart rate estimation. Different numerical formulations of Teager energy operator are investigated to extract the single cardiac cycle, where the formula with best result is suggested. Then the autocorrelation function is applied to estimate the different timing of the extracted single cardiac cycle. The results were very optimistic, and the proposed framework could be an automatic analysis procedure of PCG that may be implemented in real time for classification of PCG. All signals are acquired by MP-36 of BIOPAC Systems, Inc.
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基于能量算子和自相关函数的PCG信号分析
近年来,由于数字信号处理方法和硬件的巨大进步,PCG信号得到了极大的关注。这需要提高医生的技术,以提高他们对心脏病的诊断。本文采用Teager能量算子和自相关函数对心电信号进行分析,提取出s1 -收缩期和s2 -舒张期信号的不同参数,并进行心率估计。研究了提格尔能量算子的不同数值计算公式,以提取单次心动周期,并提出了效果最好的公式。然后应用自相关函数估计提取的单个心动周期的不同时间。结果表明,所提出的框架可作为一种PCG自动分析程序,实现对PCG的实时分类。所有信号均由BIOPAC系统公司的MP-36采集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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