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Acoustic cardiac signals analysis: a Kalman filter–based approach

机译:心脏声学信号分析:基于卡尔曼滤波器的方法

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摘要

Auscultation of the heart is accompanied by both electrical activity and sound. Heart auscultation provides clues to diagnose many cardiac abnormalities. Unfortunately, detection of relevant symptoms and diagnosis based on heart sound through a stethoscope is difficult. The reason GPs find this difficult is that the heart sounds are of short duration and separated from one another by less than 30 ms. In addition, the cost of false positives constitutes wasted time and emotional anxiety for both patient and GP. Many heart diseases cause changes in heart sound, waveform, and additional murmurs before other signs and symptoms appear. Heart-sound auscultation is the primary test conducted by GPs. These sounds are generated primarily by turbulent flow of blood in the heart. Analysis of heart sounds requires a quiet environment with minimum ambient noise. In order to address such issues, the technique of denoising and estimating the biomedical heart signal is proposed in this investigation. Normally, the performance of the filter naturally depends on prior information related to the statistical properties of the signal and the background noise. This paper proposes Kalman filtering for denoising statistical heart sound. The cycles of heart sounds are certain to follow first-order Gauss–Markov process. These cycles are observed with additional noise for the given measurement. The model is formulated into state-space form to enable use of a Kalman filter to estimate the clean cycles of heart sounds. The estimates obtained by Kalman filtering are optimal in mean squared sense.
机译:心脏听诊伴有电活动和声音。心脏听诊为诊断许多心脏异常提供了线索。不幸的是,通过听诊器基于心音检测相关症状和诊断是困难的。 GP感到如此困难的原因是心音持续时间短并且彼此之间的间隔不到30毫秒。此外,误报的代价对患者和全科医生而言都是浪费时间和情绪上的焦虑。在出现其他体征和症状之前,许多心脏病会引起心音,波形和其他杂音的变化。心音听诊是全科医生进行的主要检查。这些声音主要是由心脏中血液的湍流产生的。分析心音需要一个安静的环境,并且周围的噪音要最小。为了解决这些问题,在这项研究中提出了对生物医学心脏信号进行去噪和估计的技术。通常,滤波器的性能自然取决于与信号和背景噪声的统计特性有关的先验信息。本文提出了卡尔曼滤波对统计心音进行降噪处理。心音的周期肯定遵循一阶高斯-马尔可夫过程。对于给定的测量结果,观察到这些周期会产生额外的噪声。该模型被公式化为状态空间形式,以便能够使用卡尔曼滤波器来估计心音的干净周期。通过卡尔曼滤波获得的估计值在均方意义上是最佳的。

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