Akay M, Welkowitz W, Semmlow J L, Akay Y M, Kostis J
Biomedical Engineering Department, Rutgers State University, Piscataway, NJ 08855.
Med Biol Eng Comput. 1992 Mar;30(2):147-54. doi: 10.1007/BF02446123.
Previous studies have indicated that heart sounds may contain information which is useful in the detection of occluded coronary arteries. Specifically, previous work based on analysing heart sounds recorded during the diastolic portion of the cardiac cycle, when blood flow through the coronary arteries is maximum, has shown that additional frequency components are present in patients with coronary artery disease. To further explore the application of advanced signal processing techniques to the noninvasive detection of coronary artery disease, a new signal-processing approach is presented using adaptive line enhancing (ALE) and spectral estimation of diastolic heart sounds taken from recordings made at the patient's bedside. This approach comprises two cascaded processes. In the first the ALE method is used to enhance the diastolic heart sounds and eliminate background noise. In the second process, either autoregressive (AR) or autoregressive moving average (ARMA) spectral methods are used to estimate the model parameters. Model parameters (the power spectral density (PSD) functions and the poles of the AR or ARMA method) were used to diagnose patients as diseased or normal. Results showed that normal and abnormal recordings were correctly identified in 39 of 43 cases using the new method. These results also confirm that high-frequency energy above 400 Hz is associated with coronary stenosis.
先前的研究表明,心音可能包含有助于检测冠状动脉闭塞的信息。具体而言,先前基于分析心动周期舒张期记录的心音(此时冠状动脉血流量最大)的研究表明,冠心病患者的心音中存在额外的频率成分。为了进一步探索先进信号处理技术在冠心病无创检测中的应用,本文提出了一种新的信号处理方法,该方法使用自适应线增强(ALE)和对患者床边记录的舒张期心音进行频谱估计。这种方法包括两个级联过程。在第一个过程中,ALE方法用于增强舒张期心音并消除背景噪声。在第二个过程中,使用自回归(AR)或自回归移动平均(ARMA)频谱方法来估计模型参数。模型参数(功率谱密度(PSD)函数以及AR或ARMA方法的极点)用于诊断患者是否患病。结果表明,使用新方法在43例病例中的39例中正确识别了正常和异常记录。这些结果还证实,400Hz以上的高频能量与冠状动脉狭窄有关。