Heart Sound Recognition by Analysis of wavelet transform and Neural network.

  • Lee, Jung-Jun (Dept. of Advanced Multimedia Engineering, Inha University) ;
  • Lee, Sang-Min (Dept. of Advanced Multimedia Engineering, Inha University) ;
  • Hong, Seung-Hong (Dept. of Advanced Multimedia Engineering, Inha University)
  • Published : 2000.07.01

Abstract

This paper presents the application of the wavelet transform analysis and the neural network method to the phonocardiogram (PCG) signal. Heart sound is a acoustic signal generated by cardiac valves, myocardium and blood flow and is a very complex and nonstationary signal composed of many source. Heart sound can be discriminated normal heart sound and heart murmur. Murmurs have broader frequency bandwidth than the normal ones and can occur at random position of cardiac cycle. In this paper, we classified the group of heart sound as normal heart sound(NO), pre-systolic murmur(PS), early systolic murmur(ES), late systolic murmur(LS), early diastolic murmur(ED). And we used the wavelet transform to shorten artifacts and strengthen the low level signal. The ANN system was trained and tested with the back- propagation algorithm from a large data set of examples-normal and abnormal signals classified by expert. The best ANN configuration occurred with 15 hidden layer neurons. We can get the accuracy of 85.6% by using the proposed algorithm.

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