HEART VALVE DISEASES DETECTION USING ANFIS AND WAVELET TRANSFORM

In this world there are various heart problem appear due to modern life style. These problems affect almost all the part of the human body. Considering the diseases that are related to heart, it takes a large group of people suffering from various kinds of cardiac abnormalities. Heart diseases are now a day’s becoming varies painstaking part that needs to be taken care of. The major part of solving such problems involves a considerable amount of work to identify the disease. Because heart is the most complex structure of human heart it is very difficult to deal with it in the entire process of curing the heart disease. Various researches had been done in the area of biomedical to accurately analyze and detect the disease so as to make it comfortable to deal with the disease and cure it as soon as possible. ECG signal processing has been proved to be useful but it was not up to the mark that the people and medical personals have desired to be. PCG (Phonocardiogram) signal is becoming a very common and reliable alternative to this. A fully developed system which detects the disease as soon as the PCG signal is given to it can help a group of novice doctors to cure the disease before it become late to handle the disease. Such a system is developed here to accurately detect the signal. Keyword: PCG, Wavelet transform, ANFIS, membarshi function, rule base

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