Volume 18, Issue 1 (3-2018)                   Modares Mechanical Engineering 2018, 18(1): 62-68 | Back to browse issues page

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sokout M S, Beigzadeh B. Mechanical pulse signal analysis in order to feature extraction to use in the diagnosis of CAD. Modares Mechanical Engineering 2018; 18 (1) :62-68
URL: http://mme.modares.ac.ir/article-15-5442-en.html
1- Iran University of Science and Technology,tehran,iran
Abstract:   (5937 Views)
Nowadays, diagnosis of diseases with high precision, high speed, low-cost and non-invasive approaches has become a necessity. In this regard, taking pulse signal is very easy and inexpensive, which due to the availability and feasibility of the process, can be very useful in the rapid diagnosis heart disease. If we can use the appropriate signal processing and intelligent methods in such a way that its accuracy and total cost equal those of other corresponding methods, we can say that we have reached a valuable achievement; in the current study we pursue the same purpose. In the first step, pressure pulse signals of 45 Coronary Arterial Disease (CAD) patients and 45 healthy persons are acquired from the left fingers using Task Force Monitor (TFM). Then the signals are filtered by wavelet transform (db6) and the wrong items are discarded. Then, the features corresponding to the CAD and healthy states are extracted which based on Time Domain Analysis. Finally, by choosing the best features, the data of healthy people and patients (CAD) are classified with Support Vector Machine (SVM) classifier by the accuracy rate of more than 85%.
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Article Type: Research Article | Subject: Biomechanics
Received: 2017/09/2 | Accepted: 2017/12/7 | Published: 2017/12/29

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