Author/Editor     Grošelj, C; Kukar, M; Fettich, JJ; Kononenko, I
Title     Machine learning improves the accuracy of coronary artery disease diagnostic methods
Type     članek
Source     Comput Cardiol
Vol. and No.     Letnik 24
Place     Piscataway
Publisher     The institute of electrical and electronics engineers
Publication year     1997
Volume     str. 57-60
ISBN     0-7803-4445-6
Language     eng
Abstract     The diagnostic process of coronary artery disease (CAD) consists of evaluation of symptoms and signs of the disease and ECG at rest, ECG during exercise, myocardial perfusion scintigraphy (MPS) and coronary angiography. Machine Learning (ML) can use all particular data in interpretation of result. Our goal was to predict in a group of 327 patients the results of coronary angiography obtained by ML method and compare them with the results of MPS as the highest step in the classical diagnostic procedure. The Naive Bayesian Classifier as one of the ML methods was applied. The sensitivity of MPS was 0.83 and specificity 0.85 The post-test probability for CAD was 0.75 for positive results and 0.43 for negative ones. With application of ML we achieved sensitivity 0.89, specificity 0.88 and the post-test probability 0.90 for positive and 0.25 for negative results.
Descriptors     CORONARY DISEASE
DIAGNOSIS, COMPUTER-ASSISTED
ARTIFICIAL INTELLIGENCE
ELECTROCARDIOGRAPHY
HEART
CORONARY ANGIOGRAPHY
BAYES THEOREM