Title :
k-NN binary classification of heart failures using myocardial current density distribution maps
Author :
Udovychenko, Yevhenii ; Popov, Anton ; Chaikovsky, Illya
Author_Institution :
Phys. & Biomed. Electron. Dept., Nat. Tech. Univ. of Ukraine, Kiev, Ukraine
Abstract :
Magnetocardiography is an advanced technique of measuring weak magnetic fields generated during heart functioning for diagnostics of huge number of different cardiovascular diseases. In this paper, k-nearest neighbor algorithm is applied for binary classification of myocardium current density distribution maps (CDDM). CDDMs from patients with negative T-peak, male and female patients with microvessels (diffuse) abnormalities and sportsmen are compared with normal subjects. Number of neighbors selection for k-NN classifier was performed to obtain highest classification characteristics. Specificity, accuracy, precision and sensitivity of classification as functions of number of neighbors in k-NN are obtained. Depending on group of heart state, accuracy in a range of 80-88%, 70-95% sensitivity, 78-95% specificity and 77-93% precision were achieved. Obtained results are acceptable for further patient´s state evaluation.
Keywords :
learning (artificial intelligence); magnetocardiography; medical signal processing; signal classification; CDDM classification; MCG; cardiovascular diseases; classification accuracy; classification precision; classification sensitivity; classification specificity; heart failure classification; k-NN binary classification; k-nearest neighbor classification; magnetocardiography; myocardial current density distribution maps; Accuracy; Current density; Diseases; Heart; Magnetic field measurement; Magnetic resonance imaging; Sensitivity; current density distribution map; current density imaging; heart failure diagnostics; k-NN classification; magnetocardiography; negative T-peak;
Conference_Titel :
Signal Processing Symposium (SPSympo), 2015
Conference_Location :
Debe
DOI :
10.1109/SPS.2015.7168283