Title |
Detection of ST-T Episode Based on the Global Curvature of Isoelectric Level in ECG |
Authors |
강동원(Kang, Dong-Won) ; 전대근(Jun, Dae-Gun) ; 이경중(Lee, Kyoung-Joung) ; 윤형로(Yoon, Hyung-Ro) |
Keywords |
ST Episode ; Global curvature ; Backpropagation Neural Network ; European ST-T database |
Abstract |
This paper describes an automated detection algorithm of ST-T episodes using global curvature which can connect the isoelectric level in ECG and can eliminate not only the slope of ST segment, but also difference of the baseline and global curve. This above method of baseline correction is very faster than the classical baseline correction methods. The optimal values of parameters for baseline correction were found as the value having the highest detection rate of ST episode. The features as input of backpropagation Neural Network were extracted from the whole ST segment. The European ST-T database was used as training and test data. Finally, ST elevation, ST depression and normal ST were classified. The average ST episode sensitivity and predictivity were 85.42%, 80.29%, respectively. This result shows the high speed and reliability in ST episode detection. In conclusion, the proposed method showed the possibility in various applications for the Holter system. |