The authors developed a complete two channel ST episode detection system for long term ECG records. To improve the system sensitivity, a high performance QRS detector was implemented and some noise criteria were applied, to reject too noisy measure values (sens: 97.51% PPA: 99.96%). A three layer feedforward Artificial Neural Network (ANN), trained by backpropagation algorithm, was introduced. It processed the inputs (ST amplitude and ST slope, both in absolute value) in a nonlinear way so that the ST episodes became more easily recognizable from ANN output and the system sensitivity resulted improved (sens: 85% PPA; 88% with vs. sens: 78% PPA: 90% without ANN). The training set was built with 3 out of the 50 records of the European Society of Cardiology ST-T Database. The remaining records were used for system evaluation.<<ETX>>
[1]
Roger G. Mark,et al.
Analysis of transient ST segment changes during ambulatory monitoring
,
1991,
[1991] Proceedings Computers in Cardiology.
[2]
Michele Emdin,et al.
Monitoring patient status through principal components analysis
,
1991,
[1991] Proceedings Computers in Cardiology.
[3]
G. Moody,et al.
The European ST-T database: standard for evaluating systems for the analysis of ST-T changes in ambulatory electrocardiography.
,
1992,
European heart journal.
[4]
H Sievänen,et al.
Performance characteristics of various exercise ECG classifiers in different clinical populations.
,
1994,
Journal of electrocardiology.