1. Early detection of coronary artery disease in patients studied with magnetocardiography: An automatic classification system based on signal entropy
- Author
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Dietrich Grönemeyer, M. Steinisch, Jens Haueisen, Silvia Comani, Birgit Hailer, Paul R. Torke, and Peter Van Leeuwen
- Subjects
Adult ,Male ,medicine.medical_specialty ,Entropy ,Health Informatics ,Coronary Artery Disease ,Sensitivity and Specificity ,Surrogate data ,Coronary artery disease ,Internal medicine ,Positive predicative value ,medicine ,Humans ,Entropy (information theory) ,Aged ,Magnetocardiography ,Artificial neural network ,business.industry ,Discriminant Analysis ,Reproducibility of Results ,Signal Processing, Computer-Assisted ,Middle Aged ,Linear discriminant analysis ,medicine.disease ,Computer Science Applications ,Early Diagnosis ,Multilayer perceptron ,Cardiology ,Female ,business - Abstract
We propose an automatic system for the classification of coronary artery disease (CAD) based on entropy measures of MCG recordings. Ten patients with coronary artery narrowing>[email protected]?50% were categorized by a multilayer perceptron (MLP) neural network based on Linear Discriminant Analysis (LDA). Best results were obtained with MCG at rest: 99% sensitivity, 97% specificity, 98% accuracy, 96% and 99% positive and negative predictive values for single heartbeats. At patient level, these results correspond to a correct classification of all patients. The classifier's suitability to detect CAD-induced changes on the MCG at rest was validated with surrogate data.
- Published
- 2013
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