Publication | Open Access
FEATURE RELEVANCE ASSESSMENT IN AUTOMATIC INTER-PATIENT HEART BEAT CLASSIFICATION
11
Citations
11
References
2010
Year
Unknown Venue
Heart FailureEngineeringMachine LearningBiometricsDiagnosisFeature SelectionSupport Vector MachineClassification MethodData ScienceData MiningPattern RecognitionBiostatisticsSvm ModelCardiologyIntelligent ClassificationData ClassificationClassificationClassifier SystemMedicineLong-term Ecg RecordingsHealth InformaticsEmergency Medicine
Long-term ECG recordings are often required for the monitoring of the cardiac function in clinical applications. Due to the high number of beats to evaluate, inter-patient computer-aided heart beat classification is of great importance for physicians. The main difficulty is the extraction of discriminative features from the heart beat time series. The objective of this work is the assessment of the relevance of feature sets previously proposed in the literature. For this purpose, inter-patient classification of heart beats following AAMI guidelines is investigated. The class unbalance is taken into account by using a support vector machine (SVM) classifier that integrates distinct weights for the classes. The performances of the SVM model with an appropriate selection of features are better than those of previously reported inter-patient classification models. These results show that the choice of the features is of major importance, and that some usual feature sets do not serve the classification performances. In addition, the results drop significantly when the class unbalance is not taken into account, which shows that this issue must be addressed to grasp the importance of the pathological cases.
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