In this chapter, a new concept learning-based approach is presented for abnormal ECG beat detection to facilitate long-term monitoring of heart patients. The novelty in our approach is the use of complementary concept – “normal ” for the learning task. The concept “normal ” can be learned by a ν-Support Vector Classifier (ν-SVC) using only normal ECG beats from a specific patient to relieve the doctors from annotating the training data beat by beat to train a classifier. The learned model can then be used to detect abnormal beats in the long-term ECG recording of the same patient. Experimental results on MIT/BIH arrhythmia ECG database demonstrate that such a patient-adaptable concept learning model outperforms other classifiers in the task...
Electrocardiogram (ECG) signal has been established as one of the most fundamental bio-signals for m...
Electrocardiogram (ECG) signal has been established as one of the most fundamental bio-signals for m...
A major challenge in applying machine learning techniques to the problem of heartbeat classification...
hierarchical learning approach is proposed to detect abnormal ECG beats. A global bi-class support v...
Abstract. In this paper, a novel hybrid kernel machine ensemble is proposed for abnormal ECG beat de...
A novel supervised neural network-based algorithm is designed to reliably distinguish in electrocard...
In this paper, the research of computer algorithms for automatic detection of heart rhythm disorders...
Cardiovascular diseases (CVD) are a leading cause of unnecessary hospital admissions as well as fata...
Recent trends in clinical and telemedicine applications highly demand automation in electrocardiogra...
The new advances in multiple types of devices and machine learning models provide opportunities for ...
In this paper, we investigate a modular architecture for ECG beat classification. The feature space ...
Abnormal electrical activity of the human heart indicates cardiac dysfunction. The Electrocardiogra...
Early diagnosis and classification of long term cardiac signals are crucial issues in the treatment ...
This research presents an abnormal beat detection scheme from lead II Electrocardiogram (ECG) signal...
The 12-lead electrocardiogram (ECG) method can diagnose more cardiovascular disease than the single-...
Electrocardiogram (ECG) signal has been established as one of the most fundamental bio-signals for m...
Electrocardiogram (ECG) signal has been established as one of the most fundamental bio-signals for m...
A major challenge in applying machine learning techniques to the problem of heartbeat classification...
hierarchical learning approach is proposed to detect abnormal ECG beats. A global bi-class support v...
Abstract. In this paper, a novel hybrid kernel machine ensemble is proposed for abnormal ECG beat de...
A novel supervised neural network-based algorithm is designed to reliably distinguish in electrocard...
In this paper, the research of computer algorithms for automatic detection of heart rhythm disorders...
Cardiovascular diseases (CVD) are a leading cause of unnecessary hospital admissions as well as fata...
Recent trends in clinical and telemedicine applications highly demand automation in electrocardiogra...
The new advances in multiple types of devices and machine learning models provide opportunities for ...
In this paper, we investigate a modular architecture for ECG beat classification. The feature space ...
Abnormal electrical activity of the human heart indicates cardiac dysfunction. The Electrocardiogra...
Early diagnosis and classification of long term cardiac signals are crucial issues in the treatment ...
This research presents an abnormal beat detection scheme from lead II Electrocardiogram (ECG) signal...
The 12-lead electrocardiogram (ECG) method can diagnose more cardiovascular disease than the single-...
Electrocardiogram (ECG) signal has been established as one of the most fundamental bio-signals for m...
Electrocardiogram (ECG) signal has been established as one of the most fundamental bio-signals for m...
A major challenge in applying machine learning techniques to the problem of heartbeat classification...