Abstract — Processing of the long-term ECG Holter record-ings for accurate arrhythmia detection is a problem that has been addressed in several approaches. However, there is not an outright method for heartbeat classification able to handle problems such as the large amount of data and highly unbalanced classes. This work introduces a heuristic-search-based clustering to discriminate among ventricular cardiac arrhythmias in Holter recordings. The proposed method is posed under the normalized cut criterion, which iteratively seeks for the nodes to be grouped into the same cluster. Searching procedure is carried out in accordance to the introduced maximum similarity value. Since our approach is unsupervised, a procedure for setting the initia...
With the number of cardiovascular arrhythmia cases ever increasing, there is a dire need for accurat...
The proposed approach applies current unsupervised clustering approaches in a different dynamic mann...
The proposed approach applies current unsupervised clustering approaches in a different dynamic mann...
In this work, an efficient non-supervised algorithm for clustering of ECG signals is presented. The ...
An arrhythmia is a pathology that consists on altering the heartbeat. Although, the 12-lead electroc...
In this work, a nonsupervised algorithm for feature se-lection and a non-parametric density-based cl...
Holter electrocardiographic (ECG) signals are ambulatory long-term registers used to detect heart di...
Cardiac arrhythmia analysis on Holter recordings is an important issue in clinical settings, however...
We propose a method of arrhythmia detection based on beat morphology, which offers a new set of feat...
In this study, six types of arrhythmia beats observed in ECG signals have been analysed by using clu...
This study proposes an unsupervised framework for classifying heart sound data. Its goal is to clust...
The irregularities in the heartbeat are called arrhythmias and can be an essential subject for heart...
The QRS detection is key component of each automated ECG analysis. For this purpose a lot of QRS alg...
AbstractIn this paper, a new method for clustering analysis of QRS complexes is proposed. We present...
Automatic interpretation of electrocardiography provides a non-invasive and inexpensive technique to...
With the number of cardiovascular arrhythmia cases ever increasing, there is a dire need for accurat...
The proposed approach applies current unsupervised clustering approaches in a different dynamic mann...
The proposed approach applies current unsupervised clustering approaches in a different dynamic mann...
In this work, an efficient non-supervised algorithm for clustering of ECG signals is presented. The ...
An arrhythmia is a pathology that consists on altering the heartbeat. Although, the 12-lead electroc...
In this work, a nonsupervised algorithm for feature se-lection and a non-parametric density-based cl...
Holter electrocardiographic (ECG) signals are ambulatory long-term registers used to detect heart di...
Cardiac arrhythmia analysis on Holter recordings is an important issue in clinical settings, however...
We propose a method of arrhythmia detection based on beat morphology, which offers a new set of feat...
In this study, six types of arrhythmia beats observed in ECG signals have been analysed by using clu...
This study proposes an unsupervised framework for classifying heart sound data. Its goal is to clust...
The irregularities in the heartbeat are called arrhythmias and can be an essential subject for heart...
The QRS detection is key component of each automated ECG analysis. For this purpose a lot of QRS alg...
AbstractIn this paper, a new method for clustering analysis of QRS complexes is proposed. We present...
Automatic interpretation of electrocardiography provides a non-invasive and inexpensive technique to...
With the number of cardiovascular arrhythmia cases ever increasing, there is a dire need for accurat...
The proposed approach applies current unsupervised clustering approaches in a different dynamic mann...
The proposed approach applies current unsupervised clustering approaches in a different dynamic mann...