A number of methods for temporal alignment, feature extraction, and clustering of electrocardiographic signals are proposed. The ultimate aim of the paper is to find a method to automatically reduce the quantity of beats to examine in a long-term electrocardiographic signal, known as Holter signal, without loss of valuable information for the diagnosis. These signals include thousands of beats, and therefore, visual inspection is difficult and cumbersome. All the elements involved in each stage will be described and a thorough experimental study will be presented. The electrocardiograph signals used in the experiments belong to the well-known MIT database, where many different waveforms can be found. Based on the results of the experiments,...
In this study, a new long-duration holter electrocardiogram (ECG) major events detection-delineation...
This paper shows a feature extraction method for electrocardiographic signals (ECG) based on dynamic...
The paper deals with application of cluster analysis to different ECG records in order to identify p...
Holter electrocardiographic (ECG) signals are ambulatory long-term registers used to detect heart di...
In this paper, a method to automatically extract the main information from a long-term electrocardio...
Abstract. Holter signals correspond to long-term electrocardiograph registers. Manual inspection of ...
In this paper, the performance analysis of a clustering algorithm applied to group electrocardiograp...
Introduction. The most common method for diagnosing cardiovascular diseases is the method of ECG mon...
Signal processing can be used to condition medical signals to facilitate their interpretation, and t...
In this paper we present a personalized long-term electrocardiogram (ECG) classification framework, ...
An arrhythmia is a pathology that consists on altering the heartbeat. Although, the 12-lead electroc...
Modern engineering offers sophisticated means for monitoring diagnosis and therapy of cardiac diseas...
There is a need to automate the present manual methods of analysing long term (24 hour) recorded Ele...
Despite the wide literature on R-wave detection algorithms for ECG Holter recordings, the long-term ...
The QRS detection is key component of each automated ECG analysis. For this purpose a lot of QRS alg...
In this study, a new long-duration holter electrocardiogram (ECG) major events detection-delineation...
This paper shows a feature extraction method for electrocardiographic signals (ECG) based on dynamic...
The paper deals with application of cluster analysis to different ECG records in order to identify p...
Holter electrocardiographic (ECG) signals are ambulatory long-term registers used to detect heart di...
In this paper, a method to automatically extract the main information from a long-term electrocardio...
Abstract. Holter signals correspond to long-term electrocardiograph registers. Manual inspection of ...
In this paper, the performance analysis of a clustering algorithm applied to group electrocardiograp...
Introduction. The most common method for diagnosing cardiovascular diseases is the method of ECG mon...
Signal processing can be used to condition medical signals to facilitate their interpretation, and t...
In this paper we present a personalized long-term electrocardiogram (ECG) classification framework, ...
An arrhythmia is a pathology that consists on altering the heartbeat. Although, the 12-lead electroc...
Modern engineering offers sophisticated means for monitoring diagnosis and therapy of cardiac diseas...
There is a need to automate the present manual methods of analysing long term (24 hour) recorded Ele...
Despite the wide literature on R-wave detection algorithms for ECG Holter recordings, the long-term ...
The QRS detection is key component of each automated ECG analysis. For this purpose a lot of QRS alg...
In this study, a new long-duration holter electrocardiogram (ECG) major events detection-delineation...
This paper shows a feature extraction method for electrocardiographic signals (ECG) based on dynamic...
The paper deals with application of cluster analysis to different ECG records in order to identify p...