Fragmented QRS (f-QRS) has been proven to be an efficient biomarker for several diseases, including remote and acute myocardial infarction, cardiac sarcoidosis, non-ischaemic cardiomyopathy, etc. It has also been shown to have higher sensitivity and/or specificity values than the conventional markers (e.g. Q-wave, ST-elevation, etc.) which may even regress or disappear with time. Patients with such diseases have to undergo expensive and sometimes invasive tests for diagnosis. Automated detection of f-QRS followed by identification of its various morphologies in addition to the conventional ECG feature (e.g. P, QRS, T amplitude and duration, etc.) extraction will lead to a more reliable diagnosis, therapy and disease prognosis than the state...
With increasing number of cardiovascular cases throughout the world, personalized remote healthcare ...
This paper proposes an algorithm using Empirical Mode Decomposition (EMD) and k-means for the detect...
This paper proposes an algorithm using Empirical Mode Decomposition (EMD) and k-means for the detect...
Fragmented QRS (f-QRS) has been proven to be an efficient biomarker for several diseases, including ...
Fragmented QRS (f-QRS) has been proven to be an efficient biomarker for several diseases, including ...
Fragmented QRS (f-QRS) has been found to have higher sensitivity and/or specificity values for sever...
Fragmented QRS (f-QRS) has been found to have higher sensitivity and/or specificity values for sever...
This thesis was developed as part of a research visit to the University of Southampton in collaborat...
Fragmented QRS (f-QRS) has been found to have higher sensitivity and/or specificity values for sever...
Abstract Fragmented QRS (fQRS) is an electrocardiographic (ECG) marker of myocardial conduction abno...
OBJECTIVE: Fragmented QRS (fQRS) is an accessible biomarker and indication of myocardial scarring th...
This paper introduces a novel low complexity highly accurate on-chip architecture for the detection ...
This paper introduces a novel low complexity highly accurate on-chip architecture for the detection ...
This paper presents the work of signal discrimination specifically for Electrocardiogram (ECG) wavef...
With increasing number of cardiovascular cases throughout the world, personalized remote healthcare ...
With increasing number of cardiovascular cases throughout the world, personalized remote healthcare ...
This paper proposes an algorithm using Empirical Mode Decomposition (EMD) and k-means for the detect...
This paper proposes an algorithm using Empirical Mode Decomposition (EMD) and k-means for the detect...
Fragmented QRS (f-QRS) has been proven to be an efficient biomarker for several diseases, including ...
Fragmented QRS (f-QRS) has been proven to be an efficient biomarker for several diseases, including ...
Fragmented QRS (f-QRS) has been found to have higher sensitivity and/or specificity values for sever...
Fragmented QRS (f-QRS) has been found to have higher sensitivity and/or specificity values for sever...
This thesis was developed as part of a research visit to the University of Southampton in collaborat...
Fragmented QRS (f-QRS) has been found to have higher sensitivity and/or specificity values for sever...
Abstract Fragmented QRS (fQRS) is an electrocardiographic (ECG) marker of myocardial conduction abno...
OBJECTIVE: Fragmented QRS (fQRS) is an accessible biomarker and indication of myocardial scarring th...
This paper introduces a novel low complexity highly accurate on-chip architecture for the detection ...
This paper introduces a novel low complexity highly accurate on-chip architecture for the detection ...
This paper presents the work of signal discrimination specifically for Electrocardiogram (ECG) wavef...
With increasing number of cardiovascular cases throughout the world, personalized remote healthcare ...
With increasing number of cardiovascular cases throughout the world, personalized remote healthcare ...
This paper proposes an algorithm using Empirical Mode Decomposition (EMD) and k-means for the detect...
This paper proposes an algorithm using Empirical Mode Decomposition (EMD) and k-means for the detect...