The PhysioNet/Computing in Cardiology (CinC) Challenge 2017 focused on differentiating AF from noise, normal or other rhythms in short term (from 9-61 s) ECG recordings performed by patients. A total of 12, 186 ECGs were used: 8, 528 in the public training set and 3, 658 in the private hidden test set. Due to the high degree of interexpert disagreement between a significant fraction of the expert labels we implemented a mid-competition bootstrap approach to expert relabeling of the data, levering the best performing Challenge entrants' algorithms to identify contentious labels. A total of 75 independent teams entered the Challenge using a variety of traditional and novel methods, ranging from random forests to a deep learning approach appli...
We describe a framework for automated electrocardiogram (ECG) quality assessment which works in both...
Manual rhythm classification in 12-lead ECGs is time-consuming and operator-biased. We present an au...
© 2018 Institute of Physics and Engineering in Medicine. Objectives: We present a method for automat...
Objective: The 2017 PhysioNet/CinC Challenge focused on automatic classification of atrial fibrillat...
An approach is presented to classify ECG signals as normal, atrial fibrillation, other arrhythmia, o...
The diagnosis of cardiovascular diseases such as atrial fibrillation (AF) is a lengthy and expensive...
Atrial Fibrillation(AF) is a major public health risk but its identification is challenging because ...
Automated interpretation of the 12-lead ECG has remained an underpinning interest in decades of rese...
This thesis focuses on classifying AF and Normal rhythm ECG recordings. AF is a common arrhythmia oc...
This dataset is a denoised version of the CPSC dataset presented in Classification of 12-lead ECGs: ...
The automatic detection and classification of cardiac abnormalities can assist physicians in making ...
An algorithm to detect poor quality ECGs collected in low-resource environments is described (and wa...
This test dataset comprised of 828 ECGs, where patients were not included in the training/validation...
Atrial Fibrillation (AF) is characterized by chaotic electrical impulses in the atria, which leads t...
During the lockdown of universities and the COVID-Pandemic most students were restricted to their ho...
We describe a framework for automated electrocardiogram (ECG) quality assessment which works in both...
Manual rhythm classification in 12-lead ECGs is time-consuming and operator-biased. We present an au...
© 2018 Institute of Physics and Engineering in Medicine. Objectives: We present a method for automat...
Objective: The 2017 PhysioNet/CinC Challenge focused on automatic classification of atrial fibrillat...
An approach is presented to classify ECG signals as normal, atrial fibrillation, other arrhythmia, o...
The diagnosis of cardiovascular diseases such as atrial fibrillation (AF) is a lengthy and expensive...
Atrial Fibrillation(AF) is a major public health risk but its identification is challenging because ...
Automated interpretation of the 12-lead ECG has remained an underpinning interest in decades of rese...
This thesis focuses on classifying AF and Normal rhythm ECG recordings. AF is a common arrhythmia oc...
This dataset is a denoised version of the CPSC dataset presented in Classification of 12-lead ECGs: ...
The automatic detection and classification of cardiac abnormalities can assist physicians in making ...
An algorithm to detect poor quality ECGs collected in low-resource environments is described (and wa...
This test dataset comprised of 828 ECGs, where patients were not included in the training/validation...
Atrial Fibrillation (AF) is characterized by chaotic electrical impulses in the atria, which leads t...
During the lockdown of universities and the COVID-Pandemic most students were restricted to their ho...
We describe a framework for automated electrocardiogram (ECG) quality assessment which works in both...
Manual rhythm classification in 12-lead ECGs is time-consuming and operator-biased. We present an au...
© 2018 Institute of Physics and Engineering in Medicine. Objectives: We present a method for automat...