The automatic detection and classification of cardiac abnormalities can assist physicians in making diagnoses, saving costs in modern healthcare systems. In this study we present an automatic algorithm for classification of cardiac abnormalities included in the CinC's challenge 2021 dataset consisting of twelve-lead, six-lead, three-lead, and two-lead ECGs (team: Polimi1). For each set of leads an ensemble of three deep learning models, trained on three different subsets, was developed. These subsets, obtained by splitting the recordings with the most frequent classes, had more balanced distributions for training and were used to train the 3 classifiers. The trained models were modified Residual Networks with a Squeeze-and-Excitation module...
This work focuses on a theoretical explanation of heart rhythm disorders and the possibility of thei...
Cardiac arrhythmia is a group of conditions in which falls changes in the heartbeat. Electrocardiogr...
An approach is presented to classify ECG signals as normal, atrial fibrillation, other arrhythmia, o...
The automatic detection and classification of cardiac abnormalities can assist physicians in making ...
Objective. This work presents an ECG classifier for variable leads as a contribution to the Computin...
The 12-lead electrocardiogram (ECG) is a major diagnostic test for cardiovascular diseases and enhan...
Background - Twelve lead ECGs are a core diagnostic tool for cardiovascular diseases. Here, we descr...
Cardiovascular disease and its consequences on human health have never stopped and even show a trend...
The research activity contained in the present thesis work is devoted to the development of novel Ma...
Electrocardiograms (ECGs) can be considered a viable method for cardiovascular disease (CVD) diagnos...
An automatic system for heart arrhythmia classification can perform a substantial role in managing a...
The objective of this study was to classify 27 cardiac abnormalities based on a data set of 43101 EC...
Heart disease is the leading cause of death worldwide. Among patients with cardiovascular diseases,...
This study presents PhysioNauts Team's contribution to the PhysioNet/CinC Challenge 2021 on ECG clas...
Arrhythmia detection algorithms based on deep learning are attracting considerable interest due to t...
This work focuses on a theoretical explanation of heart rhythm disorders and the possibility of thei...
Cardiac arrhythmia is a group of conditions in which falls changes in the heartbeat. Electrocardiogr...
An approach is presented to classify ECG signals as normal, atrial fibrillation, other arrhythmia, o...
The automatic detection and classification of cardiac abnormalities can assist physicians in making ...
Objective. This work presents an ECG classifier for variable leads as a contribution to the Computin...
The 12-lead electrocardiogram (ECG) is a major diagnostic test for cardiovascular diseases and enhan...
Background - Twelve lead ECGs are a core diagnostic tool for cardiovascular diseases. Here, we descr...
Cardiovascular disease and its consequences on human health have never stopped and even show a trend...
The research activity contained in the present thesis work is devoted to the development of novel Ma...
Electrocardiograms (ECGs) can be considered a viable method for cardiovascular disease (CVD) diagnos...
An automatic system for heart arrhythmia classification can perform a substantial role in managing a...
The objective of this study was to classify 27 cardiac abnormalities based on a data set of 43101 EC...
Heart disease is the leading cause of death worldwide. Among patients with cardiovascular diseases,...
This study presents PhysioNauts Team's contribution to the PhysioNet/CinC Challenge 2021 on ECG clas...
Arrhythmia detection algorithms based on deep learning are attracting considerable interest due to t...
This work focuses on a theoretical explanation of heart rhythm disorders and the possibility of thei...
Cardiac arrhythmia is a group of conditions in which falls changes in the heartbeat. Electrocardiogr...
An approach is presented to classify ECG signals as normal, atrial fibrillation, other arrhythmia, o...