Comparing RR-Interval-Based and Whole-Signal-Based Machine Learning Models for Atrial Fibrillation Detection from Single-lead Electrocardiograms
Article 2024 en
Authors
ZD
Zixuan Ding
JM
Jonathan Mant
JB
James Brimicombe
Abstract
1 min read
The aim of this study was to compare the performance of machine learning models to detect atrial fibrillation (AF) from single-lead ECGs which use either RR-intervals alone, or the entire ECG signal.Experiments were conducted using single-lead, 30-second ECG signals acquired using handheld ECG recorders from two datasets: the Computing in Cardiology (CinC) 2017 dataset (public), and the Screening for Atrial Fibrillation with ECG to Reduce Stroke (SAFER) dataset (private).The models assessed in this study were: two models which used the whole ECG signal, both of which were top-performing models from the 2017 PhysioNet / CinC Challenge; and two RR-interval-based models -a state-of-the-art model and a novel model which detects AF from a 2D representation of the differences between RR intervals.The models had AUROCs of 0.93 -0.99.The AUPRCs varied more widely, from 0.64-0.94.The novel RR-interval-based AF detection model achieved an AUPRC of 0.94 on the CinC 2017 dataset, outperforming the state-of-the-art RRinterval-based model (0.88) and the entire-signal-based models (0.68 and 0.64).This experiment demonstrated that AF detection models utilizing only RR intervals could achieve comparable performance to those utilizing the entire ECG signal.
Shannon Ho, Zixuan Ding, David Wong, Florian Kristof, James Brimicombe, Martín Cowie, Andrew Dymond, Hannah Clair Lindén, Professor Gregory Lip, Kate Williams, Jonathan Mant, Peter Charlton
Mary Adeniji, James Brimicombe, Martín Cowie, Andrew Dymond, Hannah Clair Lindén, Professor Gregory Lip, Jonathan Mant, Madhumitha Pandiaraja, Kate Williams, Peter Charlton
Madhumitha Pandiaraja, James Brimicombe, Martín Cowie, Andrew Dymond, Hannah Clair Lindén, Professor Gregory Lip, Jonathan Mant, Kate Williams, Peter Charlton, on behalf of the SAFER Investigators
Rayo Akande, James Brimicombe, Martín Cowie, Andrew Dymond, Hannah Clair Lindén, Professor Gregory Lip, Jenny Lund, Jonathan Mant, Madhumitha Pandiaraja, Emma Svennberg, Kate Williams, Peter Charlton
Discussion(0)
No comments yet. Be the first to comment.