Atrial Fibrillation Detection Using Machine Learning
Ankit Singh, Vidhi Thakur, Nachiket Tapas

TL;DR
This study develops a machine learning framework that accurately detects atrial fibrillation from PPG and ECG signals, achieving over 98% accuracy, enabling early non-invasive diagnosis.
Contribution
The paper introduces a combined PPG and ECG feature-based machine learning approach with high accuracy for AF detection, outperforming existing methods.
Findings
Subspace KNN achieved 98.7% accuracy.
Models showed over 95% sensitivity and specificity.
Ensemble models effectively detect AF from non-invasive signals.
Abstract
Atrial fibrillation (AF) is a common cardiac arrhythmia and a major risk factor for ischemic stroke. Early detection of AF using non-invasive signals can enable timely intervention. In this work, we present a comprehensive machine learning framework for AF detection from simultaneous photoplethysmogram (PPG) and electrocardiogram (ECG) signals. We partitioned continuous recordings from 35 subjects into 525 segments (15 segments of 10,000 samples each at 125Hz per subject). After data cleaning to remove segments with missing samples, 481 segments remained (263 AF, 218 normal). We extracted 22 features per segment, including time-domain statistics (mean, standard deviation, skewness, etc.), bandpower, and heart-rate variability metrics from both PPG and ECG signals. Three classifiers -- ensemble of bagged decision trees, cubic-kernel support vector machine (SVM), and subspace k-nearest…
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Taxonomy
TopicsECG Monitoring and Analysis · Non-Invasive Vital Sign Monitoring · Atrial Fibrillation Management and Outcomes
