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Related Concept Videos

Disturbances in Heart Rhythm01:29

Disturbances in Heart Rhythm

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Arrhythmia or dysrhythmia refers to an abnormal heart rhythm caused by a defect in the heart's conduction system. It can cause the heart to beat irregularly, too quickly, or too slowly, leading to symptoms like chest pain, shortness of breath, and fainting. Factors such as stress, caffeine, alcohol, nicotine, cocaine, certain drugs, congenital defects, diseases, and electrolyte abnormalities can trigger arrhythmias.
Arrhythmias are categorized by their speed, rhythm, and origin. A slow heart...
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ECG Interpretation of Arrhythmias II: Atrial, Junctional and Ventricular Arrhythmias01:25

ECG Interpretation of Arrhythmias II: Atrial, Junctional and Ventricular Arrhythmias

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Arrhythmia is a condition characterized by an irregular heart rhythm, with ECG changes that differ based on its origin and nature. The types of arrhythmias discussed below include atrial, junctional, and ventricular arrhythmias.Atrial ArrhythmiasPremature Atrial Complexes (PACs): PACs are early atrial beats caused by stress, caffeine, alcohol, electrolyte imbalances, hypoxia, hyperthyroidism, or certain medications (e.g., bronchodilators and decongestants). The ECG shows early P waves with an...
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Dysrhythmias III: Characteristics of Dysrhythmias01:29

Dysrhythmias III: Characteristics of Dysrhythmias

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Dysrhythmias, also known as arrhythmias, are irregular heart rhythms that result from abnormal electrical activity in the heart, affecting its ability to circulate blood efficiently. Tachyarrhythmias, a subset of dysrhythmias, are characterized by abnormally fast heart rates exceeding 100 beats per minute. Here are some types of tachyarrhythmias with their distinct ECG features:Sinus Tachycardia:Sinus tachycardia presents a regular heart rhythm with an increased rate of 101-180 beats per...
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Dysrhythmias II: Classification of Tachyarrhythmias01:28

Dysrhythmias II: Classification of Tachyarrhythmias

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Tachyarrhythmias are a type of dysrhythmia where the heart rate exceeds 100 beats per minute. Here are some common types of tachyarrhythmias:Sinus TachycardiaSinus tachycardia originates from increased impulses from the sinus node, leading to an elevated heart rate. It is often triggered by stress, fever, or exercise.Patients may experience palpitations, a sensation of a racing heart, dizziness, and chest discomfort.Causes and Risk Factors: Common causes include physical exertion, emotional...
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Pulse rhythm01:30

Pulse rhythm

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Pulse rhythm refers to the pattern of pulsations within specific intervals, offering valuable insights into the regularity or irregularity of the heart's beats as observed through the pattern of pulsation within specific intervals. A regular pulse exhibits a consistent heart rate with uniform waveforms and pulsation force, variations of which can be classified as normal, weak, or bounding.
Conversely, an irregular pulse pattern is termed dysrhythmia, stemming from disruptions in cardiac...
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Correlation between ECG and Cardiac Cycle01:25

Correlation between ECG and Cardiac Cycle

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The electrical signals recorded on an electrocardiogram (ECG) occur before the mechanical processes of contraction and relaxation during the cardiac cycle.
A cardiac action potential originates in the SA node and spreads throughout the atria and the AV node in approximately 0.03 seconds. This results in the P wave in an ECG and triggers atrial contraction. The action potential is then briefly slowed at the AV node, allowing the atria to contract and fill the ventricles with blood before...
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Related Experiment Video

Updated: Jan 13, 2026

Estimating Bilateral Atrial Function by Cardiovascular Magnetic Resonance Feature Tracking in Patients with Paroxysmal Atrial Fibrillation
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Estimating Bilateral Atrial Function by Cardiovascular Magnetic Resonance Feature Tracking in Patients with Paroxysmal Atrial Fibrillation

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Gml-PAF: A Generalizable Machine Learning Algorithm for Paroxysmal Atrial Fibrillation Detection based on Short-Term

Yongjun Song1, Jihui Fan1, Zikun Yang2

  • 1School of Computer Science and Engineering, Guangzhou Institute of Science and Technology, Guangzhou, China.

Computer Methods in Biomechanics and Biomedical Engineering
|January 8, 2026
PubMed
Summary
This summary is machine-generated.

A new machine learning algorithm (Gml-PAF) reliably detects paroxysmal atrial fibrillation (PAF) using inter-beat intervals. This generalizable approach shows strong performance for wearable screening.

Keywords:
Inter-Beat IntervalsMachine Learning GeneralizationParoxysmal Atrial FibrillationWearable Screening

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Area of Science:

  • Cardiology
  • Biomedical Engineering
  • Machine Learning

Background:

  • Paroxysmal atrial fibrillation (PAF) detection is challenging.
  • Current methods require robust and generalizable algorithms.
  • Wearable screening for PAF necessitates efficient detection methods.

Purpose of the Study:

  • To develop a generalizable machine learning algorithm (Gml-PAF) for paroxysmal atrial fibrillation detection.
  • To evaluate the algorithm's performance across diverse electrocardiogram (ECG) databases.
  • To assess the utility of Gml-PAF for wearable screening applications.

Main Methods:

  • Utilized a model-agnostic framework for machine learning (ML) model selection, feature selection, and hyperparameter tuning.
  • Employed 21-beat inter-beat intervals (IBI) for PAF detection.
  • Trained and validated the Gml-PAF algorithm across 16 PhysioNet ECG databases.

Main Results:

  • Achieved robust cross-database generalization in independent tests.
  • Reported F1 scores ranging from 0.747 to 0.987.
  • Demonstrated Area Under the Curve (AUC) values between 0.933 and 0.999.

Conclusions:

  • The Gml-PAF algorithm demonstrates strong utility for wearable screening of paroxysmal atrial fibrillation.
  • The algorithm achieves performance comparable to deep learning methods with longer inter-beat interval sequences.
  • Gml-PAF surpasses conventional machine learning methods in PAF detection accuracy and generalizability.