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Related Concept Videos

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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Dysrhythmias V: Evaluating Dysrhythmias01:30

Dysrhythmias V: Evaluating Dysrhythmias

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Dysrhythmias, also known as arrhythmias, are disturbances in the heart's rhythm that range from benign to life-threatening. A thorough evaluation is crucial for appropriate management and involves a comprehensive medical history, physical examination, and various diagnostic tests.Medical HistorySymptoms: Collect detailed information on palpitations, dizziness, syncope, chest pain, and fatigue. Note their onset, frequency, and triggers.Previous Cardiac Issues: Document any history of 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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Holter Monitor: 24-Hour Monitoring01:23

Holter Monitor: 24-Hour Monitoring

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Holter monitoring is a continuous electrocardiography (ECG) recording that tracks the heart's electrical activity over an extended period, generally 24 to 48 hours. This noninvasive diagnostic tool detects irregular heart rhythms that may not be captured during a standard ECG performed in a clinical setting.DeviceThe Holter monitor is a portable, small device connected to several electrodes on the patient's chest. These electrodes detect the heart's electrical signals and transmit them to the...
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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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Electrocardiogram01:29

Electrocardiogram

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An electrocardiogram (ECG or EKG) is a critical diagnostic tool that records the electrical signals produced by the heart during each heartbeat. This recording is achieved through electrodes placed strategically on the arms, legs, and chest. The electrocardiograph amplifies these signals and produces 12 distinct tracings, offering a comprehensive understanding of the heart's electrical activity.
Three major waveforms are present in a typical ECG recording: the P wave, the QRS complex, and...
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Related Experiment Video

Updated: Jan 9, 2026

Patient Directed Recording of a Bipolar Three-Lead Electrocardiogram using a Smartwatch with ECG Function
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Patient Directed Recording of a Bipolar Three-Lead Electrocardiogram using a Smartwatch with ECG Function

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Atrial Fibrillation Detection from Ambulatory ECG with Accelerometry Contextualisation: A Semi-Supervised Learning

Alex E Voinas, Devender Kumar, Jan Smeddinck

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    Summary
    This summary is machine-generated.

    Semi-supervised learning (SSL) improves atrial fibrillation (AF) detection from ambulatory electrocardiogram (ECG) data. This approach leverages unlabelled ECGs to achieve high accuracy with minimal labelled data, aiding early diagnosis.

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    Area of Science:

    • Cardiology
    • Artificial Intelligence
    • Biomedical Signal Processing

    Background:

    • Atrial fibrillation (AF) is a common arrhythmia requiring early detection via ambulatory electrocardiogram (ECG) screening.
    • Deep learning (DL) shows promise for automated AF detection but requires extensive labelled data.
    • Acquiring diverse labelled ECG data for DL models is costly and time-consuming.

    Purpose of the Study:

    • To propose and evaluate a semi-supervised learning (SSL) model for AF detection using variational auto-encoders (VAEs).
    • To assess the impact of incorporating accelerometry data for ambulatory context on model performance.
    • To demonstrate the efficacy of SSL in optimizing AF detection with limited labelled ECG data.

    Main Methods:

    • Developed an SSL model using a VAE architecture for AF detection on ambulatory ECG.
    • Incorporated accelerometry data to account for free-living ambulatory contexts.
    • Trained the model on a large dataset of 72,003 unique patients, classifying sinus rhythm, AF, and other arrhythmias.

    Main Results:

    • The SSL model achieved over 91% accuracy on an unseen test dataset and the CACHET-CADB dataset.
    • High performance was maintained even with only 20% of the training data being labelled.
    • The model demonstrated strong generalisability across different datasets.

    Conclusions:

    • SSL effectively enhances AF detection from ambulatory ECG using minimal labelled data.
    • The proposed VAE-based SSL model offers a cost-effective solution for large-scale ECG analysis.
    • Incorporating contextual data like accelerometry can further refine arrhythmia detection in real-world settings.