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Related Concept Videos

Disturbances in Heart Rhythm01:28

Disturbances in Heart Rhythm

945
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...
945
Mechanism of Cardiac Arrhythmias01:28

Mechanism of Cardiac Arrhythmias

917
Arrhythmias are irregular heart rhythms occurring when the heart's electrical impulses become abnormal. These disturbances can lead to various symptoms, depending on their severity and the underlying cause. Some common factors contributing to arrhythmias include hypoxia, ischemia, electrolyte imbalances, excessive catecholamine exposure, drug toxicity, and muscle overstretching. Arrhythmias can be classified into two main types based on the rate and site of origin of abnormal heart rhythms.
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ECG Interpretation of Arrhythmias I: Sinus Arrhythmias01:16

ECG Interpretation of Arrhythmias I: Sinus Arrhythmias

213
Arrhythmias are disturbances in the heart's rhythm that lead to abnormal heartbeats. These irregularities can originate from different parts of the heart and are classified based on their origin and nature.
Types of Arrhythmias
Sinus Node Arrhythmias
Sinus Bradycardia: Originating from the sinoatrial (SA) node, sinus bradycardia involves slower impulses, resulting in a heart rate of less than 60 beats per minute (bpm). Causes include sleep, vagal stimulation, beta-blockers, hypothyroidism,...
213
Electrocardiogram01:29

Electrocardiogram

2.3K
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...
2.3K
Electrocardiogram Fundamentals01:28

Electrocardiogram Fundamentals

572
Introduction
An electrocardiogram (ECG) is a diagnostic tool for identifying cardiac conditions such as arrhythmias, conduction abnormalities, and myocardial ischemia.
Definition
An electrocardiogram (ECG) visualizes the heart's electrical activity by tracing the electrical movement associated with each heartbeat on a graph or monitor. As the heart beats, an electrical wave passes through it, correlating with the cardiac cycle events.
Parts of an ECG
An ECG utilizes electrodes on the skin...
572
Pulse rhythm01:30

Pulse rhythm

787
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...
787

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Related Experiment Video

Updated: Jun 27, 2025

Analyzing Long-Term Electrocardiography Recordings to Detect Arrhythmias in Mice
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Cardiac Arrhythmia Classification Using Advanced Deep Learning Techniques on Digitized ECG Datasets.

Shoaib Sattar1, Rafia Mumtaz1, Mamoon Qadir2

  • 1School of Electrical Engineering and Computer Science (SEECS), National University of Sciences and Technology (NUST), Islamabad 44000, Pakistan.

Sensors (Basel, Switzerland)
|April 27, 2024
PubMed
Summary
This summary is machine-generated.

This study digitizes ECG images into time series signals for deep learning analysis. A convolutional neural network (CNN) achieved ~92% accuracy in classifying cardiac arrhythmias, enabling real-time monitoring.

Keywords:
ECG classificationarrhythmiadeep learningdigitizationself-supervised learning

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Area of Science:

  • Cardiology
  • Artificial Intelligence
  • Biomedical Signal Processing

Background:

  • Electrocardiogram (ECG) classification is crucial for diagnosing cardiac diseases.
  • Deep learning (DL) offers advanced tools for analyzing ECG signals to aid expert diagnosis.
  • Digitizing ECG records into time series data enables sophisticated computational analysis.

Purpose of the Study:

  • To digitize a dataset of ECG record images into time series signals.
  • To apply and compare state-of-the-art deep learning techniques for ECG signal classification.
  • To evaluate the performance of Convolutional Neural Network (CNN), Long Short-Term Memory (LSTM), and Self-Supervised Learning (SSL) models for cardiac arrhythmia classification.

Main Methods:

  • ECG images from Pakistani healthcare institutes were digitized.
  • Lead II heartbeats were segmented from the digitized ECG signals.
  • Multiple DL models, including CNN, LSTM, and an SSL-based autoencoder model, were trained and compared.

Main Results:

  • The proposed CNN model achieved the highest classification accuracy of approximately 92%.
  • The DL models were trained on a dataset derived from diverse patient ECG plots.
  • The CNN model demonstrated fast inference capabilities for real-time ECG monitoring.

Conclusions:

  • Digitized ECG signals processed by DL models offer a viable alternative to image-based analysis for arrhythmia classification.
  • The developed CNN model provides accurate and efficient real-time monitoring of ECG signals.
  • This approach facilitates direct utilization of DL models with ECG machine outputs for enhanced cardiac patient monitoring.