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Related Concept Videos

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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Dysrhythmias I: Introduction01:15

Dysrhythmias I: Introduction

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Dysrhythmias refers to abnormalities in the heart's rhythm. They result from disruptions in the heart's electrical conduction system, which includes the sinoatrial(SA)node, atrioventricular(AV) node, the bundle of His, bundle branches, and Purkinje fibers.Definition and PathophysiologyDysrhythmias result from disorders of impulse formation, impulse conduction, or both. The heart contains specialized cells in the sinoatrial node, atrioventricular node, and the bundle of His and Purkinje fibers...
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Mechanism of Cardiac Arrhythmias01:28

Mechanism of Cardiac Arrhythmias

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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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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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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.
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Imbalances in Cardiac Output01:26

Imbalances in Cardiac Output

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The heart's primary function is to pump blood throughout the body, maintaining a balance between blood sent out (cardiac output) and blood returning (venous return). If this balance is disrupted, it can result in congestive heart failure (CHF), a severe condition where the heart becomes an inefficient pump, leading to inadequate blood circulation.
CHF can occur due to the failure of either side of the heart. Left-side failure leads to pulmonary congestion—the right side continues to send...
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Updated: Sep 6, 2025

Analyzing Long-Term Electrocardiography Recordings to Detect Arrhythmias in Mice
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DE-PNN: Differential Evolution-Based Feature Optimization with Probabilistic Neural Network for Imbalanced Arrhythmia

Amnah Nasim1, Yoon Sang Kim1

  • 1BioComputing Lab., Institute for Bio-Engineering Application Technology, Department of Computer Science and Engineering, KOREATECH, Cheonan 31253, Korea.

Sensors (Basel, Switzerland)
|June 24, 2022
PubMed
Summary
This summary is machine-generated.

This study introduces an efficient heartbeat classification method using differential evolution (DE) for feature optimization and a probabilistic neural network (PNN) for accurate arrhythmia detection, achieving high performance on imbalanced datasets.

Keywords:
arrhythmiadifferential evolutionelectrocardiogramimbalanced classmatthews correlation coefficient

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Area of Science:

  • Cardiology
  • Biomedical Engineering
  • Machine Learning

Background:

  • Accurate electrocardiogram (ECG) heartbeat classification is crucial for diagnosing cardiac arrhythmias.
  • Existing methods often struggle with imbalanced datasets and detecting minority heartbeat classes.
  • The need for computationally efficient and highly accurate classification algorithms persists.

Purpose of the Study:

  • To develop and validate a novel ECG heartbeat classification method.
  • To enhance the detection of both normal and various arrhythmic heartbeats.
  • To address the challenge of imbalanced datasets in arrhythmia classification.

Main Methods:

  • Utilized direct signal amplitude points from ECG holter devices, bypassing traditional feature extraction.
  • Employed differential evolution (DE) for evolutionary feature optimization and reduction.
  • Implemented a probabilistic neural network (PNN) for heartbeat classification.
  • Incorporated the Matthews correlation coefficient (MCC) as a fitness function to prioritize minority classes.

Main Results:

  • Achieved a significant 85.77% reduction in features, optimizing from 253 to 36 direct amplitude features.
  • Demonstrated high classification performance with overall 99.33% accuracy.
  • Obtained a 94.56% F1 score, 93.84% sensitivity, and 99.21% specificity across eight heartbeat classes.
  • Successfully classified normal, left bundle branch block, right bundle branch block, premature ventricular contraction, atrial premature, ventricular escape, ventricular flutter, and paced beats.

Conclusions:

  • The proposed DE-PNN scheme offers a robust and efficient solution for ECG heartbeat classification.
  • The method effectively handles imbalanced datasets and improves the detection of minority arrhythmia classes.
  • This approach provides a promising tool for automated cardiac arrhythmia diagnosis.