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Related Experiment Video

Updated: Jan 31, 2026

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Optimizing atrial fibrillation detection through ECG feature selection using Extra-Trees and statistical association

Georgios Petmezas1, Vasileios E Papageorgiou2, Rod S Passman3

  • 1School of Medicine, Aristotle University of Thessaloniki, Thessaloniki, Greece.

Journal of Electrocardiology
|January 29, 2026
PubMed
Summary

This study introduces a hybrid method to select key electrocardiogram (ECG) features for detecting atrial fibrillation (AFib). The approach successfully identifies important ECG markers, improving accuracy for AFib diagnosis.

Keywords:
Atrial fibrillation (AFib) detectionElectrocardiogram (ECG) feature selectionExplainable machine learning (ML)Extremely randomized trees (Extra-Trees)Statistical measures

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Area of Science:

  • Cardiology and Medical Informatics
  • Signal Processing and Machine Learning

Background:

  • Atrial fibrillation (AFib) is a common arrhythmia increasing stroke and heart failure risk.
  • Accurate AFib detection from 12-lead ECGs is challenging due to complex interpretation.
  • Machine learning (ML) and deep learning (DL) show promise but require optimal feature selection.

Purpose of the Study:

  • To develop a hybrid feature selection methodology for identifying discriminative ECG features.
  • To objectively distinguish AFib from normal sinus rhythm (NSR) using ECG data.
  • To enhance the interpretability and efficiency of ML/DL models for AFib detection.

Main Methods:

  • A hybrid framework combining Extremely Randomized Trees (Extra-Trees) with statistical association measures.
  • Evaluation of morphological, entropy-based, and spectral hand-crafted features from 12-lead ECGs.
  • Introduction of novel metrics: feature importance score (FIS) and overall feature importance score (OFIS).

Main Results:

  • The method ranked 97 features, identifying the top 10 per lead and 20 overall with high consistency.
  • The interquartile range of RR-intervals showed the highest normalized OFIS, indicating strong discriminative power.
  • Feature space dimensionality was reduced by nearly 80%, preserving interpretability and physiological meaning.

Conclusions:

  • The proposed methodology offers a reproducible, interpretable, and statistically grounded framework for ECG feature discovery.
  • This approach serves as a valuable preprocessing step for ML/DL models in AFib detection.
  • The findings aid clinicians in achieving more accurate real-time AFib detection.