An Interpretable Hand-Crafted Feature-Based Model for Atrial Fibrillation Detection.
Fiche publication
Date publication
janvier 2021
Journal
Frontiers in physiology
Auteurs
Membres identifiés du Cancéropôle Est :
Pr CLAUSEL Marianne
Tous les auteurs :
Rouhi R, Clausel M, Oster J, Lauer F
Lien Pubmed
Résumé
Atrial Fibrillation (AF) is the most common type of cardiac arrhythmia. Early diagnosis of AF helps to improve therapy and prognosis. Machine Learning (ML) has been successfully applied to improve the effectiveness of Computer-Aided Diagnosis (CADx) systems for AF detection. Presenting an explanation for the decision made by an ML model is considerable from the cardiologists' point of view, which decreases the complexity of the ML model and can provide tangible information in their diagnosis. In this paper, a range of explanation techniques is applied to hand-crafted features based ML models for heart rhythm classification. We validate the impact of the techniques by applying feature selection and classification to the 2017 CinC/PhysioNet challenge dataset. The results show the effectiveness and efficiency of SHapley Additive exPlanations (SHAP) technique along with Random Forest (RF) for the classification of the Electrocardiogram (ECG) signals for AF detection with a mean F-score of 0.746 compared to 0.706 for a technique based on the same features based on a cascaded SVM approach. The study also highlights how this interpretable hand-crafted feature-based model can provide cardiologists with a more compact set of features and tangible information in their diagnosis.
Mots clés
atrial fibrillation, classification, computer-aided diagnosis, feature importance, feature selection, interpretability
Référence
Front Physiol. 2021 ;12:657304