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Identification of Arrhythmia by Using a Decision Tree and Gated Network Fusion Model.

Peng LuYabin ZhangBing ZhouHongpo ZhangLiwei ChenYusong LinXiaobo MaoYang GaoHao Xi
Published in: Computational and mathematical methods in medicine (2021)
In recent years, deep learning (DNN) based methods have made leapfrogging level breakthroughs in detecting cardiac arrhythmias as the cost effectiveness of arithmetic power, and data size has broken through the tipping point. However, the inability of these methods to provide a basis for modeling decisions limits clinicians' confidence on such methods. In this paper, a Gate Recurrent Unit (GRU) and decision tree fusion model, referred to as (T-GRU), was designed to explore the problem of arrhythmia recognition and to improve the credibility of deep learning methods. The fusion model multipathway processing time-frequency domain featured the introduction of decision tree probability analysis of frequency domain features, the regularization of GRU model parameters and weight control to improve the decision tree model output weights. The MIT-BIH arrhythmia database was used for validation. Results showed that the low-frequency band features dominated the model prediction. The fusion model had an accuracy of 98.31%, sensitivity of 96.85%, specificity of 98.81%, and precision of 96.73%, indicating its high reliability and clinical significance.
Keyphrases
  • deep learning
  • decision making
  • heart failure
  • emergency department
  • machine learning
  • body mass index
  • physical activity
  • weight gain
  • artificial intelligence
  • atrial fibrillation
  • big data
  • congenital heart disease