Convolutional Neural Networks for Mechanistic Driver Detection in Atrial Fibrillation.
Gonzalo Ricardo Ríos-MuñozFrancisco Fernández-AvilésÁngel ArenalPublished in: International journal of molecular sciences (2022)
The maintaining and initiating mechanisms of atrial fibrillation (AF) remain controversial. Deep learning is emerging as a powerful tool to better understand AF and improve its treatment, which remains suboptimal. This paper aims to provide a solution to automatically identify rotational activity drivers in endocardial electrograms (EGMs) with convolutional recurrent neural networks (CRNNs). The CRNN model was compared with two other state-of-the-art methods (SimpleCNN and attention-based time-incremental convolutional neural network (ATI-CNN)) for different input signals (unipolar EGMs, bipolar EGMs, and unipolar local activation times), sampling frequencies, and signal lengths. The proposed CRNN obtained a detection score based on the Matthews correlation coefficient of 0.680, an ATI-CNN score of 0.401, and a SimpleCNN score of 0.118, with bipolar EGMs as input signals exhibiting better overall performance. In terms of signal length and sampling frequency, no significant differences were found. The proposed architecture opens the way for new ablation strategies and driver detection methods to better understand the AF problem and its treatment.
Keyphrases
- convolutional neural network
- atrial fibrillation
- deep learning
- neural network
- catheter ablation
- left atrial
- oral anticoagulants
- left atrial appendage
- heart failure
- artificial intelligence
- label free
- bipolar disorder
- direct oral anticoagulants
- percutaneous coronary intervention
- real time pcr
- machine learning
- working memory
- magnetic resonance
- smoking cessation
- venous thromboembolism
- combination therapy
- radiofrequency ablation