Deep learning evaluation of echocardiograms to identify occult atrial fibrillation.
Neal YuanNathan R SteinGrant DuffyRoopinder K SandhuSumeet S ChughPeng-Sheng ChenCarine RosenbergChristine M AlbertSusan C ChengRobert J SiegelDavid OuyangPublished in: NPJ digital medicine (2024)
Atrial fibrillation (AF) often escapes detection, given its frequent paroxysmal and asymptomatic presentation. Deep learning of transthoracic echocardiograms (TTEs), which have structural information, could help identify occult AF. We created a two-stage deep learning algorithm using a video-based convolutional neural network model that (1) distinguished whether TTEs were in sinus rhythm or AF and then (2) predicted which of the TTEs in sinus rhythm were in patients who had experienced AF within 90 days. Our model, trained on 111,319 TTE videos, distinguished TTEs in AF from those in sinus rhythm with high accuracy in a held-out test cohort (AUC 0.96 (0.95-0.96), AUPRC 0.91 (0.90-0.92)). Among TTEs in sinus rhythm, the model predicted the presence of concurrent paroxysmal AF (AUC 0.74 (0.71-0.77), AUPRC 0.19 (0.16-0.23)). Model discrimination remained similar in an external cohort of 10,203 TTEs (AUC of 0.69 (0.67-0.70), AUPRC 0.34 (0.31-0.36)). Performance held across patients who were women (AUC 0.76 (0.72-0.81)), older than 65 years (0.73 (0.69-0.76)), or had a CHA 2 DS 2 VASc ≥2 (0.73 (0.79-0.77)). The model performed better than using clinical risk factors (AUC 0.64 (0.62-0.67)), TTE measurements (0.64 (0.62-0.67)), left atrial size (0.63 (0.62-0.64)), or CHA 2 DS 2 VASc (0.61 (0.60-0.62)). An ensemble model in a cohort subset combining the TTE model with an electrocardiogram (ECGs) deep learning model performed better than using the ECG model alone (AUC 0.81 vs. 0.79, p = 0.01). Deep learning using TTEs can predict patients with active or occult AF and could be used for opportunistic AF screening that could lead to earlier treatment.
Keyphrases
- atrial fibrillation
- left atrial
- deep learning
- catheter ablation
- oral anticoagulants
- convolutional neural network
- left atrial appendage
- direct oral anticoagulants
- heart failure
- risk factors
- percutaneous coronary intervention
- machine learning
- artificial intelligence
- squamous cell carcinoma
- type diabetes
- healthcare
- radiation therapy
- heart rate
- pregnant women
- blood pressure
- mitral valve
- coronary artery disease
- venous thromboembolism
- heart rate variability
- adipose tissue
- high intensity
- combination therapy