Improving Automatic Smartwatch Electrocardiogram Diagnosis of Atrial Fibrillation by Identifying Regularity within Irregularity.
Anouk VelraedsMarc StrikJoske van der ZandeLeslie FontagneMichel HaissaguerreSylvain PlouxYing WangPierre BordacharPublished in: Sensors (Basel, Switzerland) (2023)
Smartwatches equipped with automatic atrial fibrillation (AF) detection through electrocardiogram (ECG) recording are increasingly prevalent. We have recently reported the limitations of the Apple Watch (AW) in correctly diagnosing AF. In this study, we aim to apply a data science approach to a large dataset of smartwatch ECGs in order to deliver an improved algorithm. We included 723 patients (579 patients for algorithm development and 144 patients for validation) who underwent ECG recording with an AW and a 12-lead ECG (21% had AF and 24% had no ECG abnormalities). Similar to the existing algorithm, we first screened for AF by detecting irregularities in ventricular intervals. However, as opposed to the existing algorithm, we included all ECGs (not applying quality or heart rate exclusion criteria) but we excluded ECGs in which we identified regular patterns within the irregular rhythms by screening for interval clusters. This "irregularly irregular" approach resulted in a significant improvement in accuracy compared to the existing AW algorithm (sensitivity of 90% versus 83%, specificity of 92% versus 79%, p < 0.01). Identifying regularity within irregular rhythms is an accurate yet inclusive method to detect AF using a smartwatch ECG.
Keyphrases
- atrial fibrillation
- heart rate
- machine learning
- heart rate variability
- end stage renal disease
- deep learning
- newly diagnosed
- ejection fraction
- heart failure
- prognostic factors
- catheter ablation
- blood pressure
- public health
- left atrial appendage
- peritoneal dialysis
- direct oral anticoagulants
- oral anticoagulants
- patient reported outcomes
- electronic health record
- quantum dots
- big data
- artificial intelligence
- patient reported