OBJECTIVE: Atrial fibrillation (AF) is the most common cardiac arrhythmia, with an estimated prevalence of around 1.6% in the adult population. The analysis of the electrocardiogram (ECG) data acquired in the UK Biobank represents an opportunity to screen for AF in a large sub-population in the UK. The main objective of this paper is to assess ten machine-learning methods for automated detection of subjects with AF in the UK Biobank dataset. APPROACH: Six classical machine-learning methods based on support vector machines are proposed and compared with state-of-the-art techniques (including a deep-learning algorithm), and finally a combination of a classical machine-learning and deep learning approaches. Evaluation is carried out on a subset of the UK Biobank dataset, manually annotated by human experts. MAIN RESULTS: The combined classical machine-learning and deep learning method achieved an F1 score of 84.8% on the test subset, and a Cohen's kappa coefficient of 0.83, which is similar to the inter-observer agreement of two human experts. SIGNIFICANCE: The level of performance indicates that the automated detection of AF in patients whose data have been stored in a large database, such as the UK Biobank, is possible. Such automated identification of AF patients would enable further investigations aimed at identifying the different phenotypes associated with AF.
OBJECTIVE:Atrial fibrillation (AF) is the most common cardiac arrhythmia, with an estimated prevalence of around 1.6% in the adult population. The analysis of the electrocardiogram (ECG) data acquired in the UK Biobank represents an opportunity to screen for AF in a large sub-population in the UK. The main objective of this paper is to assess ten machine-learning methods for automated detection of subjects with AF in the UK Biobank dataset. APPROACH: Six classical machine-learning methods based on support vector machines are proposed and compared with state-of-the-art techniques (including a deep-learning algorithm), and finally a combination of a classical machine-learning and deep learning approaches. Evaluation is carried out on a subset of the UK Biobank dataset, manually annotated by human experts. MAIN RESULTS: The combined classical machine-learning and deep learning method achieved an F1 score of 84.8% on the test subset, and a Cohen's kappa coefficient of 0.83, which is similar to the inter-observer agreement of two human experts. SIGNIFICANCE: The level of performance indicates that the automated detection of AF in patients whose data have been stored in a large database, such as the UK Biobank, is possible. Such automated identification of AFpatients would enable further investigations aimed at identifying the different phenotypes associated with AF.
Authors: Akhil Vaid; Joy J Jiang; Ashwin Sawant; Karandeep Singh; Patricia Kovatch; Alexander W Charney; David M Charytan; Jasmin Divers; Benjamin S Glicksberg; Lili Chan; Girish N Nadkarni Journal: Clin J Am Soc Nephrol Date: 2022-06-06 Impact factor: 10.614
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Authors: Georgios Petmezas; Leandros Stefanopoulos; Vassilis Kilintzis; Andreas Tzavelis; John A Rogers; Aggelos K Katsaggelos; Nicos Maglaveras Journal: JMIR Med Inform Date: 2022-08-15
Authors: Nathan R Hill; Chris Arden; Lee Beresford-Hulme; A John Camm; David Clifton; D Wyn Davies; Usman Farooqui; Jason Gordon; Lara Groves; Michael Hurst; Sarah Lawton; Steven Lister; Christian Mallen; Anne-Celine Martin; Phil McEwan; Kevin G Pollock; Jennifer Rogers; Belinda Sandler; Daniel M Sugrue; Alexander T Cohen Journal: Contemp Clin Trials Date: 2020-10-19 Impact factor: 2.226
Authors: Kevin G Pollock; Sara Sekelj; Ellie Johnston; Belinda Sandler; Nathan R Hill; Fu Siong Ng; Sadia Khan; Ayman Nassar; Usman Farooqui Journal: Int J Cardiol Heart Vasc Date: 2020-11-29