Wahab, A;
Nadarajah, R;
Tomoaia, R;
Javed, W;
Reynolds, C;
Bennet, S;
Bhatty, A;
Lip, GYH;
Camm, J;
Wu, J;
et al.
Wahab, A; Nadarajah, R; Tomoaia, R; Javed, W; Reynolds, C; Bennet, S; Bhatty, A; Lip, GYH; Camm, J; Wu, J; Plein, S; Swoboda, P; Gale, CP
(2025)
Cardiac magnetic resonance imaging-derived atrial fibrosis in patients with pre-atrial fibrillation.
Open Heart, 12 (2).
e003747.
ISSN 2053-3624
https://doi.org/10.1136/openhrt-2025-003747
SGUL Authors: Camm, Alan John
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Abstract
Introduction Atrial fibrosis identified on cardiac magnetic resonance (CMR) imaging has been proposed as a preprocedural imaging biomarker for patient selection for rhythm control interventions in patients with atrial fibrillation (AF). Whether atrial fibrosis is present in patients considered as ‘pre-AF’ is unknown. Methods and results We prospectively recruited 12 participants with pre-AF as defined by the Future Innovations in Novel Detection for Atrial Fibrillation (FIND-AF machine learning algorithm, without AF diagnosed during AF screening, and compared them to 25 participants with confirmed AF. All participants underwent CMR using a 3T system with left atrial fibrosis quantification and ADAS-3D left atrial image postprocessing software. Participants with pre-AF had smaller left atrial end-systolic (33.6±9.8 vs 43.0±17.0, p=0.003) and end-diastolic (16.5±8.7 vs 28.2±14.4, p=0.007) volumes, and higher left atrial ejection fraction (59.6±14.6 vs 40.7±17.5, p=0.005) than participants with AF. The extent of atrial fibrosis was not different between those with pre-AF and AF (borderzone (%) 5.2±5.0 vs 2.9±6.9, p=0.772; borderzone fibrosis (cm) 6.2±5.8 vs 6.8±10.7, p=0.927). Conclusion CMR identifies atrial fibrosis before manifest AF in patients with pre-AF as defined by a machine learning algorithm.
| Item Type: | Article | ||||||
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| Additional Information: | © Author(s) (or their employer(s)) 2025. Re- use permitted under CC BY. Published by BMJ Group. | ||||||
| SGUL Research Institute / Research Centre: | Academic Structure > Cardiovascular & Genomics Research Institute Academic Structure > Cardiovascular & Genomics Research Institute > Clinical Cardiology |
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| Journal or Publication Title: | Open Heart | ||||||
| ISSN: | 2053-3624 | ||||||
| Publisher License: | Creative Commons: Attribution 4.0 | ||||||
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| URI: | https://openaccess.sgul.ac.uk/id/eprint/118218 | ||||||
| Publisher's version: | https://doi.org/10.1136/openhrt-2025-003747 |
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