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Machine learning applications in cardiac computed tomography: a composite systematic review

Jonathan Bray, Moghees Ahmad Hanif, Mohammad Alradhawi, Jacob Ibbetson, Surinder Singh Dosanjh, Sabrina Lucy Smith, Mahmood Ahmad Orcid Logo, Dominic Pimenta Orcid Logo

European Heart Journal Open, Volume: 2, Issue: 2

Swansea University Author: Jonathan Bray

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Abstract

Artificial intelligence and machine learning (ML) models are rapidly being applied to the analysis of cardiac computed tomography (CT). We sought to provide an overview of the contemporary advances brought about by the combination of ML and cardiac CT. Six searches were performed in Medline, Embase,...

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Published in: European Heart Journal Open
ISSN: 2752-4191
Published: Oxford University Press (OUP) 2022
Online Access: Check full text

URI: https://cronfa.swan.ac.uk/Record/cronfa62367
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Abstract: Artificial intelligence and machine learning (ML) models are rapidly being applied to the analysis of cardiac computed tomography (CT). We sought to provide an overview of the contemporary advances brought about by the combination of ML and cardiac CT. Six searches were performed in Medline, Embase, and the Cochrane Library up to November 2021 for (i) CT-fractional flow reserve (CT-FFR), (ii) atrial fibrillation (AF), (iii) aortic stenosis, (iv) plaque characterization, (v) fat quantification, and (vi) coronary artery calcium score. We included 57 studies pertaining to the aforementioned topics. Non-invasive CT-FFR can accurately be estimated using ML algorithms and has the potential to reduce the requirement for invasive angiography. Coronary artery calcification and non-calcified coronary lesions can now be automatically and accurately calculated. Epicardial adipose tissue can also be automatically, accurately, and rapidly quantified. Effective ML algorithms have been developed to streamline and optimize the safety of aortic annular measurements to facilitate pre-transcatheter aortic valve replacement valve selection. Within electrophysiology, the left atrium (LA) can be segmented and resultant LA volumes have contributed to accurate predictions of post-ablation recurrence of AF. In this review, we discuss the latest studies and evolving techniques of ML and cardiac CT.
Keywords: Machine learning; Artificial intelligence; Cardiac computed tomography
College: Faculty of Medicine, Health and Life Sciences
Issue: 2