An artificial intelligence tool for automated analysis of large-scale unstructured clinical cine cardiac magnetic resonance databases
European Heart Journal - Digital Health

Abstract
Artificial intelligence (AI) techniques have been proposed for automating analysis of short-axis (SAX) cine cardiac magnetic resonance (CMR), but no CMR analysis tool exists to automatically analyse large (unstructured) clinical CMR datasets. We develop and validate a robust AI tool for start-to-end automatic quantification of cardiac function from SAX cine CMR in large clinical databases.
Our pipeline for processing and analysing CMR databases includes automated steps to identify the correct data, robust image pre-processing, an AI algorithm for biventricular segmentation of SAX CMR and estimation of functional biomarkers, and automated post-analysis quality control to detect and correct errors. The segmentation algorithm was trained on 2793 CMR scans from two NHS hospitals and validated on additional cases from this dataset (
We show that our proposed tool, which combines image pre-processing steps, a domain-generalizable AI algorithm trained on a large-scale multi-domain CMR dataset and quality control steps, allows robust analysis of (clinical or research) databases from multiple centres, vendors, and cardiac diseases. This enables translation of our tool for use in fully automated processing of large multi-centre databases.
Contributors

Jorge Mariscal-Harana
Author

Clint Asher
Author

Vittoria Vergani
Author

Maleeha Rizvi
Author

Louise Keehn
Author

Raymond J Kim
Author

Robert M Judd
Author

Steffen E Petersen
Author
Queen Mary University of London London , United Kingdom of Great Britain & Northern Ireland

Reza Razavi
Author

Andrew P King
Author

Bram Ruijsink
Author

Esther Puyol-Antón
Author


