AI Cardiac MRI Scar Analysis Aids Prediction of Major Arrhythmic Events in the Multicenter DERIVATE Registry.

Details

Serval ID
serval:BIB_FA35AE232124
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
AI Cardiac MRI Scar Analysis Aids Prediction of Major Arrhythmic Events in the Multicenter DERIVATE Registry.
Journal
Radiology
Author(s)
Ghanbari F., Joyce T., Lorenzoni V., Guaricci A.I., Pavon A.G., Fusini L., Andreini D., Rabbat M.G., Aquaro G.D., Abete R., Bogaert J., Camastra G., Carigi S., Carrabba N., Casavecchia G., Censi S., Cicala G., De Cecco C.N., De Lazzari M., Di Giovine G., Di Roma M., Focardi M., Gaibazzi N., Gismondi A., Gravina M., Lanzillo C., Lombardi M., Lozano-Torres J., Masi A., Moro C., Muscogiuri G., Nese A., Pradella S., Sbarbati S., Schoepf U.J., Valentini A., Crelier G., Masci P.G., Pontone G., Kozerke S., Schwitter J.
ISSN
1527-1315 (Electronic)
ISSN-L
0033-8419
Publication state
Published
Issued date
05/2023
Peer-reviewed
Oui
Volume
307
Number
3
Pages
e222239
Language
english
Notes
Publication types: Multicenter Study ; Journal Article
Publication Status: ppublish
Abstract
Background Scar burden with late gadolinium enhancement (LGE) cardiac MRI (CMR) predicts arrhythmic events in patients with postinfarction in single-center studies. However, LGE analysis requires experienced human observers, is time consuming, and introduces variability. Purpose To test whether postinfarct scar with LGE CMR can be quantified fully automatically by machines and to compare the ability of LGE CMR scar analyzed by humans and machines to predict arrhythmic events. Materials and Methods This study is a retrospective analysis of the multicenter, multivendor CarDiac MagnEtic Resonance for Primary Prevention Implantable CardioVerter DebrillAtor ThErapy (DERIVATE) registry. Patients with chronic heart failure, echocardiographic left ventricular ejection fraction (LVEF) of less than 50%, and LGE CMR were recruited (from January 2015 through December 2020). In the current study, only patients with ischemic cardiomyopathy were included. Quantification of total, dense, and nondense scars was carried out by two experienced readers or a Ternaus network, trained and tested with LGE images of 515 and 246 patients, respectively. Univariable and multivariable Cox analyses were used to assess patient and cardiac characteristics associated with a major adverse cardiac event (MACE). Area under the receiver operating characteristic curve (AUC) was used to compare model performances. Results In 761 patients (mean age, 65 years ± 11, 671 men), 83 MACEs occurred. With use of the testing group, univariable Cox-analysis found New York Heart Association class, left ventricle volume and/or function parameters (by echocardiography or CMR), guideline criterion (LVEF of ≤35% and New York Heart Association class II or III), and LGE scar analyzed by humans or the machine-learning algorithm as predictors of MACE. Machine-based dense or total scar conferred incremental value over the guideline criterion for the association with MACE (AUC: 0.68 vs 0.63, P = .02 and AUC: 0.67 vs 0.63, P = .01, respectively). Modeling with competing risks yielded for dense and total scar (AUC: 0.67 vs 0.61, P = .01 and AUC: 0.66 vs 0.61, P = .005, respectively). Conclusion In this analysis of the multicenter CarDiac MagnEtic Resonance for Primary Prevention Implantable CardioVerter DebrillAtor ThErapy (DERIVATE) registry, fully automatic machine learning-based late gadolinium enhancement analysis reliably quantifies myocardial scar mass and improves the current prediction model that uses guideline-based risk criteria for implantable cardioverter defibrillator implantation. ClinicalTrials.gov registration no.: NCT03352648 Published under a CC BY 4.0 license. Supplemental material is available for this article.
Keywords
Male, Humans, Aged, Cicatrix, Contrast Media, Stroke Volume, Retrospective Studies, Magnetic Resonance Imaging, Cine/methods, Gadolinium, Ventricular Function, Left, Magnetic Resonance Imaging/methods, Registries, Artificial Intelligence, Predictive Value of Tests
Pubmed
Create date
24/03/2023 10:42
Last modification date
28/08/2023 6:58
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