Prediction of Cardiovascular Events Using Fully Automated Global Longitudinal and Circumferential Strain in Patients Undergoing Stress CMR.
Authors
Affiliations (11)
Affiliations (11)
- Université Paris Cité, Department of Cardiology, University Hospital of Lariboisiere, (Assistance Publique des Hôpitaux de Paris, AP-HP), France (A.S.A., T.G., J.F., A.U., S.M., T.P., S.T.).
- Department of Cardiology, University of Medicine and Pharmacy Craiova, 2 Petru Rares Street, Romania (A.S.A.).
- Université Paris Cité, Inserm MASCOT - UMRS 942, France (A.S.A., T.G., J.F., A.U., T.P., S.T.).
- MIRACL.ai Laboratory, Multimodality Imaging for Research and Analysis Core Laboratory and Artificial Intelligence, University Hospital of Lariboisiere (AP-HP), Paris, France (A.S.A., J.G., T.G., J.F., A.U., T.P., S.T.).
- Institut Cardiovasculaire Paris Sud, Cardiovascular Magnetic Resonance Laboratory, Hôpital Privé Jacques CARTIER, Ramsay Santé, Massy, France (A.S.A., J.G., S.D., T.H., S.C., T.U., P.G., M.A., T.G., J.F., A.U., F.S., T.P.).
- Siemens Healthcare GmbH, Lindenplatz 2, Hamburg, Germany (T.C.).
- Siemens Healthineers, Digital Technologies and Innovation, Princeton NJ (P.S., A.J.).
- Université Paris Cité, Department of Radiology, University Hospital of Lariboisiere, (Assistance Publique des Hôpitaux de Paris, AP-HP), France (T.G., T.P.).
- Service de Cardiologie, CHU de Clermont-Ferrand, France (J.F.).
- Université Libre de Bruxelles (ULB), Départment de Cardiologie, CUB Hôpital Erasme, Bruxelles, Belgique (A.U.).
- Cardiology Department, Emergency Clinical County Hospital Craiova, Romania (S.M.).
Abstract
Stress perfusion cardiovascular magnetic resonance (CMR) is widely used to detect myocardial ischemia, mostly through visual assessment. Recent studies suggest that strain imaging at rest and during stress can also help in prognostic stratification. However, the additional prognostic value of combining both rest and stress strain imaging has not been fully established. This study examined the incremental benefit of combining these strain measures with traditional risk prognosticators and CMR findings to predict major adverse clinical events (MACE) in a cohort of consecutive patients referred for stress CMR. This retrospective, single-center observational study included all consecutive patients with known or suspected coronary artery disease referred for stress CMR between 2016 and 2018. Fully automated machine learning was used to obtain global longitudinal strain at rest (rest-GLS) and global circumferential strain at stress (stress-GCS). The primary outcome was MACE, including cardiovascular death or hospitalization for heart failure. Cox models were used to assess the incremental prognostic value of combining these strain features with traditional prognosticators. Of 2778 patients (age 65±12 years, 68% male), 96% had feasible, fully automated rest-GLS and stress-GCS measurements. After a median follow-up of 5.2 (4.8-5.5) years, 316 (11.1%) patients experienced MACE. After adjustment for traditional prognosticators, both rest-GLS (hazard ratio, 1.09 [95% CI, 1.05-1.13]; <i>P</i><0.001) and stress-GCS (hazard ratio, 1.08 [95% CI, 1.03-1.12]; <i>P</i><0.001) were independently associated with MACE. The best cutoffs for MACE prediction were >-10% for rest-GLS and stress-GCS, with a C-index improvement of 0.02, continuous net reclassification improvement of 15.6%, and integrative discrimination index of 2.2% (all <i>P</i><0.001). The combination of rest-GLS and stress-GCS, with a cutoff of >-10% provided an incremental prognostic value over and above traditional prognosticators, including CMR parameters, for predicting MACE in patients undergoing stress CMR.