Please use this identifier to cite or link to this item: https://repository.monashhealth.org/monashhealthjspui/handle/1/52661
Title: Patient-specific myocardial infarction risk thresholds from AI-enabled coronary plaque analysis.
Authors: Miller R.J.H.;Manral N.;Lin A.;Shanbhag A.;Park C.;Kwiecinski J.;Killekar A.;McElhinney P.;Matsumoto H.;Razipour A.;Grodecki K.;Kwan A.C.;Han D.;Kuronuma K.;Flores Tomasino G.;Geers J.;Goeller M.;Marwan M.;Gransar H.;Tamarappoo B.K.;Cadet S.;Cheng V.Y.;Achenbach S.;Nicholls S.J.;Wong D.T.;Chen L.;Cao J.J.;Berman D.S.;Dweck M.R.;Newby D.E.;Williams M.C.;Slomka P.J.;Dey D.
Monash Health Department(s): Cardiology (MonashHeart)
Institution: (Miller, Manral, Lin, Shanbhag, Park, Killekar, McElhinney, Razipour, Grodecki, Kwan, Han, Kuronuma, Flores Tomasino, Geers, Gransar, Cadet, Berman, Slomka, Dey) Biomedical Imaging Research Institute, Cedars-Sinai Medical Center, Los Angeles, CA, United States
(Miller) Department of Cardiac Sciences, University of Calgary, AB, Canada
(Lin, Nicholls, Wong) Victorian Heart Institute, Monash University, Melbourne, VIC, Australia
(Lin, Nicholls, Wong) Monash Heart, Monash Health, Melbourne, VIC, Australia
(Kwiecinski) Department of Interventional Cardiology and Angiology, Institute of Cardiology, Warsaw, Poland
(Matsumoto) Division of Cardiology, Showa University, School of Medicine, Tokyo, Japan
(Grodecki) Department of Cardiology, Medical University of Warsaw, Poland
(Geers) Department of Cardiology, Universitair Ziekenhuis Brussel, Vrije Universiteit Brussel, Brussels, Belgium
(Goeller, Marwan, Achenbach) Department of Cardiology, Friedrich-Alexander Universitat Erlangen-Nurnberg, Erlangen, Germany
(Tamarappoo) Department of Cardiology, Banner University Medical Center Phoenix, AZ, United States
(Cheng) Department of Cardiology, Oklahoma Heart Institute, Tulsa, OK, United States
(Chen, Cao) Division of Cardiac Imaging, St. Francis Hospital and Heart Center, Roslyn, NY, United States
(Dweck, Newby, Williams) British Heart Foundation Centre for Cardiovascular Science, University of Edinburgh, United Kingdom
Issue Date: 9-Nov-2024
Copyright year: 2024
Publisher: Lippincott Williams and Wilkins
Place of publication: United States
Publication information: Circulation: Cardiovascular Imaging. 17(10) (pp e016958), 2024. Date of Publication: 01 Oct 2024.
Journal: Circulation: Cardiovascular Imaging
Abstract: BACKGROUND: Plaque quantification from coronary computed tomography angiography has emerged as a valuable predictor of cardiovascular risk. Deep learning can provide automated quantification of coronary plaque from computed tomography angiography. We determined per-patient age- and sex-specific distributions of deep learning-based plaque measurements and further evaluated their risk prediction for myocardial infarction in external samples. METHOD(S): In this international, multicenter study of 2803 patients, a previously validated deep learning system was used to quantify coronary plaque from computed tomography angiography. Age- and sex-specific distributions of coronary plaque volume were determined from 956 patients undergoing computed tomography angiography for stable coronary artery disease from 5 cohorts. Multicenter external samples were used to evaluate associations between coronary plaque percentiles and myocardial infarction. RESULT(S): Quantitative deep learning plaque volumes increased with age and were higher in male patients. In the combined external sample (n=1847), patients in the >=75th percentile of total plaque volume (unadjusted hazard ratio, 2.65 [95% CI, 1.47-4.78]; P=0.001) were at increased risk of myocardial infarction compared with patients below the 50th percentile. Similar relationships were seen for most plaque volumes and persisted in multivariable analyses adjusting for clinical characteristics, coronary artery calcium, stenosis, and plaque volume, with adjusted hazard ratios ranging from 2.38 to 2.50 for patients in the >=75th percentile of total plaque volume. CONCLUSION(S): Per-patient age- and sex-specific distributions for deep learning-based coronary plaque volumes are strongly predictive of myocardial infarction, with the highest risk seen in patients with coronary plaque volumes in the >=75th percentile.Copyright © 2024 American Heart Association, Inc.
DOI: https://dx.doi.org/10.1161/CIRCIMAGING.124.016958
PubMed URL: 39405390 [https://www.ncbi.nlm.nih.gov/pubmed/?term=39405390]
URI: https://repository.monashhealth.org/monashhealthjspui/handle/1/52661
Type: Article
Subjects: artificial intelligence
atherosclerotic plaque
cardiac imaging
computed tomographic angiography
coronary stenosis
Type of Clinical Study or Trial: Observational study (cohort, case-control, cross sectional, or survey)
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