Seguir
Frédéric Commandeur
Frédéric Commandeur
Afiliación desconocida
No hay ninguna dirección de correo electrónico verificada.
Título
Citado por
Citado por
Año
Deep learning for prediction of obstructive disease from fast myocardial perfusion SPECT: a multicenter study
J Betancur, F Commandeur, M Motlagh, T Sharir, AJ Einstein, S Bokhari, ...
JACC: Cardiovascular Imaging 11 (11), 1654-1663, 2018
3162018
Pericoronary adipose tissue computed tomography attenuation and high-risk plaque characteristics in acute coronary syndrome compared with stable coronary artery disease
M Goeller, S Achenbach, S Cadet, AC Kwan, F Commandeur, PJ Slomka, ...
JAMA cardiology 3 (9), 858-863, 2018
2092018
Deep learning for quantification of epicardial and thoracic adipose tissue from non-contrast CT
F Commandeur, M Goeller, J Betancur, S Cadet, M Doris, X Chen, ...
IEEE transactions on medical imaging 37 (8), 1835-1846, 2018
1842018
Epicardial adipose tissue density and volume are related to subclinical atherosclerosis, inflammation and major adverse cardiac events in asymptomatic subjects
M Goeller, S Achenbach, M Marwan, MK Doris, S Cadet, F Commandeur, ...
Journal of cardiovascular computed tomography 12 (1), 67-73, 2018
1812018
Haralick textural features on T2‐weighted MRI are associated with biochemical recurrence following radiotherapy for peripheral zone prostate cancer
K Gnep, A Fargeas, RE Gutiérrez‐Carvajal, F Commandeur, R Mathieu, ...
Journal of Magnetic Resonance Imaging 45 (1), 103-117, 2017
1682017
Relationship between changes in pericoronary adipose tissue attenuation and coronary plaque burden quantified from coronary computed tomography angiography
M Goeller, BK Tamarappoo, AC Kwan, S Cadet, F Commandeur, ...
European Heart Journal-Cardiovascular Imaging 20 (6), 636-643, 2019
1522019
Deep learning analysis of upright-supine high-efficiency SPECT myocardial perfusion imaging for prediction of obstructive coronary artery disease: a multicenter study
J Betancur, LH Hu, F Commandeur, T Sharir, AJ Einstein, MB Fish, ...
Journal of Nuclear Medicine 60 (5), 664-670, 2019
1322019
Machine learning to predict the long-term risk of myocardial infarction and cardiac death based on clinical risk, coronary calcium, and epicardial adipose tissue: a prospective …
F Commandeur, PJ Slomka, M Goeller, X Chen, S Cadet, A Razipour, ...
Cardiovascular Research, 2019
1102019
Fully automated CT quantification of epicardial adipose tissue by deep learning: a multicenter study
F Commandeur, M Goeller, A Razipour, S Cadet, MM Hell, J Kwiecinski, ...
Radiology: Artificial Intelligence 1 (6), e190045, 2019
1072019
Deep learning–based quantification of epicardial adipose tissue volume and attenuation predicts major adverse cardiovascular events in asymptomatic subjects
E Eisenberg, PA McElhinney, F Commandeur, X Chen, S Cadet, ...
Circulation: Cardiovascular Imaging 13 (2), e009829, 2020
1012020
Machine learning predicts per-vessel early coronary revascularization after fast myocardial perfusion SPECT: results from multicentre REFINE SPECT registry
LH Hu, J Betancur, T Sharir, AJ Einstein, S Bokhari, MB Fish, TD Ruddy, ...
European Heart Journal-Cardiovascular Imaging 21 (5), 549-559, 2020
812020
Evaluation of multi-atlas-based segmentation of CT scans in prostate cancer radiotherapy
O Acosta, A Simon, F Monge, F Commandeur, C Bassirou, G Cazoulat, ...
2011 IEEE International Symposium on Biomedical Imaging: From Nano to Macro …, 2011
652011
Deep learning-based stenosis quantification from coronary CT angiography
Y Hong, F Commandeur, S Cadet, M Goeller, M Doris, X Chen, ...
Medical Imaging 2019: Image Processing 10949, 643-651, 2019
502019
Prognostically safe stress-only single-photon emission computed tomography myocardial perfusion imaging guided by machine learning: report from REFINE SPECT
LH Hu, RJH Miller, T Sharir, F Commandeur, R Rios, AJ Einstein, MB Fish, ...
European Heart Journal-Cardiovascular Imaging 22 (6), 705-714, 2021
482021
Machine learning integration of circulating and imaging biomarkers for explainable patient-specific prediction of cardiac events: a prospective study
BK Tamarappoo, A Lin, F Commandeur, PA McElhinney, S Cadet, ...
Atherosclerosis 318, 76-82, 2021
462021
Metabolic syndrome, fatty liver, and artificial intelligence-based epicardial adipose tissue measures predict long-term risk of cardiac events: a prospective study
A Lin, ND Wong, A Razipour, PA McElhinney, F Commandeur, SJ Cadet, ...
Cardiovascular diabetology 20, 1-11, 2021
442021
MRI to CT prostate registration for improved targeting in cancer external beam radiotherapy
F Commandeur, A Simon, R Mathieu, M Nassef, JDO Arango, Y Rolland, ...
IEEE journal of biomedical and health informatics 21 (4), 1015-1026, 2016
352016
A VTK algorithm for the computation of the Hausdorff distance
F Commandeur, J Velut, O Acosta
VTK J 839, 2011
332011
Population model of bladder motion and deformation based on dominant eigenmodes and mixed-effects models in prostate cancer radiotherapy
R Rios, R De Crevoisier, JD Ospina, F Commandeur, C Lafond, A Simon, ...
Medical image analysis 38, 133-149, 2017
292017
Machine learning in predicting coronary heart disease and cardiovascular disease events: results from the multi-ethnic study of atherosclerosis (mesa)
R Nakanishi, D Dey, F Commandeur, P Slomka, J Betancur, H Gransar, ...
Journal of the American College of Cardiology 71 (11S), A1483-A1483, 2018
282018
El sistema no puede realizar la operación en estos momentos. Inténtalo de nuevo más tarde.
Artículos 1–20