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"An accurate and time-efficient deep learning-based system for automated ..."
Daniele M. Papetti et al. (2023)
- Daniele M. Papetti
, Kirsten van Abeelen
, Rhodri H. Davies
, Roberto Menè
, Francesca Heilbron
, Francesco P. Perelli
, Jessica Artico
, Andreas Seraphim, James C. Moon
, Gianfranco Parati
, Hui Xue
, Peter Kellman
, Luigi P. Badano
, Daniela Besozzi
, Marco S. Nobile, Camilla Torlasco
:
An accurate and time-efficient deep learning-based system for automated segmentation and reporting of cardiac magnetic resonance-detected ischemic scar. Comput. Methods Programs Biomed. 229: 107321 (2023)
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