Cape Town - 2026 ISMRM-ISMRT Annual Meeting and Exhibition
9 May 2026 – 14 May 2026
· Cape Town, South Africa
661-02-003
ISMRM Abstract
Deep Learning based automatic whole – left ventricle strain from a single breath–hold scan
Primary:
Acquisition & Reconstruction - AI methods
Secondary:
Cardiovascular - Myocardium
661-02-003 · Cardiac Structure and Function
· Thursday, 14 May, 9:25 AM–10:20 AM · Digital Posters Row B
Keywords:MyocardiumDeep learning reconstructionStrainDeep Learning SegmentationLow field
Accepted
Carlota Gladys Rivera Faúndez 1,2,3, Tomas Banduc1, Rafael De La Sotta1, Francisco Sahli Costabal1,3,4, Rene M Botnar1,2,3, Claudia Prieto1,2,4
1Millennium Institute for Intelligent Healthcare Engineering - iHEALTH, Santiago, Chile
2IMPACT, Center of Interventional Medicine for Precision and Advanced Cellular Therapy, Santiago, Chile
3Biological and Medical Engineering Institute. Pontificia Universidad Católica de Chile, Santiago, Chile, Chile
4School of Engineering, Pontificia Universidad Católica de Chile, Santiago, Chile
Presenting Author: Carlota Gladys Rivera Faúndez
Synopsis
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