Laura Carretero-Gómez 1,2, Alejandro Rodriguez2, maggie fung3, Eugenia Sánchez Lacalle4, Patricia Lan5, Xinzeng Wang6, Jaemin Shin3, Norberto Malpica2, Mario Padrón4
1GE HealthCare, Madrid, Spain
2Medical Image Analysis and Biometry Lab, Rey Juan Carlos University, Madrid, Spain
3GE HealthCare., NY, United States of America
4Clinica CEMTRO, Madrid, Spain
5GE HealthCare, Menlo Park, United States of America
6GE Healthcare, Houston, United States of America
Presenting Author: Laura Carretero-Gómez
Synopsis
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