Left Ventricle Quantification Challenge: A Comprehensive Comparison and Evaluation of Segmentation and Regression for Mid-Ventricular Short-Axis Cardiac MR Data
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Georgios Tziritas | Eric Kerfoot | Jin Ma | Xiang Li | Yeonggul Jang | Quanzheng Li | Wufeng Xue | Mireille Garreau | James Clough | Zhiqiang Hu | Vicente Grau | Ilkay Oksuz | Guanyu Yang | Enzo Ferrante | Wenjun Yan | Elias Grinias | Alejandro Debus | Fumin Guo | Tiancong Hua | Matthew Ng | Jiahui Li | Shuo Li | Hao Xu | Lihong Liu | Angelica Maria Atehortua Labrador | G. Tziritas | Quanzheng Li | M. Garreau | Wufeng Xue | Enzo Ferrante | V. Grau | Xiang Li | Guanyu Yang | Yeonggul Jang | J. Clough | Wenjun Yan | F. Guo | Hao Xu | I. Oksuz | E. Kerfoot | Zhiqiang Hu | Jiahui Li | Matthew Ng | Shuo Li | E. Grinias | Lihong Liu | Angélica María Atehortúa Labrador | Jin Ma | Alejandro Debus | Tiancong Hua
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