Quantitative CMR population imaging on 20, 000 subjects of the UK Biobank imaging study: LV/RV quantification pipeline and its evaluation
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Alejandro F. Frangi | Alejandro F Frangi | Marco Pereañez | Stefan K. Piechnik | Stefan Neubauer | Steffen E. Petersen | Ali Gooya | Xènia Albà | Nay Aung | Mihir M. Sanghvi | José Miguel Paiva | Kenneth Fung | Elena Lukaschuk | Aaron M. Lee | Rahman Attar | Le Zhang | Milton Hoz de Vila | S. Petersen | S. Piechnik | Le Zhang | R. Attar | S. Neubauer | N. Aung | M. Sanghvi | J. Paiva | K. Fung | E. Lukaschuk | A. Gooya | Marco Pereañez | A. Lee | Xènia Albà | M. H. D. Vila
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