A semi-automatic approach for epicardial adipose tissue segmentation and quantification on cardiac CT scans
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Massimo Midiri | Vincenzo Conti | Salvatore Vitabile | Carmelo Militello | Leonardo Rundo | Patrizia Toia | Giorgio Russo | Clarissa Filorizzo | Erica Maffei | Filippo Cademartiri | Ludovico La Grutta | Filippo Cademartiri | E. Maffei | L. Rundo | G. Russo | S. Vitabile | C. Militello | M. Midiri | L. Grutta | P. Toia | C. Filorizzo | V. Conti
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