A population-based phenome-wide association study of cardiac and aortic structure and function
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Yike Guo | Daniel Rueckert | Florian Guitton | Paul M. Matthews | Wenjia Bai | Stefan K. Piechnik | Steffen E. Petersen | Giacomo Tarroni | Evangelos Evangelou | Martin R. Wilkins | Nay Aung | Kenneth Fung | Declan P. O’Regan | Catherine Francis | Abbas Dehghan | Hideaki Suzuki | Stefan Neubauer | Shuo Wang | P. Matthews | D. Rueckert | D. O’Regan | A. Dehghan | Wenjia Bai | S. Petersen | S. Piechnik | G. Tarroni | H. Suzuki | Yike Guo | S. Neubauer | E. Evangelou | N. Aung | K. Fung | M. Wilkins | Shuo Wang | C. Francis | Jian Huang | Jian Huang | Florian Guitton | Yike Guo | Hideaki Suzuki
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