A population-based phenome-wide association study of cardiac and aortic structure and function
Wenjia Bai(NIHR Imperial Biomedical Research Centre), Daniel Rueckert(Munich Center for Machine Learning), Hideaki Suzuki(Imperial College London), Catherine Francis(Imperial College London), Yike Guo(Imperial College London), Nay Aung(Queen Mary University of London), Εvangelos Εvangelou(University of Ioannina), Declan P. O’Regan(MRC Clinical Trials Unit at UCL), Paul M. Matthews(Hammersmith Hospital), Stefan Neubauer(University of Oxford), Steffen E. Petersen(Queen Mary University of London), Giacomo Tarroni(Institute of Group Analysis), Stefan K. Piechnik(University of Oxford), Florian Guitton(Imperial College London), Abbas Dehghan(Imperial College London), Martin R. Wilkins(Hammersmith Hospital), Jian Huang(UK Dementia Research Institute), Shuo Wang(Imperial College London), Kenneth Fung(Queen Mary University of London)
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