Development and external validation of automated detection, classification, and localization of ankle fractures: inside the black box of a convolutional neural network (CNN)
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Jakub Olczak | A. Duckworth | M. El Moumni | D. Ring | J. Verjans | S. Stufkens | G. Kerkhoffs | K. Wendt | P. Jutte | S. Sprague | Minh-Son To | C. DiGiovanni | Eelco M Fennema | J. Colaris | Jacobien H. F. Oosterhoff | J. Doornberg | W. Mallee | F. IJpma | J. D. de Vries | R. Jaarsma | P. V. D. van der Vet | D. Worsley | B. Beuker | J. Harbers | Zhibin Liao | M. Hogervorst | D. Guss | P. V. van Ooijen | V. Stirler | B. Lubberts | P. Nieboer | Joost H Kuipers | Julie Jiang | C. Laane | D. Langerhuizen | A. Karhade | Sanne Schilstra | J. Prijs | B. Barvelink | R. Hendrickx | B. Jadav | Max Gordon | H. D. de Klerk | K. Ten Duis | Kaan Britt Benn Anne Eva Luisa e Carmo Joost Huub Andre Aksakal Barvelink Beuker Bultra Oliviera Col | Kaan Aksakal | Anne Eva Bultra | Luisa e Carmo Oliviera | Merilyn Heng | Sanne Hoeksema | Haras Mhmud | Koen Oude Nijhuis | J. Rawat | Jospeph Schwab | E. Tijdens | Michel van der Bekerom | Matthieu M E Wijffels | J. Oosterhoff | Joost W. Colaris | Vincent Stirler
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