BRAX, Brazilian labeled chest x-ray dataset
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Alistair E. W. Johnson | L. Celi | J. D. de Paiva | T. Pollard | G. Szarf | Lucas Bulgarelli | G. Teles | Edson Amaro | G. L. Beraldo | E. P. Reis | M. C. B. da Silva | Guilherme A. S. Ribeiro | V. F. Paiva | Henrique M H Lee | P. V. Santos | V. M. Brito | L. T. W. Amaral | Jorge N Haidar Filho | L. T. Amaral | E. Reis | Henrique M. H. Lee | Jorge N. Haidar Filho
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