A multi-center, prospective cohort study of whole blood gene expression in the tuberculosis-diabetes interaction
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T. Sterling | V. Viswanathan | Hayna Malta-Santos | K. Fukutani | A. Queiroz | B. Andrade | V. Mave | Amita Gupta | S. Cavalcante | S. Babu | M. C. Lourenço | B. Durovni | H. Kornfeld | N. Gupte | M. Arriaga | Juan M Cubillos-Angulo | R. Karyakarte | A. Gomes-Silva | V. Rolla | A. Benjamin | A. Moreira | M. Figueiredo | J. Lapa-e-Silva | M. Cordeiro-Santos | K. West | Jéssica Rebouças-Silva | A. Gupte | C. A. Schmaltz | S. Gaikwad | A. Andrade | Caian L. Vinhaes | Afrânio L. Kristki | N. P. Kumar | E. Fukutani | Jamile G. de Oliveira | A. G. Costa | Pedro Brito | M. Rocha | A. Souza | A. Ramos | V. Nascimento | Elisangela C Silva | V. Kulkami | M. Paradhkar | Alice M. S. Marina C. Vanessa Juan Manuel Hayna Jéssica Andrade Figueiredo Nascimento Cubillos-Angu | Saulo R. N. Santos | André Ramos | Leandro Sousa Garcia | Brenda K. de Sousa Carvalho | Bruna P. de Loiola | Francine P. Ignácio | Mayla Mello | A. Kristki | Kim Vandana Nikhil West Kulkami Gupte | Rajesh Karyakarte | N. P. Kumar | Saulo R N Santos | L. S. Garcia
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