Analysing livestock network data for infectious disease control: an argument for routine data collection in emerging economies
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T Doherty | G L Chaters | P C D Johnson | S Cleaveland | J Crispell | W A de Glanville | L Matthews | S Mohr | O M Nyasebwa | G Rossi | L C M Salvador | E Swai | R R Kao | S. Cleaveland | R. Kao | L. Matthews | W. D. de Glanville | S. Mohr | T. Doherty | L. Salvador | G. Rossi | J. Crispell | E. Swai | O. Nyasebwa | G. Chaters | W. D. Glanville | P. Johnson | Sarah Cleaveland | Paul C. D. Johnson | Louise Matthews | Liliana C. M. Salvador
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