2019, Número 2-3
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MEDICC Review 2019; 21 (2-3)
Dengue cases in Colombia: Mathematical forecasts for 2018-2022
López-Montenegro LE, Pulecio-Montoya AM, Marcillo-Hernández GA
Idioma: Ingles.
Referencias bibliográficas: 31
Paginas: 38-45
Archivo PDF: 332.92 Kb.
RESUMEN
Sin resumen.
REFERENCIAS (EN ESTE ARTÍCULO)
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