Climate services for health: predicting the evolution of the 2016 dengue season in Machala, Ecuador.
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Xavier Rodó | Rachel Lowe | Mary Regato | Desislava Petrova | Anna M Stewart-Ibarra | R. Lowe | X. Rodó | D. Petrova | Raul Mejia | M. García-Díez | Anna M. Stewart-Ibarra | M. Borbor-Cordova | Mary Regato | Mercy J Borbor-Cordova | Raúl Mejía | Markel García-Díez
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