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Analisyng the evolution of infectious diseases modelling

dc.contributorGrupo de Investigación en Medicina Veterinaria y Zootecnia – GIDIMEVETZ, de la Universidad Pedagógica y Tecnológica de Colombia, Universidad Pedagógica y Tecnológica de Colombiaes-ES
dc.creatorRincón Tobo, Félix Sebastián
dc.creatorBallesteros Ricaurte, Javier Antonio
dc.creatorGonzalez Amarillo, Angela Maria
dc.date2018-12-18
dc.date.accessioned2019-11-08T21:21:34Z
dc.date.available2019-11-08T21:21:34Z
dc.identifierhttp://hemeroteca.unad.edu.co/index.php/riaa/article/view/2281
dc.identifier10.22490/21456453.2281
dc.identifier.urihttps://repository.unad.edu.co/handle/10596/29382
dc.descriptionThe global interest to know and deal with infectious diseases in humans and animals has led to the development of different models (mathematical, stochastic, discrete), applied to predict the spread of new epidemics, reduce the spread of infectious diseases, evaluate the impact of different disease control strategies and improve the living conditions of individuals. Nowadays, new techniques and tools are being implemented to model infectious diseases, this paper describes the main concepts of this area, current trends and existing challenges, and finally, describes some criteria for the selection of an epidemiological model.en-US
dc.descriptionEl interés global por conocer y controlar las enfermedades que afectan a humanos y animales ha permitido modelar enfermedades mediante diversos métodos (modelos matemáticos, estocásticos, discretos) que se aplican actualmente para predecir la propagación de nuevas epidemias, reducir el contagio de enfermedades infecciosas, evaluar el impacto que tendrán las diferentes estrategias de control de enfermedades y mejorar las condiciones de vida de los individuos. Actualmente, nuevas técnicas y herramientas se están implementando para modelar enfermedades infecciosas, el presente documento describe conceptos de esta área, así como las tendencias y retos existentes, finalmente se ofrecen al lector algunos criterios a considerar para la selección de un modelo epidemiológico.es-ES
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dc.publisherUniversidad Nacional Abierta y a Distancia, UNADes-ES
dc.relationhttp://hemeroteca.unad.edu.co/index.php/riaa/article/view/2281/3027
dc.relationhttp://hemeroteca.unad.edu.co/index.php/riaa/article/view/2281/2981
dc.relationhttp://hemeroteca.unad.edu.co/index.php/riaa/article/downloadSuppFile/2281/309
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dc.rightsCopyright (c) 2018 Revista de Investigación Agraria y Ambientales-ES
dc.rightshttp://creativecommons.org/licenses/by-nc-sa/4.0es-ES
dc.sourceRevista de Investigación Agraria y Ambiental; Vol. 10, Núm. 1 (2019); 27 - 42en-US
dc.sourceRevista de Investigación Agraria y Ambiental; Vol. 10, Núm. 1 (2019); 27 - 42es-ES
dc.source2145-6453
dc.source2145-6097
dc.subjectinfectious diseases; epidemiological model; impact; epidemic control.en-US
dc.subjectControl de epidemias; enfermedades infecciosas; impacto; modelo epidemiológicoes-ES
dc.titleAnalisyng the evolution of infectious diseases modellingen-US
dc.titleAnalizando la evolución del modelado de enfermedades infecciosases-ES
dc.typeinfo:eu-repo/semantics/article
dc.typeinfo:eu-repo/semantics/publishedVersion


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