Distribución espacial de resistencia antimicrobiana en aislados clínicos extraintestinales de Escherichia coli procedentes de granjas comerciales de provincias occidentales de Cuba

Contenido principal del artículo

Oshin Ley-García
Yandy Abreu Jorge
Virginia Masdeus-Fonseca
Patricio Pinto-Morales
Damarys de las N. Montano-Valle
María I. Percedo Abreu
Ivette Espinosa
Pastor Alfonso

Resumen

La resistencia antimicrobiana (RAM) es una preocupación mundial y una amenaza para la salud pública global. Por otra parte, Escherichia coli ha marcado una forma significativa en la evolución de la RAM. El presente estudio tuvo como objetivo caracterizar el patrón espacial de la RAM en aislados extraintestinales de E. coli procedentes de aves comerciales de provincias occidentales de Cuba. Los datos del estudio abarcaron de enero del 2014 a diciembre del 2017. El análisis de tendencias y la descripción exploratoria se realizó con el lenguaje de programación de R versión 4.0.4. Para el análisis espacial se utilizó ArcGIS 10.4 mediante el método de estimación de densidad de Kernel y salida cartográfica. Se observaron tendencias al incremento en la frecuencia de resistencia durante el periodo de estudio. La densidad de Kernel indicó que la RAM se distribuyó espacialmente en toda la región geográfica de estudio, aunque la mayor densidad (valores altos) de RAM se localizó mayoritariamente en municipios de la provincia Artemisa. Se identificaron áreas de riesgo significativamente mayor y menor de RAM en el Sudeste y Norte de la región, respectivamente. Por último, la identificación de la distribución espacial y la superficie de riesgo relativo de resistencia antimicrobiana de E. coli procedente de granjas avícolas en Cuba es un paso importante que contribuye a optimizar las prácticas de administración de antimicrobianos en la región occidental. Esto permite mejorar las medidas sanitarias preventivas y las estrategias de control para evitar enfermedades y aumentar la vigilancia epidemiológica.

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Ley-García O, Abreu Jorge Y, Masdeus-Fonseca V, Pinto-Morales P, Montano-Valle D de las N, Percedo Abreu MI, Espinosa I, Alfonso P. Distribución espacial de resistencia antimicrobiana en aislados clínicos extraintestinales de Escherichia coli procedentes de granjas comerciales de provincias occidentales de Cuba. Rev. Salud Anim. [Internet]. 21 de julio de 2023 [citado 28 de septiembre de 2024];45:https://cu-id.com/2248/v45e08. Disponible en: https://revistas.censa.edu.cu/index.php/RSA/article/view/1215
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