Eficiencia de las redes atencionales en personas con diabetes mellitus tipo 1: Estudio piloto

Contenido principal del artículo

Sarahi del Carmen Manríquez Calderón
Ferrán Padrós Blazquez
Erwin Rogelio Villuendas González

Resumen

Numerosos estudios han documentado que los pacientes con diabetes mellitus tipo 1 (DMT1) son susceptibles de padecer complicaciones estructurales, metabólicas y funcionales en el sistema nervioso central. Con el fin de comparar la eficiencia de las redes atencionales entre pacientes con DMT1 y personas sanas, 5 pacientes con DMT1 y 5 personas sanas respondieron el Test de Redes Atencionales. Se analizó la eficiencia de las redes atencionales: alerta, orientación y control ejecutivo en ambos grupos, así como la correlación entre la eficiencia de estas redes y los niveles de glucosa en sangre. Aunque no se observaron diferencias significativas en la eficiencia de las redes entre los grupos, sí se observó una relación entre la glucemia y la eficiencia de la red de control, así como también en la influencia de la red de control sobre la red de orientación.

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Manríquez Calderón, S. del C., Padrós Blazquez, F., & Villuendas González, E. R. (2020). Eficiencia de las redes atencionales en personas con diabetes mellitus tipo 1: Estudio piloto. Revista Argentina De Ciencias Del Comportamiento, 12(3), 82–91. https://doi.org/10.32348/1852.4206.v12.n3.19205
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Biografía del autor/a

Sarahi del Carmen Manríquez Calderón, Universidad Michoacana de San Nicolás de Hidalgo

Facultad de Psicología. Universidad Michoacana de San Nicolás de Hidalgo

Erwin Rogelio Villuendas González, Universidad Michoacana de San Nicolás de Hidalgo

Facultad de Psicología. Universidad Michoacana de San Nicolás de Hidalgo

Citas

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