Aceptación de las tecnologías de E-Salud

un estudiode metaanálisis

Autores

  • Diego Fettermann UFSC
  • Luiz Philipi Calegari UFSC

DOI:

https://doi.org/10.18225/ci.inf.v52i2.7088

Palavras-chave:

healthcare 4.0, smart health, internet of health things, aceptación tecnológica, tecnología de la información

Resumo

A pesar del potencial beneficio del uso de los sistemas de e-Salud para compartir datos de salud, la relación entre la tecnología y sus proveedores con los potenciales usuarios tiende a ser compleja. Por eso, es importante interpretar los factores que explican la aceptación de nuevas tecnologías por parte de estos usuarios. Este trabajo tiene como objetivo sintetizar los resultados de  aceptación de tecnologías de e-Salud disponibles en la literatura. Para ello, se utilizaron las relaciones y los constructos propuestos en el modelo de aceptación de tecnología UTAUT. Además, se probó los efectos de las variables moderadoras (género, grupo etario, presencia de enfermedad, usuario, aplicación tecnológica y año de publicación) en las relaciones propuestas en el modelo UTAUT mediante el  procedimiento de metarregresión. Se observa la importancia en el efecto de los constructos “Expectativa de Rendimiento”,  “Expectativa de Esfuerzo” e “Influencia Social” sobre el constructo “Intención de Comportamiento”. También es posible observar el  sentido del efecto de los constructos “Intención de Comportamiento” y “Condiciones Facilitadoras” sobre el constructo  “Comportamiento de Uso”. Entre las variables moderadoras, solo la variable “grupo etario” no resultó en moderación significativa  para ninguna relación. Este estudio presenta estimaciones de los factores que determinan la aceptación de nuevas tecnologías para la salud y sugiere una orientación general para el desarrollo de nuevas tecnologías de e-Salud considerando su aceptación por parte de  los usuarios.

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