Herramientas tecnológicas y su influencia en el rendimiento académico de estudiantes de Tecnología Superior en Enfermería

Thesis Subjects > Comunication
Subjects > Teaching
Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
Cerrado Español A nivel mundial, se ha evidenciado que las Tecnologías de la Información y la Comunicación (TIC) han cambiado la educación tradicional, favoreciendo la flexibilidad, eficiencia y eficacia del aprendizaje. La presente investigación se desarrolló con el objetivo de analizar la influencia del uso de las herramientas tecnológicas en el rendimiento académico de estudiantes de Tecnología Superior en Enfermería. El abordaje de la problemática derivó del análisis de las herramientas tecnológicas como un recurso imprescindible en el ámbito académico, cuya importancia radica en las ventajas que genera en el proceso de enseñanza clásico, favoreciendo la relación entre el docente y el estudiante. Este último constituye el mayor beneficiario de las TIC debido a que disponen de nuevas capacidades y habilidades que mejoran sus conocimientos e incrementan su nivel de rendimiento académico. La metodología empleada correspondió a un enfoque cuantitativo, diseño no experimental, transversal, descriptiva y correlacional. La población analizada estuvo conformada por 80 estudiantes, a quienes se les aplicó una encuesta conformada por 16 preguntas. Conforme los resultados obtenidos, se identificó que los estudiantes del primer, segundo, tercer y cuarto periodo de la tecnología en enfermería usan tres medios tecnológicos para actividades académicas y personales, que son: celular, computadora y tableta respectivamente. Además, se pudo evidenciar que utilizan entre tres a cuatro horas diarias para realizar sus tareas, deberes, trabajos académicos y resolver dudas desde sus hogares. Por otro lado, el pódcast es usado mayormente para entretenimiento en sus hogares y la mensajería instantánea para mantener comunicación con profesores y compañeros. Con base en ello, este estudio descubre que el uso de las herramientas tecnológicas se relaciona de forma directamente proporcional y tienen influencia positiva al rendimiento académico (P<0.05), cultivando mejoras de desempeño en las asignaturas que se desean mejorar. En conclusión, las herramientas tecnológicas tienen el potencial de revolucionar el proceso tradicional de enseñanza y aprendizaje, por cuanto la relación de las dos variables se convierte en el predictor de una mejor formación en enfermería. metadata Andrade Echeverria, Julio Enrique mail jandradee1991@gmail.com (2022) Herramientas tecnológicas y su influencia en el rendimiento académico de estudiantes de Tecnología Superior en Enfermería. Masters thesis, UNSPECIFIED.

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Abstract

A nivel mundial, se ha evidenciado que las Tecnologías de la Información y la Comunicación (TIC) han cambiado la educación tradicional, favoreciendo la flexibilidad, eficiencia y eficacia del aprendizaje. La presente investigación se desarrolló con el objetivo de analizar la influencia del uso de las herramientas tecnológicas en el rendimiento académico de estudiantes de Tecnología Superior en Enfermería. El abordaje de la problemática derivó del análisis de las herramientas tecnológicas como un recurso imprescindible en el ámbito académico, cuya importancia radica en las ventajas que genera en el proceso de enseñanza clásico, favoreciendo la relación entre el docente y el estudiante. Este último constituye el mayor beneficiario de las TIC debido a que disponen de nuevas capacidades y habilidades que mejoran sus conocimientos e incrementan su nivel de rendimiento académico. La metodología empleada correspondió a un enfoque cuantitativo, diseño no experimental, transversal, descriptiva y correlacional. La población analizada estuvo conformada por 80 estudiantes, a quienes se les aplicó una encuesta conformada por 16 preguntas. Conforme los resultados obtenidos, se identificó que los estudiantes del primer, segundo, tercer y cuarto periodo de la tecnología en enfermería usan tres medios tecnológicos para actividades académicas y personales, que son: celular, computadora y tableta respectivamente. Además, se pudo evidenciar que utilizan entre tres a cuatro horas diarias para realizar sus tareas, deberes, trabajos académicos y resolver dudas desde sus hogares. Por otro lado, el pódcast es usado mayormente para entretenimiento en sus hogares y la mensajería instantánea para mantener comunicación con profesores y compañeros. Con base en ello, este estudio descubre que el uso de las herramientas tecnológicas se relaciona de forma directamente proporcional y tienen influencia positiva al rendimiento académico (P<0.05), cultivando mejoras de desempeño en las asignaturas que se desean mejorar. En conclusión, las herramientas tecnológicas tienen el potencial de revolucionar el proceso tradicional de enseñanza y aprendizaje, por cuanto la relación de las dos variables se convierte en el predictor de una mejor formación en enfermería.

Item Type: Thesis (Masters)
Uncontrolled Keywords: Herramientas tecnológicas, Rendimiento académico, Estudiantes, Educación Superior
Subjects: Subjects > Comunication
Subjects > Teaching
Divisions: Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
Date Deposited: 17 Nov 2023 23:30
Last Modified: 17 Nov 2023 23:30
URI: https://repositorio.unib.org/id/eprint/2289

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