Trastorno por Atracón y Terapia Cognitivo Conductual
Tesis Materias > Psicología Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Cerrado Español Se ha llevado a cabo una revisión sobre los Trastornos de Conducta Alimentaria (TCA), específicamente sobre el Trastorno por Atracón (TA) y su intervención a través de la Terapia Cognitivo Conductual (TCC). El objetivo principal fue conocer la eficacia de la TCC frente a otras terapias, a la vez que se observaba la validez de la combinación entre la terapia citada y otras terapias o técnicas. También se centró en los beneficios de la terapia online. Metodología: Se realizó una revisión sistemática a través de la búsqueda de artículos publicados en las bases de datos “PubMed”, “Redalyc” y “APA Psycnet” a partir del año 2015 que estudiaban los efectos de la TCC combinando o comparando con otras terapias y en función de su formato online o presencial. Resultados: La terapia que ha presentado una alta tasa de mejora para el TA ha sido la TCC. Los resultados de la TCC en formato online han demostrado una mayor satisfacción por parte de los pacientes. Conclusiones: La TCC es la técnica más utilizada, eficaz y validada para llevar a cabo la intervención sobre el TA ya que reduce la frecuencia de los episodios de atracón, la posible sintomatología depresiva y la calidad de vida de los pacientes. metadata Otaño Riera, Claudia mail claudia.otano@master.uneatlantico.es (2023) Trastorno por Atracón y Terapia Cognitivo Conductual. Masters thesis, Universidad Europea del Atlántico.
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Se ha llevado a cabo una revisión sobre los Trastornos de Conducta Alimentaria (TCA), específicamente sobre el Trastorno por Atracón (TA) y su intervención a través de la Terapia Cognitivo Conductual (TCC). El objetivo principal fue conocer la eficacia de la TCC frente a otras terapias, a la vez que se observaba la validez de la combinación entre la terapia citada y otras terapias o técnicas. También se centró en los beneficios de la terapia online. Metodología: Se realizó una revisión sistemática a través de la búsqueda de artículos publicados en las bases de datos “PubMed”, “Redalyc” y “APA Psycnet” a partir del año 2015 que estudiaban los efectos de la TCC combinando o comparando con otras terapias y en función de su formato online o presencial. Resultados: La terapia que ha presentado una alta tasa de mejora para el TA ha sido la TCC. Los resultados de la TCC en formato online han demostrado una mayor satisfacción por parte de los pacientes. Conclusiones: La TCC es la técnica más utilizada, eficaz y validada para llevar a cabo la intervención sobre el TA ya que reduce la frecuencia de los episodios de atracón, la posible sintomatología depresiva y la calidad de vida de los pacientes.
Tipo de Documento: | Tesis (Masters) |
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Palabras Clave: | Terapia Cognitivo- Conductual, Trastorno por Atracón, Trastorno de Conducta Alimenticia, Terapia Online, Eficacia |
Clasificación temática: | Materias > Psicología |
Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster |
Depositado: | 13 Mar 2023 23:30 |
Ultima Modificación: | 13 Mar 2023 23:30 |
URI: | https://repositorio.uneatlantico.es/id/eprint/6290 |
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