Revisión sistemática de las características de evaluación curricular en programas académicos de pregrado a través del método PRISMA-NMA

Article Subjects > Teaching Fundación Universitaria Internacional de Colombia > Research > Scientific Production Abierto Español Las prácticas de evaluación curricular en la educación superior son indispensables, dados los procesos de autoevaluación y autorregulación exigidos por las secretarías y ministerios de educación de cada país. Por lo tanto, este estudio tiene como objetivo identificar las características de las prácticas de evaluación curricular en programas de educación superior, por medio un análisis documental que incorpora el flujograma del método PRISMA-NMA. Los resultados obtenidos demuestran que en la mayoría de los estudios no se contó con modelos de evaluación curricular, sino que se basaron en el desarrollo de metodologías fundamentadas en los paradigmas cualitativo y cuantitativo, de igual manera, se identificaron las características y los elementos necesarios para el desarrollo de un proceso de evaluación curricular. metadata Cely Salazar, Mónica and Quiñones Urquijo, Abel mail UNSPECIFIED, abel.quinones@unini.edu.mx (2022) Revisión sistemática de las características de evaluación curricular en programas académicos de pregrado a través del método PRISMA-NMA. Revista Electrónica Calidad en la Educación Superior, 13 (2). pp. 150-174. ISSN 1659-4703

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Abstract

Las prácticas de evaluación curricular en la educación superior son indispensables, dados los procesos de autoevaluación y autorregulación exigidos por las secretarías y ministerios de educación de cada país. Por lo tanto, este estudio tiene como objetivo identificar las características de las prácticas de evaluación curricular en programas de educación superior, por medio un análisis documental que incorpora el flujograma del método PRISMA-NMA. Los resultados obtenidos demuestran que en la mayoría de los estudios no se contó con modelos de evaluación curricular, sino que se basaron en el desarrollo de metodologías fundamentadas en los paradigmas cualitativo y cuantitativo, de igual manera, se identificaron las características y los elementos necesarios para el desarrollo de un proceso de evaluación curricular.

Item Type: Article
Uncontrolled Keywords: Evaluación, Modelo, Evaluación Curricular, Evaluación Institucional, Evaluación de Programas
Subjects: Subjects > Teaching
Divisions: Fundación Universitaria Internacional de Colombia > Research > Scientific Production
Date Deposited: 16 Mar 2023 23:30
Last Modified: 16 Mar 2023 23:30
URI: https://repositorio.unincol.edu.co/id/eprint/6401

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Can the phenolic compounds of Manuka honey chemosensitize colon cancer stem cells? A deep insight into the effect on chemoresistance and self-renewal

Manuka honey, which is rich in pinocembrin, quercetin, naringenin, salicylic, p-coumaric, ferulic, syringic and 3,4-dihydroxybenzoic acids, has been shown to have pleiotropic effects against colon cancer cells. In this study, potential chemosensitizing effects of Manuka honey against 5-Fluorouracil were investigated in colonspheres enriched with cancer stem cells (CSCs), which are responsible for chemoresistance. Results showed that 5-Fluorouracil increased when it was combined with Manuka honey by downregulating the gene expression of both ATP-binding cassette sub-family G member 2, an efflux pump and thymidylate synthase, the main target of 5-Fluorouracil which regulates the ex novo DNA synthesis. Manuka honey was associated with decreased self-renewal ability by CSCs, regulating expression of several genes in Wnt/β-catenin, Hedgehog and Notch pathways. This preliminary study opens new areas of research into the effects of natural compounds in combination with pharmaceuticals and, potentially, increase efficacy or reduce adverse effects.

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Enhancing Cricket Performance Analysis with Human Pose Estimation and Machine Learning

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