Análisis de proyecto arquitectónico y educativo en instituciones privadas para combatir la deserción escolar, caso colegio Despertar Bilingüal School, Bogotá, Colombia.
Thesis
Subjects > Social Sciences
Subjects > Teaching
Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
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El tema que aborda la investigación es sobre el análisis de proyecto arquitectónico y educativo en instituciones privadas para combatir la deserción escolar, caso colegio Despertar Bilingüal School, en la ciudad de Bogotá, Colombia, donde se específica que la problemática latente sobre las instituciones educativas que no presentan un diseño adecuado para la impartición de un servicio educativo de calidad que genere apropiación por parte de la población juvenil, crean poco interés formativo y permean una afectación directa a la calidad educativa.Con el objetivo de analizar la principal razón de la deserción y el poco interés educativo por parte de los jóvenes para identificar los lineamientos que influyen arquitectónicamente en las instituciones educativas en la zona sur-oriental de Bogotá, se estudió el caso y se desarrolló un marco teórico que busca enfocar la dinámica que existe entre la pedagogía y la arquitectura. Esta se divide en el enfoque de los conceptos pedagógicos generales para la función y la ejecución de la educación, enlazando los conceptos de arquitectura y de diseño escolar que se evidencia en las instituciones aterrizándolos a la ciudad de Bogotá en la zona sur oriental donde se presentan institutos oficiales y no oficiales con referentes latinoamericanos más relevantes del siglo XX y siglo XXI. La metodología que se presenta es mixta, donde se desarrolló un estudio no probabilístico, tomando en cuenta variables específicas con base al caso de estudio el colegio DBS.Acorde a los resultados brindados a través de talleres y ejercicios de relación entre los estudiantes y los docentes se concluye, que, aunque se puedan realizar proyectos arquitectónicos para aumentar el desarrollo pedagógico de los colegios privados, claramente poseen problemas de área para poder ampliar su oferta académica, lo que generan sedes dispersas en pro de cumplir con la normativa establecida por el POT y los desarrollos del plan maestro educativo de la ciudad.
metadata
Martinez Forero, Ruben Dario
mail
rumarfo17@gmail.com
(2022)
Análisis de proyecto arquitectónico y educativo en instituciones privadas para combatir la deserción escolar, caso colegio Despertar Bilingüal School, Bogotá, Colombia.
Masters thesis, UNSPECIFIED.
Abstract
El tema que aborda la investigación es sobre el análisis de proyecto arquitectónico y educativo en instituciones privadas para combatir la deserción escolar, caso colegio Despertar Bilingüal School, en la ciudad de Bogotá, Colombia, donde se específica que la problemática latente sobre las instituciones educativas que no presentan un diseño adecuado para la impartición de un servicio educativo de calidad que genere apropiación por parte de la población juvenil, crean poco interés formativo y permean una afectación directa a la calidad educativa.Con el objetivo de analizar la principal razón de la deserción y el poco interés educativo por parte de los jóvenes para identificar los lineamientos que influyen arquitectónicamente en las instituciones educativas en la zona sur-oriental de Bogotá, se estudió el caso y se desarrolló un marco teórico que busca enfocar la dinámica que existe entre la pedagogía y la arquitectura. Esta se divide en el enfoque de los conceptos pedagógicos generales para la función y la ejecución de la educación, enlazando los conceptos de arquitectura y de diseño escolar que se evidencia en las instituciones aterrizándolos a la ciudad de Bogotá en la zona sur oriental donde se presentan institutos oficiales y no oficiales con referentes latinoamericanos más relevantes del siglo XX y siglo XXI. La metodología que se presenta es mixta, donde se desarrolló un estudio no probabilístico, tomando en cuenta variables específicas con base al caso de estudio el colegio DBS.Acorde a los resultados brindados a través de talleres y ejercicios de relación entre los estudiantes y los docentes se concluye, que, aunque se puedan realizar proyectos arquitectónicos para aumentar el desarrollo pedagógico de los colegios privados, claramente poseen problemas de área para poder ampliar su oferta académica, lo que generan sedes dispersas en pro de cumplir con la normativa establecida por el POT y los desarrollos del plan maestro educativo de la ciudad.
Item Type: | Thesis (Masters) |
---|---|
Uncontrolled Keywords: | Diseño interior, arquitectura escolar, diseño institucional, educación, proyecto. |
Subjects: | Subjects > Social Sciences Subjects > Teaching |
Divisions: | Europe University of Atlantic > Teaching > Final Master Projects Ibero-american International University > Teaching > Final Master Projects |
Date Deposited: | 10 Nov 2023 23:30 |
Last Modified: | 10 Nov 2023 23:30 |
URI: | https://repositorio.uneatlantico.es/id/eprint/1685 |
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Enzymatic treatment shapes in vitro digestion pattern of phenolic compounds in mulberry juice
The health benefits of mulberry fruit are closely associated with its phenolic compounds. However, the effects of enzymatic treatments on the digestion patterns of these compounds in mulberry juice remain largely unknown. This study investigated the impact of pectinase (PE), pectin lyase (PL), and cellulase (CE) on the release of phenolic compounds in whole mulberry juice. The digestion patterns were further evaluated using an in vitro simulated digestion model. The results revealed that PE significantly increased chlorogenic acid content by 77.8 %, PL enhanced cyanidin-3-O-glucoside by 20.5 %, and CE boosted quercetin by 44.5 %. Following in vitro digestion, the phenolic compound levels decreased differently depending on the treatment, while cyanidin-3-O-rutinoside content increased across all groups. In conclusion, the selected enzymes effectively promoted the release of phenolic compounds in mulberry juice. However, during gastrointestinal digestion, the degradation of phenolic compounds surpassed their enhanced release, with effects varying based on the compound's structure.
Peihuan Luo mail , Jian Ai mail , Qiongyao Wang mail , Yihang Lou mail , Zhiwei Liao mail , Francesca Giampieri mail francesca.giampieri@uneatlantico.es, Maurizio Battino mail maurizio.battino@uneatlantico.es, Elwira Sieniawska mail , Weibin Bai mail , Lingmin Tian mail ,
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Alzheimer's disease (AD) involves β-amyloid plaques and tau hyperphosphorylation, driven by oxidative stress and neuroinflammation. Cyclooxygenase-2 (COX-2) and acetylcholinesterase (AChE) activities exacerbate AD pathology. Olive leaf (OL) extracts, rich in bioactive compounds, offer potential therapeutic benefits. This study aimed to assess the anti-inflammatory, anti-cholinergic, and antioxidant effects of three OL extracts (low, mid, and high bioactive content) in vitro and their protective effects against AD-related proteinopathies in Caenorhabditis elegans models. OL extracts were characterized for phenolic composition, AChE and COX-2 inhibition, as well as antioxidant capacity. Their effects on intracellular and mitochondrial reactive oxygen species (ROS) were tested in C. elegans models expressing human Aβ and tau proteins. Gene expression analyses examined transcription factors (DAF-16, skinhead [SKN]-1) and their targets (superoxide dismutase [SOD]-2, SOD-3, GST-4, and heat shock protein [HSP]-16.2). High-OL extract demonstrated superior AChE and COX-2 inhibition and antioxidant capacity. Low- and high-OL extracts reduced Aβ aggregation, ROS levels, and proteotoxicity via SKN-1/NRF-2 and DAF-16/FOXO pathways, whereas mid-OL showed moderate effects through proteostasis modulation. In tau models, low- and high-OL extracts mitigated mitochondrial ROS levels via SOD-2 but had limited effects on intracellular ROS levels. High-OL extract also increased GST-4 levels, whereas low and mid extracts enhanced GST-4 levels. OL extracts protect against AD-related proteinopathies by modulating oxidative stress, inflammation, and proteostasis. High-OL extract showed the most promise for nutraceutical development due to its robust phenolic profile and activation of key antioxidant pathways. Further research is needed to confirm long-term efficacy.
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