Relación entre hábitos alimentarios y la microbiota intestinal en niños y adolescentes con Diabetes Mellitus tipo 1 y obesidad del Hospital de Especialidades Carlos Andrade Marín.
Thesis Subjects > Nutrition Ibero-american International University > Research > Doctoral Thesis Cerrado Español La investigación sobre el microbiota intestinal de pacientes con Diabetes mellitus tipo 1 y obesidad aún está en desarrollo, pero parece ser que la microbiota intestinal de estos individuos es diferente al de personas sanas. Objetivo: identificar la relación entre los hábitos alimentarios y la microbiota intestinal en niños con diabetes mellitus tipo 1 y obesidad. Métodos: Se realizó un estudio de casos y controles en 40 sujetos repartidos en cuatro grupos de pacientes (niños con y sin diabetes mellitus tipo 1, y con o sin obesidad; se evaluó el patrón de consumo de alimentos, parámetros sociodemográficos, composición corporal y la composición de las heces en busca de marcadores bacterianos de la microbiota intestinal. Resultados: predominaron los pacientes de 10 a 14 años, no encontrándose diferencias significativas entre los valores del puntaje de consumo de alimentos, el cual en todos los casos fue evaluado de aceptable; la distribución étnica no mostró variabilidad ni tampoco el nivel académico y el ingreso monetario de los padres entre los grupos estudiados. El análisis de la diversidad bacteriana arrojó la presencia de dos tipos de marcadores del género Enterococcus y Bifidobacterium, pero en todos los grupos el comportamiento estadístico estuvo dentro de los rangos normales. La medición del ángulo de fase tampoco mostró diferencias (p=0,076) pero esta puede ser una herramienta útil de Conclusiones: No fue posible establecer una relación entre la variabilidad en el consumo de alimentos y la microbiota intestinal con la existencia de la obesidad y diabetes mellitus tipo 1 en los pacientes estudiados metadata Vizuete Martinez, Romina Estibaliz mail romina.vizuete@doctorado.unini.edu.mx (2025) Relación entre hábitos alimentarios y la microbiota intestinal en niños y adolescentes con Diabetes Mellitus tipo 1 y obesidad del Hospital de Especialidades Carlos Andrade Marín. Doctoral thesis, Universidad Internacional Iberoamericana México.
Full text not available from this repository.Abstract
La investigación sobre el microbiota intestinal de pacientes con Diabetes mellitus tipo 1 y obesidad aún está en desarrollo, pero parece ser que la microbiota intestinal de estos individuos es diferente al de personas sanas. Objetivo: identificar la relación entre los hábitos alimentarios y la microbiota intestinal en niños con diabetes mellitus tipo 1 y obesidad. Métodos: Se realizó un estudio de casos y controles en 40 sujetos repartidos en cuatro grupos de pacientes (niños con y sin diabetes mellitus tipo 1, y con o sin obesidad; se evaluó el patrón de consumo de alimentos, parámetros sociodemográficos, composición corporal y la composición de las heces en busca de marcadores bacterianos de la microbiota intestinal. Resultados: predominaron los pacientes de 10 a 14 años, no encontrándose diferencias significativas entre los valores del puntaje de consumo de alimentos, el cual en todos los casos fue evaluado de aceptable; la distribución étnica no mostró variabilidad ni tampoco el nivel académico y el ingreso monetario de los padres entre los grupos estudiados. El análisis de la diversidad bacteriana arrojó la presencia de dos tipos de marcadores del género Enterococcus y Bifidobacterium, pero en todos los grupos el comportamiento estadístico estuvo dentro de los rangos normales. La medición del ángulo de fase tampoco mostró diferencias (p=0,076) pero esta puede ser una herramienta útil de Conclusiones: No fue posible establecer una relación entre la variabilidad en el consumo de alimentos y la microbiota intestinal con la existencia de la obesidad y diabetes mellitus tipo 1 en los pacientes estudiados
Item Type: | Thesis (Doctoral) |
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Uncontrolled Keywords: | Diabetes tipo 1, Obesidad, Microbiota, Hábitos alimentarios |
Subjects: | Subjects > Nutrition |
Divisions: | Ibero-american International University > Research > Doctoral Thesis |
Date Deposited: | 15 May 2025 23:30 |
Last Modified: | 15 May 2025 23:30 |
URI: | https://repositorio.unini.edu.mx/id/eprint/13145 |
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