Combinaciones de síndrome metabólico y riesgo de diabetes mellitus
Resumen
Objetivo: Determinar las combinaciones de síndrome metabólico para el riesgo de diabetes mellitus tipo 2 en una muestra de pobladores peruanos.
Métodos: Análisis secundario de un estudio de cohorte de 5 años, de la base de datos del estudio PERU MIGRANT. Los componentes alterados del síndrome metabólico fueron lipoproteínas de alta densidad bajo, hipertrigliceridemia; glucosa, presión arterial y cintura abdominal elevadas. En total 35 subgrupos de componentes: 5 grupos para cada uno de los 5 componentes, 10 grupos de combinaciones de 2 componentes y 3 componentes, 5 grupos para la combinación de 4 componentes.
Resultados: En el análisis de regresión múltiple, la glucosa como factor independiente presentó un RR estadísticamente significativo (RR= 9,02; IC: 95 % 2,45 - 33,24; p= 0,001). La combinación de 2 factores, presentaron un RR estadísticamente significativo, la glucosa - cintura abdominal (RR= 7,28; IC: 95 % 1,21 - 43,64; p= 0,030) y glucosa - alta densidad bajo (RR= 10,94; IC: 95 % 2,71 - 44,23; p= 0,001). Finalmente, la combinación de glucosa - lipoproteínas de alta densidad - cintura abdominal tenían 7,80 veces el riesgo de presentar diabetes mellitus tipo 2 versus quienes no lo presentaban (RP= 7,80; IC: 95 % 1,39 - 43,77; p= 0,020).
Conclusión: Las combinaciones que incluyen al mismo tiempo glucosa - lipoproteínas de alta densidad - cintura abdominal, fueron las combinaciones que más asociaron.
Palabras clave
Referencias
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