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Modelo Oculto De Markov La Piedra Angular De La Proteómica Moderna

Resumen

El modelo oculto de Markov se ha convertido en una de las herramientas más utilizadas en el análisis de secuencias biológicas, ya que proporcionan un sólido marco matemático para modelar y analizar secuencias biológicas. En este documento, presentamos una revisión del concepto básico de los HMM y cómo es posible usar de manera efectiva el HMM para la representación de secuencias biológicas en la identificación de secuencias de proteínas evolutivamente distantes.

Palabras clave

Modelo oculto de Markov (HMM), bioinformática, dominios, proteínas.


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