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Video Experimental Relacionado

Updated: Feb 10, 2026

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YamOmics: un recurso integral sobre multi-ómica de ñame

Yi Zhao1, Xuteng Ye1, Jun Cheng1

  • 1Academy for Advanced Interdisciplinary Studies, Nanjing Agricultural University, Nanjing, 210095, China.

BMC bioinformatics
|February 8, 2026
PubMed
Resumen
Este resumen es generado por máquina.

La Base de Datos Omics de Ñame (YamOmics) centraliza diversos datos ómicos para la investigación del ñame (Dioscorea spp.). Este recurso ayuda a comprender la genética del ñame y a mejorar el mejoramiento de cultivos para la seguridad alimentaria y los beneficios económicos.

Palabras clave:
ñamegenómicatranscriptómicaplastómicabase de datosbioinformáticaseguridad alimentariamejoramiento de cultivos

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Sus antecedentes:

  • Los ñames (Dioscorea spp.) son alimentos básicos y hierbas medicinales vitales, cruciales para la seguridad alimentaria y las economías mundiales.
  • El avance de la investigación y el mejoramiento del ñame depende de diversos datos ómicos, pero los datos actuales están fragmentados y desorganizados.
  • Es esencial un sistema de gestión de datos centralizado e integral para una investigación eficiente del ñame.

Objetivo del estudio:

  • Desarrollar una base de datos centralizada e integral para diversos datos ómicos en ñames.
  • Facilitar la investigación en biología básica y mejoramiento del ñame a través de datos integrados y herramientas fáciles de usar.

Principales métodos:

  • Se recopilaron e integraron extensos datos genómicos, transcriptómicos y plastómicos de 41 especies de ñame.
  • Se compilaron registros detallados de variantes genómicas de 935 germoplasmas y perfiles de expresión génica de 191 muestras.
  • Se desarrolló la Base de Datos Omics de Ñame (YamOmics) con anotaciones integrales y herramientas analíticas en línea.

Principales resultados:

  • YamOmics proporciona un vasto repositorio de diversos datos ómicos para 41 especies de ñame.
  • La base de datos incluye variantes genómicas detalladas para 935 germoplasmas y datos de expresión para 191 muestras.
  • Las anotaciones integradas cubren la sintenia del genoma, ortólogos, vías, familias de genes e interacciones proteicas.

Conclusiones:

  • YamOmics sirve como un recurso valioso y centralizado para la investigación y el mejoramiento del ñame (Dioscorea spp.).
  • La base de datos empodera a los investigadores con datos ómicos integrados y herramientas analíticas para avanzar en la ciencia del ñame.
  • Este recurso apoya los esfuerzos para mejorar el papel del ñame en la seguridad alimentaria y el desarrollo económico.