Abordagem nutrigenômica da obesidade: onde estamos?

Autores

DOI:

https://doi.org/10.35454/rncm.v4n1.167

Palavras-chave:

Nutrigenômica, Genética, Obesidade

Resumo

A obesidade é uma doença multifatorial, quer dizer, que resulta da interação de múltiplos fatores genéticos e ambientais. Para o seu estudo é necessário o uso de ferramentas de investigação que permitam explorar mecanismos de interação entre o genoma completo e a nutrição. A genômica nutricional que engloba a nutrigenética e a nutrigenômica tem estudado o papel dos genes na obesidade. Embora os dois estejam intimamente associados, eles adotam uma abordagem diferente para entender a relação entre genes e dieta.

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Publicado

2020-08-30

Como Citar

Zapata Bravo, E., Pacheco Orozco, R., Payán, C., & López Rippe, J. (2020). Abordagem nutrigenômica da obesidade: onde estamos?. Jornal De Nutrição Clínica E Metabolismo, 4(1), 25–34. https://doi.org/10.35454/rncm.v4n1.167