Novos insights sobre as propriedades físico-químicas do transportador de monoaminas VMAT2 humano e seu modo de interação com o neurotransmissor serotonina: Uma análise in silico

Autores

DOI:

https://doi.org/10.33448/rsd-v9i7.4491

Palavras-chave:

Predição físico-química; Modelagem molecular; Transportadores de monoaminas; Serotonina; Docking molecular

Resumo

As VMAT2 são glicoproteínas capazes de carrear monoaminas a partir de vesículas pré-sinápticas para as fendas sinápticas durante disparos neuronais. Presentes em muitas espécies de animais incluindo, mamíferos, répteis e aves, esta proteína tem sido estudada extensivamente, porém, pouco se sabe sobre suas características físico-químicas e modo de interação com ligantes nativos ou não. Com o intuito de melhor caracterizar a VMAT2 humana, o presente estudo foi desenvolvido a fim de explorar vários parâmetros físico-químicos, bioquímicos e estruturais relacionados a esse neurotransportador por meio de ferramentas in silico. Neste trabalho, são apresentadas ideias novas e relevantes sobre a estrutura e o seu mecanismo de interação com a 5-HT.

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30/05/2020

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ROCHA, L. L. S.; FREIRE, J. E. da C. Novos insights sobre as propriedades físico-químicas do transportador de monoaminas VMAT2 humano e seu modo de interação com o neurotransmissor serotonina: Uma análise in silico. Research, Society and Development, [S. l.], v. 9, n. 7, p. e530974491, 2020. DOI: 10.33448/rsd-v9i7.4491. Disponível em: https://rsdjournal.org/index.php/rsd/article/view/4491. Acesso em: 30 jun. 2024.

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