Utilize este identificador para referenciar este registo: https://hdl.handle.net/1822/47504

TítuloUnveiling the molecular determinants responsible for NAD(P)(H) cofactor specificity using enzyme structural information
Autor(es)Resende, Tiago Filipe Coelho
Rocha, Isabel
Soares, Cláudio M.
DataDez-2016
CitaçãoResende, Tiago F.; Rocha, Isabel; Soares, Cláudio M., Unveiling the molecular determinants responsible for NAD(P)(H) cofactor specificity using enzyme structural information. EJIBCE 2016 - IV Encontro de Jovens Investigadores de Biologia Computacional Estrutural. Oeiras, Portugal, Dec 21, 62, 2016.
Resumo(s)In this post-genomic era, gene homology annotations have become the foundation of systems biology. However, errors spread easily when functional annotation is not performed carefully due to overly unconstrained homology metrics [1,2]. As metabolic model reconstructions become a relevant tool for performing fundamental studies and bioprocess design, the impact of accurate enzymatic function assignments becomes evident [3]. The uncertainty of the usage of NADP(H) or NAD(H) as co-factors [4], even in well performed annotations, has a major impact in metabolic engineering applications, severely affecting Genome-scale metabolic model reconstruction due to the potential insertion of misleading reactions. In this work, we unveiled the molecular determinants for cofactor speci- ficity, using enzyme structural information. In order to do so, we created a representative dataset of all enzymes present in the PDB with NAD(P)(H) as cofactors and measured the occurrence of every aminoacid residue at a distance of 3.5 Angstrom[5] of all cofactor atoms. This allowed us to create a matrix with the total number of aminoacid residues at interacting distances from all cofactor atoms, for all structures. After analyzing the matrix, we identified the residues that had a signifi- cantly higher number of contacts with the cofactors, and in which atoms this occurred. With the intent of applying these findings in the unveiling of cofactor specificity for enzymes that are not structurally characterized experimentally we successfully replicated these findings using machine learning algorithms. In future work we will apply the results and machine learning models obtained in order to assign cofactor specificity to enzymes with uncertain cofactor specificity. These results may represent an important development in systems biology by allowing the reduction of annotation errors and the implementation of erroneous or redundant reactions in GEM models, improving the overall performance of metabolic simulations.
TipoResumo em ata de conferência
DescriçãoEJIBCE 2016 - IV Encontro de Jovens Investigadores de Biologia Computacional Estrutural
URIhttps://hdl.handle.net/1822/47504
Versão da editorahttp://www.itqb.unl.pt/ejibce2016/home.html
Arbitragem científicayes
AcessoAcesso aberto
Aparece nas coleções:CEB - Resumos em Livros de Atas / Abstracts in Proceedings

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