Ester Production Using the Lipid Composition of Coffee Ground Oil (Coffea arabica): A Theoretical Study of Eversa® Transform 2.0 Lipase as an Enzymatic Biocatalyst

Author:

Nobre Millena Mara Rabelo1,Silva Ananias Freire da1,Menezes Amanda Maria1,Silva Francisco Lennon Barbosa da1,Lima Iesa Matos1,Colares Regilany Paulo2,Souza Maria Cristiane Martins de1ORCID,Marinho Emmanuel Silva3ORCID,Melo Rafael Leandro Fernandes4,Santos José Cleiton Sousa dos1ORCID,da Fonseca Aluísio Marques2ORCID

Affiliation:

1. Instituto de Engenharia e Desenvolvimento Sustentável, Universidade da Integração Internacional da Lusofonia Afro-Brasileira–UNILAB, Redenção 62790-970, CE, Brazil

2. Instituto de Ciências Exatas e da Natureza, Universidade da Integração Internacional da Lusofonia Afro-Brasileira–UNILAB, Redenção 62790-970, CE, Brazil

3. Faculdade de Filosofia Dom Aureliano Matos, Universidade Estadual do Ceará, Limoeiro do Norte 62930-000, CE, Brazil

4. Departamento de Engenharia Metalúrgica e de Materiais, Universidade Federal do Ceará–UFC, Campus do Pici, Fortaleza 60714-903, CE, Brazil

Abstract

The scientific community recognizes coffee grounds (Coffea arabica) as an important biological residue, which led to using the Eversa® Transform 2.0 lipase as an in silico enzymatic catalyst for coffee grounds’ free fatty acids (FFA). Molecular modeling studies, including molecular docking, were performed, which revealed the structures of the lipase and showed the primary interactions between the ligands and the amino acid residues in the active site of the enzyme. Of the ligands tested, 6,9-methyl octadienoate had the best free energy of −6.1 kcal/mol, while methyl octadecenoate and methyl eicosanoate had energies of −5.7 kcal/mol. Molecular dynamics confirmed the stability of the bonds with low Root Mean Square Deviation (RMSD) values. The MMGBSA study showed that methyl octadecenoate had the best free energy estimate, and CASTp identified key active sites for potential enzyme immobilization in experimental studies. Overall, this study provides efficient and promising results for future experimental investigations, showing a classification of oils present in coffee grounds and their binding affinity with Eversa.

Publisher

MDPI AG

Subject

General Medicine

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