Selection of antileishmanial sesquiterpene lactones from SistematX database using a combined ligand-/structure-based virtual screening approach

被引:14
|
作者
Herrera-Acevedo, Chonny [1 ,2 ]
Dos Santos Maia, Mayara [1 ]
Cavalcanti, Elida Batista Vieira Sousa [1 ]
Coy-Barrera, Ericsson [2 ]
Scotti, Luciana [1 ]
Scotti, Marcus Tullius [1 ]
机构
[1] Univ Fed Paraiba, Postgrad Program Nat & Synthet Bioact Prod, BR-58051900 Joao Pessoa, PB, Brazil
[2] Univ Mil Nueva Granada, Fac Ciencias Basicas & Aplicadas, Bioorgan Chem Lab, Cajica 250247, Colombia
关键词
Leishmania donovani; Sesquiterpene lactones; Ligand-based virtual screening; Structure-based virtual screening; Machine learning; SistematX database; QUANTITATIVE STRUCTURE; DRUG TARGET; TOOL; INHIBITION; INTERFERENCE; METABOLISM; GROMACS; VOLSURF;
D O I
10.1007/s11030-020-10139-6
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Leishmaniasis refers to a complex of diseases, caused by the intracellular parasitic protozoans belonging to the genusLeishmania. Among the three types of disease manifestations, the most severe type is visceral leishmaniasis, which is caused byLeishmania donovani, and is diagnosed in more than 20,000 cases annually, worldwide. Because the current therapeutic options for disease treatment are associated with several limitations, the identification of new potential leads/drugs remains necessary. In this study, a combined approach was used, based on two different virtual screening (VS) methods, which were designed to select promising antileishmanial agents from among the entire sesquiterpene lactone (SL) dataset registered in SistematX, a web interface for managing a secondary metabolite database that is accessible by multiple platforms on the Internet. Thus, a ChEMBL dataset, including 3159 and 1569 structures that were previously tested againstL. donovaniamastigotes and promastigotes in vitro, respectively, was used to develop two random forest models, which performed with greater than 74% accuracy in both the cross-validation and test sets. Subsequently, a ligand-based VS assay was performed against the 1306 SistematX-registered SLs. In parallel, the crystal structures of threeL. donovanitarget proteins,N-myristoyltransferase, ornithine decarboxylase, and mitogen-activated protein kinase 3, and a homology model of pteridine reductase 1 were used to perform a structure-based VS, using molecular docking, of the entire SistematX SL dataset. The consensus analysis of these two VS approaches resulted in the normalization of probability scores and identified 13 promising, enzyme-targeting, antileishmanial SLs from SistematX that may act againstL. donovani. Graphic abstract A combined approach based on two different virtual screening methods (structure-based and ligand-based) was performed using an in-house dataset composed of 1306 sesquiterpene lactones to identify potential antileishmanial (Leishmania donovani) structures. [GRAPHICS] .
引用
收藏
页码:2411 / 2427
页数:17
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