Ensemble-Based Modeling of Chemical Compounds with Antimalarial Activity

Author:

Caballero-Alfonso Ana Yisel1,Cruz-Monteagudo Maykel2,Tejera Eduardo3,Benfenati Emilio1,Borges Fernanda2,Cordeiro M. Natália D.S.4,Armijos-Jaramillo Vinicio3,Perez-Castillo Yunierkis3

Affiliation:

1. Laboratory of Environmental Chemistry and Toxicology, Department of Environmental Health Sciences, Istituto di Ricerche Farmacologiche "Mario Negri" - IRCCS, Milano, Italy

2. CIQUP/Departamento de Quimica e Bioquimica, Faculdade de Ciencias. Universidade do Porto. Porto, Portugal

3. Bio-Cheminformatics Research Group. Universidad de Las Americas. Quito, Ecuador

4. REQUIMTE/Departamento de Quimica e Bioquimica, Faculdade de Ciencias, Universidade do Porto. Porto, Portugal

Abstract

Background: Malaria or Paludism is a tropical disease caused by parasites of the Plasmodium genre and transmitted to humans through the bite of infected mosquitos of the Anopheles genre. This pathology is considered one of the first causes of death in tropical countries and, despite several existing therapies, they have a high toxicity. Computational methods based on Quantitative Structure- Activity Relationship studies have been widely used in drug design work flows. Objective: The main goal of the current research is to develop computational models for the identification of antimalarial hit compounds. Materials and Methods: For this, a data set suitable for the modeling of the antimalarial activity of chemical compounds was compiled from the literature and subjected to a thorough curation process. In addition, the performance of a diverse set of ensemble-based classification methodologies was evaluated and one of these ensembles was selected as the most suitable for the identification of antimalarial hits based on its virtual screening performance. Data curation was conducted to minimize noise. Among the explored ensemble-based methods, the one combining Genetic Algorithms for the selection of the base classifiers and Majority Vote for their aggregation showed the best performance. Results: Our results also show that ensemble modeling is an effective strategy for the QSAR modeling of highly heterogeneous datasets in the discovery of potential antimalarial compounds. Conclusion: It was determined that the best performing ensembles were those that use Genetic Algorithms as a method of selection of base models and Majority Vote as the aggregation method.

Funder

FEDER/COMPETE

Foundation for Science and Technology (FCT)

European Union, through Marie Sklodowska-Curie Action: MSCA-ITN-2016

Publisher

Bentham Science Publishers Ltd.

Subject

Drug Discovery,General Medicine

Reference51 articles.

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2. World Health Organization, World malaria report 2016. Geneva: 2016;13. 2016. (Available at: https://www.who.int/malaria/ publications/world-malaria-report-2016/report/en/

3. Katsuno K.; Burrows J.N.; Duncan K.; Hooft van Huijsduijnen R.; Kaneko T.; Kita K.; Mowbray C.E.; Schmatz D.; Warner P.; Slingsby B.T.; Hit and lead criteria in drug discovery for infectious diseases of the developing world. Nat Rev Drug Discov [http://dx.doi.org/10.1038/nrd4683]. [PMID: 26435527].2015,14(11),751-758

4. Avandano C.; A brief updated report on the battle against Malaria. Anales de la Real Academia Nacional de Farmacia 2015,81,145-157

5. Kindt T.; Morse S.; Gotschlich E.; Lyons K.; Structure-based strategies for drug design and discovery. Nature 1991,352,581

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