The parasite species of genus causes Malaria, which remains a major global health problem due to parasite resistance to available Antimalarial drugs and increasing treatment costs. Consequently, computational prediction of new Antimalarial compounds with novel targets in the proteome of sp. is a very important goal for the pharmaceutical industry. We can expect that the success of the pre-clinical assay depends on the conditions of assay per se, the chemical structure of the drug, the structure of the target protein to be targeted, as well as on factors governing the expression of this protein in the proteome such as genes (Deoxyribonucleic acid, DNA) sequence and/or chromosomes structure. However, there are no reports of computational models that consider all these factors simultaneously. Some of the difficulties for this kind of analysis are the dispersion of data in different datasets, the high heterogeneity of data, etc. In this work, we analyzed three databases ChEMBL (Chemical database of the European Molecular Biology Laboratory), UniProt (Universal Protein Resource), and NCBI-GDV (National Center for Biotechnology Information-Genome Data Viewer) to achieve this goal. The ChEMBL dataset contains outcomes for 17,758 unique assays of potential Antimalarial compounds including numeric descriptors (variables) for the structure of compounds as well as a huge amount of information about the conditions of assays. The NCBI-GDV and UniProt datasets include the sequence of genes, proteins, and their functions. In addition, we also created two partitions (c = c and c = cd) of categorical variables from theChEMBL dataset. These partitions contain variables that encode information about experimental conditions of preclinical assays (c) or about the nature and quality of data (c). These categorical variables include information about 22 parameters of biological activity (c), 28 target proteins (c), and 9 organisms of assay (c), etc. We also created another partition of (c = c) including categorical variables with biological information about the target proteins, genes, and chromosomes. These variables cover32 genes (c), 10 chromosomes (c), gene orientation (c), and 31 protein functions (c). We used a Perturbation-Theory Machine Learning Information Fusion (IFPTML) algorithm to map all this information (from three databases) into and train a predictive model. Shannon's entropy measure Sh (numerical variables) was used to quantify the information about the structure of drugs, protein sequences, gene sequences, and chromosomes in the same information scale. Perturbation Theory Operators (PTOs) with the form of Moving Average (MA) operators have been used to quantify perturbations (deviations) in the structural variables with respect to their expected values for different subsets (partitions) of categorical variables. We obtained three IFPTML models using General Discriminant Analysis (GDA), Classification Tree with Univariate Splits (CTUS), and Classification Tree with Linear Combinations (CTLC). The IFPTML-CTLC presented the better performance with Sensitivity Sn(%) = 83.6/85.1, and Specificity Sp(%) = 89.8/89.7 for training/validation sets, respectively. This model could become a useful tool for the optimization of preclinical assays of new Antimalarial compounds vs. different proteins in the proteome of .
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http://dx.doi.org/10.3390/ijms222313066 | DOI Listing |
J Med Chem
January 2025
Laboratoire de Chimie de Coordination du CNRS, LCC-CNRS, Inserm ERL 1289 MAAP, Université de Toulouse, 205 route de Narbonne, 31077 Toulouse cedex, France.
To challenge the multidrug resistance of malaria parasites, new hybrid compounds were synthesized and evaluated against laboratory strains and multidrug-resistant clinical isolates. Among these hybrids, emoquine-1 was the most active on proliferative , with IC values in the range of 20-55 nM and a high selectivity index with respect to mammalian cells. This drug retained its activity on several multiresistant field isolates from Cambodia and Guiana, exhibited no cross-resistance to artemisinin, and is also very active against the quiescent stage of the artemisinin-resistant parasites, three features that constitute the gold standard for new antimalarial drugs.
View Article and Find Full Text PDFSci Rep
January 2025
Barcelona Institute for Global Health (ISGlobal, Hospital Clínic-University of Barcelona), Rosselló 149-153, Barcelona, 08036, Spain.
We recently characterized the potent antiplasmodial activity of the aggregated protein dye YAT2150, whose presumed mode of action is the inhibition of protein aggregation in the malaria parasite. Using single-dose and ramping methods, assays were done to select Plasmodium falciparum parasites resistant to YAT2150 concentrations ranging from 3× to 0.25× the in vitro IC of the compound (in the two-digit nM range) and performed a cross-resistance assessment in P.
View Article and Find Full Text PDFInt J Pharm
January 2025
Faculty of Pharmacy, Almarisah Madani University, Makassar, Indonesia; Department of Pharmacy and Pharmaceutical Technology, Almarisah Madani University, Makassar, Indonesia. Electronic address:
The combination of the active compounds curcumin and piperine (CP) is effective as an antimalarial; however, the solubility and bioavailability of CP are very low. This study aims to formulate CP in nanoparticles (NP), which are then fabricated into dissolving microneedles (DMN). The NPs were prepared with a concentration ratio of CP-Chitosan-So.
View Article and Find Full Text PDFBiochem Biophys Res Commun
January 2025
Molecular Parasitology Laboratory, School of Life Sciences, Jawaharlal Nehru University, New Delhi, 110067, India. Electronic address:
Raf Kinase Inhibitor Protein (RKIP) is an important regulator of the MAPK signaling pathway in multicellular eukaryotes. Plasmodium falciparum RKIP (PfRKIP) is a putative phosphatidylethanolamine binding protein (PEBP) that shares limited similarity with Homo sapiens RKIP (HsRKIP). Interestingly, critical components of the MAPK pathway are not expressed in malaria parasites and the physiological function of PfRKIP remains unknown.
View Article and Find Full Text PDFMalar J
January 2025
Department of Pharmacology, Kangwon National University School of Medicine, Chuncheon, 24341, Republic of Korea.
Background: The Plasmodium proteasome emerges as a promising target for anti-malarial drug development due to its potential activity against multiple life cycle stages.
Methods: In this investigation, a comparative analysis was conducted on the structural features of the β5 subunit in the 20S proteasomes of both Plasmodium and humans.
Results: The findings underscore the structural diversity inherent in both proteasomes.
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