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1.
Curr Drug Targets ; 18(5): 511-521, 2017.
Article in English | MEDLINE | ID: mdl-26521774

ABSTRACT

Hansch's model is a classic approach to Quantitative Structure-Binding Relationships (QSBR) problems in Pharmacology and Medicinal Chemistry. Hansch QSAR equations are used as input parameters of electronic structure and lipophilicity. In this work, we perform a review on Hansch's analysis. We also developed a new type of PT-QSBR Hansch's model based on Perturbation Theory (PT) and QSBR approach for a large number of drugs reported in CheMBL. The targets are proteins expressed by the Hippocampus region of the brain of Alzheimer Disease (AD) patients. The model predicted correctly 49312 out of 53783 negative perturbations (Specificity = 91.7%) and 16197 out of 21245 positive perturbations (Sensitivity = 76.2%) in training series. The model also predicted correctly 49312/53783 (91.7%) and 16197/21245 (76.2%) negative or positive perturbations in external validation series. We applied our model in theoretical-experimental studies of organic synthesis, pharmacological assay, and prediction of unmeasured results for a series of compounds similar to Rasagiline (compound of reference) with potential neuroprotection effect.


Subject(s)
Alzheimer Disease/drug therapy , Proteome/metabolism , Thiophenes/pharmacology , Alzheimer Disease/metabolism , Humans , Indans/chemistry , Models, Theoretical , Neuroprotective Agents/pharmacology , Quantitative Structure-Activity Relationship , Thiophenes/therapeutic use
2.
Eur J Med Chem ; 46(4): 1074-94, 2011 Apr.
Article in English | MEDLINE | ID: mdl-21315497

ABSTRACT

There are many drugs described with very different affinity to a large number of receptors. In this work, we selected Drug-Target pairs (DTPs/nDTPs) of drugs with high affinity/non-affinity for different targets like proteins. Quantitative Structure-Activity Relationships (QSAR) models become a very useful tool in this context to substantially reduce time and resources consuming experiments. Unfortunately, most QSAR models predict activity against only one protein. To solve this problem, we developed here a multi-target QSAR (mt-QSAR) classifier using the MARCH-INSIDE technique to calculate structural parameters of drug and target plus one Artificial Neuronal Network (ANN) to seek the model. The best ANN model found is a Multi-Layer Perceptron (MLP) with profile MLP 32:32-15-1:1. This MLP classifies correctly 623 out of 678 DTPs (Sensitivity = 91.89%) and 2995 out of 3234 nDTPs (Specificity = 92.61%), corresponding to training Accuracy = 92.48%. The validation of the model was carried out by means of external predicting series. The model classifies correctly 313 out of 338 DTPs (Sensitivity = 92.60%) and 1411 out of 1534 nDTP (Specificity = 91.98%) in validation series, corresponding to total Accuracy = 92.09% for validation series (Predictability). This model favorably compares with other LDA and ANN models developed in this work and Machine Learning classifiers published before to address the same problem in different aspects. These mt-QSARs offer also a good opportunity to construct drug-protein Complex Networks (CNs) that can be used to explore large and complex drug-protein receptors databases. Finally, we illustrated two practical uses of this model with two different experiments. In experiment 1, we report prediction, synthesis, characterization, and MAO-A and MAO-B pharmacological assay of 10 rasagiline derivatives promising for anti-Parkinson drug design. In experiment 2, we report sampling, parasite culture, SEC and 1DE sample preparation, MALDI-TOF MS and MS/MS analysis, MASCOT search, MM/MD 3D structure modeling, and QSAR prediction for different peptides of hemoglobin found in the proteome of the human parasite Fasciola hepatica; which is promising for anti-parasite drug targets discovery.


Subject(s)
Entropy , Fasciola hepatica , Hemoglobins/chemistry , Monoamine Oxidase Inhibitors/metabolism , Monoamine Oxidase/metabolism , Peptide Fragments/metabolism , United States Food and Drug Administration , Animals , Artificial Intelligence , Discriminant Analysis , Humans , Markov Chains , Models, Molecular , Monoamine Oxidase Inhibitors/chemistry , Monoamine Oxidase Inhibitors/pharmacology , Peptide Fragments/chemistry , Protein Binding , Protein Conformation , Quantitative Structure-Activity Relationship , Reproducibility of Results , United States
3.
J Proteome Res ; 10(4): 1698-718, 2011 Apr 01.
Article in English | MEDLINE | ID: mdl-21184613

ABSTRACT

Many drugs with very different affinity to a large number of receptors are described. Thus, in this work, we selected drug-target pairs (DTPs/nDTPs) of drugs with high affinity/nonaffinity for different targets. Quantitative structure-activity relationship (QSAR) models become a very useful tool in this context because they substantially reduce time and resource-consuming experiments. Unfortunately, most QSAR models predict activity against only one protein target and/or they have not been implemented on a public Web server yet, freely available online to the scientific community. To solve this problem, we developed a multitarget QSAR (mt-QSAR) classifier combining the MARCH-INSIDE software for the calculation of the structural parameters of drug and target with the linear discriminant analysis (LDA) method in order to seek the best model. The accuracy of the best LDA model was 94.4% (3,859/4,086 cases) for training and 94.9% (1,909/2,012 cases) for the external validation series. In addition, we implemented the model into the Web portal Bio-AIMS as an online server entitled MARCH-INSIDE Nested Drug-Bank Exploration & Screening Tool (MIND-BEST), located at http://miaja.tic.udc.es/Bio-AIMS/MIND-BEST.php . This online tool is based on PHP/HTML/Python and MARCH-INSIDE routines. Finally, we illustrated two practical uses of this server with two different experiments. In experiment 1, we report for the first time a MIND-BEST prediction, synthesis, characterization, and MAO-A and MAO-B pharmacological assay of eight rasagiline derivatives, promising for anti-Parkinson drug design. In experiment 2, we report sampling, parasite culture, sample preparation, 2-DE, MALDI-TOF and -TOF/TOF MS, MASCOT search, 3D structure modeling with LOMETS, and MIND-BEST prediction for different peptides as new protein of the found in the proteome of the bird parasite Trichomonas gallinae, which is promising for antiparasite drug targets discovery.


Subject(s)
Drug Design , Drug Evaluation, Preclinical/methods , Glucosephosphate Dehydrogenase/metabolism , Internet , Monoamine Oxidase Inhibitors/chemistry , Monoamine Oxidase/metabolism , Protozoan Proteins/metabolism , Trichomonas , Animals , Antiparasitic Agents/chemistry , Antiparasitic Agents/pharmacology , Columbidae/microbiology , Drug Discovery , Glucosephosphate Dehydrogenase/chemistry , Indans/chemical synthesis , Indans/chemistry , Models, Molecular , Models, Theoretical , Molecular Sequence Data , Molecular Structure , Monoamine Oxidase/chemistry , Monoamine Oxidase Inhibitors/chemical synthesis , Peptides/chemistry , Protein Conformation , Protozoan Proteins/chemistry , Quantitative Structure-Activity Relationship , Trichomonas/chemistry , Trichomonas/drug effects , Trichomonas/enzymology
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