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yovani marrero-ponce


ymarrero77@yahoo.es

Journal articles

2011
A Rescigno, G M Casanola-Martin, E Sanjust, P Zucca, Y Marrero-Ponce (2011)  Vanilloid derivatives as tyrosinase inhibitors driven by virtual screening-based QSAR models   Drug Test Anal 3: 3. 176-81  
Abstract: A number of vanilloids have been tested as tyrosinase inhibitors using Ligand-Based Virtual Screening (LBVS) driven by QSAR (Quantitative Structure-Activity Relationship) models as the multi-agent classification system. A total of 81 models were used to screen this family. Then, a preliminary cluster analysis of the selected chemicals was carried out based on their bioactivity to detect possible similar substructural features among these compounds and the active database used in the QSAR model construction. The compounds identified were tested in vitro to corroborate the results obtained in silico. Among them, two chemicals, isovanillin (K(M) (app) = 1.08 mM) near to kojic acid (reference drug) in one cluster and isovanillyl alcohol (K(M) (app) = 0.88 mM) at the same distance as hydroquinone (reference drug) in another cluster showed inhibitory activity against tyrosinase. The algorithm proposed here could result in a suitable approach for faster and more effective identification of hit and/or lead compounds with tyrosinase inhibitory activity, helping to shorten the long pipeline in the research of novel depigmenting agents to treat skin disorders.
Notes: Rescigno, Antonio xD;Casanola-Martin, Gerardo M xD;Sanjust, Enrico xD;Zucca, Paolo xD;Marrero-Ponce, Yovani xD;Research Support, Non-U.S. Gov't xD;England xD;Drug testing and analysis xD;Drug Test Anal. 2011 Mar;3(3):176-81. doi: 10.1002/dta.187. Epub 2010 Dec 1.
J A Castillo-Garit, M C Vega, M Rolon, Y Marrero-Ponce, A Gomez-Barrio, J A Escario, A A Bello, A Montero, F Torrens, F Perez-Gimenez, V J Aran, C Abad (2011)  Ligand-based discovery of novel trypanosomicidal drug-like compounds : in silico identification and experimental support   Eur J Med Chem 46: 8. 3324-30  
Abstract: Two-dimensional bond-based linear indices and linear discriminant analysis are used in this report to perform a quantitative structure-activity relationship study to identify new trypanosomicidal compounds. A database with 143 anti-trypanosomal and 297 compounds having other clinical uses, are utilized to develop the theoretical models. The best discriminant models computed using bond-based linear indices provides accuracies greater than 90 for both training and test sets. Our models identify as anti-trypanosomals five out of nine compounds of a set of already-synthesized substances. The in vitro anti-trypanosomal activity of this set against epimastigote forms of Trypanosoma cruzi is assayed. Both models show a perfect agreement between theoretical predictions and experimental results. The compounds identified as active ones show more than 98% of anti-epimastigote elimination (AE) at a concentration of 100 mug/mL. Besides, three compounds show more than 70% of AE at a concentration of 10 mug/mL. Finally, compounds with the best "activity against epimastigote forms/unspecific cytotoxicity" ratio are evaluated using an amastigote susceptibility assay. It should be noticed that, compound Va7-71 exhibit a 100% of intracellular amastigote elimination and shows similar activity when compared to a standard trypanosomicidal as nifurtimox. Finally, we can emphasize that, the present algorithm constitutes a step forward in the search for efficient ways of discovering new anti-trypanosomal compounds.
Notes: Castillo-Garit, Juan Alberto xD;Vega, Maria Celeste xD;Rolon, Miriam xD;Marrero-Ponce, Yovani xD;Gomez-Barrio, Alicia xD;Escario, Jose A xD;Bello, Alfredo Alvarez xD;Montero, Alina xD;Torrens, Francisco xD;Perez-Gimenez, Facundo xD;Aran, Vicente J xD;Abad, Concepcion xD;Research Support, Non-U.S. Gov't xD;France xD;European journal of medicinal chemistry xD;Eur J Med Chem. 2011 Aug;46(8):3324-30. Epub 2011 May 5.
O M Rivera-Borroto, Y Marrero-Ponce, J M Garcia-de la Vega, R D Grau-Abalo (2011)  Comparison of Combinatorial Clustering Methods on Pharmacological Data Sets Represented by Machine Learning-Selected Real Molecular Descriptors   J Chem Inf Model  
Abstract: Cluster algorithms play an important role in diversity related tasks of modern chemoinformatics, with the widest applications being in pharmaceutical industry drug discovery programs. The performance of these grouping strategies depends on various factors such as molecular representation, mathematical method, algorithmical technique, and statistical distribution of data. For this reason, introduction and comparison of new methods are necessary in order to find the model that best fits the problem at hand. Earlier comparative studies report on Ward's algorithm using fingerprints for molecular description as generally superior in this field. However, problems still remain, i.e., other types of numerical descriptions have been little exploited, current descriptors selection strategy is trial and error-driven, and no previous comparative studies considering a broader domain of the combinatorial methods in grouping chemoinformatic data sets have been conducted. In this work, a comparison between combinatorial methods is performed,with five of them being novel in cheminformatics. The experiments are carried out using eight data sets that are well established and validated in the medical chemistry literature. Each drug data set was represented by real molecular descriptors selected by machine learning techniques, which are consistent with the neighborhood principle. Statistical analysis of the results demonstrates that pharmacological activities of the eight data sets can be modeled with a few of families with 2D and 3D molecular descriptors, avoiding classification problems associated with the presence of nonrelevant features. Three out of five of the proposed cluster algorithms show superior performance over most classical algorithms and are similar (or slightly superior in the most optimistic sense) to Ward's algorithm. The usefulness of these algorithms is also assessed in a comparative experiment to potent QSAR and machine learning classifiers, where they perform similarly in some cases.
Notes: Journal article xD;Journal of chemical information and modeling xD;J Chem Inf Model. 2011 Dec 9.
H Le-Thi-Thu, G M Casanola-Martin, Y Marrero-Ponce, A Rescigno, L Saso, V S Parmar, F Torrens, C Abad (2011)  Novel coumarin-based tyrosinase inhibitors discovered by OECD principles-validated QSAR approach from an enlarged, balanced database   Mol Divers 15: 2. 507-20  
Abstract: The present work is devoted to the development and application of a multi-agent Quantitative Structure-Activity Relationship (QSAR) classification system for tyrosinase inhibitor identification, in which the individual QSAR outputs are the inputs of a fusion approach based on the voting mechanism. The individual models are based on TOMOCOMD-CARDD (TOpological Molecular COMputational Design-Computer Aided Rational Drug Design) atom-based bilinear descriptors and Linear Discriminant Analysis (LDA) on a novel enlarged, balanced database of 1,429 compounds within 701 greatly dissimilar molecules presenting anti-tyrosinase activity. A total of 21 adequate models are obtained taking into account the requirements of the Organization for Economic Cooperation and Development (OECD) principles for QSAR validation and present global accuracies (Q) above 84.50 and 79.27% in the training and test sets, respectively. The resulted fusion system is used for the in silico identification of synthesized coumarin derivatives as novel tyrosinase inhibitors. The 7-hydroxycoumarin (compound C07) shows potent activity for the inhibition of monophenolase activity of mushroom tyrosinase giving a value of inhibition percentage close to 100% in vitro assays, by means of spectrophotometric analysis. The current report could help to shed some clues in the identification of new chemicals that inhibit tyrosinase enzyme, for entering in the pipeline of drug discovery development.
Notes: Le-Thi-Thu, Huong xD;Casanola-Martin, Gerardo M xD;Marrero-Ponce, Yovani xD;Rescigno, Antonio xD;Saso, Luciano xD;Parmar, Virinder S xD;Torrens, Francisco xD;Abad, Concepcion xD;Research Support, Non-U.S. Gov't xD;Netherlands xD;Molecular diversity xD;Mol Divers. 2011 May;15(2):507-20. Epub 2010 Sep 3.
Y Marrero-Ponce, D Siverio-Mota, M Galvez-Llompart, M C Recio, R M Giner, R Garcia-Domenech, F Torrens, V J Aran, M L Cordero-Maldonado, C V Esguera, P A de Witte, A D Crawford (2011)  Discovery of novel anti-inflammatory drug-like compounds by aligning in silico and in vivo screening : the nitroindazolinone chemotype   Eur J Med Chem 46: 12. 5736-53  
Abstract: In this report, we propose the combination of computational methods and in vivo primary screening in zebrafish larvae and confirmatory in mice models as a novel strategy to accelerate anti-inflammatory drug discovery. Initially, a database of 1213 organic chemicals with great structural variability - 587 of them anti-inflammatory agents plus 626 compounds with other clinical uses - was divided into training and test groups. Atom-based quadratic indices - a TOMOCOMD-CARDD molecular descriptors family - and linear discriminant analysis (LDA) were used to develop a total of 13 models to describe the anti-inflammatory activity. The best model (Eq. (13)) shows an accuracy of 87.70% in the training set, and values of Matthews correlation coefficient (C) of 0.75. The robustness of the models was demonstrated using an external test set as validation method, i.e., Eq. (13) revealing classification of 88.44% (C = 0.77) in this series. All models were employed to develop ensemble a QSAR classification system, in which the individual QSAR outputs are the inputs of the aforementioned fusion approach. The fusion model was used for the identification of novel anti-inflammatory compounds using virtual screening of 145 molecules available in our in-house library of indazole, indole, cinnoline and quinoxaline derivatives. Out of these, 34 chemicals were selected, synthesized and tested in a lipopolysaccharide (LPS)-induced leukocyte migration assay in zebrafish larvae. This activity was evaluated based on leukocyte migration to the injury zone of tail-transected larvae. Compounds 18 (3 muM), 24 (10 muM), 25 (10 muM), 6 (10 muM), 15 (30 muM), 11 (30 muM) and 12 (30 muM) gave the best results displaying relative leukocyte migration (RLM) values of 0.24, 0.27, 0.35, 0.41, 0.17, 0. 26 and 0.27 respectively, date that suggest an anti-inflammatory activity of 76, 73, 65, 59, 83, 84 and 73%, respectively. Compound 18 was the most potent but showed high toxicity together with compound 6. Next, we used the tetradecanoylphorbol acetate (TPA)-induced mouse ear oedema model to evaluate the most potent compounds in the zebrafish larvae tail transection assay. All assayed compounds, with the exception of chemical 15, showed anti-inflammatory activity in mice. Compound 12 (VA5-13l, 2-benzyl-1-methyl-5-nitro-1,2-dihydro-3H-indazol-3-one) was the most active and completely abolished the oedema. Compounds 6, 11 and 24 showed inhibition percentages in the range of the reference drug (indomethacin), whereas compounds 18 and 25 reduced the oedema in a lesser extent (inhibition of 73 and 80%, respectively). In addition, all compounds except chemical 15, significantly reduced neutrophil infiltration, measured as myeloperoxidase activity on TPA application test. Compounds 6, 11, 12 and 18 showed values comparable to indomethacin (inhibition percentage of 61), but compounds 6 and 18 were toxic in zebrafish and showed unspecific cytotoxicity in murine macrophages at 100 mug/mL, while the remaining compounds 11, 12 and 25 were inactive at most levels. Evidently, this study suggests a new support structure (12, 11 and 24; a nitroindazolinone chemotype) that constitutes a novel promising lead and may represent an important therapeutic alternative for the treatment of inflammatory conditions.
Notes: Marrero-Ponce, Yovani xD;Siverio-Mota, Dany xD;Galvez-Llompart, Maria xD;Recio, Maria C xD;Giner, Rosa M xD;Garcia-Domenech, Ramon xD;Torrens, Francisco xD;Aran, Vicente J xD;Cordero-Maldonado, Maria Lorena xD;Esguera, Camila V xD;de Witte, Peter A M xD;Crawford, Alexander D xD;Research Support, Non-U.S. Gov't xD;France xD;European journal of medicinal chemistry xD;Eur J Med Chem. 2011 Dec;46(12):5736-53. Epub 2011 Aug 17.
Y M Alvarez-Ginarte, L A Montero-Cabrera, J M de la Vega, P Noheda-Marin, Y Marrero-Ponce, J A Ruiz-Garcia (2011)  Anabolic and androgenic activities of 19-nor-testosterone steroids : QSAR study using quantum and physicochemical molecular descriptors   J Steroid Biochem Mol Biol 126: 1-2. 35-45  
Abstract: Quantitative structure-activity relationship (QSAR) study of 19-nor-testosterone steroids family was performed using quantum and physicochemical molecular descriptors. The quantum-chemical descriptors were calculated using semiempirical calculations. The descriptor values were statistically correlated using multi-linear regression analysis. The QSAR study indicated that the electronic properties of these derivatives have significant relationship with observed biological activities. The found QSAR equations explain that the energy difference between the LUMO and HOMO, the total dipole moment, the chemical potential and the value of the net charge of different carbon atoms in the steroid nucleus showed key interaction of these steroids with their anabolic-androgenic receptor binding site. The calculated values predict that the 17alpha-cyclopropyl-17beta, 3beta-hydroxy-4-estrene compound presents the highest anabolic-androgenic ratio (AAR) and the 7alpha-methyl-17beta-acetoxy-estr-4-en-3-one compound the lowest AAR. This study might be helpful in the future successful identification of "real" or "virtual" anabolic-androgenic steroids.
Notes: Alvarez-Ginarte, Yoanna Maria xD;Montero-Cabrera, Luis Alberto xD;de la Vega, Jose Manuel Garcia xD;Noheda-Marin, Pedro xD;Marrero-Ponce, Yovani xD;Ruiz-Garcia, Jose Alberto xD;Research Support, Non-U.S. Gov't xD;England xD;The Journal of steroid biochemistry and molecular biology xD;J Steroid Biochem Mol Biol. 2011 Aug;126(1-2):35-45. doi: 10.1016/j.jsbmb.2011.04.003. Epub 2011 Apr 13.
2010
G M Casanola-Martin, Y Marrero-Ponce, M T Khan, S B Khan, F Torrens, F Perez-Jimenez, A Rescigno, C Abad (2010)  Bond-based 2D quadratic fingerprints in QSAR studies : virtual and in vitro tyrosinase inhibitory activity elucidation   Chem Biol Drug Des 76: 6. 538-45  
Abstract: In this report, we show the results of quantitative structure-activity relationship (QSAR) studies of tyrosinase inhibitory activity, by using the bond-based quadratic indices as molecular descriptors (MDs) and linear discriminant analysis (LDA), to generate discriminant functions to predict the anti-tyrosinase activity. The best two models [Eqs (6) and (12)] out of the total 12 QSAR models developed here show accuracies of 93.51% and 91.21%, as well as high Matthews correlation coefficients (C) of 0.86 and 0.82, respectively, in the training set. The validation external series depicts values of 90.00% and 89.44% for these best two equations (6) and (12), respectively. Afterwards, a second external prediction data are used to perform a virtual screening of compounds reported in the literature as active (tyrosinase inhibitors). In a final step, a series of lignans is analysed using the in silico-developed models, and in vitro corroboration of the activity is carried out. An issue of great importance to remark here is that all compounds present greater inhibition values than Kojic acid (standard tyrosinase inhibitor: IC = 16.67 mum). The current obtained results could be used as a framework to increase the speed, in the biosilico discovery of leads for the treatment of skin disorders.
Notes: Casanola-Martin, Gerardo M xD;Marrero-Ponce, Yovani xD;Khan, Mahmud T H xD;Khan, Sher B xD;Torrens, Francisco xD;Perez-Jimenez, Facundo xD;Rescigno, Antonio xD;Abad, Concepcion xD;Research Support, Non-U.S. Gov't xD;England xD;Chemical biology & drug design xD;Chem Biol Drug Des. 2010 Dec;76(6):538-45. doi: 10.1111/j.1747-0285.2010.01032.x. Epub 2010 Oct 21.
J A Castillo-Garit, M C Vega, M Rolon, Y Marrero-Ponce, V V Kouznetsov, D F Torres, A Gomez-Barrio, A A Bello, A Montero, F Torrens, F Perez-Gimenez (2010)  Computational discovery of novel trypanosomicidal drug-like chemicals by using bond-based non-stochastic and stochastic quadratic maps and linear discriminant analysis   Eur J Pharm Sci 39: 1-3. 30-6  
Abstract: Herein we present results of a quantitative structure-activity relationship (QSAR) studies to classify and design, in a rational way, new antitrypanosomal compounds by using non-stochastic and stochastic bond-based quadratic indices. A data set of 440 organic chemicals, 143 with antitrypanosomal activity and 297 having other clinical uses, is used to develop QSAR models based on linear discriminant analysis (LDA). Non-stochastic model correctly classifies more than 93% and 95% of chemicals in both training and external prediction groups, respectively. On the other hand, the stochastic model shows an accuracy of about the 87% for both series. As an experiment of virtual lead generation, the present approach is finally satisfactorily applied to the virtual evaluation of 9 already synthesized in house compounds. The in vitro antitrypanosomal activity of this series against epimastigote forms of Trypanosoma cruzi is assayed. The model is able to predict correctly the behaviour for the majority of these compounds. Four compounds (FER16, FER32, FER33 and FER 132) showed more than 70% of epimastigote inhibition at a concentration of 100 microg/mL (86.74%, 78.12%, 88.85% and 72.10%, respectively) and two of these chemicals, FER16 (78.22% of AE) and FER33 (81.31% of AE), also showed good activity at a concentration of 10 microg/mL. At the same concentration, compound FER16 showed lower value of cytotoxicity (15.44%), and compound FER33 showed very low value of 1.37%. Taking into account all these results, we can say that these three compounds can be optimized in forthcoming works, but we consider that compound FER33 is the best candidate. Even though none of them resulted more active than Nifurtimox, the current results constitute a step forward in the search for efficient ways to discover new lead antitrypanosomals.
Notes: Castillo-Garit, Juan Alberto xD;Vega, Maria C xD;Rolon, Miriam xD;Marrero-Ponce, Yovani xD;Kouznetsov, Vladimir V xD;Torres, Diego Fernando Amado xD;Gomez-Barrio, Alicia xD;Bello, Alfredo Alvarez xD;Montero, Alina xD;Torrens, Francisco xD;Perez-Gimenez, Facundo xD;Research Support, Non-U.S. Gov't xD;Netherlands xD;European journal of pharmaceutical sciences : official journal of the European Federation for Pharmaceutical Sciences xD;Eur J Pharm Sci. 2010 Jan 31;39(1-3):30-6. Epub 2009 Oct 23.
S E Ortega-Broche, Y Marrero-Ponce, Y E Diaz, F Torrens, F Perez-Gimenez (2010)  TOMOCOMD-CAMPS and protein bilinear indices--novel bio-macromolecular descriptors for protein research : I. Predicting protein stability effects of a complete set of alanine substitutions in the Arc repressor   FEBS J 277: 15. 3118-46  
Abstract: Descriptors calculated from a specific representation scheme encode only one part of the chemical information. For this reason, there is a need to construct novel graphical representations of proteins and novel protein descriptors that can provide new information about the structure of proteins. Here, a new set of protein descriptors based on computation of bilinear maps is presented. This novel approach to biomacromolecular design is relevant for QSPR studies on proteins. Protein bilinear indices are calculated from the kth power of nonstochastic and stochastic graph-theoretic electronic-contact matrices, M(m)(k) and (s)M(m)(k), respectively. That is to say, the kth nonstochastic and stochastic protein bilinear indices are calculated using M(m)(k) and (s)M(m)(k) as matrix operators of bilinear transformations. Moreover, biochemical information is codified by using different pair combinations of amino acid properties as weightings. Classification models based on a protein bilinear descriptor that discriminate between Arc mutants of stability similar or inferior to the wild-type form were developed. These equations permitted the correct classification of more than 90% of the mutants in training and test sets, respectively. To predict t(m) and Delta DeltaG(f)(o) values for Arc mutants, multiple linear regression and piecewise linear regression models were developed. The multiple linear regression models obtained accounted for 83% of the variance of the experimental t(m). Statistics calculated from internal and external validation procedures demonstrated robustness, stability and suitable power ability for all models. The results achieved demonstrate the ability of protein bilinear indices to encode biochemical information related to those structural changes significantly influencing the Arc repressor stability when punctual mutations are induced.
Notes: Ortega-Broche, Sadiel E xD;Marrero-Ponce, Yovani xD;Diaz, Yunaimy E xD;Torrens, Francisco xD;Perez-Gimenez, Facundo xD;Research Support, Non-U.S. Gov't xD;England xD;The FEBS journal xD;FEBS J. 2010 Aug;277(15):3118-46. Epub 2010 Jun 25.
Y Marrero-Ponce, E R Martinez-Albelo, G M Casanola-Martin, J A Castillo-Garit, Y Echeveria-Diaz, V R Zaldivar, J Tygat, J E Borges, R Garcia-Domenech, F Torrens, F Perez-Gimenez (2010)  Bond-based linear indices of the non-stochastic and stochastic edge-adjacency matrix. 1. Theory and modeling of ChemPhys properties of organic molecules   Mol Divers 14: 4. 731-53  
Abstract: Novel bond-level molecular descriptors are proposed, based on linear maps similar to the ones defined in algebra theory. The kth edge-adjacency matrix (E(k)) denotes the matrix of bond linear indices (non-stochastic) with regard to canonical basis set. The kth stochastic edge-adjacency matrix, ES(k), is here proposed as a new molecular representation easily calculated from E(k). Then, the kth stochastic bond linear indices are calculated using ES(k) as operators of linear transformations. In both cases, the bond-type formalism is developed. The kth non-stochastic and stochastic total linear indices are calculated by adding the kth non-stochastic and stochastic bond linear indices, respectively, of all bonds in molecule. First, the new bond-based molecular descriptors (MDs) are tested for suitability, for the QSPRs, by analyzing regressions of novel indices for selected physicochemical properties of octane isomers (first round). General performance of the new descriptors in this QSPR studies is evaluated with regard to the well-known sets of 2D/3D MDs. From the analysis, we can conclude that the non-stochastic and stochastic bond-based linear indices have an overall good modeling capability proving their usefulness in QSPR studies. Later, the novel bond-level MDs are also used for the description and prediction of the boiling point of 28 alkyl-alcohols (second round), and to the modeling of the specific rate constant (log k), partition coefficient (log P), as well as the antibacterial activity of 34 derivatives of 2-furylethylenes (third round). The comparison with other approaches (edge- and vertices-based connectivity indices, total and local spectral moments, and quantum chemical descriptors as well as E-state/biomolecular encounter parameters) exposes a good behavior of our method in this QSPR studies. Finally, the approach described in this study appears to be a very promising structural invariant, useful not only for QSPR studies but also for similarity/diversity analysis and drug discovery protocols.
Notes: Marrero-Ponce, Yovani xD;Martinez-Albelo, Eugenio R xD;Casanola-Martin, Gerardo M xD;Castillo-Garit, Juan A xD;Echeveria-Diaz, Yunaimy xD;Zaldivar, Vicente Romero xD;Tygat, Jan xD;Borges, Jose E Rodriguez xD;Garcia-Domenech, Ramon xD;Torrens, Francisco xD;Perez-Gimenez, Facundo xD;Evaluation Studies xD;Research Support, Non-U.S. Gov't xD;Netherlands xD;Molecular diversity xD;Mol Divers. 2010 Nov;14(4):731-53. Epub 2010 Jan 10.
Y Marrero-Ponce, G M Casanola-Martin, M T Khan, F Torrens, A Rescigno, C Abad (2010)  Ligand-based computer-aided discovery of tyrosinase inhibitors. Applications of the TOMOCOMD-CARDD method to the elucidation of new compounds   Curr Pharm Des 16: 24. 2601-24  
Abstract: In this review an overview of the application of computational approaches is given. Specifically, the uses of Quantitative Structure-Activity Relationship (QSAR) methods for in silico identification of new families of compounds as novel tyrosinase inhibitors are revised. Assembling, validation of models through prediction series, and virtual screening of external data sets are also shown, to prove the accuracy of the QSAR models obtained with the TOMOCOMD-CARDD (TOpological MOlecular COMputational Design-Computer-Aided Rational Drug Design) software and Linear Discriminant Analysis (LDA) as statistical technique. Together with this, a database is collected for these QSAR studies, and could be considered a useful tool in future QSAR modeling of tyrosinase activity and for scientists that work in the field of this enzyme and its inhibitors. Finally, a translation to real world applications is shown by the use of QSAR models in the identification and posterior in-vitro evaluation of different families of compounds. Several different classes of compounds from various sources (natural and synthetic) were identified. Between them, we can find tetraketones, cycloartanes, ethylsteroids, lignans, dicoumarins and vanilloid derivatives. Finally, some considerations are discussed in order to improve the identification of novel drug-like compounds based on the use of QSAR-Ligand-Based Virtual Screening (LBVS).
Notes: Marrero-Ponce, Yovani xD;Casanola-Martin, Gerardo M xD;Khan, Mahmud Tareq Hassan xD;Torrens, Francisco xD;Rescigno, Antonio xD;Abad, Concepcion xD;Research Support, Non-U.S. Gov't xD;Review xD;Netherlands xD;Current pharmaceutical design xD;Curr Pharm Des. 2010;16(24):2601-24.
2009
Y Marrero-Ponce, S E Ortega-Broche, Y E Diaz, Y J Alvarado, N Cubillan, G C Cardoso, F Torrens, F Perez-Gimenez (2009)  Nucleotide's bilinear indices : novel bio-macromolecular descriptors for bioinformatics studies of nucleic acids. I. Prediction of paromomycin's affinity constant with HIV-1 Psi-RNA packaging region   J Theor Biol 259: 2. 229-41  
Abstract: A new set of nucleotide-based bio-macromolecular descriptors are presented. This novel approach to bio-macromolecular design from a linear algebra point of view is relevant to nucleic acids quantitative structure-activity relationship (QSAR) studies. These bio-macromolecular indices are based on the calculus of bilinear maps on Re(n)[b(mk)(x (m),y (m)):Re(n) x Re(n)-->Re] in canonical basis. Nucleic acid's bilinear indices are calculated from kth power of non-stochastic and stochastic nucleotide's graph-theoretic electronic-contact matrices, M(m)(k) and (s)M(m)(k), respectively. That is to say, the kth non-stochastic and stochastic nucleic acid's bilinear indices are calculated using M(m)(k) and (s)M(m)(k) as matrix operators of bilinear transformations. Moreover, biochemical information is codified by using different pair combinations of nucleotide-base properties as weightings (experimental molar absorption coefficient epsilon(260) at 260 nm and pH=7.0, first (Delta E(1)) and second (Delta E(2)) single excitation energies in eV, and first (f(1)) and second (f(2)) oscillator strength values (of the first singlet excitation energies) of the nucleotide DNA-RNA bases. As example of this approach, an interaction study of the antibiotic paromomycin with the packaging region of the HIV-1 Psi-RNA have been performed and it have been obtained several linear models in order to predict the interaction strength. The best linear model obtained by using non-stochastic bilinear indices explains about 91% of the variance of the experimental Log K (R=0.95 and s=0.08 x 10(-4)M(-1)) as long as the best stochastic bilinear indices-based equation account for 93% of the Log K variance (R=0.97 and s=0.07 x 10(-4)M(-1)). The leave-one-out (LOO) press statistics, evidenced high predictive ability of both models (q(2)=0.86 and s(cv)=0.09 x 10(-4)M(-1) for non-stochastic and q(2)=0.91 and s(cv)=0.08 x 10(-4)M(-1) for stochastic bilinear indices). The nucleic acid's bilinear indices-based models compared favorably with other nucleic acid's indices-based approaches reported nowadays. These models also permit the interpretation of the driving forces of the interaction process. In this sense, developed equations involve short-reaching (k<or=3), middle-reaching (4<k<9), and far-reaching (k=10 or greater) nucleotide's bilinear indices. This situation points to electronic and topologic nucleotide's backbone interactions control of the stability profile of paromomycin-RNA complexes. Consequently, the present approach represents a novel and rather promising way to theoretical-biology studies.
Notes: Marrero-Ponce, Yovani xD;Ortega-Broche, Sadiel E xD;Diaz, Yunaimy Echeverria xD;Alvarado, Ysaias J xD;Cubillan, Nestor xD;Cardoso, Gladys Casas xD;Torrens, Francisco xD;Perez-Gimenez, Facundo xD;Research Support, Non-U.S. Gov't xD;England xD;Journal of theoretical biology xD;J Theor Biol. 2009 Jul 21;259(2):229-41. Epub 2009 Mar 9.
2008
A Meneses-Marcel, O M Rivera-Borroto, Y Marrero-Ponce, A Montero, Y Machado Tugores, J A Escario, A Gomez Barrio, D Montero Pereira, J J Nogal, V V Kouznetsov, C Ochoa Puentes, A R Bohorquez, R Grau, F Torrens, F Ibarra-Velarde, V J Aran (2008)  New antitrichomonal drug-like chemicals selected by bond (edge)-based TOMOCOMD-CARDD descriptors   J Biomol Screen 13: 8. 785-94  
Abstract: Bond-based quadratic indices, new TOMOCOMD-CARDD molecular descriptors, and linear discriminant analysis (LDA) were used to discover novel lead trichomonacidals. The obtained LDA-based quantitative structure-activity relationships (QSAR) models, using nonstochastic and stochastic indices, were able to classify correctly 87.91% (87.50%) and 89.01% (84.38%) of the chemicals in training (test) sets, respectively. They showed large Matthews correlation coefficients of 0.75 (0.71) and 0.78 (0.65) for the training (test) sets, correspondingly. Later, both models were applied to the virtual screening of 21 chemicals to find new lead antitrichomonal agents. Predictions agreed with experimental results to a great extent because a correct classification for both models of 95.24% (20 of 21) of the chemicals was obtained. Of the 21 compounds that were screened and synthesized, 2 molecules (chemicals G-1, UC-245) showed high to moderate cytocidal activity at the concentration of 10 microg/ml, another 2 compounds (G-0 and CRIS-148) showed high cytocidal activity only at the concentration of 100 microg/ml, and the remaining chemicals (from CRIS-105 to CRIS-153, except CRIS-148) were inactive at these assayed concentrations. Finally, the best candidate, G-1 (cytocidal activity of 100% at 10 microg/ml) was in vivo assayed in ovariectomized Wistar rats achieving promising results as a trichomonacidal drug-like compound.
Notes: Meneses-Marcel, Alfredo xD;Rivera-Borroto, Oscar M xD;Marrero-Ponce, Yovani xD;Montero, Alina xD;Machado Tugores, Yanetsy xD;Escario, Jose Antonio xD;Gomez Barrio, Alicia xD;Montero Pereira, David xD;Nogal, Juan Jose xD;Kouznetsov, Vladimir V xD;Ochoa Puentes, Cristian xD;Bohorquez, Arnold R xD;Grau, Ricardo xD;Torrens, Francisco xD;Ibarra-Velarde, Froylan xD;Aran, Vicente J xD;Research Support, Non-U.S. Gov't xD;United States xD;Journal of biomolecular screening xD;J Biomol Screen. 2008 Sep;13(8):785-94. Epub 2008 Aug 27.
Y Marrero-Ponce, A Meneses-Marcel, O M Rivera-Borroto, R Garcia-Domenech, J V De Julian-Ortiz, A Montero, J A Escario, A G Barrio, D M Pereira, J J Nogal, R Grau, F Torrens, C Vogel, V J Aran (2008)  Bond-based linear indices in QSAR : computational discovery of novel anti-trichomonal compounds   J Comput Aided Mol Des 22: 8. 523-40  
Abstract: Trichomonas vaginalis (Tv) is the causative agent of the most common, non-viral, sexually transmitted disease in women and men worldwide. Since 1959, metronidazole (MTZ) has been the drug of choice in the systemic treatment of trichomoniasis. However, resistance to MTZ in some patients and the great cost associated with the development of new trichomonacidals make necessary the development of computational methods that shorten the drug discovery pipeline. Toward this end, bond-based linear indices, new TOMOCOMD-CARDD molecular descriptors, and linear discriminant analysis were used to discover novel trichomonacidal chemicals. The obtained models, using non-stochastic and stochastic indices, are able to classify correctly 89.01% (87.50%) and 82.42% (84.38%) of the chemicals in the training (test) sets, respectively. These results validate the models for their use in the ligand-based virtual screening. In addition, they show large Matthews' correlation coefficients (C) of 0.78 (0.71) and 0.65 (0.65) for the training (test) sets, correspondingly. The result of predictions on the 10% full-out cross-validation test also evidences the robustness of the obtained models. Later, both models are applied to the virtual screening of 12 compounds already proved against Tv. As a result, they correctly classify 10 out of 12 (83.33%) and 9 out of 12 (75.00%) of the chemicals, respectively; which is the most important criterion for validating the models. Besides, these classification functions are applied to a library of seven chemicals in order to find novel antitrichomonal agents. These compounds are synthesized and tested for in vitro activity against Tv. As a result, experimental observations approached to theoretical predictions, since it was obtained a correct classification of 85.71% (6 out of 7) of the chemicals. Moreover, out of the seven compounds that are screened, synthesized and biologically assayed, six compounds (VA7-34, VA7-35, VA7-37, VA7-38, VA7-68, VA7-70) show pronounced cytocidal activity at the concentration of 100 mug/ml at 24 h (48 h) within the range of 98.66%-100% (99.40%-100%), while only two molecules (chemicals VA7-37 and VA7-38) show high cytocidal activity at the concentration of 10 mug/ml at 24 h (48 h): 98.38% (94.23%) and 97.59% (98.10%), correspondingly. The LDA-assisted QSAR models presented here could significantly reduce the number of synthesized and tested compounds and could increase the chance of finding new chemical entities with anti-trichomonal activity.
Notes: Marrero-Ponce, Yovani xD;Meneses-Marcel, Alfredo xD;Rivera-Borroto, Oscar M xD;Garcia-Domenech, Ramon xD;De Julian-Ortiz, Jesus Vicente xD;Montero, Alina xD;Escario, Jose Antonio xD;Barrio, Alicia Gomez xD;Pereira, David Montero xD;Nogal, Juan Jose xD;Grau, Ricardo xD;Torrens, Francisco xD;Vogel, Christian xD;Aran, Vicente J xD;Research Support, Non-U.S. Gov't xD;Netherlands xD;Journal of computer-aided molecular design xD;J Comput Aided Mol Des. 2008 Aug;22(8):523-40. Epub 2008 May 16.
F Ibarra-Velarde, Y Vera-Montenegro, A Huesca-Guillen, G Canto-Alarcon, Y Alcala-Canto, Y Marrero-Ponce (2008)  In silico fasciolicide activity of three experimental compounds in sheep   Ann N Y Acad Sci 1149: 183-5  
Abstract: The aim of the present study was to evaluate the fasciolicide activity of three experimental drugs, selected by an in silico system called TOMOCOMD-CARDD, in sheep. Drugs were identified by the computer system, and, after statistical selection, 24 Pelibuey sheep were infected on days 0 and 30, each with 200 metacercariae of Fasciola hepatica. When the infection reached 8 and 4 weeks of age, respectively, four groups of six animals each were formed. Group 1 received thiacetazone 150 mg/animal/p.o. Group 2 was treated with 3,5,5, trimethyloxazolidine 2,4-dione at 450 mg/animal/p.o. G3 received guanabenz acetate at a dose of 1.5 mg/animal/p.o. G4 served as an untreated control. Monitoring of the animals was followed by individual coprological examinations and slaughter of the animals 15 days after treatment to collect and count flukes from the liver. Efficacy was measured as the reduction in the percentage of flukes of treated animals relative to untreated controls. Results indicated an efficacy of 80.0, 43.8, and 100% for 8-week-old flukes and 62.1, 57.9, and 100% for 4-week-old flukes in the three experimental groups, respectively. Even though guanabenz acetate showed a high efficacy, it was highly toxic since two animals died approximately 24 h after being treated. We conclude that further investigations should be conducted to perform computer-aided prediction of drugs aimed to detect fasciolicide activity.
Notes: Ibarra-Velarde, Froylan xD;Vera-Montenegro, Yolanda xD;Huesca-Guillen, Alma xD;Canto-Alarcon, Germinal xD;Alcala-Canto, Yazmin xD;Marrero-Ponce, Yovani xD;Research Support, Non-U.S. Gov't xD;United States xD;Annals of the New York Academy of Sciences xD;Ann N Y Acad Sci. 2008 Dec;1149:183-5.
V Roldos, H Nakayama, M Rolon, A Montero-Torres, F Trucco, S Torres, C Vega, Y Marrero-Ponce, V Heguaburu, G Yaluff, A Gomez-Barrio, L Sanabria, M E Ferreira, A Rojas de Arias, E Pandolfi (2008)  Activity of a hydroxybibenzyl bryophyte constituent against Leishmania spp. and Trypanosoma cruzi : in silico, in vitro and in vivo activity studies   Eur J Med Chem 43: 9. 1797-807  
Abstract: The synthesis and potent antiprotozoal activity of 14-hydroxylunularin, a natural hydroxybibenzyl bryophyte constituent is reported. 14-hydroxylunularin was highly active in vitro assays against culture and intracellular forms of Leishmania spp. and Trypanosoma. cruzi, in absence of cytotoxicity against mammalian cells. Preliminary structure-activity relationship studies showed that the reported bioactivity depends on hybridization at the carbon-carbon bridge, position and number of free hydroxy group on the aromatic rings. The reported results were also in agreement with the in silico prediction using Non-Stochastic Quadratic Fingerprints-based algorithms. The same compound also showed antiprotozoal activity in Leishmania spp. infected mice by oral and subcutaneous administration routes, with an optimal treatment of a daily subcutaneous administration of 10 mg/kg of body weight for 15 days. This study suggested that 14-hydroxylunularin may be chosen as a new candidate in the development of leishmanicidal therapy.
Notes: Roldos, Virginia xD;Nakayama, Hector xD;Rolon, Miriam xD;Montero-Torres, Alina xD;Trucco, Fernando xD;Torres, Susana xD;Vega, Celeste xD;Marrero-Ponce, Yovanni xD;Heguaburu, Viviana xD;Yaluff, Gloria xD;Gomez-Barrio, Alicia xD;Sanabria, Luis xD;Ferreira, Maria Elena xD;Rojas de Arias, Antonieta xD;Pandolfi, Enrique xD;Research Support, Non-U.S. Gov't xD;France xD;European journal of medicinal chemistry xD;Eur J Med Chem. 2008 Sep;43(9):1797-807. Epub 2007 Nov 19.
J A Castillo-Garit, Y Marrero-Ponce, J Escobar, F Torrens, R Rotondo (2008)  A novel approach to predict aquatic toxicity from molecular structure   Chemosphere 73: 3. 415-27  
Abstract: The main aim of the study was to develop quantitative structure-activity relationship (QSAR) models for the prediction of aquatic toxicity using atom-based non-stochastic and stochastic linear indices. The used dataset consist of 392 benzene derivatives, separated into training and test sets, for which toxicity data to the ciliate Tetrahymena pyriformis were available. Using multiple linear regression, two statistically significant QSAR models were obtained with non-stochastic (R2=0.791 and s=0.344) and stochastic (R2=0.799 and s=0.343) linear indices. A leave-one-out (LOO) cross-validation procedure was carried out achieving values of q2=0.781 (scv=0.348) and q2=0.786 (scv=0.350), respectively. In addition, a validation through an external test set was performed, which yields significant values of Rpred2 of 0.762 and 0.797. A brief study of the influence of the statistical outliers in QSAR's model development was also carried out. Finally, our method was compared with other approaches implemented in the Dragon software achieving better results. The non-stochastic and stochastic linear indices appear to provide an interesting alternative to costly and time-consuming experiments for determining toxicity.
Notes: Castillo-Garit, Juan A xD;Marrero-Ponce, Yovani xD;Escobar, Jeanette xD;Torrens, Francisco xD;Rotondo, Richard xD;England xD;Chemosphere xD;Chemosphere. 2008 Sep;73(3):415-27. Epub 2008 Jul 1.
G M Casanola-Martin, Y Marrero-Ponce, M Tareq Hassan Khan, F Torrens, F Perez-Gimenez, A Rescigno (2008)  Atom- and bond-based 2D TOMOCOMD-CARDD approach and ligand-based virtual screening for the drug discovery of new tyrosinase inhibitors   J Biomol Screen 13: 10. 1014-24  
Abstract: Two-dimensional atom- and bond-based TOMOCOMD-CARDD descriptors and linear discriminant analysis (LDA) are used in this report to perform a quantitative structure-activity relationship (QSAR) study of tyrosinase-inhibitory activity. A database of inhibitors of the enzyme is collected for this study, within 246 highly dissimilar molecules presenting antityrosinase activity. In total, 7 discriminant functions are obtained by using the whole set of atom- and bond-based 2D indices. All the LDA-based QSAR models show accuracies above 90% in the training set and values of the Matthews correlation coefficient (C) varying from 0.85 to 0.90. The external validation set shows globally good classifications between 89% and 91% and C values ranging from 0.75 to 0.81. Finally, QSAR models are used in the selection/identification of the 20 new dicoumarins subset to search for tyrosinase inhibitory activity. Theoretical and experimental results show good correspondence between one another. It is important to remark that most compounds in this series exhibit a more potent inhibitory activity against the mushroom tyrosinase enzyme than the reference compound, Kojic acid (IC(50) = 16.67 muM), resulting in a novel nucleus base (lead) with antityrosinase activity, and this could serve as a starting point for the drug discovery of novel tyrosinase inhibitor lead compounds. ( Journal of Biomolecular Screening 2008:1014-1024).
Notes: Casanola-Martin, Gerardo M xD;Marrero-Ponce, Yovani xD;Tareq Hassan Khan, Mahmud xD;Torrens, Francisco xD;Perez-Gimenez, Facundo xD;Rescigno, Antonio xD;Research Support, Non-U.S. Gov't xD;United States xD;Journal of biomolecular screening xD;J Biomol Screen. 2008 Dec;13(10):1014-24. Epub 2008 Nov 17.
Y M Alvarez-Ginarte, R Crespo-Otero, Y Marrero-Ponce, P Noheda-Marin, J M Garcia de la Vega, L A Montero-Cabrera, J A Ruiz Garcia, J A Caldera-Luzardo, Y J Alvarado (2008)  Chemometric and chemoinformatic analyses of anabolic and androgenic activities of testosterone and dihydrotestosterone analogues   Bioorg Med Chem 16: 12. 6448-59  
Abstract: Predictive quantitative structure-activity relationship (QSAR) models of anabolic and androgenic activities for the testosterone and dihydrotestosterone steroid analogues were obtained by means of multiple linear regression using quantum and physicochemical molecular descriptors (MD) as well as a genetic algorithm for the selection of the best subset of variables. Quantitative models found for describing the anabolic (androgenic) activity are significant from a statistical point of view: R(2) of 0.84 (0.72 and 0.70). A leave-one-out cross-validation procedure revealed that the regression models had a fairly good predictability [q(2) of 0.80 (0.60 and 0.59)]. In addition, other QSAR models were developed to predict anabolic/androgenic (A/A) ratios and the best regression equation explains 68% of the variance for the experimental values of AA ratio and has a rather adequate q(2) of 0.51. External validation, by using test sets, was also used in each experiment in order to evaluate the predictive power of the obtained models. The result shows that these QSARs have quite good predictive abilities (R(2) of 0.90, 0.72 (0.55), and 0.53) for anabolic activity, androgenic activity, and A/A ratios, respectively. Last, a Williams plot was used in order to define the domain of applicability of the models as a squared area within +/-2 band for residuals and a leverage threshold of h=0.16. No apparent outliers were detected and the models can be used with high accuracy in this applicability domain. MDs included in our QSAR models allow the structural interpretation of the biological process, evidencing the main role of the shape of molecules, hydrophobicity, and electronic properties. Attempts were made to include lipophilicity (octanol-water partition coefficient (logP)) and electronic (hardness (eta)) values of the whole molecules in the multivariate relations. It was found from the study that the logP of molecules has positive contribution to the anabolic and androgenic activities and high values of eta produce unfavorable effects. The found MDs can also be efficiently used in similarity studies based on cluster analysis. Our model for the anabolic/androgenic ratio (expressed by weight of levator ani muscle, LA, and seminal vesicle, SV, in mice) predicts that the 2-aminomethylene-17alpha-methyl-17beta-hydroxy-5alpha-androstan-3-one (43) compound is the most potent anabolic steroid, and the 17alpha-methyl-2beta,17beta-dihydroxy-5alpha-androstane (31) compound is the least potent one of this series. The approach described in this report is an alternative for the discovery and optimization of leading anabolic compounds among steroids and analogues. It also gives an important role to electron exchange terms of molecular interactions to this kind of steroid activity.
Notes: Alvarez-Ginarte, Yoanna Maria xD;Crespo-Otero, Rachel xD;Marrero-Ponce, Yovani xD;Noheda-Marin, Pedro xD;Garcia de la Vega, Jose Manuel xD;Montero-Cabrera, Luis Alberto xD;Ruiz Garcia, Jose Alberto xD;Caldera-Luzardo, Jose A xD;Alvarado, Ysaias J xD;Research Support, Non-U.S. Gov't xD;England xD;Bioorganic & medicinal chemistry xD;Bioorg Med Chem. 2008 Jun 15;16(12):6448-59. Epub 2008 Apr 7.
J A Castillo-Garit, Y Marrero-Ponce, F Torrens, R Garcia-Domenech, V Romero-Zaldivar (2008)  Bond-based 3D-chiral linear indices : theory and QSAR applications to central chirality codification   J Comput Chem 29: 15. 2500-12  
Abstract: The recently introduced non-stochastic and stochastic bond-based linear indices are been generalized to codify chemical structure information for chiral drugs, making use of a trigonometric 3D-chirality correction factor. These improved modified descriptors are applied to several well-known data sets to validate each one of them. Particularly, Cramer's steroid data set has become a benchmark for the assessment of novel quantitative structure activity relationship methods. This data set has been used by several researchers using 3D-QSAR approaches such as Comparative Molecular Field Analysis, Molecular Quantum Similarity Measures, Comparative Molecular Moment Analysis, E-state, Mapping Property Distributions of Molecular Surfaces, and so on. For that reason, it is selected by us for the sake of comparability. In addition, to evaluate the effectiveness of this novel approach in drug design we model the angiotensin-converting enzyme inhibitory activity of perindoprilate's sigma-stereoisomers combinatorial library, as well as codify information related to a pharmacological property highly dependent on the molecular symmetry of a set of seven pairs of chiral N-alkylated 3-(3-hydroxyphenyl)-piperidines that bind sigma-receptors. The validation of this method is achieved by comparison with earlier publications applied to the same data sets. The non-stochastic and stochastic bond-based 3D-chiral linear indices appear to provide a very interesting alternative to other more common 3D-QSAR descriptors.
Notes: Castillo-Garit, Juan A xD;Marrero-Ponce, Yovani xD;Torrens, Francisco xD;Garcia-Domenech, Ramon xD;Romero-Zaldivar, Vicente xD;Comparative Study xD;Research Support, Non-U.S. Gov't xD;United States xD;Journal of computational chemistry xD;J Comput Chem. 2008 Nov 30;29(15):2500-12.
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