Kerly F. M. Pasqualoto
State University of Campinas
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Kerly F. M. Pasqualoto.
Journal of Chemical Information and Modeling | 2009
João Paulo A. Martins; Euzébio Guimarães Barbosa; Kerly F. M. Pasqualoto; Márcia M. C. Ferreira
A novel 4D-QSAR approach which makes use of the molecular dynamics (MD) trajectories and topology information retrieved from the GROMACS package is presented in this study. This new methodology, named LQTA-QSAR (LQTA, Laboratório de Quimiometria Teórica e Aplicada), has a module (LQTAgrid) that calculates intermolecular interaction energies at each grid point considering probes and all aligned conformations resulting from MD simulations. These interaction energies are the independent variables or descriptors employed in a QSAR analysis. The comparison of the proposed methodology to other 4D-QSAR and CoMFA formalisms was performed using a set of forty-seven glycogen phosphorylase b inhibitors (data set 1) and a set of forty-four MAP p38 kinase inhibitors (data set 2). The QSAR models for both data sets were built using the ordered predictor selection (OPS) algorithm for variable selection. Model validation was carried out applying y-randomization and leave-N-out cross-validation in addition to the external validation. PLS models for data set 1 and 2 provided the following statistics: q(2) = 0.72, r(2) = 0.81 for 12 variables selected and 2 latent variables and q(2) = 0.82, r(2) = 0.90 for 10 variables selected and 5 latent variables, respectively. Visualization of the descriptors in 3D space was successfully interpreted from the chemical point of view, supporting the applicability of this new approach in rational drug design.
Journal of Chemical Information and Modeling | 2009
Carolina H. Andrade; Kerly F. M. Pasqualoto; Elizabeth Igne Ferreira; Anton J. Hopfinger
Thymidine monophosphate kinase (TMPK) has emerged as an attractive target for developing inhibitors of Mycobacterium tuberculosis growth. In this study the receptor-independent (RI) 4D-QSAR formalism has been used to develop QSAR models and corresponding 3D-pharmacophores for a set of 5-thiourea-substituted alpha-thymidine inhibitors. Models were developed for the entire training set and for a subset of the training set consisting of the most potent inhibitors. The optimized (RI) 4D-QSAR models are statistically significant (r(2) = 0.90, q(2) = 0.83 entire set, r(2) = 0.86, q(2) = 0.80 high potency subset) and also possess good predictivity based on test set predictions. The most and least potent inhibitors, in their respective postulated active conformations derived from the models, were docked in the active site of the TMPK crystallographic structure. There is a solid consistency between the 3D-pharmacophore sites defined by the QSAR models and interactions with binding site residues. This model identifies new regions of the inhibitors that contain pharmacophore sites, such as the sugar-pyrimidine ring structure and the region of the 5-arylthiourea moiety. These new regions of the ligands can be further explored and possibly exploited to identify new, novel, and, perhaps, better antituberculosis inhibitors of TMPKmt. Furthermore, the 3D-pharmacophores defined by these models can be used as a starting point for future receptor-dependent antituberculosis drug design as well as to elucidate candidate sites for substituent addition to optimize ADMET properties of analog inhibitors.
Molecular Diversity | 2008
Carolina Horta Andrade; Lívia B. Salum; Marcelo Santos Castilho; Kerly F. M. Pasqualoto; Elizabeth Igne Ferreira; Adriano D. Andricopulo
Worldwide, tuberculosis (TB) is the leading cause of death among curable infectious diseases. Multidrug-resistant Mycobacterium tuberculosis is an emerging problem of great importance to public health, and there is an urgent need for new anti-TB drugs. In the present work, classical 2D quantitative structure–activity relationships (QSAR) and hologram QSAR (HQSAR) studies were performed on a training set of 91 isoniazid derivatives. Significant statistical models (classical QSAR, q2xa0= 0.68 and r2xa0=xa00.72; HQSAR, q2xa0= 0.63 and r2 xa0=xa0 0.86) were obtained, indicating their consistency for untested compounds. The models were then used to evaluate an external test set containing 24 compounds which were not included in the training set, and the predicted values were in good agreement with the experimental results (HQSAR,
Letters in Drug Design & Discovery | 2008
Carolina Horta Andrade; Lívia B. Salum; Kerly F. M. Pasqualoto; Elizabeth Igne Ferreira; Adriano D. Andricopulo
Revista Brasileira De Ciencias Farmaceuticas | 2008
Carolina Horta Andrade; Kerly F. M. Pasqualoto; Marcio H. Zaim; Elizabeth Igne Ferreira
{r^{2}_{pred} = 0.87}
Journal of Computer-aided Molecular Design | 2012
Euzébio Guimarães Barbosa; Kerly F. M. Pasqualoto; Márcia M. C. Ferreira
Molecular Diversity | 2013
Jeanine Giarolla; Kerly F. M. Pasqualoto; Elizabeth Igne Ferreira
; classical QSAR,
Molecular Simulation | 2013
Soraya da Silva Santos; Jeanine Giarolla; Kerly F. M. Pasqualoto; Elizabeth Igne Ferreira
Molecular Simulation | 2015
Soraya da Silva Santos; Jeanine Giarolla; Kerly F. M. Pasqualoto; Elizabeth Igne Ferreira
{r^{2}_{pred} = 0.75}
Journal of Medicinal Chemistry | 2004
Kerly F. M. Pasqualoto; Elizabeth Igne Ferreira; Osvaldo A. Santos-Filho; Anton J. Hopfinger