Martins J. P., Barbosa E. G., Pasqualoto K. F. M., Ferreira M. M. C.,
"LQTA-QSAR:
A New 4D-QSAR Methodology", J. Chem. Inf. Mod., 49(6),
1428-1436 (2009).
[Article]
Abstract.
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,
Laboratrio
de Quimiometria Terica 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: q2
= 0.72, r2 = 0.81 for 12 variables
selected and 2 latent variables and q2
= 0.82, r2 = 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.
Keywords.
Keywords Plus.