Accurately ranking docking poses remains a great challenge
in computer-aided drug design. In this study, we present an integrated
approach called MIEC-SVM that combines structure modeling and statistical
learning to characterize protein–ligand binding based on the
complex structure generated from docking. Using the HIV-1 protease
as a model system, we showed that MIEC-SVM can successfully rank the
docking poses and consistently outperformed the state-of-art scoring
functions when the true positives only account for 1% or 0.5% of all
the compounds under consideration. More excitingly, we found that
MIEC-SVM can achieve a significant enrichment in virtual screening
even when trained on a set of known inhibitors as small as 50, especially
when enhanced by a model average approach. Given these features of
MIEC-SVM, we believe it provides a powerful tool for searching for
and designing new drugs