Absorption, Distribution,
Metabolism, Excretion, and
Toxicity Evaluation in Drug Discovery. 14. Prediction of Human Pregnane
X Receptor Activators by Using Naive Bayesian Classification Technique
posted on 2015-01-20, 00:00authored byHuali Shi, Sheng Tian, Youyong Li, Dan Li, Huidong Yu, Xuechu Zhen, Tingjun Hou
The
activation of pregnane X receptor (PXR), a member of the nuclear
receptor (NR) superfamily, can mediate potential drug–drug
interactions, and therefore, prediction of PXR activation is of great
importance for evaluating drug metabolism and toxicity. In this study,
based on 532 structurally diverse compounds, we present a comprehensive
analysis with the aim to build accurate classification models for
distinguishing PXR activators from nonactivators by using a naive
Bayesian classification technique. First, the distributions of eight
important molecular physicochemical properties of PXR activators versus
nonactivators were compared, illustrating that the hydrophobicity-related
molecular descriptors (AlogP and log D) show slightly better capability to discriminate PXR activators
from nonactivators than the others. Then, based on molecular physicochemical
properties, VolSurf descriptors, and molecular fingerprints,
naive Bayesian classifiers were developed to separate PXR activators
from nonactivators. The results demonstrate that the introduction
of molecular fingerprints is quite essential to enhance the prediction
accuracy of the classifiers. The best Bayesian classifier based on
the 21 physicochemical properties, VolSurf descriptors,
and LCFC_10 fingerprints descriptors yields a prediction accuracy
of 92.7% for the training set based on leave-one-out (LOO) cross-validation
and of 85.2% for the test set. Moreover, by exploring the important
structural fragments derived from the best Bayesian classifier, we
observed that flexibility is an important structural pattern for PXR
activation. In addition, chemical compounds containing more halogen
atoms, unsaturated alkanes chains relevant to π–π
stacking, and fewer nitrogen atoms tend to be PXR activators. We believe
that the naive Bayesian classifier can be used as a reliable virtual
screening tool to predict PXR activation in the drug design and discovery
pipeline.